Tobacco Institute
Working Paper the Political Element in Science and Technology: Sammec II and the Anti-Smoking Lobby
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Annotations
- 1. Ault, R.W. Author
- Affiliation:
Auburn University
- Affiliation:
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KING PA. ER
THE POLITICAL ELEMENT IN
SCIENCE AND TECHNOLOGY:
SAMMEC II AND THE
ANTI-SMOKING LOBBY
CENTER FOR STUDY OF PUBLIC CHOICE
DEPARTMENT OF ECONOMICS
GEORGE MASON UNIVERSITY
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THE POLITICAL ELEMENT IN
SCIENCE AND TECHNOLOGY:
SAMMEC II AND THE
ANTI-SMOKING LOBBY
by
Richard W. Ault
and
Robert B. Ekelund, Jr.
Auburn University
March 1993
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TABLE OF CONTENTS
Executive Summary . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .
I. Introduction ........................................ 1
II. SAMMEC and Economic Cost Computations ................... 3
What Is SAMMEC II? ................................. 3
How SAMMEC Has Been Used ........................... 4
Economic Project Evaluation and the Concept of Cost .............. 5
III. The Methodology of SAMMEC II .......................... 10
Indirect Mortality Costs . . . . . . . . . . . . . . . . . . . . . . . . . . . 12
Direct Morbidity Costs ................................. 16
Indirect Morbidity Costs . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 24
IV. Technical Flaws in SAMMEC II Methodology. .................. 27
V. Summary and Conclusions . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 34
Footnotes .............................................. 37
References ............................................. 39
Attachment A ........................................... 42
Section I .......................................... 42
Section II ......................................... 43
Section III ......................................... 44
Section IV ......................................... 45
Section V ......................................... 46
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LIST. OF TABLES
Table 1 Diagnosis Set .................................. 11
Table 2 Relative Risk Elements ............................ 14
Table 3 Smoking Prevalence Rates .......................... 15
Table 4 Years of Potential Life Remaining Relative to Life
Expectancy: Males ..............................
17
Table 5 Years of Potential Life Remaining Relative to Life
Expectancy: Females .............................
18
Table 6 Present Value of Future Earnings (4%) .................. 19
Table 7 Present Value of Future Earnings (6%) .................. 20
Table 8 Present Value of Future Earnings (10%) .................. 21
Table 9 Relative Rates for Hospital Days Per 100 Persons and Physician
Visits Per 100 Persons by Smoking Status .................
23
Table 10 Relative Rates for Work-Loss Days Per 100 Employed Persons
Per Bed-Disability Days Per 100 Females Keeping House by
Smoking Status .................................
25
11
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EXECUTIVE SUMMARY
Software with the acronym SAMMEC II (Smoking-Attributable Mortality, Morbidity,
and Economic Costs) was developed in 1990 for purposes of evaluating populations (state, city,
and national) in order to determine the so-called "social costs" of smoking. The software
SAMMEC II, developed initially by James M. Schultz as SAMMEC in 1985 and 1986 in
conjunction with the Minnesota Department of Health, has been used primarily in one well
publicized nationwide study -- the National Status Report on Smoking and Health, 1990 (the
"Sullivan Report") -- and in various states in the United States. The purpose of this research
paper is to evaluate the second generation software (based on the initial SAMMEC) from the
related perspectives of logic and statistical adequacy.
We note, from the outset, that any "costs" of smoking (to the extent that such costs may
exist beyond the price of the product) are all rzp 'vate in nature -- that is, they are borne and
internalized by individuals in private actions. We also note that, in any generally accepted
methodology, both "benefits and costs" must be evaluated.
All rational individuals, in making choices, evaluate both the benefits of consumption and
the putative costs. Property rights and property dispositions belong to the individual alone in
voluntary exchange. As Ezra Mishan, an authority on economic cost-benefit analysis, who is
misinterpreted by SAMMEC II developers, argues, "Insofar ... as additional risks associated
with the service or facility [or product] are all voluntarily assumed, there is no call for
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intervention in the allocative solution to which the market tends" (see pp. 8-10 of our report).
The fact that individuals actually purchase tobacco products means that perceived, calculable
benefits flow to individuals as they do from tobacco production and sale.
Any such benefits are totally ignored in SAMMEC II's calculations, however, further
vitiating their implied warranty as to having produced a scientific impact study. While the
exclusion of benefits is a critical omission in SAMMEC II, our critique evaluates SAMMEC II
chiefly on its own grounds -- that is, by its assumption that the "social costs" identified do
actually exist.
Within the framework of the SAMMEC II estimates, three broad categories of "social
costs" for smoking are said to exist: (1) indirect mortality costs consisting of lost income
resulting from "premature" deaths; (2) direct morbidity costs, including all costs of
hospitalization and health care due to illnesses which are claimed to be associated with smoking;
and (3) indirect morbidity costs which encompass productivity losses due to worker absenteeism.
At the heart of all of these tripartite cost estimates is what SAMMEC II developers call
the Smoking Attributable Fraction (SAF) which is a function of: (a) smoking prevalence and
(b) "risk ratios." Even assuming that smoking prevalence data are accurate, the SAMMEC
calculation of SAF is rendered unreliable by its calculation of risk obtained from a 1989 Surgeon
General's Report (Reducing the Health Consequences of Smoking: 25 Years of Proaress. A
Report of the Surgeon General, 1989) for the following two reasons:
(1) Reported disease incidence among smokers and nonsmokers is based
upon no other factors besides sex, age, and smoking history. These
data cannot explain any systematic differences in disease incidence
since it does not control for factors such as health history, prior
medical care, exercise and food intake, or genetics that are all
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identified as significantly related to disease (see Attachment A,
Section I); and
(2) Reported differences in disease incidence between smokers and
nonsmokers are biased since data come from death certificates on
which physicians systematically bias reportage (see text, p. 22).
This means that the smoking-attributable impact estimates are calculated by mathematical
formulae and are not based on actual disease incidence or actual costs. While these problems
riddle the entire SAMMEC II study, other key difficulties pertain to specific calculations. Three
of the most significant include:
(1) The use of mean income to estimate claimed future losses in
calculating indirect mortality and morbidity costs. Assuming any
losses to be social (which they are not), a mean income calculation
must bias the result since a higher percentage of smokers have been
widely reported to be found in the lower-income groups (see
Attachment A, Section II);
(2) The lack of data on health care expenditures which forces
SAMMEC II to treat all forms of health care as perfect
complements. Where statistics do not exist -- as in nursing home
care -- SAMMEC II makes apparently unsupported assumptions and
uses a proxy. The application of meaningless disease incidence data
(see 1 above) to several biased health cost data creates multiplicative
errors in SAMMEC II estimates; and
(3) The calculation of indirect morbidity costs also is unreliable and
useless since it is based on relative differences in absenteeism rates
between smokers and nonsmokers that do not account for age,
health, worker status, or income (see Attachment A, Section V).
These problems mean that, evaluated on its own, cost evaluations based on SAMMEC II
software are unreliable. This conclusion applies to the Sullivan Report and to state (and city)
studies of the costs of smoking and to any other investigation that uses the SAMMEC II program
as its foundation. When the data show what the SAMMEC II authors expect, they accept it;
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when the data fail to show what they expect, they make ad hoc adjustments to the data. This
makes a mockery of scientific inquiry.
Finally, we note difficulties in SAMMEC II's cost calculations which are central to our
evaluation and critique and which, incredibly, are recognized by SAMMEC II developers as
well. Apparently, recognizing the scientifically inconclusive nature of their own methodology,
SAMMEC II authors note that the technology implied by SAMMEC II software "enhances the
credibility and perceived authority of disease impact estimates" while on the same page of the
studv (Schultz, Novotny and Rice, p. 9) they admit that ". . . the issue of whether smokers cost
nonsmokers money, or vice versa, is unresolved." Earlier, on page 8 of their study, the authors
argue that the net economic effect of cigarette smoking is "speculative." The dangers inherent
in such "politically correct science" should be obvious to all.
This manuscript was produced under a grant from the Tobacco Institute. The views expressed
are those of the authors and not necessarily those of the Institute or its member companies.
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I. INTRODUCTION
Politics and science are more interrelated now than at any time in human history. A vast
arsenal of modem science is directed and totally or partially funded by local, state, and federal
s governments and millions of small donations. Much of this so-called scientific activity comes
from not-for-profit entities such as the American Lung Association, the American Heart
Association, the National Institutes of Health (NIH), the Centers for Disease Control, 50 state
departments of health and public health services, and myriad local health organizations.
Obviously, the profit motive is the driving force for profit-maximizing entities while
non-pecuniary (for example, "religious") motives may explain organizational characteristics of
purely voluntary activity. The behavior of not-for-profit entities -- like those enumerated above
which pay salaries and benefits, and are directly financed by government or rely on government
subsidies and donations -- are the most difficult and interesting to analyze. These entities are
widely perceived to be in the public interest. However, they may actually lack clearly identified
ownership and control, providing management and employees with less incentives to use
resources in an economical, socially desirable manner.'
One of the most important aspects of such ill-defined accountability assignments in
"goodwill entities" is the encouragement of such entities and organizations to use or mold
science into politically popular (and politically "sellable") projects and activities. Science is
then
used to expand "expense preference behavior" -- expanded bureaucracies, higher managerial and
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employee salaries, and so on -- and to form the basis for direct political activities by the
goodwill entities themselves or by the politicians that support and nurture them. These activities
may be at the expense of science and at the cost of the public interest. Indeed, the aims of
science and economic calculation may be twisted to political ends. One example of such
questionable activity is the development, dissemination and spreading use of a spreadsheet
software that purportedly estimates the so-called "social cost" of smoking in a population.
The software, which operates within Lotus 1-2-3, is called the Smoking-Attributable
Mortality, Morbidity, and Economic Costs (SAMMEC II) Computer Software and
Documentation, authored by project staff James M. Schultz, Thomas E. Novotny, and Dorothy
P. Rice (henceforth SNR).2 SAMMEC II and periodic updates of the program are maintained
by the Office on Smoking and Health of the U. S. Department of Health and Human Services.
The central purpose of this research is to critically evaluate the scientific and economic
foundations of SAMMEC II methodology. We explore both conceptual issues and methods of
calculation which show that the developers and users of the software appear to be virtually
inventing an economic "cost" of smoking -- and are developing exaggerated estimates of the
so-called cost. After a more detailed discussion of SAMMEC II and what it is used for in
Section II, we will evaluate the methodology of SAMMEC II in Section III, present conceptual
and calculation biases in Section IV, and estimate the size of these biases and draw conclusions
concerning the role of science in politics and the role of politics in science in a concluding
section (Section V).
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II. SAMMEC AND ECONOMIC COST
COMPUTATIONS
Since SAMMEC II has been recently developed, it is important to understand exactly
what the software contains and how it has been used. More importantly, perhaps, some
fundamental assumptions about the calculation of economic costs attend SAMMEC II and
virtually all health cost assessment programs. While these assumptions -- relating to the
economic concept of costs -- are fairly well known, an examination of them provides a
foundation for analyzing the SAMMEC II methodology.
What is SAMMEC II?
SAMMEC II employs mortality statistics, economic "cost" data, and smoking prevalence
estimates to calculate the alleged disease impact of smoking in "large" populations to make
calculations specific to these populations. While large municipalities might be able to use the
software, SAMMEC developers stress that the technology is primarily intended for use in states
since "small communities and counties will produce unreliable estimates of disease impact if
their populations are less than a few hundred thousand persons" (SNR, SAMMEC, p. 1).
Similar caveats are issued by the project staff for developing nations or countries with
non-representative smoking prevalence data, poor quality mortality data, and economic data "not
similar to the United States."
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The authors also issue warnings about data intervals in the program. Since
SAMMEC II's smoking-attributable disease impact estimates are not a "surveillance system,"
they warn that data intervals should be large (3 to 5 years) because changes in disease incidence
and in spending for diseases which are claimed to be associated with smoking are calculated (that
is, by a mathematical formula) and are not based on any actual disease incidence or actu costs.
Thus, users of the software (states and their public health departments, primarily) must
supply raw mortality data for the most recent year available by disease category, five-year age
group, and sex. Users must also supply current and former smoking prevalence data, either
developed in their own state health departments or from national surveys that include
state-specific information. SAMMEC II supplies (see section IV of the SAMMEC manual:
Schultz et al. 1990) data by appropriate age group, smoking status, and sex from the 1985
Current Population Survey and from the 1988 Behavioral Risk Factor Surveillance System
(BRFSS). SAMMEC II also provides users an option on cost data: provide personal health-care
cost data (from states or local sources) or use SAMMEC's raw economic cost estimates for the
states. (Cost data is provided for 1987, but users are invited to adjust it by multiplying the state
per-capita cost in 1987 by population in later years.)
How SAMMEC Has Been Used
The most publicized use of the SAMMEC methodology has been the so-called Sullivan
Report which was splashed across the pages of virtually all U. S. newspapers in 1990.
According to Secretary of Health and Human Services Louis W. Sullivan in his second National
Status Report on Smoking and Health to Congress (1990), "Each and every American, including
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those who don't even smoke, is paying a hidden tax of approximately $221 per person per year
for the consequences of smoking -- a tax that adds up to $52 billion annuallx. "3
Use of the SAMMEC II program led to the following breakdown of cost estimates in the
Sullivan Report:
DIRECT MEDICAL COSTS (hospitalization,
physician's services, etc.) $23.7 billion
INDIRECT MORBIDITY COSTS (essentially
an economic "cost" of reduced labor
productivity and increased absence) $10.2 billion
INDIRECT MORTALITY COSTS (forfeited
future earnings assuming "premature"
deaths of smokers) $18.5 billion
TOTAL COSTS $52.4 billion
These numbers were developed as a direct application of the SAMMEC methodology. This
means that the government relied on historical records on illness and mortality developed for
SAMMEC and computed gross differentials between smokers and nonsmokers. These
differences were then used as the basis for computations of costs. Computational adequacy of
any and all estimates depends critically upon the methods by which estimates are developed and
on the quality of the data employed. Of even more significance is the question of the conceptual
logic that undergirds the entire SAMMEC-software-Sullivan Report output.
Economic Project Evaluation and the Concept of Cost
An immediate and critical issue is raised by the Sullivan Report estimates (based on
SAMMEC II): correctly interpreted, does the assumption that P--y "social costs" exist with
respect to smoking have actual or logical merit? A related question is whether SAMMEC should
5
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be examined and exposed for the scientific leaps and lapses it contains given that the answer to
the first question may be "no"? First, consider the issue of social and private costs, and the
related issue of cost-benefit calculations.
A private cost is one that is borne directly by the choosing individual. Benefits and costs
are attributable to these rational choices. "Social costs" are those that are imposed on other
members of society by the actions of individuals. In accepted economic analysis, all of the
"costs" contemplated by SAMMEC II and those appearing in the Sullivan Report (discussed
above) are private in nature. Costs and benefits, if any, of smoking behavior are all borne by
the individual. Any reduced income from medical expenses or reduced labor input or
productivity would all be experienced by the individual who smokes. Direct mortality costs --
those due to forfeited future earnings due to alleged "premature" death -- are all paid by the
individual who dies. In spite of Sullivan Report claims to the contrary, all insurance costs and
risk costs the Report associates with smoking are individual costs and not "social costs."
The SAMMEC/Sullivan anti-smoking activists admit that the issue of whether [in the
aggregate] smoking creates net costs (presumably, after benefits are taken into account) is
unresolved (SNR, SAMMEC, p. 9), but they persist in discussing "social costs" from smoking
behavior where no "social costs" appear to exist.4 For example, consider the logic used in
calculating full foregone income from "premature" death which SAMMEC developers treat as
a cost. They argue that "the individual, not just the output he or she contributes in excess of
consumption, is valued by society. Economists today generally agree that consumption should
not be deducted" (SNR p. 13) and they cite Mishan (1971). But rational individuals, in
calculating risks, assess not only their own consumption foregone, but that of the foregone
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savings. This does not mean that benefits would not have flowed to "heirs and assigns" but that
all property rights and property dispositions belong to the individual alone in voluntary
exchange. Here Mishan's actual argument (not one attributed to him by SAMMEC II
developers) is valid:
"Insofar ... as additional risks associated with the service or facility are
all voluntarily assumed, there is no call for intervention in the allocative
solution to which the market tends. As for project evaluations, insofar
as benefits are calculated by reference to estimates of consumers'
surplus, no allowance need be made for additional risk of loss of life.
For the sum each person is willing to pay for the services provided by
the project is net of all the risks associated with them." (1971, p. 698)
The quotation from Mishan raises yet another critical and related issue for the
fundamental adequacy of the SAMMEC/Sullivan study -- the fact that no benefits are assumed
to flow to the individual or societ,y from smoking.5 While we assess the SAMMEC study on
its own grounds (no benefits), it is worthwhile considering the conceptual inadequacy of such
a project. With respect to (perceived) "social costs" only, SAMMEC inventors admit that "the
net economic effect of cigarette smoking in future scenarios is speculative" (SNR, p. 8) but,
simultaneously, they refuse to consider any possible benefits from smoking. From an economic
perspective, there are, of course, enormous benefits from tobacco production and sale. All
manner of production and marketing inputs are employed as billions of dollars in income, jobs,
and taxes are generated. But benefits from tobacco (excluding taxes) even considering~its,
association with certain health conditions flow to individuals. Again, more careful attention to
Mishan (1971), who is completely misinterpreted by SAMMEC developers, would have given
some scientific validity to the software. Mishan, in a provocative discussion, emphasizes a net
benefit to individuals from smoking. Within a framework of Pareto estimation in the presence
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of any claimed risk, Mishan emphasizes that only involuntarv risks need be counted and he uses
tobacco as an example: "If [hypothetically] smoking tobacco causes 20,000 deaths a year, no
subtracting from the benefits, on account of this risk, need be entered in a cost-benefit analysis
of the tobacco industry inasmuch as smokers are already aware that the tobacco habit is
[assertedly] unhealthy. And if, notwithstanding their awareness, they continue to smoke, the
economist has no choice but to assume that they consider themselves better off despite the risks"
(p. 996). Mishan goes on to say that the benefits to smokers, net of any risk are reflected in
the demand schedule for tobacco. He notes that once the area under the demand curve has been
estimated and used as an approximation of the benefit smokers derive from the use of tobacco,
any further subtraction for such claimed risks would entail "double counting" (p. 996).
There are, in short, two good reasons why one might consider the SAMMEC software
to be of questionable scientific value and unreliable at the outset:
(1)
SAMMEC makes no distinction between private and "social" costs
and, if it did, none of the costs supposedly it attributes to smoking
could be found to be "social" in nature; and
(2) Any social and individual benefits from smoking and tobacco
production and sale are assumed to be non-existent. This omission
means that no cost/benefit study of the commonly-accepted type --
where benefits to individuals and society are included as in product
or project evaluations -- is being conducted.
These considerations raise an important question: if, logically and in generally accepted
practice and analysis, there are no "social costs" due to smoking, should SAMMEC methods and
software be analyzed for the conceptual errors it contains, based upon SAMMEC II's
assumptions that "social costs" exist? We believe that the answer is yes. Even if policymakers
at state and other levels believe that smoking creates "social costs," they and the community at
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large should be aware that SAMMEC-based computations are unreliable. Such an exposure
shows just how far organizations will go in order to further policy conclusions.
Further, it is noteworthy that SAMMEC developers openly invite policymakers or state
or not-for-profit ("goodwill") organizations to employ the software results "packaged in
understandable and concise terms" to influence politics in a community or state. As noted
above, SAMMEC II users are exhorted to explicitly eschew any possible benefits from smoking
or from tobacco production and sale. Specifically, SAMMEC II states that "the
smoking-attributable economic cost data produced by SAMMEC II should not be used in
cost-benefit analysis of the value of tobacco versus illness in society." Presumably, this is
because the health community (federal or state agencies and goodwill, not-for-profit entities)
might lose some support, financial and otherwise, if benefits and actual costs were fairly
considered. Scientific objectivity appears to be a secondary concern to SAMMEC developers.
As they readily admit, "disease impact estimates are a form of argument and have a political as
well as a scientific reality." The technology implied by SAMMEC II software "enhances the
credibility and perceived authority of disease impact estimates" (SNR, p. 9). Incredibly, on the
same page (SNR, p. 9), the authors admit that ". .. the issue of whether smokers cost
nonsmokers money, or vice versa, is unresolved." It is our purpose, in what follows, to
investigate the basis for SAMMEC II's estimate of "scientific reality."
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III. THE METHODOLOGY OF
SAMMEC II
In attempting to quantify the "costs" of smoking, SAMMEC II (Smoking-Attributable
Mortality, Morbidity, and Economic Costs) identifies three categories of costs: (1) indirect
mortality costs, (2) direct morbidity costs, and (3) indirect morbidity costs.
In the view of SAMMEC II, the indirect mortality costs of smoking are the lost earnings
which result from "premature" death which SAMMEC II attributes to smoking. The second
category of costs, direct morbidity costs, are the costs of prevention, detection, treatment, and
rehabilitation of diseases claimed to be linked to smoking. Finally, the indirect morbidity costs
are the productivity losses due to illness and disability which they attribute to smoking.
SAMMEC II treats the sum of these three components as the economic "costs" of smoking.
To generate estimates of these estimates, SAMMEC II identifies certain illnesses which
are claimed to be smoking-related. This list is summarized in Table 1 (SNR Table 6A, p. 24)
and is compiled from illnesses identified by the American Cancer Society plus certain perinatal
conditions identified by McIntosh (McIntosh, 1984, pp. 141-148). Users of SAMMEC II can
base their cost estimates on this list of illnesses, or they can add additional illnesses at their
discretion.
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Table 1
Diagnosis Set
SANIlVIEC II Software
ICD-9-CM Code
I. Adults: Male and Female; Ages 35-85 + (5-year age groups)
Infectious Diseases
010-012
Neo lasms
--~ - -
140-149
150
157
161
162
180
188
189
Cardiovascular diseases
410-414
380-398, 401-404, 415-417, 420-429
430-438
440-448
Respiratory Diseases
490-492,496
Respiratory tuberculosis
Diagnoses
Lip, oral cavity, pharynx
Esophagus
Pancreas
Larynx
Trachea. lung, bronchus
Cervix uteri
Urinary bladder
Kidney, other urinary
Coronary heart disease
Other heart disease
Cerebrovascular disease
Other arterial disease
Chronic obstructive pulmonary disease
Other respiratory disease
890-899 Burn deaths
11. Children: Male and Female; Age: < 1
Perinatal Conditions
765 Short estation-low birth wei ht
769 Respiratory distress syndrome
770 Res iratorv conditions of the newborn
Si ns and Svm toms
798.0 Sudden Infant Death Syndrome
11
480-487, 493
Injuries
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SAMMEC II is designed to facilitate attempts to quantify the costs of smoking for a
particular city, county or state. Therefore, it enables users to supply data which are particular
to the area under study. In particular, the user must supply: (1) mortality statistics -- deaths
from the purportedly smoking-related illnesses identified in Table 1 by gender and five-year age
category for ages 35-85+, (2) smoking prevalence rates -- the percentage of the population who
are current and former smokers for ages 35-64 and 65+, (3) population data -- the number of
persons in the group under study by gender and five-year category for ages 35-85+, (4) health
care costs -- total personal health care expenditures for hospitalization, physician fees,
medications, nursing home costs, and other professional services, and (5) earnings data.
In addition, the user has the option of providing several other types of data relating to
relative risks, life expectancy, earnings, and labor force participation. In cases where this
optional data are not provided by the user, SAMMEC II provides the relevant data on a national
and state-by-state basis and allows the user to select the data set on which cost estimates are to
be based.
Indirect Mortalitv Costs
In the view of SAMMEC II, the indirect mortality cost of smoking consists of the lost
income due to "premature" death. In order to generate such estimates, SAMMEC II first
attempts to determine the number of deaths assertedly due to smoking. The critical element,
upon which SAMMEC II's estimates rest, is the so-called smoking-attributable fraction (SAF).
The SAF is defined as the "maximal proportion" of deaths (or disease cases) that purportedly
SAMMEC II regards as linked to cigarette smoking. SAF is defined as:
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SAF =(Po + Pi(RRi) + Pz(RR2) - 1)/(Po + Pt(RRt) + pARR,))
where:
Po = percent of never smokers in the group under study
p, = percent of current smokers in the group under study
P2
RRl
percent of former smokers in the group under study
relative risk of death for current smokers compared
with never smokers
RR2 = relative risk of death for former smokers compared
with never smokers
The relative risks (RR, and RR,) are defined as follows:
RRt = mortality rate in current smokers/mortality rate in never smokers
RR2 = mortality rate in former smokers/mortality rate in never smokers
The relative risk estimates which are used by SAMMEC II are reported in Table 2 (SNR Table 2
is also Table 7A, p. 26). They are obtained from the 1989 Surgeon General's Report.
SAMMEC II also provides smoking prevalence rates which are reported in Table 3
(SNR, Table 7B, p. 27). As an alternative, the user can supply smoking prevalence rates which
are specific to the group under study. SAF is therefore to be interpreted as the proportion of
all deaths (or illnesses) that SAMMEC II attribute to smoking. It is fairly obvious that the SAF
is a positive function of both relative risks and of smoking prevalence rates. Therefore, for
males under 65, the SAMMEC II estimate of the SAF for neoplasms of the trachea, lung and
bronchus is .91, while the corresponding SAF for respiratory tuberculosis is .35. According to
SAMMEC II, 91 percent of all deaths due to cancer of the lung, trachea, or bronchus may be
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Table 2
Relative Risk Estimates
SAMMEC II Software
ICD-9-CM
NEOPLASMS
Diagnoses
Current
Males
Former
Females
Current
Former
140-149 Lip, Oral Cavity, Pharvnx 27.48 8.80 5.59 2.88
150 Esophagus 7.60 5.83 10.25 3.16
157 Pancreas 2.14 1.12 2.33 1.78
161 Larynx 10.48 5.24 17.78 11.88
162 Trachea. Lung, Bronchus 22.36 9.36 11.94 4.69
180 Cervix Uteri NA NA 2.14 1.94
188 Urinarv Bladder 2.86 1.90 2.58 1.85
139 Kidnev, Other Urinarv 2.95 1.95 1.41 1.16
CARDIOVASCULAR DISEASES
390-398 Rheumatic Heart Disease 1.85 1.32 1.69 1.16
401-404 Hypertension 1.85 1.32 1.69 1.16
410-414 [schemic Heart Disease
Ages 35-64 2.81 1.75 3.00 1.43
Ages 65+ 1.62 1.29 1.60 1.29
415-417 Pulmonary Heart Disease 1.85 1.32 1.69 1.16
420-429 Cardiac Arrest/Other Heart 1.85 1.32 1.69 1.16
430-438 Cerebrovascular Disease
Aees 35-64 3.97 1.38 4.80 1.41 I
Ages_65 + 1.94 1.27 1.47 1.01
440 Atherosclerosis 4.06 2.33 3.00 1.34
441 Aortic Aneurvsm 4.06 2.33 3.00 1.34
442-448 Other Arterial Disease 4.06 2.33 3.00 1.34
RESPIRATORY DISEASES
010-012 Respiratory Tuberculosis 1.99 1.56 2.18 1.38
480-487 Pneumonia. Influenza 1.99 1.56 2.18 1.38
490-492 Bronchitis. Emphysema 9.65 8.75 10.47 7.04
493 Asthma 1.99 1.56 2.18 1.38
496 Chronic Airwavs Obstruction 9.65 8.75 10.47 7.04
PERINATAL CONDITIONS'
765 Short Gestation/Low Birth Weight 1.76 1.76
769 R irato Distress Syndrome 1.76 1.76
770 Re iracorv Conditions-Newborn 1.76 1.76
798.0 Sudden Infant Death S ndrome 1.50 1.50
OTHER CONDIT IONS
890-899 Burn Deaths
* Perinatal conditions: deaths among infants < 1 year.
** Burn deaths determined from injury surveillance studies.
14

Table 3
Smoking Prevalence Rates
United States, All Races, 1987
Males Females
Age Group Current Former Current Former
35-64 34.8 34.9 29.0 20.2
65 and over 17.2 53.4 13.7 19.8
Source:
1987 National Health Interview Survey (OSH. unpublished data).
attributable to smoking, while 35 percent of tuberculosis deaths may be linked to smoking. This
difference is due to the much smaller relative risks that are assigned to tuberculosis.
Correspondingly, the SAMMEC II SAF for females under 65 for hypertension (0.17) is
lower than the corresponding male SAF (0.29) primarily due to the lower smoking prevalence
rates for females. (For this illness, the estimated relative risks provided by SAMMEC II are
nearly equal.) The SAF's then become an important ingredient in calculating the number of
deaths that SAMMEC II attributes to smoking. For each such illness (say, hypertension), deaths
(by gender) occurring within a five-year category are multiplied by the SAF for that diagnosis,
age category, and gender:
SMOKING-ATTRIBUTABLE MORTALITY = DEATHS x SAF.
For example, if the population in question experiences 1,000 male deaths in a year due
to hypertension, 290 of them (1,000 x 0.29) would be attributed to smoking by SAMMEC II.
If 100 deaths occurred in males age 45-49, then 29 of such deaths would be attributed to
smoking.
15
TIMN 445051

SAMMEC II also purports to calculate the number of years of potential life assertedly
due to smoking. For each five-year age category, SAMMEC provides the number of years to
age 65, age 75, or to full life expectancy. The separate tables of life expectancy used for males
and females are reported in Table 4 (SNR Table 9B) and Table 5(SNR Table 9C).
SAMMEC II also translates the death statistics into claimed future earnings losses. For
each person whose "premature" death SAMMEC II attributes to smoking, a future stream of
earnings is calculated assuming a one percent annual increase in productivity and an average
annual inflation rate. The present value of future earnings (PVFE) is calculated the same way,
but with future earnings discounted to present value. SAMMEC II allows the user to select
discount rates of 4 percent, 6 percent, or 10 percent. Therefore,
SMOKING-ATTRIBUTABLE INDIRECT MORTALITY COSTS =
DEATHS X SAF X PVFE.
Tables 6, 7, and 8 report present values of future incomes for workers in different age groups
for each of the three discount rates respectively.
Direct Morbiditv Costs
In the SAMMEC II methodology, the direct morbidity costs assigned to smoking consist
of the expenditures for the prevention, diagnosis, and treatment of smoking-related diseases
and medical conditions claimed to be associated with smoking. To calculate these supposed
costs, SAMMEC II attempts to determine the portion of those costs which it attributes to
smoking. To do so, it assigns all such costs to one of five distinct cost centers.
Specifically, all the costs are classified as: (1) hospitalization and outpatient clinical care
16
TIMN 445052

Table 4
Years of Potential Life Remaining
Relative to Life Expectancy: Males
United States, 1985
Age of Death
All Races
Whites Total
Non-white
Blacks
0-4 70.1 70.7 60.5 64.7
5-9 65.3 65.3 61.7 59.9
10-14 60.3 60.9 56.8 55.8
15-19 55.5 56.1 51.9 50.2
20-24 50.9 51.4 47.3 45.6
25-29 46.3 46.3 42.8 41.2
30-34 41.7 47.2 38.4 36.3
35-39 37.1 37.5 34.1 32.6
40-44 32.5 32.9 30.0 28.6
45-49 28.1 28.4 26.0 24.7
50-54 23.9 24.2 22.2 21.1
55-59 20.1 20.2 18.8 17.8
60-64 16.5 16.6 15.7 14.9
65-69 13.3 13.3 13.0 12.3
70-74 10.5 10.5 10.5 9.9
75-79 8.1 8.0 8.3 7.9
80-84 6.1 6.0 6.5 6.2
85 + 5.1 5.1 5.9 5.7
Source: National Center for Health Sciences, 1988.
17
TIMN 445053

Table 5
Years of Potential Life Remaining
Relative to Life Expectancy: Females
United States, 1985
Age of Death
All Races
Whites Total
Non-White
Blacks
0-4 77.0 77.4 74.1 72.3
5-9 72.1 72.5 69.3 68.0
10-14 67.2 67.6 64.4 63.1
15-19 62.3 62.7 59.5 58.2
20-24 57.4 57.8 54.6 53.4
25-29 52.6 53.0 49.8 48.6
30-34 47.7 48.1 45.1 43.9
35-39 42.9 43.4 40.4 39.3
40-44 38.2 38.5 35.9 34.8
45-49 33.6 33.9 31.5 30.4
50-54 29.1 29.4 27.3 26.3
55-59 24.9 25.0 23.3 22.5
60-64 20.8 21.0 19.7 19.0
65-69 17.1 17.2 16.3 15.7
70-74 13.6 13.6 13.2 12.7
75-79 10.5 10.5 10.4 10.8
80-84 7.7 7.7 8.0 7.8
85 + 6.4 6.4 7.0 6.9
Source:
National Center for Health Sciences, 1988.
18
TIMN 445054

Table 6
Present Value of Future Earnings
(1985 -- Discount Rate: 4%)
Age Males Females
< 1 $421,225 $341,574
1-4 454,561 368,388
5-9 519,459 420,790
10-14 602,092 487,557
15-19 689,576 552,141
20-24 745,680 578,481
25-29 749,695 558,019
30-34 717,630 513,796
35-39 653,498 454,897
40-44 561,016 388,555
45-49 450,452 319,279
50-54 331,478 249,422
55-59 223,719 181,151
60-64 108,880 117,333
65-69 42,879 67,346
70-74 19,176 36,593
75-79 9,383 18,847
80-84 4,698 9,164
85+ 1,442 2,311
Source: R...., K..... and D....., 1988.
19
TIMN 445055

Table 7
Present Value of Future Earnings
(1985 -- Discount Rate: 6%)
Age Males Females
< 1 $208,631 $173,738
1-4 236,117 196,515
5-9 293,977 244,559
10-14 374,790 311,678
15-19 468,782 384,026
20-24 541,021 425,804
25-29 568,546 424,982
30-34 565,043 402,176
35-39 532,289 364,873
40-44 471,190 319,090
45-49 389,462 268,529
50-54 294,646 214,826
55-59 194,878 159,614
60-64 101,085 105,272
65-69 39,713 61,103
70-74 17,802 33,574
75-79 8,789 17,531
80-84 4,457 8,655
85 + 1,406 2,257
Source:
R... , K... and D..... 1988.
20
TIMN 445056

Table 8
Present Value of Future Earnings
(1985 -- Discount Rate: 10%)
Age Males Females
< 1 $ 60,306 $ 53,331
1-4 75,494 66,797
5-9 111,042 98,205
10-14 170,371 150,622
15-19 251,439 217,161
20-24 324,215 264,945
25-29 363,750 277,578
30-34 381,607 272,561
35-39 377,822 255,422
40-44 350,066 230,617
45-49 302,591 200,822
50-54 239,410 166,546
55-59 165,416 128,340
60-64 38,714 87,226
65-69 34,679 51,510
70-74 15,581 28,792
75-79 7,802 15,372
80-84 4,837 7,773
85 + 1,344 2,155
Source: R..., K... and D..., 1988.
21
,rIMN 445057

costs, (2) nursing home care and home health care costs, (3) the costs of the services of
primary physicians and specialists, (4) the costs of services of non-physician health
practitioners, and (5) medication costs. However, there are no direci data on the relative
rates of utilization for each of these categories of costs by smokers and former smokers
compared to those who have never smoked.
To solve this problem, SAMMEC II uses survey data from the National Health
Interview Survey. Only persons 35 years of age and older who had conditions which are
considered by SAMMEC II to be smoking-related were included. From this sample, the
relative rates of utilization for smokers and for former smokers relative to nonsmokers were
computed. These calculations were made both for usage of hospitalization and for usage of
physician services. The relative usage rates are reported in Table 9 (SNR, Table 11A, p.
41). Since no reliable data on relative usage rates for nursing home services are presented
-- for care by non-physician health professionals, or for medication -- the assumption was
made by SAMMEC II authors that the relative rates of usage that pertain to physician
services hold as well for medication. Similarly, the usage rates of nursing home care and
of care by non-physician professionals is assumed to be identical to that for hospitalization.
From these relative rates of utilization, the program again calculates
smoking-attributable fractions (SAF's) which are similar to those discussed above. Namely:
SAF =(Po + Pi(RRi) + Pz(RRa) - 1)/(Po + Pi(RRt) + P2(RRz))
where po, pt, and P2 are defined as before but where RR, and RR2 differ slightly. Here, RR,
is the relative rate of utilization of health care for current smokers compared with never
smokers, and RR, is similarly defined for former smokers. The SAF's used to estimate the
22
TIMN 445058

Table 9
Relative Rates for Hospital Days Per 100 Persons and
Physician Visits Per 100 Persons
By Smoking Status
Males Females Both Sexes
35-64 65- 35-64 T 65- 35-64 65-
Hospital Days Per 100 Persons
Never Smokers 42.6 155.9 64.1 125.0 56.5 133.5
Former Smokers 82.0 191.5 73.6 168.3 78.8 186.6
Current Smokers 84.3 183.9 69.7 76.2 77.3 127.7
RR (current) 1.98 1.18 1.09 0.61 1.37 0.96
RR (former) 1.93 1.23 1.15 1.35 1.37 1.40
Physician Visits Per 100 Persons
Never Smokers 323.7 454.2 421.2 583.4 386.8 547.8
Former Smokers 370.5 501.4 529.3 671.1 432.0 559.1
Current 377.2 456.0 463.8 428.0 418.4 441.4
RR (current) 1.17 1.00 1.10 0.74 1.08 0.81
RR (former) 1.14 1.10 1.26 1.15 1.12 1.02
direct morbidity costs which SAMMEC II attributes to smoking differ across cost centers,
age groups, and sexes.
As is evident in Table 9, SAMMEC II reports that certain groups of smokers use less
hospitalization and physician care than do corresponding groups of nonsmokers. However,
in calculating the SAFs, SAMMEC II assigns a relative risk of 1.0 to these cases on the
23
TIMN 445059

grounds that ". . . cigarette smoking would never be protective for health care utilization."
(SNR, SAMMEC II, Module 2, p. 40.)
Indirect Morbidity Costs
The final step in the calculation is to determine the costs of treating the population
in question for illnesses which are claimed to be associated with smoking and then multiply
by the appropriate SAF.
The final category of costs which SAMMEC II estimates is the productivity loss due
to disability and illness assertedly caused by smoking-related diseases. The methodology
used is essentially the same as that used to compute indirect morbidity costs and direct
mortality costs.
Specifically,
SMOKING-ATTRIBUTABLE INDIRECT MORBIDITY COSTS =
DISABILITY DAYS x SAF x MEAN PER CAPITA INCOME
This calculation is gender-specific. The number of disability days is the total work-loss days
for employed persons and bed-disability days for non-employed homeworkers which
SAMMEC II attributes to smoking.
The SAFs for work-loss days were calculated by:
(1)
The work-loss days per 100 currently employed persons and
bed-disability days per 100 females keeping house (combined)
were calculated for current smokers, former smokers, and never
smokers who responded to the 1987 NHIS. Only persons 35 and
older, who reported illness due to the diseases SAMMEC II treats
as smoking-related, were included in the calculation.
24
TIMN 445060

(2) The number of persons unable to work or keep house per 1,000
persons were calculated for current smokers, former smokers,
and never smokers who were respondents to the 1987 NHIS.
(3) Relative rates of disability for current smokers and former
smokers compared with never smokers were calculated. The
calculations are reported in Table 10 (SNR, Table 12A, p. 45).
Table 10
Relative Rates for Work-Loss Days Per 100 Employed Persons Per
Bed-Disability Days Per 100 Females Keeping House
By Smoking Status
Males Females Both Sexes
35-64 65- 35-64 65- 35-64 65-
Never Smokers 237.8 239.9 495.9 573.1 407.1 632.4
Former Smokers 287.1 517.5 542.2 785.5 392.2 691.0
Current Smokers 346.7 749.0 631.0 730.0 489.0 734.0
RR (current) 1.46 3.12 1.27 1.08 1.20 1.16
RR (former) 1.21 2.16 1.09 1.17 0.96 1.09
(4) The relative rates of disability are used with smoking prevalence
rates to calculate the SAF of total disability days reported by
persons with diseases SAMMEC II attributes to smoking. SAF
was calculated by the following formula:
P2
SAF =(Po + Pi(RRI) + Pa(RR,) - 1)/(Po + Pt(RRi) + Pa(RRz))
= percent of never smokers in the group under study
= percent of current smokers in the group under study
= percent of former smokers in the group under study
25
TIMN 445061

RR, = relative risk of disability for current smokers compared with never
smokers
RR, = relative risk of disability for former smokers compared with never
smokers
SAMMEC II computes per capita income by the following formula:
Mean per capita income = (((wages + supplements) x
(full-time employed persons)) + (.5 x (wages + supplements) x
(part-time persons)))/(number of persons in the population)
This approach treats each work-loss (or bed-disability) day as if it impacted a person
with average income.
SAMMEC II identifies three specific categories of costs which it attributes to
smoking -- lost income due to "premature" death assertedly caused by smoking, lost income
due to illness or disability, assertedly due to smoking, and the health care costs of disease
and illness assertedly attributable to smoking. For each of these three categories of costs,
SAMMEC II estimates a smoking attributable fraction (SAF) to measure the proportion of
the costs which it attributes to smoking. By multiplying the SAFs by the total costs of
illnesses which SAMMEC II treats as smoking-related, the program then computes the total
so-called "costs" of smoking.
26
TIMN 445062

IV. TECHNICAL FLAWS IN SAMMEC II
METHODOLOGY
In Section II we examined many of the conceptual difficulties inherent in the
traditional attempts to estimate the so-called costs of smoking. However, in addition to
conceptual problems, SAMMEC II is seriously flawed by several important technical errors.
As a consequence, even if one ignores the conceptual problems involved in SAMMEC II cost
estimates, there are other good reasons.to challenge the conclusions of SAMMEC II. In the
following three sections we will describe several of those flaws as they relate to each of the
three main categories of costs considered in SAMMEC II.
A major ingredient used in SAMMEC II to calculate the "costs" of smoking is the
smoking attributable fraction which is a function of smoking prevalence and the risk ratio.
In estimating the risk ratios, SAMMEC II simply computes the ratio of the incidence of
"premature" death, disability, or illness for smokers and former smokers, comparing it to
those who have never smoked. Separate relative risks are used for men and for women and
for those over and under 65. However, what this means is that the confounding effects of
some important factors other than sex, age, and smoking history on deaths and illnesses due
to certain illnesses are totally ignored.
For this methodology to be correct, one of two things must be true. Either it must
be the case that these other factors (diet, exercise, heredity, environment, occupation, level
27
TIMN 445063

of health care) have no effect on the incidence of these diseases or that there are no
systematic differences between smokers and former smokers compared to those who have
never smoked with regard to important health factors.
Obviously, neither of the two cases is credible. There appears to be overwhelming
evidence that diet, exercise, and other factors are significantly related to certain of the
diseases which SAMMEC II treats as smoking related (see Attachment A, Section 1). In
addition, since smokers and nonsmokers differ markedly with regard to occupation, race,
income, education level and so on, it is almost certain to be the case that they differ
markedly with regard to many important health-related factors.
Had these other factors been taken into account, it is quite likely different relative
risks estimates would have emerged. It is quite possible, for example, that inclusion of these
factors would have produced no significant differences between smokers, former smokers,
and nonsmokers. Undoubtedly, the decision to ignore the effects of these important factors
made it easier to produce estimates of the "costs" of smoking; this may, in fact, explain this
omission. However, it is clear that this omission led to the capacity to make biased
calculations.
There is at least one additional reason that the relative risks reported in Table 3 lack
credibility. Records pertaining to the cause of death are based on death certificates, where
the cause of death is determined by a physician. However, when an autopsy is ordered,
there reportedly are numerous discrepancies between the cause of death initially indicated
and the actual cause determined by the autopsy.b C. Yoe has lots of support for the
proposition that death certificates are quite unreliable, including smoking-specific entries.
28
TIMN 445064

Further, the discrepancies appear to be highly correlated with the patient's smoking history.
Eysenck (1986) reports data which indicates that physicians systematically err by determining
that a " smoking -related disease" is the cause of death in an excessive number of cases
involving smokers. For nonsmokers, physicians are inclined to ignore diseases which they
perceive as being "smoking-related" which leads them to under-assign such diseases as the
cause of death in the case of nonsmokers. This bias could result in relative risk estimates
in excess of 1.0 even if the true incidence of "smoking-related disease" is identical for
smokers and nonsmokers (see Attachment A, Sections III and IV).
In addition to the biases in estimating relative risks, SAMMEC II errs in its method
of placing a dollar value on the "premature" deaths which it attributes to smoking. In
calculating the present value of future earnings which are lost due to "premature" death,
SAMMEC II assigns a mean future income to each person who dies "prematurely". The
authors of SAMMEC II argue that: "The indirect costs for diseases that affect a population
with above average productivity will be underestimated if mean earnings are used to measure
foregone output" (SNR, 1990, p. 12). However, this also implies that the methodology will
overestimate the costs of diseases which affect populations with below average incomes, --
smokers reportedly being one such group (see Attachment A, Section II).
Since smoking-attributable fractions are an important element in SAMMEC II's
method of estimating the excess health care costs which it attributes to smoking, the criticism
described above pertains as well here. In computing relative rates of usage of hospital rooms
and physician services, factors other than age, sex, and smoking history are ignored.
Therefore, the relative risks (and therefore the smoking-attributable fraction) estimated here
29
TIMN 445065

are almost certain to be biased upward. In addition, there are two other serious problems
with the relative risk estimates used to calculate the supposed "costs" of smoking.
First, to calculate smoking attributable fractions to apply to each of the five categories
of medical costs (hospitalization, nursing homes, physicians, non-physician health
professionals, and medication), SAMMEC II requires estimates of the relative rates of usage
(between smokers and nonsmokers) for each category of costs. However, no usage-specific
data are presented to enable relative usage rates to be calculated for three of the five
categories -- nursing home care, care by non-physician health professionals, and the costs
of medication. SAMMEC II solves this problem by using estimates of the relative rates of
usage for the other two cost categories and applying those relative rates to the three
categories in question. Specifically, medication is assumed to be used at the same relative
rates by smokers and nonsmokers as are the services of physicians; nursing home care and
care by non-physician professionals are assumed to be used at the same relative rates as the
costs of hospitalization.
This methodology treats various types of health care as perfect complements.
Specifically, since no specific nonduplicative data sets are available on nursing home vs.
hospital care, nursing home care is treated as a perfect complement to hospitalization;
treatment by non-physicians is treated as a perfect complement to treatment by physicians.
However, it would seem that for many users the two types of care are substitutes -- not
complements. What this implies is that in groups for whom use of hospitals is relatively
high, the use of nursing homes would be relatively low. However, SAMMEC II
methodology arbitrarily assigns the same relative rate to both nursing care use and hospital
30
,rIMN 445066

use. For this reason, the direct morbidity costs estimated by SAMMEC II methodology are
not credible.
The relative risks used by SAMMEC II are flawed in a second serious way. As
Table 9 shows, SAMMEC II reports that certain groups of smokers use hospitalization and
physician services at a lower rate than corresponding groups of nonsmokers. For example,
according to SAMMEC II for women over 65 who currently smoke, the rate of hospital use
is only 61 percent as high as the rate of use by women over 65 who have never smoked.
However, SAMMEC II arbitrarily assigns a relative rate of 1.0 to these cases. In other
words, when the data show what the SAMMEC II authors expect, they accept it; when it
doesn't, they reject the data out of hand. This procedure is clearly not a part of an objective
scientific inquiry. Any unbiased estimating procedure will underestimate in some cases and
overestimate in other cases. However, when attempts are made to adjust some estimates
upward (on the grounds that SAMMEC II authors perceive them to be too low) without
adjusting other estimates downward, a bias is introduced into the results. In this particular
case, let's suppose the following -- that smokers and nonsmokers use hospital care at exactly
the same rate. If this were the case, a large, random sample of smokers and nonsmokers
will produce an estimate of relative rates of usage which is very close to 1.0. However, if
the large sample is broken down into subcategories (men over 65, women over 65, etc.) the
estimates of the relative rates for some sub-groups will turn out greater than 1.0 and others
will be less than 1.0. The decision to adjust upward relative rates for sub-groups which are
less than 1.0 only introduces a bias into the results.
31
TIMN 445067

This decision reveals SAMMEC II methodology for what it is -- politics based on
questionable science. The authors apparently have decided what results they want, and they
are willing to adjust calculations to ensure that they find what they are looking for.
The most serious flaw in estimating indirect morbidity costs (lost income due to
illness and disability) again pertains to the use of biased relative rates. As Table 10 shows,
SAMMEC II uses relative rates which report about 30 percent more work-loss days for
smokers than for nonsmokers. These rates are developed from productivity loss estimates
by Rice et al. (1986), which were similar to those reported in Rice and Hodgson (1985).
The latter study claims that smoking causes smokers to experience 32 percent more work
loss than nonsmokers. SAMMEC II, in line with these studies and, indeed, employing their
results, attributes the entire difference in absenteeism rates between smokers and nonsmokers
to smoking. Research studies such as those by Leigh (1986) and Allen (1981a, 1981b),
which do consider the effect of significant factors, fail to account for potential
interdependencies between smoking characteristics and other behavior. Even the popular
press links smoking with other lifestyle choices such as drinking, breakfast consumption,
hours of sleep and exercise (see, for example, Otten 1988). (See also Attachment A,
Section I.)
The results obtained by SAMMEC II based on productivity studies of Rice et al., as
a recent study shows, may be inaccurate and unscientific. These work-loss studies employ
only a simple means difference test as a statistical basis for their deductions. Thus, they are
incapable of determining whether absence rates are influenced by smoking since they cannot
account for factors common to smokers as a group. However, a paper directly relevant to
32
TIMN 445068

V. SUMMARY AND CONCLUSIONS
SAMMEC II software and the logic underpinning it are not simply faulty. As noted
earlier in this paper, SAMMEC's political aims were to enlist government and "goodwill"
not-for-profit entities to develop exaggerated and unreliable estimates of the "social costs"
of smoking. SAMMEC II developers violated fundamental and long-recognized social and
economic principles of cost-benefit analysis by loosely interpreting costs and then by
complete elimination of benefits from the calculation.
First, it is highly questionable to argue that any "social costs" could apply to
smoking. If any such "costs" do exist, all consequences of individual behavior are p nvate
costs in any reasoned calculation of "costs." This means that if there are any lost earnings
due to illness or "premature" death plus all medical expenses, they would be borne by and
must be attributed to individuals. This principle has been given scientific status in all
competent studies of costs and benefits.
But even SAMMEC's authors readily admit that -- on SAMMEC's own grounds, i.e.,
on calculating costs as "social costs" -- any "social costs" of smoking may be non-existent
or negligible when all costs of the health care system are taken into account. As they argue,
the "net economic effect of cigarette smoking in future scenarios is speculative" and
"movement toward a nonsmoking society may be recessionarv in the long term" (SNR, p. 8,
[emphasis ours]).
34
TIMN 445069

In addition to the questionable attribution of costs, a second important flaw in the
SAMMEC II study is that no benefits from tobacco are calculated either for individuals or
in terms of the generation of economic growth. Since individuals exhibit a positive demand
for cigarettes despite the claimed risks, there obviously are perceived net benefits attached
to the purchase and use of cigarettes. In a broader context of costs and benefits, society
benefits from a tobacco industry through direct and indirect employment of labor and other
inputs and through the multiplier effects on income from tobacco production and sale. Any
individual and social benefits are entirely absent from the SAMMEC II study.
Beyond these serious conceptual problems and omissions, the quality and reliability
of the SAMMEC II study may be analyzed on its own technical merit. Here, we argue in
the present study, the problems inherent to the study should make any user or potential user
totally skeptical of its value. As we have shown in the analysis of the SAMMEC II
software, "seat-of-the-pants" result-driven estimates of risk -- the fundamental basis of all
SAMMEC II calculations -- riddle the entire study of indirect mortality, direct morbidity and
indirect morbidity "cost" estimates. We find that other problems are endemic to SAMMEC
II taken on its own grounds as well. Specifically, there are five major problems in the
SAMMEC II calculation:
(1) Systematic differences in disease incidence between current and former
smokers and nonsmokers cannot be reliably determined based upon the data
used in the study. Since no factors other than sex, age and smoking history
are used, the so-called disease differential provides insufficient and
incomplete information, let alone sound estimates of differential disease
incidence. Many factors (and most medical researchers would admit the
fact) such as prior health care, exercise, and diet have been reported to be
related to the incidence of disease (see Attachment A, Section I). It is
elementary that failure to account for these factors must at best provide
severely biased calculations of risk ratios in SAMMEC;
35
,rgMN 445070

(2) The risk ratio may also be biased due to the inaccuracies of death
certificates;
(3) Economic calculations of future income losses =- another basis for
estimating indirect mortality costs -- are biased on the upside, since a large
percentage of past and present smokers reportedly are in lower-income
groups (see Attachment A, Section II);
(4) SAMMEC II, in the calculation of direct morbidity costs, treats all forms
of health care as perfect complements. In fact, lack of data in this area
seemingly was not a hindrance to utilization of questionable 'statistics by
SAMMEC II inventors; and
(5)
Indirect morbidity costs also are calculated with clearly questionable
estimates of worker absenteeism. The best data in this area show that there
are no systemic differentials of worker "productivity" between smokers and
nonsmokers (see Attachment A, Section V).
A careful study of SAMMEC II produces only one conclusion: the study is so
fundamentally flawed as to be unreliable for assessing the alleged "social costs" of smoking.
36
TIMN 445071

FOOTNOTES
'The standard property rights view of the not-for-profit firm predicts inefficient activity
due to an inappropriate assignment of property rights (Alchian and Kessel, 1962). Examples of
this kind of firm are the administratively regulated utilities. One might expect the og_odwill
not-for-profit firm -- government supported or financed and/or supported by large numbers of
small donations -- to engage in an even more attenuated manner. That is, one would expect to
find: (a) unrestrained research director-managers to be distributing expenditures; (b) higher
labor/capital ratios and lower output in such firms; and (c) inefficient use of huge quantities of
largely donated resources.
ZSchultz is a member of the department of epidemiology and public health at the
University of Miami School of Medicine; Novotny, who holds an M.D., is employed in program
services activity for the Office on Smoking and Health in the Public Health Service of the U. S.
Department of Health and Human Services; Rice is with the School of Nursing at the University
of California, San Francisco. SAMMEC, as a microcomputer software, was developed for the
Minnesota Department of Health to calculate so-called smoking-attributable disease impacts for
"local" (i.e:, non-national) populations. The software, initially created by Shultz in 1985 and
1986 (see Shultz, 1985, 1986a), was applied by him to New York City, (1986b), formed the
37
TIMN 445072

basis of a doctoral dissertation (Shultz, 1988a), and was refined into SAMMEC II at the
Minnesota Department of Health in 1988 (Shultz, 1988b).
3The authors, perhaps in awareness of the political nature of the research presented in the
Sullivan Report, issue a disclaimer buried deeply in the text: "They (the data) do not describe
a net cost effect nor do they indicate the potential savings if tobacco use were eliminated in the
United States" (National Status Report, 1990, p. 40).
' SAMMEC II, it should be noted, provides citations to literature that reports lower
lifetime (aggregate) medical costs for smokers rather than nonsmokers, but subsequently ignores
this literature. See, in particular Leu and Schaub, (1983); Schelling, (1987); and
Warner (1987).
SMishan's actual objection to using a net cost method of calculating the reduced income
effects of loss of life is that a simple calculation of income minu consumption "has no regard
for the feelings of the potential decedents. It restricts itself to the interest only of the
surviving
members of society; it ignores society ex ante and concentrates wholly on society ex post"
(1971, p. 690).
6This is based on material from Eysenck, Hans J., "Smoking and Health," in Smokina
and Societv, Robert Tollison, ed., D. C. Heath, 1986.
38
,ygMN 445073

REFERENCES
Alchian, A. and R. Kessel, "Competition, Monopoly, and the Pursuit of Money," in Aspects
of Labor Economics, (Princeton: National Bureau of Economic Research, 1962).
Allen, S. G., "Compensation, Safety, and Absenteeism: Evidence from the Paper Industry,"
Industry and Labor Relations Review, Vol. 34 (1981a), pp. 207-218.
Allen, S. G., "An Empirical Model of Work Attendance," Review of Economics and
Statistics, Vol. 63 (1981b), pp. 77-78.
Ault, Richard W., and Ekelund, R. B., Jr., "A Preliminary Critique of the Sullivan Report,"
Manuscript, (1990).
Ault, Richard W., Ekelund, R. B., Jr., Jackson, J. D., Saba, Richard S., Saurman, David
S., "Smoking and Absenteeism," Applied Economics, Vol. 23 (April 1991), pp.
743-754.
Blinder, A. S., "Wage Discrimination: Reduced Form and Structural Estimates," Journa
of Human Resources, Vol. 11 (1973), pp. 9-22.
Eysench, Hans J., "Smoking and Health," in Robert Tollison (ed.) Smoking and Societv,
(Boston: D. C. Heath, 1986).
Leu, Robert B. and Schaub, Thomas, "Does Smoking Increase Medical Care Expenditure?"
Social Science and Medicine, Vol. 17 (1983), pp. 1907-1914.
McIntosh, I. D., "Smoking and Pregnancy: Attributable Risks and Public Health
Implications," Canadian Journal of Public Health, Vol. 75 (1984), pp. 141-148.
Mishan, E. J., "Evaluation of Life and Limb: A Theoretical Approach," Journal of Political
Economy, Vol. 79 (July/August 1971), pp. 687-705.
Otten, A. "Smoker's Problems go well Beyond Smoking," USA Today (August 23, 1988),
p. 29.
39
TIMN 445074

Rice, D. P., and Hodgson, T. A., "Economic Costs of Smoking: An Analysis of Data for
the United States," Unpublished Paper Presented at the Allied Social Science
Association Annual Meetings, San Francisco (December 1985).
Rice, D. P., Hodgson, T. A., Sinsheimer, P., Browner, W., Kopstein, A. N., "The
Economic Costs of the Health Effects of Smoking, 1984," Milbank Ouarterlx, Vol.
64 (1986), pp. 489-547.
Schelling, T. C., "Economics and Cigarettes," Preventive Medicine, Vol 15 (1987),
pp. 549-560.
Shultz, J. M., Moen, M. E., Pechacek, T. F., et. al., "The Minnesota Plan for Nonsmoking
and Health: The Legislative Experience," Journal of Public Health Policy 7 (1986a),
pp. 300-313.
Shultz, J. M., Smokina-Attributable Mortality. Morbidity. and Economic Costs - Comouter
Software and Documentation, Center for Nonsmoking and Health, Minnesota
Department of Health (Minneapolis, Minnesota, August, 1986b).
Shultz, J. M., "New York City: Smoking-Attributable Mortality, Morbidity, and Economic
Costs," Renort of the Mayor's Committee on Smoking and Health, Mayor's
Committee on Smoking and Health, City of New York, (July 1, 1986c).
Shultz, J. M., SAMMEC: Smoking-Attributable Mortality. Morbiditv. and Economic Costs
(Computer Software and Documentation) Minnesota Center for Nonsmoking and
Health, Minnesota Department of Health (Minneapolis, Minnesota, 1988).
Shultz, J. M., Quantifying the Disease Impact of Cigarette Smoking: The Development and
Application of Computer Software for Estimating the Health and Economic Costs of
Smoking (Doctoral dissertation, University of Minnesota, June, 1988).
Shultz, J. M., Novotny, Thomas E., and Rice, Dorothy P., SAMMEC II:
Smoking-Attributable Mortality Morbidity and Economic Costs (Computer Software
and Documentation), Office on Smoking and Health, U. S. Department of Health and
Human Services (April, 1990).
U. S. Department of Health and Human Services, Reducing the Health Consequences of
Smoking 25 Years of Progress A Report of the Surgeon General, U. S.
Department of Health and Human Services, Public Health Service, Centers for
Disease Control, Center for Chronic Disease Prevention and Health Promotion,
Office on Smoking and Health, DHHS Publication No. (CDC) 89-8411, (1989).
U. S. Department of Health and Human Services, Smoking and Health: A National Status
Report, 2nd edition (1990).
40
TIMN 445075

Warner, K. E., "Health and Economic Implications of a Tobacco-Free Society," Journal of
the American Medical Association, Vol. 258 (1987), pp. 2080-2086.
41
TIMN 445076

ATTACHMENT A
ADDITIONAL REFERENCE MATERIALS
Section I
There are several studies which suggest that there are other factors, in addition to
smoking, which have been statistically associated with, for example, lung cancer and heart
disease. Such factors include occupational and environmental exposures, lack of exercise,
diet, and/or genetics. For details on these studies,, please refer to the following articles.
Blot, William J. and Fraumeni, Joseph F. Jr., "Arsenical Air Pollution and
Lung Cancer," Epidemiology Branch, National Cancer Institute, Bethesda,
Maryland 20014, from The Lancet, pp. 142-144, July 26, 1975.
Blot, William J. and Fraumeni, Joseph F. Jr., "Geographic Patterns of Lung
Cancer: Industrial Correlations," (National Cancer Institute), NIH, A521
Landow Building, Bethesda, Maryland 20014, from American Journal of
Epidemiology, Vol. 103, No. 6, pp. 539-550, 1976.
Minowa, M., Shigematsu, I.; Nagai, M.; and Fukutomi, K.; "Geographical
Distribution of Lung Cancer Mortality and Environmental Factors in Japan,"
Department of Epidemiology and Department of Public Health Statistics,
Institute of Public Health, Tokyo, Japan, from Soc. Sci. Med., Vol. 15D, pp.
225-231, Pergamon Press Ltd., 1981, printed in Great Britain.
Fletcher, Gerald F. MD; Blair, Steven N. PED; Blumenthal James PhD;
Caspersen, Carl PhD; Chaitman, Bernard MD; Epstein, Stephen MD; Falls,
Harold PhD; Sivarajan Froelicher, Erika, S. PhD, MPH, RN; Froelicher,
Victor F. MD; and Pina, Ileana L. MD; "Statement on Exercise" Benefits and
Recommendations for Physical Activity Programs for All Americans; A
Statement for Health Professionals by the Committee on Exercise and Cardiac
Rehabilitation of the Council on Clinical Cardiology, American Heart
42
TIMN 445077

Association, AHA Medical/Scientific Statement, Position Statement, approved
by the American Heart Steering Committee on February 19, 1992. Requests
for reprints should be sent to the Office of Scientific Affairs, American Heart
Association, 7272 Greenville Avenue, Dallas, Texas 75231.
Dargie, Henry J. and Grant, S., "Exercise," Department of Physical Education
and Sports Science, Glasgow University, Glasgow, England, from British
Medical Journal, Vol. 303, pp. 910-912, October 12, 1991.
Van Saase, Jan L.C.M.; Noteboom, Willy M.P.; and Vandenbroucke, Jan P.;
"Longevity of men capable of prolonged vigorous physical exercise: a 32 year
follow up of 2259 participants in the Dutch eleven cities ice skating tour,"
Department of Clinical Epidemiology, Leiden University Hospital, P.O. Box
9600, 2300 RC Leiden, The Netherlands, from British Medical Journal,
Volume 301, pp. 1409-1411, December 22-29, 1990.
Koo, Linda C., "Dietary Habits and Lung Cancer Risk Among Chinese
Females in Hong Kong Who Never Smoked," Department of Community
Medicine, University of Hong Kong, Hong Kong, from Nutrition and Cancer,
pp. 155-172, 1988.
Renaud, S. and DeLorgeril, M., "Wine, alcohol, platelets, and the French
paradox for coronary heart disease," INSERM, Nutrition and Vascular
Physiopathology Research Unit (Unit 63), 22 avenue du Doyen Lepine, CP 18,
69675 Bron Cedex, France, from The Lancet, Vol. 339, pp. 1523-1526,
June 20, 1992.
Lynch, Henry T.; Fain, Pamela R; Albano, William A; Ruma, Thomas;
. Black, Lynn; Lynch, Jane; and Shonka, Michael; "Genetic/Epidemiological
Findings in a Study of Smoking-associated Tumors," Department of Preventive
Medicine and Health, Creighton University School of Medicine, 2500
California Street, Omaha, Nebraska 68178, pp. 163-169.
Section II
For further information regarding the idea that smokers are more likely to be in blue
collar occupations, one can review the articles listed here.
Sterling, T.D., Ph.D., and Weinkam, J.J., D.Sc., "Smoking Characteristics
by Type of Employment," Faculty of Interdisciplinary Studies, Simon Fraser
University, Burnaby, B.C., Canada, from Journal of Occupational Medicine,
Vol. 18, No. 11, pp. 743-754, November 1976.
43
TIMN 445078

Sterling, Theodor D., "Does Smoking Kill Workers or Working Kill Smokers?
OR The Mutual Relationship Between Smoking, Occupation, and Respiratory
Disease," prepared for the School of Workers, University of Wisconsin, short
course entitled "Institute for Expertise in Handling Occupational Disease
Claims," held from April 18-22, 1977, at Madison, Wisconsin, from
International Journal of Health Services, Vol. 8, No. 3, pp. 437-452, 1978.
Sterling, T.D., "The Mutual Relationship Between Smoking, Occupation and
Disease," Faculty of Interdisciplinary Studies and of Computing Science,
Simon Fraser University, Burnaby, B.C., Canada, from Arh. hig. rada
toksikol., Vol. 30, pp. 79-89, 1979.
Weinkam, James J, DSc, and Sterling, Theodor D., PhD, "Changes in
Smoking Characteristics by type of Employment From 1970 to 1979/80,"
School of Computing Science, Faculty of Applied Sciences, Simon Fraser
University, Burnaby, British Columbia, Canada V5A 1S6, from American
Journal of Industrial Medicine, Vol. 11, pp. 539-561, 1987.
Miller, William J. Jr., MPA, and Cooper, Richard, MD, "Rising Lung Cancer
Death Rates Among Black Men: The Importance of Occupation and Social
Class, " Department of Community Health and Preventive Medicine,
Northwestern University Medical School, 303 East Chicago Avenue, Chicago,
Illinois, 60611, from Journal of the National Medical Association, Vol. 74,
No. 3, pp. 253-258, 1982.
Section III
Differences in the reported disease patterns of smokers and nonsmokers may be biased
due to the fact that epidemiologic data are derived from death certificates; this phenomenon
is called "detection bias". Such bias occurs when a disease is diagnostically sought more
vigorously in individuals who are exposed to the suspected cause than in individuals without
such exposure. In other words, smokers are more likely to receive more screening and other
diagnostic procedures for lung cancer, and therefore, to be diagnosed with the disease than
nonsmokers. For further reading on detection bias, please refer to the articles below.
McFarlane, Michael, J., MD; Feinstein, Alvan R., MD; and Wells, Carolyn
K., MPH; "Necropsy Evidence of Detection Bias in the Diagnosis of Lung
44
'rIMN 445079

Cancer," Department of Medicine and Epidemiology and the Robert Wood
Johnson Clinical Scholars Program, Yale University School of Medicine, New
Haven, Connecticut; and the Cooperative Studies Program Coordinating
Center, Veterans Administration Medical Center, West Haven, Connecticut;
Dr. McFarlane is now with the University of Kansas Medical Center; reprint
requests to Department of Internal Medicine, University of Kansas Medical
Center, 39th and Rainbow Boulevard, Kansas City, Kansas 66103, from Arch
Intern Med, Vol. 146, pp. 1695-1698, September 1986.
Wells, Carolyn K. and Feinstein, Alvan R., "Detection Bias in the Diagnostic
Pursuit of Lung Cancer," Department of Internal Medicine and Epidemiology,
Yale University School of Medicine, 333 Cedar Street, 1-456 SHM, New
Haven, Connecticut 06510, from American Journal of Epidemiology, Vol.
128, No. 5, pp. 1016-1026, 1988.
Feinstein, Alvan R. and Wells, Carolyn K., "Cigarette Smoking and Lung
Cancer: The Problems of ' Detection Bias' in Epidemiologic Rates of Disease,"
from the Cooperative Studies Program Support Center and the Department of
Medicine of the West Haven Veterans Administration Hospital, and the
Departments of Medicine and Epidemiology of the Yale University School of
Medicine, from Transactions of the Association of American Ph siy cians, Vol.
87, pp. 180-185, 1974.
Section IV
Death certificates may not accurately reflect the actual cause of death. The following
articles report that scientists, who have examined autopsy populations and compared the
results of the autopsies with the causes of death placed on the death certificates, have found
serious error rates in death certificate information, especially for lung cancer.
Carter, John R., M.D., "The Problematic Death Certificate," University
Hospitals of Cleveland, Cleveland, Ohio 44106, editorial from The New
England Journal of Medicine, Vol. 313, No. 20, pp. 1285-1286, November
14, 1985.
Engel, Linda W.; Strauchen, James A.; Chiazze, Leonard Jr.; and Heid,
Marian; "Accuracy of Death Certification in an Autopsied Population with
Specific Attention to Malignant Neoplasms and Vascular Diseases,"
Laboratory of Pathology, Building 10, Room 1A30, National Cancer Institute,
45
TIMN 445080

NIH, Bethesda, Maryland, 20205, from American Journal of Epidemiology,
Vol. 111, No. 1, pp. 99-112, 1980.
Rosenblatt, Milton B, M.D.; Teng, Peter K., M.D.; and Kerpe, Stase, M.D.;
"Diagnostic Accuracy in Cancer as Determined by Post Mortem Examination,"
from Progress in Clinical Cancer, Vol. 5, pp. 71-80, 1973.
Rosenblatt, Milton B., M.D.; Teng, Peter K., M.D.; Kerpe, Stase, M.D.; and
Beck, Irene; "Causes of Death in 1,000 Consecutive Autopsies," Medical and
Pathology Departments, Doctors Hospital, New York, New York, from New
York State Journal of Medicine, pp. 2189-2193, September 15, 1971.
Schottenfeld, David, M.D.; Eaton, Muzza, Ph.D.; Sommers, Sheldon C.,
M.D.; Alsonso, Daniel R., M.D.; and Wilkinson, Carol, M.D.; "The Autopsy
as a Measure of Accuracy of the Death Certificate," Memorial Sloan-Kettering
Cancer Center, 411 East 69th Street, Room 320, New York, New York
10021, from Bull. N.Y. Acad. Med., Vol. 58, No. 9, pp. 778-794, December
1982.
Section V
For further reading on the subject that there are factors other than smoking which are
related to absenteeism, one can refer to these articles.
Ault, Richard W.; Ekelund, Robert B. Jr.; Jackson, John D.; Saba, Richard
S.; and Saurman, David S.; "Smoking and Absenteeism," Department of
Economics, Auburn University, Auburn, Alabama 36849 and Department of
Economics, San Jose State University, San Jose, California, from A lied
Economics, Vol. 23, pp. 743-754, 1991.
Bonilla, Carlos E., "Determinants of Employee Absenteeism," published by
the National Chamber Foundation, 1615 H Street, N.W., Washington,
D.C. 20062, 1989.
46
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