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Introduction
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Older adults are frequently counseled to lose weight,
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even though there is little evidence that overweight is
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associated with increased mortality in those over age 65.
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Six large controlled population-based studies of
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non-smoking older adults have investigated the association
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between body mass index (BMI) and mortality, controlling
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for relevant covariates [ 1 2 3 4 5 6 ] . All studies found
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excess risk for persons with very low BMI, but that persons
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with moderately high BMI had little or no extra risk except
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in certain small subsets. A review of 13 studies of older
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adults drew similar conclusions [ 7 ] .
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Many healthy older adults report gradual weight gain
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throughout adult life. It may be that a small amount of
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gradual weight gain is normative and associated with the
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most robust health as we age. It has been suggested that
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weight standards be adjusted upwards for age [ 8 ] . Such
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recommendations remain controversial, however, because the
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number of studies of older persons is fairly small, and
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because few studies have examined the relation of BMI to
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quality of life or years of healthy life (YHL) in the
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elderly [ 9 ] .
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In older adults, risk factors may have a greater effect
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on health than on mortality. If so, then behavior change
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trials of weight modification might be more successful if
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they were evaluated on improved health, rather than on
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decreased mortality. Clinical trials powered to detect
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differences in YHL would often require fewer subjects than
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trials to detect survival differences or cardiovascular
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events [ 10 ] . In this paper we study whether BMI at
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baseline is associated with living longer, and/or with more
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years of being healthy, in a cohort of older adults for
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whom risk factors, subclinical disease, and morbidity are
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well characterized. The goal is to determine whether
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analyses based on years of life (YOL) or on YHL would
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provide substantively different results, and which measure
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would yield more powerful evaluations of weight
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modification interventions in older adults.
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Materials and methods
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Study design: The Cardiovascular Health
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Study
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The Cardiovascular Health Study (CHS) is a
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population-based longitudinal study of 5,888 adults aged
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65 and older at baseline [ 11 ] . Subjects were recruited
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from a random sample of the Medicare eligibility lists in
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four US counties. Extensive baseline data were collected
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for all subjects using a baseline home interview, an
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annual mail questionnaire, and annual clinic
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examinations. Additional information was collected in a
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brief telephone interview 6 months after each scheduled
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visit. Two cohorts were followed, one with 7 years of
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follow-up (n = 5,201) and the second (all African
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American, n = 687) with 4 years of follow-up to date.
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Data collection began in 1989, and follow-up is virtually
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complete for all surviving subjects [ 12 ] .
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Body mass index
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BMI was calculated as measured weight in kilograms
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divided by the square of measured height in meters. A
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report from the National Heart Lung and Blood Institute
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classifies normal weight (without reference to age) as a
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BMI of 18.5 to 24.9; overweight as 25 to 29.9; and
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obesity as 30.0 and higher [ 13 ] . We consider
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separately the group with BMI between 18.5 and 20, which
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was associated with lower survival in studies cited
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above.
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Years of life and years of healthy life
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YOL is the number of years that a person lived in the
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7 years after baseline. YHL is the number of years in
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which the person was 'healthy', and is similar in concept
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to quality-adjusted life-years, healthy year equivalents,
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or active life expectancy [ 14 ] . We based YHL on
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self-rated health (is your health excellent, very good,
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good, fair, or poor?) (EVGFP) which was collected every 6
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months. EVGFP is a simple but well-known measure, which
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has been studied in detail [ 15 16 ] , and is predictive
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of health events in many studies [ 17 ] . Because we are
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examining health status over time, we added a sixth
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health state, dead. Data were available about 93% of the
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time. We used linear interpolation to estimate missing
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data when there were known values before and after the
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missing value, bringing the percent complete to 95% [ 18
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] .
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For this analysis we defined YHL as the number of
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years (of 7) in which a person reported excellent, very
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good, or good health (were 'healthy'). YHL ranges from 0
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(for persons who were never in excellent, very good, or
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good health) to 7 years (for persons who were healthy
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throughout). Since people reported their health every 6
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months, YHL has a reasonably continuous distribution. A
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drawback of this simple definition of 'healthy' is that
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it does not distinguish between fair or poor health and
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death, since all are considered 'not healthy'. We also
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used an alternative approach, which assigns a different
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value to each level of EVGFP [ 19 ] . Preliminary results
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were similar for the two approaches, however, and we
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report results using only the simpler definition.
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The calculations had to be modified to include the 438
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persons in the second African American cohort, who have
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been followed only 4 years to date. For those persons,
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and for 70 persons in the first cohort who did not have
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complete data, we estimated the last 4 years of YOL and
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YHL from their age, sex, and health at the end of 3
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years, using validated methods presented elsewhere [ 20 ]
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. That article showed that estimated 4-year YOL and YHL
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were unbiased for the African American cohort. In the
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primary analysis we used observed 7-year YOL and YHL when
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they were available, and observed 3-year YOL and YHL plus
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4-year estimated YOL and YHL when they were not (about
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10% of the sample). We performed all analyses with and
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without the persons who had partially estimated data, to
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ensure that the estimation had not distorted the
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findings.
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Covariates
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The goal is to examine the association of YOL and YHL
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with BMI. To adjust for possible confounding we chose
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baseline covariates that were prevalent in the elderly,
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related to mortality and morbidity in previous studies,
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and likely to be related to BMI. Self-reported covariates
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include age, gender, smoking (never or former), history
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of arthritis, cancer, diabetes, fair or poor self-rated
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health status, limitations in activities of daily living
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or in instrumental activities of daily living, and 10
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pounds or more unintended weight loss in the year before
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baseline. Clinical covariates include hypertension,
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cardiovascular disease (prevalent heart disease,
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peripheral vascular disease, or cerebrovascular disease),
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maximum thickness of the internal carotid artery,
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depression (CESD score), serum albumin, serum
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cholesterol, and serum creatinine. These measures are
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explained in more detail elsewhere [ 21 22 23 24 ] . We
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excluded 697 current smokers and 313 others with
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incomplete covariate data, leaving 4,878 persons on whom
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this analysis is based.
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Analysis
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All analyses were performed separately for men and
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women. We calculated two sets of adjusted values, as
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follows. We regressed YOL and YHL first on age, age
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squared, race, and smoking history (former or never), and
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second on all of the covariates listed above. We
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calculated adjusted YOL as a person's observed YOL minus
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predicted YOL (from the regression) plus the mean YOL
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(6.52 years for women or 6.06 for men). That is, a
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person's adjusted YOL is his residual from the regression
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plus the grand mean. The mean of this new variable, for a
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group of subjects, is the adjusted mean YOL for that
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group. Adjusted YHL was calculated in a similar manner.
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We calculated two sets of adjusted variables because of
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the possibility of 'over-adjustment', controlling
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inappropriately for factors (such as diabetes) which may
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have been causally affected by the person's weight. We
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plotted mean adjusted YOL and YHL against BMI, and tested
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for difference among BMI groups using confidence
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intervals or analysis of variance. Finally we calculated
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the effect size for each measure, comparing each BMI
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subgroup to the 'normal' group. The effect size is the
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difference in mean YOL (or YHL) in two groups divided by
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their common standard deviation. Since the sample size
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required to detect an effect of this magnitude is
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proportional to the inverse of the squared effect size,
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large effect sizes are desirable.
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Results
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Table 1shows the distribution of key variables by sex
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and race. Mean age at baseline was 73.1 and about two
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thirds of the men and a third of the women were former
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smokers. Black women had a higher mean BMI and higher
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percent obese (BMI ≥ 30) than the other three groups. Black
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men were most likely to have unintentionally lost more than
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10 pounds in the past year; white women were least
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likely.
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About 78% of the subjects were healthy at baseline,
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declining to 57% at the end of 7 years; 20% had died (data
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not shown). Of the 22% who were unhealthy (fair or poor) at
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baseline, about 24% were healthy 7 years later. There was
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thus substantial change in EVGFP over time, in both
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directions. Table 1shows the mean YOL and YHL (calculated
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from EVGFP) in the first seven years of the study, adjusted
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to age 73. For example, black women averaged 6.3 YOL, but
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only 4.2 YHL of a maximum possible 7. We calculated some
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additional descriptive statistics, shown in the final two
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lines: years of unhealthy life (YOL minus YHL) and years
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lost to death (7 minus YOL). White women had the most YHL
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and black men the fewest; black women had the most years of
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unhealthy life, and white men the fewest; black men lost
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the most years to death (1.3 out of 7) while white women
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lost only 0.4 years. For blacks, about 68% of their YOL
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were healthy (YHL/YOL, not shown); for whites, about 75%
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were healthy.
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Among whites, the gender differences in Table 1were
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statistically significant (p <.05) except for BMI and
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unintended weight loss. Among blacks, gender differences
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were significant except for 10 pounds unintended weight
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loss and weight loss since age 50. Among males, there were
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significant differences between black and white for BMI,
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unintended weight loss, YOL, YHL, years of unhealthy life,
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and years lost to death. Whites in the sample had higher
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income and education (data not shown). After adjusting for
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income and education, as well as age and former smoking,
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the difference in BMI was no longer statistically
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significant. Among females, blacks and whites differed
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significantly on BMI, BMI>30, weight loss since age 50,
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YOL, YHL, years of unhealthy life, and years lost to death.
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After adjustment for income and education, the difference
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in weight loss since age 50 was no longer significant.
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Blacks had significantly lower YOL and YHL than whites
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after adjustment for age, but the difference disappeared
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after adjustment for the entire set of health-related
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baseline covariates (analyses not shown).
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We next examined the relationship of BMI to YOL and YHL.
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Table 2presents the mean values of YOL and YHL, adjusted
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for age, race, and previous smoking (columns 1 and 3), and
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also adjusted for the entire set of covariates (columns 2
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and 4). For example, YOL for women, adjusted for age, race,
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and smoking, averaged 6.0 years for women with a baseline
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BMI below 18.5, but averaged 6.6 years for women with a BMI
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from 25 to 29.9. The second column, which shows results
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adjusted for all covariates, is not very different (the
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only discrepancy is for men with BMI < 18.5, a category
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containing only 14 men). Adjustment for extensive
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covariates also made little difference for YHL (columns 3
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and 4). Subsequent analyses are adjusted only for age,
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race, and former smoking. As mentioned above, the group
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with BMI from 18.5 to 20 would be considered 'normal' by
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the NHLBI guidelines, but had lower YOL and YHL than those
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with 20-24.9 in all comparisons. For this reason, and to
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increase sample size for those with low BMI, we combined
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the two lower categories, defining underweight as a BMI
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under 20.
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Figure 1is a plot of adjusted YOL and YHL by sex and
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BMI. For each BMI category the mean and its 95% confidence
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interval are plotted. Categories whose confidence intervals
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do not overlap, or overlap only slightly, are significantly
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different. The bars are slightly offset to permit all error
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bars to be seen.
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YOL for women (the uppermost curve on Figure 1) averaged
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about 6.5 out of 7 years, and showed no evident association
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between BMI and YOL for BMI above 20. Underweight women
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averaged about .25 fewer YOL than other women (p < .05
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compared with normal group). Underweight men also had lower
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YOL, but this group was not significantly different from
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the normal group, in part because of low sample size. Men
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classified as normal, overweight or obese all had about the
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same YOL.
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The lowermost two lines in Figure 1show mean YHL for
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women and men. Women who were normal or overweight averaged
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about 4.9 YHL. The YHL for underweight or obese women was
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about 4.5 years, which was significantly lower than the
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normal group. The relationship of BMI to YHL for men is
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similar, but differences among BMI groups were not
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statistically significant. YHL was significantly higher for
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women than for men in the normal and overweight groups, but
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the sexes had similar YHL in the underweight and obese
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groups.
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We next present the effect size for comparing each group
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to the normal BMI group. The effect sizes are shown in
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Table 3, with the significance results of the associated
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t-tests for the differences in means of the two groups
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being compared. For example, underweight women averaged
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4.50 YHL compared to 4.92 for normal women, and the common
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standard deviation was 1.44. The effect size is thus
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(4.92-4.50)/1.44 = .29. The two groups had significantly
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different YHL, implying that the effect size is also
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significantly greater than zero. A clinical trial of a
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treatment to help underweight women achieve normal weight
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(presumably by addressing the underlying cause) could be
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expected to have 80% power with N = (1.96+.84) 2/.29 2=
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about 93 women per treatment arm, if 7-year YHL were the
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outcome measure.
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The biggest effect sizes are in the first row, comparing
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underweight to normal. YHL and YOL have similar effect
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sizes for women, and are significantly different from zero.
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The effect sizes are not significantly different from zero
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for men, in part because there were only 42 men in the
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underweight category. The effect size comparing overweight
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to normal yielded small, non-significant effect sizes, with
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inconsistent signs, suggesting extremely large sample sizes
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would be needed. For comparing obese to normal, only YHL
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for women showed a large and significant effect size. Thus,
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an intervention to improve the health of underweight women
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to that of their normal weight peers could be performed
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using either YHL or YOL as the outcome variable. Trials to
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make obese women comparable to normal women could be
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evaluated using YHL, but not YOL. Trials to improve the
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health of the other groups to that of the normals would
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probably be fruitless since there is no evidence that being
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overweight (for men or women) or obese (for men) affects
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YOL or YHL.
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As mentioned above, we repeated these analyses excluding
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the persons with partially estimated data, and using two
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different ways of coding YHL. The only substantive change
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was that some of the differences between blacks and whites
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shown in Table 1were no longer statistically significant,
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due to a smaller sample size.
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Discussion
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Optimal weight and overweight
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Recent studies have defined obesity without reference
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to age [ 6 13 30 ] . Andres
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et al proposed a desirable BMI of
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24-30 for persons aged 60 to 69 [ 8 ] . Allison
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et al [ 31 ] proposed 27-30 for
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older men and 30-35 for older women. In Figure 1, the
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overweight (as opposed to the obese) are no different
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from those of normal weight, suggesting that these two
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categories could be combined for older adults. Since
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future improvements in life expectancy may be limited [
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32 ] , the greatest advances may be made by improving
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people's YHL. This suggests that the development of
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future guidelines should take YHL or other measures of
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quality of life into account.
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Implications for clinical trials
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Based on these findings, trials to address obesity in
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older women could be efficient if YHL (but not YOL) was
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the outcome measure. That is, women who changed from
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being obese to being normal would likely show changes in
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YHL, but not YOL. Clinical trials of weight modification
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interventions for older adults who were merely overweight
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would appear to be fruitless since the interventions
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would probably not have a direct effect on either YOL or
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YHL.
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Weight or weight change are sometimes used as the
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outcome in evaluations of interventions such as diet or
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exercise programs. The fact that weight is not associated
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in a consistent way with health suggests that such
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evaluations should be considered critically when older
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adults are the subjects. This is particularly important
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in the light of recent findings, which found that
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interventions such as weight-loss drugs may be harmful [
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33 34 ] . For older adults, the risks associated with
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higher weight are especially unclear, and the optimal
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outcome for a trial of weight loss in older adults
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requires specific attention to improved health and
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mortality.
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Interestingly, the strongest health relationships were
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found for underweight older adults. Clinical trials whose
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objective was to make the underweight as healthy as their
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normal-weight peers (presumably by addressing the
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underlying conditions that caused the low weight) could
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be performed efficiently using either YOL or YHL as the
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outcome measure. Both YOL and YHL would be clinically
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significant in this patient group.
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Potential limitations
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CHS participants were somewhat healthier than the
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average older adult; however, adjustment for detailed
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covariates made little difference in the findings. We
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estimated the last four years of health data for about
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10% of the sample, but results with and without this
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group were similar. Analysis of mean YOL instead of the
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more traditional survival analysis survival analysis was
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appropriate here, since virtually no persons were lost to
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follow-up. Biases caused by over-adjustment are probably
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not large, since the findings were not sensitive to the
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number of variables adjusted for.
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These results are for a 7-year follow-up. The relative
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superiority of YHL to YOL would probably hold in trials
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with shorter follow-up. The effect sizes in Table 3might
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also be appropriate in shorter trials, since lengthy
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trials often add little information [ 10 ] .
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EVGFP, on which YHL was based, might have missed some
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effects of obesity on risk factors for future health. A
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person who is depressed because of a poor self-image
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related to obesity or who has osteo-arthritis related to
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obesity and limits to activities to successfully avoid
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pain would surely have worse EVGFP than others, based on
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results from many studies. However, health measures
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designed specifically to measure those conditions might
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be more sensitive to change in weight than EVGFP. If YHL
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were based on such measures, the superiority of YHL to
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YOL would likely be even greater than that shown here.
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These more sensitive measures might also have detected
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differences between the overweight and normal weight
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persons, but we think this is unlikely given the absence
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of any differences in EVGFP.
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Conclusion
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Recommendations for desirable weight have been
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criticized for emphasizing mortality rather than health. We
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found associations between YHL and obesity that were not
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present in the mortality analysis, suggesting that YHL may
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be a more sensitive measure of the burden of obesity in
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older adults, especially for women. Future efforts to
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determine desirable weight guidelines should include
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measures of YHL. Using either YOL or YHL, however, we found
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no excess risk for older adults who would be classified as
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'overweight' by the NHLBI guidelines. This suggests using
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YHL as the outcome measure in clinical trials involving
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obese or underweight older adults, and discouraging trials
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that address older adults who are merely overweight.
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Competing interests
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None declared
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Abbreviations
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BMI Body mass index
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CESD Center for Epidemiologic Studies Depression
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Scale
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CHS Cardiovascular Health Study
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EVGFP Is your health excellent, very good, good, fair or
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poor?
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QALY Quality-adjusted life years
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YHL Years of healthy life
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YOL Years of life
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