| Literature DB >> 22204699 |
Edwin S Wong1, Bruce C M Wang, Louis P Garrison, Rafael Alfonso-Cristancho, David R Flum, David E Arterburn, Sean D Sullivan.
Abstract
BACKGROUND: Many previous studies estimating the relationship between body mass index (BMI) and mortality impose assumptions regarding the functional form for BMI and result in conflicting findings. This study investigated a flexible data driven modelling approach to determine the nonlinear and asymmetric functional form for BMI used to examine the relationship between mortality and obesity. This approach was then compared against other commonly used regression models.Entities:
Mesh:
Year: 2011 PMID: 22204699 PMCID: PMC3273446 DOI: 10.1186/1471-2288-11-175
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Descriptive statistics for NHIS adult cohort from 1997 to 2000 used to estimate the BMI-mortality relation
| Survey Year | 1997 | 1998 | 1999 | 2000 | Total |
|---|---|---|---|---|---|
| Sample Size | 14460 | 13103 | 12147 | 12839 | 52549 |
| # Deaths (5-year) | 984 | 914 | 835 | 837 | 3570 |
| Deaths/1000 persons | 68.05 | 69.76 | 68.74 | 65.19 | 67.94 |
| Age (Mean) | 45.17 | 45.58 | 45.83 | 45.44 | 45.49 |
| BMI Level (% Prevalence) | |||||
| Normal: [18.5, 25) | 37.14% | 35.80% | 35.11% | 34.38% | 35.66% |
| Overweight: [25, 30) | 43.78% | 43.88% | 43.49% | 44.31% | 43.87% |
| Obese I: [30, 35) | 14.10% | 15.09% | 15.49% | 15.34% | 14.97% |
| Obese II: [35, 40) | 3.49% | 3.83% | 4.16% | 4.28% | 3.92% |
| Obese III: 40+ | 1.49% | 1.40% | 1.75% | 1.70% | 1.58% |
| Ever Smoker | 56.20% | 55.39% | 54.91% | 53.06% | 54.93% |
| Sample Size | 18210 | 15928 | 15340 | 15934 | 65412 |
| # Deaths (5-year) | 1002 | 926 | 845 | 858 | 3631 |
| Deaths/1000 persons | 55.02 | 58.14 | 55.08 | 53.85 | 55.51 |
| Age (Mean) | 46.80 | 47.36 | 47.35 | 47.08 | 47.13 |
| BMI Level (% Prevalence) | |||||
| Normal: [18.5, 25) | 49.75% | 48.17% | 47.37% | 46.69% | 48.06% |
| Overweight: [25, 30) | 28.90% | 29.36% | 29.69% | 29.32% | 29.30% |
| Obese I: [30, 35) | 13.45% | 14.04% | 14.49% | 14.68% | 14.14% |
| Obese II: [35, 40) | 4.87% | 5.20% | 5.11% | 5.62% | 5.19% |
| Obese III: 40+ | 3.03% | 3.22% | 3.34% | 3.69% | 3.31% |
| Ever Smoker | 40.96% | 40.98% | 40.23% | 39.63% | 40.47% |
Figure 1Comparison of the main fractional polynomial model with BMI categorized into narrow bins (top row), the fractional polynomial model excluding extreme BMI values (middle row) and the fractional polynomial model excluding early deaths (bottom row). Shaded regions denote 95% confidence interval for the fractional polynomial model.
Logistic regression coefficient estimates and standard errors in parentheses for the final adjustment model including smoking status, fractionally transformed BMI1 and age2 and interactions identified as significant
| Male | Female | |
|---|---|---|
| BMI(p1) | 24.260 | 20.328 |
| (1.938) | (5.186) | |
| BMI(p2) | -49.284 | -18.490 |
| (4.307) | (3.766) | |
| Age(q1) | 0.077 | |
| (0.001) | ||
| Age(q1)*BMI(p1) | 0.244 | |
| (0.165) | ||
| Age(q1)*BMI(p2) | -0.115 | |
| (0.125) | ||
| Age(q1) | Ever Smoked = 0 | 0.082 | |
| (0.002) | ||
| Age(q1) | Ever Smoked = 1 | 0.075 | |
| (0.002) | ||
| Ever Smoked | 0.581 | 0.832 |
| (0.050) | (0.084) | |
| Constant | -4.366 | -4.712 |
| (0.054) | (0.075) | |
| Log Likelihood | -9503.563 | -10179.990 |
1 For the male sample, - 0.137, - 0.376 and for the female sample, - 0.142, - 0.376.
2 For the male sample, - 20.692 and for the female sample, - 22.216.
Figure 2Smoothed Lowess regression lines illustrating the BMI-age (top panel) and age-smoking status (bottom panel) interactions in the female sample.
Figure 3Predicted mortality and 95% confidence interval based on the best fitting fractional polynomial model for male and female never smokers, age 40, 50 and 65.
Figure 4Predicted mortality based on the best fitting fractional polynomial model for male and female ever smokers, age 40, 50 and 65.
Figure 5Comparison of the best fitting fractional polynomial model with the linear-quadratic model for BMI (top row) and the categorical model (bottom row) for never smokers at age 50. Shaded regions denote 95% confidence interval for the fractional polynomial model.
Comparison of optimal BMI and 5-year mortality estimates across models
| MFP | Linear-Quadratic | Categorical | |
|---|---|---|---|
| Optimal BMI | 26.97 [26.41, 27.54] | 31.84 [30.34, 33.34] | 25-30 |
| Mortality at Optimum | 0.0176 [0.0158, 0.0196] | 0.0188 [0.0168, 0.0210] | 0.0169 [0.0152, 0.0188] |
| Mortality at BMI = 50 | 0.0548 [0.0428, 0.0699] | 0.0544 [0.0383, 0.0766] | 0.0355 [0.0251, 0.0499] |
| Optimal BMI | 22.34 [20.10, 24.57] | 23.04 [18.15, 27.93] | 25-30 |
| Mortality at Optimum | 0.0100 [0.0088, 0.0115] | 0.0128 [0.0115, 0.0141] | 0.0120 [0.0107, 0.0134] |
| Mortality at BMI = 50 | 0.0355 [0.0274, 0.0460] | 0.0306 [0.0377, 0.0248] | 0.0291 [0.0233, 0.0363] |
| Optimal BMI | 26.97 [26.41, 27.54] | 31.84 [30.34, 33.34] | 25-30 |
| Mortality at Optimum | 0.0306 [0.0283, 0.0331] | 0.0329 [0.0301, 0.0358] | 0.0299 [0.0273, 0.0326] |
| Mortality at BMI = 50 | 0.0939 [0.0750, 0.1168] | 0.0926 [0.0667, 0.1271] | 0.0619 [0.0447, 0.0852] |
| Optimal BMI | 22.34 [20.10, 24.57] | 23.04 [18.15, 27.93] | 25-30 |
| Mortality at Optimum | 0.0223 [0.0199, 0.0250] | 0.0237 [0.0217, 0.0260] | 0.0223 [0.0200, 0.0248] |
| Mortality at BMI = 50 | 0.0765 [0.0610, 0.0955] | 0.0559 [0.0459, 0.0680] | 0.0534 [0.0433, 0.0657] |
95% confidence intervals are in brackets.