| Literature DB >> 33841886 |
Kimmo Sorjonen1, Gustav Nilsonne1,2, Daniel Falkstedt3, Tomas Hemmingsson3,4, Bo Melin1, Michael Ingre1,2,5.
Abstract
INTRODUCTION: Body mass index (BMI) is a composite variable of weight and height, often used as a predictor of health outcomes, including mortality. The main purpose of combining weight and height in one variable is to obtain a measure of obesity independent of height. It is however unclear how accurate BMI is as a predictor of mortality compared with models including both weight and height or a weight × height interaction as predictors.Entities:
Keywords: BMI; conscripts; height; mortality; prediction; weight
Year: 2020 PMID: 33841886 PMCID: PMC8019270 DOI: 10.1002/osp4.473
Source DB: PubMed Journal: Obes Sci Pract ISSN: 2055-2238
Descriptive statistics for, and correlations between, study variables
| Variable | 1 | 2 | 3 | 4 |
|---|---|---|---|---|
| 1. Weight | – | 0.472** | 0.856** | 0.014* |
| 2. Height | – | – | −0.047** | −0.026** |
| 3. BMI | – | – | – | 0.031** |
| 4. Deceased | – | – | – | – |
|
| 48,904 | 48,904 | 48,904 | 49,321 |
|
| 66.64 | 178.19 | 20.97 | 0.07 |
|
| 9.26 | 6.36 | 2.57 | – |
0 for alive and 1 for deceased.
*p < 0.005, **p < 0.001.
Number of deaths as well as model fit (AIC) and parameter values (hazard ratios, with 95% CI) for nine evaluated models for six different causes of death
| Model/Par. | All‐cause | Cancer | CVD | Alcohol | Suicide | Injuries |
|---|---|---|---|---|---|---|
| Deaths | 3442 | 840 | 676 | 205 | 641 | 575 |
| Model 1 | 74,073 |
| 14,494 | 4410 | 13,799 | 12,391 |
| Weight | 1.054 (1.020; 1.089)* | 1.169 (1.098; 1.245)** | 1.270 (1.189; 1.357)** | 0.943 (0.818; 1.086) | 0.853 (0.785; 0.927)** | 0.956 (0.879; 1.040) |
| Model 2 | 74,049 | 18,063 | 14,539 |
| 13,781 |
|
| Height | 0.906 (0.876; 0.937)** | 1.081 (1.011; 1.157)† | 0.977 (0.906; 1.054) | 0.773 (0.674; 0.887)** | 0.795 (0.736; 0.859)** | 0.849 (0.782; 0.921)** |
| Model 3 | 74,038 | 18,052 | 14,478 | 4409 | 13,813 | 12,391 |
| BMI | 1.115 (1.081; 1.151)** | 1.139 (1.070; 1.213)** | 1.307 (1.227; 1.391)** | 1.085 (0.952; 1.237) | 0.956 (0.882; 1.035) | 1.045 (0.965; 1.132) |
| Model 4 | 74,019 | 18,052 |
| 4409 | 13,814 | 12,392 |
| BMI | 1.056 (1.017; 1.097)* | 1.099 (1.017; 1.188)† | 1.228 (1.128; 1.336)** | 1.019 (0.874; 1.188) | 0.936 (0.856; 1.023) | 1.018 (0.927; 1.119) |
| BMI2 | 1.030 (1.018; 1.042)** | 1.020 (0.995; 1.045) | 1.024 (1.003; 1.046)† | 1.036 (0.991; 1.084) | 1.019 (0.982; 1.058) | 1.018 (0.983; 1.054) |
| Model 5 | 74,032 | 18,056 | 14,485 | 4413 | 13,817 | 12,395 |
| Underw. | 0.998 (0.904; 1.101) | 1.023 (0.839; 1.249) | 0.881 (0.694; 1.120) | 0.928 (0.613; 1.404) | 0.961 (0.765; 1.208) | 0.957 (0.751; 1.220) |
| Overw. | 1.346 (1.184; 1.531)** | 1.490 (1.161; 1.914)* | 2.041 (1.597; 2.609)** | 1.220 (0.707; 2.106) | 0.866 (0.606; 1.238) | 1.007 (0.707; 1.434) |
| Obese | 2.436 (1.894; 3.134)** | 2.302 (1.356; 3.909)* | 4.410 (2.850; 6.824)** | 1.962 (0.626; 6.148) | 1.194 (0.534; 2.670) | 1.569 (0.744; 3.311) |
| Model 6 | 74,008 | 18,048 | 14,480 | 4398 | 13,781 | 12,378 |
| Weight | 1.131 (1.091; 1.172)** | 1.167 (1.088; 1.252)** | 1.355 (1.262; 1.455)** | 1.085 (0.932; 1.263) | 0.946 (0.863; 1.037) | 1.044 (0.952; 1.144) |
| Height | 0.854 (0.823; 0.887)** | 1.004 (0.931; 1.083) | 0.843 (0.775; 0.916)** | 0.744 (0.637; 0.869)** | 0.816 (0.747; 0.891)** | 0.832 (0.758; 0.913)** |
| Model 7 | 74,001 | 18,048 | 14,482 | 4400 | 13,776 | 12,380 |
| Weight | 1.128 (1.088; 1.169)** | 1.158 (1.078; 1.244)** | 1.352 (1.259; 1.453)** | 1.085 (0.931; 1.264) | 0.951 (0.868; 1.041) | 1.043 (0.951; 1.143) |
| Height | 0.855 (0.823; 0.887)** | 1.000 (0.927; 1.079) | 0.840 (0.772; 0.914)** | 0.744 (0.637; 0.869)** | 0.833 (0.761; 0.911)** | 0.831 (0.757; 0.911)** |
| W × H | 1.042 (1.015; 1.070)* | 1.031 (0.978; 1.087) | 1.014 (0.959; 1.072) | 0.997 (0.886; 1.123) | 1.092 (1.029; 1.159)* | 0.983 (0.913; 1.057) |
| Model 8 | 74,001 | 18,048 | 14,481 | 4400 | 13,778 | 12,380 |
| Weight | 1.128 (1.089; 1.170)** | 1.157 (1.077; 1.244)** | 1.355 (1.261; 1.455)** | 1.080 (0.927; 1.258) | 0.948 (0.865; 1.039) | 1.039 (0.948; 1.139) |
| Height−2 | 1.166 (1.124; 1.210)** | 0.998 (0.925; 1.078) | 1.192 (1.097; 1.294)** | 1.333 (1.147; 1.549)** | 1.188 (1.087; 1.298)** | 1.196 (1.092; 1.311)** |
| W × H−2 | 0.967 (0.942; 0.992)† | 0.965 (0.915; 1.019) | 0.991 (0.937; 1.049) | 1.019 (0.908; 1.143) | 0.933 (0.881; 0.989)† | 1.028 (0.957; 1.106) |
| Model 9 |
| 18,046 | 14,477 | 4399 |
| 12,379 |
| Weight | 1.056 (1.013; 1.101)† | 1.110 (1.017; 1.212)† | 1.260 (1.146; 1.386)** | 1.029 (0.869; 1.218) | 0.896 (0.814; 0.985)† | 1.022 (0.921; 1.133) |
| Height | 0.876 (0.843; 0.911)** | 1.020 (0.944; 1.103) | 0.862 (0.791; 0.939)** | 0.761 (0.650; 0.892)** | 0.839 (0.766; 0.918)** | 0.839 (0.763; 0.923)** |
| Weight2 | 1.042 (1.028; 1.055)** | 1.027 (0.999; 1.055) | 1.031 (1.004; 1.057)† | 1.040 (0.982; 1.101) | 1.055 (1.020; 1.091)* | 1.018 (0.978; 1.060) |
Note: The parameter values give the predicted multiplicative change in the hazard for mortality for an increase in the predictor by one standard deviation. For example, an increase in height by one SD is associated with a decrease in the hazard for all‐cause mortality with 9.4%. In each column, the lowest AIC (= the best fit, rewarding parsimoniousness) is given in bold.
Reference = normal weight.
† p < 0.05, *p < 0.01, **p < 0.001.
All pairwise comparisons of the predictions made by the nine models of the six causes of mortality
| Denominator | All‐cause (above diagonal) and cancer (below diagonal) mortality | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| Numerator model | |||||||||
| 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | |
| 1 | – | 1.49* | 6.70** | 3.90** | 3.49** | 2.72** | 2.68** | 2.68** | 2.77** |
| 2 | 2.67** | – | 1.15 | 1.39* | 1.26† | 2.70** | 2.59** | 2.61** | 2.64** |
| 3 | 3.32* | 0.61† | – | 2.65** | 1.27 | 2.90** | 2.63** | 2.66** | 2.63** |
| 4 | 2.26† | 0.57* | 0.48 | – | 0.47* | 1.52* | 1.66** | 1.67** | 2.70** |
| 5 | 1.63 | 0.60† | 1.09 | 1.41 | – | 1.57** | 1.67** | 1.68** | 2.60** |
| 6 | 0.09 | 0.37** | 0.33* | 0.46† | 0.62 | – | 3.07** | 2.96* | 2.85** |
| 7 | 0.48 | 0.36** | 0.34* | 0.45† | 0.60† | 0.50 | – | 0.43 | 2.46** |
| 8 | 0.47 | 0.36** | 0.34* | 0.45† | 0.59† | 0.48 | 0.00 | – | 2.38** |
| 9 | 0.50 | 0.36** | 0.36* | 0.32* | 0.46* | 0.50 | 0.62 | 0.75 | – |
Note: Values above one indicates that the model in the numerator (column) is better at predicting mortality while values below one indicates that the model in the denominator (row) is better.
† p < 0.05, *p < 0.01, **p < 0.001.
FIGURE 1Association between height and weight, with each contour indicating a doubling of density of observations. The colors show predicted hazard for mortality given by the model with weight, height, and weight2 as predictors (Model 9, panel A) and the model with BMI and BMI2 as predictors (Model 4, panel B). Panel C shows the ratio of the predicted hazard from Model 9 divided by the predicted hazard from Model 4
FIGURE 2Predicted cumulative survival (95% CI in transparent colors with thin borders) as a function of time since conscription, separately for five levels of the predicted hazard from the height plus quadratic weight model (Model 9) divided by the predicted hazard from the quadratic BMI model (Model 4, see panel C in Figure 1)