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超越身体质量指数:社会科学研究中更精确的肥胖测量方法的价值

Beyond BMI: the value of more accurate measures of fatness and obesity in social science research.

作者信息

Burkhauser Richard V, Cawley John

机构信息

Department of Policy Analysis and Management, Cornell University, Ithaca, NY 14853, USA.

出版信息

J Health Econ. 2008 Mar;27(2):519-29. doi: 10.1016/j.jhealeco.2007.05.005. Epub 2007 Nov 29.

Abstract

Virtually all social science research related to obesity studies a person's body mass index (BMI). Yet there is wide agreement in the medical literature that BMI is seriously flawed because it does not distinguish fat from fat-free mass such as muscle and bone. This paper studies data that include multiple measures of fatness and finds that many important patterns, such as who is classified as obese, group rates of obesity, and correlations of obesity with social science outcomes, are all sensitive to the measure of fatness and obesity used. We show that, relative to percent body fat, BMI misclassifies substantial fractions of individuals as obese or non-obese; in general, BMI is less accurate classifying men than women. Furthermore, when percent body fat instead of BMI is used to define obesity, the gap in obesity between white and African American men increases substantially but the gap in obesity between African American and white women is cut in half. Finally, total body fat is negatively correlated with employment for some groups and fat-free mass is not significantly correlated with employment for any group, a difference that was obscured in previous research that studied BMI. In the long run, social science datasets should include more accurate measures of fatness. In the short run, estimating more accurate measures of fatness using height and weight is not possible except by making unattractive assumptions, but there is also no reason to adhere uncritically to BMI as a measure of fatness. Social science research on obesity would be enriched by greater consideration of alternate specifications of weight and height and more accurate measures of fatness.

摘要

几乎所有与肥胖相关的社会科学研究都考察一个人的身体质量指数(BMI)。然而,医学文献中普遍认为BMI存在严重缺陷,因为它无法区分脂肪与肌肉和骨骼等无脂肪组织。本文研究了包含多种肥胖测量指标的数据,发现许多重要模式,如谁被归类为肥胖、肥胖的群体发生率以及肥胖与社会科学结果的相关性,都对所使用的肥胖和肥胖测量指标敏感。我们表明,相对于体脂百分比,BMI将相当一部分个体错误地归类为肥胖或非肥胖;一般来说,BMI对男性的分类不如对女性准确。此外,当用体脂百分比而非BMI来定义肥胖时,白人男性和非裔美国男性之间的肥胖差距大幅增加,但非裔美国女性和白人女性之间的肥胖差距减半。最后,总体脂肪与某些群体的就业呈负相关,而无脂肪组织与任何群体的就业均无显著相关性,这一差异在以往研究BMI的研究中被掩盖了。从长远来看,社会科学数据集应纳入更准确的肥胖测量指标。短期内,除了做出不太吸引人的假设外,不可能通过身高和体重来估计更准确的肥胖测量指标,但也没有理由不加批判地坚持将BMI作为肥胖的测量指标。对体重和身高的替代规格进行更多考虑以及采用更准确的肥胖测量指标,将丰富关于肥胖的社会科学研究。

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