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预测方程并不能消除自我报告的体重指数中的系统误差。

Prediction equations do not eliminate systematic error in self-reported body mass index.

作者信息

Plankey M W, Stevens J, Flegal K M, Rust P F

机构信息

National Center for Health Statistics, Centers for Disease Control and Prevention, Hyattsville, MD 20782, USA.

出版信息

Obes Res. 1997 Jul;5(4):308-14. doi: 10.1002/j.1550-8528.1997.tb00556.x.

Abstract

Epidemiological studies of the risks of obesity often use body mass index (BMI) calculated from self-reported height and weight. The purpose of this study was to examine the pattern of reporting error associated with self-reported values of BMI and to evaluate the extent to which linear regression models predict measured BMI from self-reported data and whether these models could compensate for this reporting error. We examined measured and self-reported weight and height on 5079 adults aged 30 years to 64 years from the second National Health and Nutrition Examination Survey. Measured and self-reported BMI (kg/m2) was calculated, and multiple linear regression techniques were used to predict measured BMI from self-reported BMI. The error in self-reported BMI (self-reported BMI minus measured BMI) was not constant but varied systematically with BMI. The correlation between measured BMI and the error in self-reported BMI was -0.37 for men and -0.38 for women. The pattern of reporting error was only weakly associated with self-reported BMI, with the correlation being 0.05 for men and -0.001 for women. Error in predicted BMI (predicted BMI minus measured BMI) also varied systematically with measured BMI, but less consistently with self-reported BMI. More complex models only slightly improved the ability to predict measured BMI compared with self-reported BMI alone. None of the equations were able to eliminate the systematic reporting error in determining measured BMI values from self-reported data. The characteristic pattern of error associated with self-reported BMI is difficult or impossible to correct by the use of linear regression models.

摘要

肥胖风险的流行病学研究通常使用根据自我报告的身高和体重计算得出的体重指数(BMI)。本研究的目的是检查与自我报告的BMI值相关的报告误差模式,并评估线性回归模型从自我报告数据预测实测BMI的程度,以及这些模型是否能够弥补这种报告误差。我们检查了来自第二次全国健康与营养检查调查的5079名年龄在30岁至64岁之间成年人的实测体重和身高以及自我报告的体重和身高。计算了实测BMI和自我报告BMI(kg/m²),并使用多元线性回归技术从自我报告的BMI预测实测BMI。自我报告BMI中的误差(自我报告BMI减去实测BMI)并非恒定不变,而是随BMI呈系统性变化。男性实测BMI与自我报告BMI误差之间的相关性为-0.37,女性为-0.38。报告误差模式与自我报告的BMI仅存在微弱关联,男性的相关性为0.05,女性为-0.001。预测BMI中的误差(预测BMI减去实测BMI)也随实测BMI呈系统性变化,但与自我报告BMI的一致性较差。与仅使用自我报告BMI相比,更复杂的模型在预测实测BMI方面仅略有改善。没有一个方程能够消除从自我报告数据确定实测BMI值时的系统性报告误差。与自我报告BMI相关的误差特征模式难以或无法通过使用线性回归模型来纠正。

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