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Correction of Selection Bias in Survey Data: Is the Statistical Cure Worse Than the Bias?

机译:校正调查数据中的选择偏差:统计偏差是否比偏差更严重?

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摘要

In previous articles in the American Journal of Epidemiology (Am J Epidemiol. 2013;177(5):431–442) and American Journal of Public Health (Am J Public Health. 2013;103(10):1895–1901), Masters et al. reported age-specific hazard ratios for the contrasts in mortality rates between obesity categories. They corrected the observed hazard ratios for selection bias caused by what they postulated was the nonrepresentativeness of the participants in the National Health Interview Study that increased with age, obesity, and ill health. However, it is possible that their regression approach to remove the alleged bias has not produced, and in general cannot produce, sensible hazard ratio estimates.First, we must consider how many nonparticipants there might have been in each category of obesity and of age at entry and how much higher the mortality rates would have to be in nonparticipants than in participants in these same categories. What plausible set of numerical values would convert the (“biased”) decreasing-with-age hazard ratios seen in the data into the (“unbiased”) increasing-with-age ratios that they computed? Can these values be encapsulated in (and can sensible values be recovered from) one additional internal variable in a regression model? Second, one must examine the age pattern of the hazard ratios that have been adjusted for selection. Without the correction, the hazard ratios are attenuated with increasing age. With it, the hazard ratios at older ages are considerably higher, but those at younger ages are well below one. Third, one must test whether the regression approach suggested by Masters et al. would correct the nonrepresentativeness that increased with age and ill health that I introduced into real and hypothetical data sets.I found that the approach did not recover the hazard ratio patterns present in the unselected data sets: the corrections overshot the target at older ages and undershot it at lower ages.
机译:在《美国流行病学杂志》(Am J Epidemiol。2013; 177(5):431–442)和《美国公共卫生杂志》(Am J Public Health。2013; 103(10):1895-1901)的先前文章中,硕士等。报告了针对肥胖类别之间死亡率差异的特定年龄危害比。他们纠正了观察到的选择偏见的危险比,这些偏见是由他们的假设造成的,即国家健康访问研究中参与者的代表性不足,随着年龄,肥胖和健康状况的恶化而增加。但是,他们的回归方法消除了所谓的偏见很可能并未产生,并且通常无法产生合理的危险比估算值。首先,我们必须考虑在肥胖和年龄的每个类别中可能有多少未参加者参加者以及非参加者的死亡率要比同一类别的参加者高多少。什么样的合理数值集可以将数据中看到的(“有偏见的”)随年龄增长的危险比率转换为他们计算出的(“无偏见的”)随年龄增长的比率?是否可以将这些值封装在回归模型中的一个附加内部变量中(并从中恢复明智的值)?其次,必须检查已针对选择进行调整的危险比的年龄模式。如果不进行更正,则危险系数会随着年龄的增长而减弱。有了它,高龄人群的危险比就更高了,但是低龄人群的危险比却大大低于1。第三,必须测试Masters等人建议的回归方法。可以纠正我在真实和假设数据集中引入的随年龄和健康状况而增加的非代表性。我发现该方法无法恢复未选择的数据集中存在的危险比模式:更正超出了老年人的目标,而低于了它在较低的年龄。

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