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变化预测研究中的偏差:选择性损耗及均值回归的不恰当建模影响的蒙特卡罗模拟研究

Bias in the study of prediction of change: a Monte Carlo simulation study of the effects of selective attrition and inappropriate modeling of regression toward the mean.

作者信息

Gustavson Kristin, Borren Ingrid

机构信息

Norwegian Institute of Public Health, Oslo, Norway.

出版信息

BMC Med Res Methodol. 2014 Dec 17;14:133. doi: 10.1186/1471-2288-14-133.

Abstract

BACKGROUND

Medical researchers often use longitudinal observational studies to examine how risk factors predict change in health over time. Selective attrition and inappropriate modeling of regression toward the mean (RTM) are two potential sources of bias in such studies.

METHOD

The current study used Monte Carlo simulations to examine bias related to selective attrition and inappropriate modeling of RTM in the study of prediction of change. This was done for multiple regression (MR) and change score analysis.

RESULTS

MR provided biased results when attrition was dependent on follow-up and baseline variables to quite substantial degrees, while results from change score analysis were biased when attrition was more strongly dependent on variables at one time point than the other. A positive association between the predictor and change in the health variable was underestimated in MR and overestimated in change score analysis due to selective attrition. Inappropriate modeling of RTM, on the other hand, lead to overestimation of this association in MR and underestimation in change score analysis. Hence, selective attrition and inappropriate modeling of RTM biased the results in opposite directions.

CONCLUSION

MR and change score analysis are both quite robust against selective attrition. The interplay between selective attrition and inappropriate modeling of RTM emphasizes that it is not an easy task to assess the degree to which obtained results from empirical studies are over- versus underestimated due to attrition or RTM. Researchers should therefore use modern techniques for handling missing data and be careful to model RTM appropriately.

摘要

背景

医学研究人员经常使用纵向观察性研究来检验风险因素如何随时间预测健康变化。选择性失访和对均值回归(RTM)的不恰当建模是此类研究中两个潜在的偏差来源。

方法

本研究使用蒙特卡洛模拟来检验在变化预测研究中与选择性失访和RTM不恰当建模相关的偏差。这是针对多元回归(MR)和变化分数分析进行的。

结果

当失访在相当大程度上依赖于随访和基线变量时,MR会产生有偏差的结果,而当失访在一个时间点比另一个时间点更强烈地依赖于变量时,变化分数分析的结果会有偏差。由于选择性失访,在MR中预测变量与健康变量变化之间的正相关被低估,而在变化分数分析中被高估。另一方面,RTM的不恰当建模导致在MR中对这种关联的高估,而在变化分数分析中被低估。因此,选择性失访和RTM的不恰当建模使结果产生相反方向的偏差。

结论

MR和变化分数分析对选择性失访都相当稳健。选择性失访和RTM不恰当建模之间的相互作用强调,评估实证研究获得的结果因失访或RTM而被高估或低估的程度并非易事。因此,研究人员应使用现代技术来处理缺失数据,并谨慎地对RTM进行恰当建模。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2590/4298063/6d8e474bfb93/12874_2014_1154_Fig1_HTML.jpg

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