MRC Integrative Epidemiology Unit, University of Bristol, Bristol, UK.
Population Health Sciences, Bristol Medical School, University of Bristol, Bristol, UK.
BMJ. 2023 Jun 19;381:e072148. doi: 10.1136/bmj-2022-072148.
Mendelian randomisation (MR) studies, which investigate causal effects of exposures on disease, might be biased by sample selection and misclassification if phenotypes are not measured universally with the same definition in all study populations or participants. For example, in MR analyses of effects of exposures on covid-19, studies might include individuals with specific characteristics (eg, high socioeconomic position) meaning they are more likely to be tested for SARS-CoV-2 infection or respond to study questionnaires collecting data on infection and disease (selection bias). Alternatively, studies might assume those who were not tested have not been infected by SARS-CoV-2 or had covid-19 and are included as control participants (misclassification bias). In this article, a set of analyses to investigate the presence of selection or misclassification bias in MR studies is proposed and the implications of these on results is considered. The effect of body mass index on covid-19 susceptibility and severity is used as an illustrative example.
孟德尔随机化(MR)研究旨在探究暴露对疾病的因果效应,但如果表型在所有研究人群或参与者中没有用相同的定义普遍测量,那么研究可能会受到样本选择和分类错误的偏倚。例如,在 MR 分析中,研究可能会包括具有特定特征(例如高社会经济地位)的个体,这意味着他们更有可能接受 SARS-CoV-2 感染的检测,或者对收集感染和疾病数据的研究问卷做出反应(选择偏倚)。或者,研究可能会假设那些未接受检测的人没有感染 SARS-CoV-2 或患有 covid-19,并将其作为对照参与者纳入(分类错误偏倚)。本文提出了一组用于研究 MR 研究中是否存在选择或分类错误偏倚的分析方法,并考虑了这些偏倚对结果的影响。体重指数对新冠病毒易感性和严重程度的影响被用作说明性示例。