选择偏差
选择(遗传算法)
参照物
人口
取样偏差
样品(材料)
因果推理
信息偏差
计算机科学
对撞机
借记
计量经济学
样本量测定
统计
心理学
人工智能
数学
社会心理学
医学
语言学
哲学
环境卫生
物理
核物理学
化学
色谱法
作者
Haidong Lu,Stephen R. Cole,Chanelle J. Howe,Daniel Westreich
出处
期刊:Epidemiology
[Lippincott Williams & Wilkins]
日期:2022-06-06
卷期号:33 (5): 699-706
被引量:106
标识
DOI:10.1097/ede.0000000000001516
摘要
Selection bias remains a subject of controversy. Existing definitions of selection bias are ambiguous. To improve communication and the conduct of epidemiologic research focused on estimating causal effects, we propose to unify the various existing definitions of selection bias in the literature by considering any bias away from the true causal effect in the referent population (the population before the selection process), due to selecting the sample from the referent population, as selection bias. Given this unified definition, selection bias can be further categorized into two broad types: type 1 selection bias owing to restricting to one or more level(s) of a collider (or a descendant of a collider) and type 2 selection bias owing to restricting to one or more level(s) of an effect measure modifier. To aid in explaining these two types-which can co-occur-we start by reviewing the concepts of the target population, the study sample, and the analytic sample. Then, we illustrate both types of selection bias using causal diagrams. In addition, we explore the differences between these two types of selection bias, and describe methods to minimize selection bias. Finally, we use an example of "M-bias" to demonstrate the advantage of classifying selection bias into these two types.
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