
Berkson's Bias, Selection Bias, and Missing Data
Author(s) -
Daniel Westreich
Publication year - 2012
Publication title -
epidemiology
Language(s) - Uncategorized
Resource type - Journals
SCImago Journal Rank - 1.901
H-Index - 173
eISSN - 1531-5487
pISSN - 1044-3983
DOI - 10.1097/ede.0b013e31823b6296
Subject(s) - missing data , selection bias , information bias , non response bias , selection (genetic algorithm) , sampling bias , econometrics , causal structure , simple (philosophy) , computer science , statistics , mathematics , artificial intelligence , sample size determination , physics , philosophy , epistemology , quantum mechanics
Although Berkson's bias is widely recognized in the epidemiologic literature, it remains underappreciated as a model of both selection bias and bias due to missing data. Simple causal diagrams and 2 × 2 tables illustrate how Berkson's bias connects to collider bias and selection bias more generally, and show the strong analogies between Berksonian selection bias and bias due to missing data. In some situations, considerations of whether data are missing at random or missing not at random are less important than the causal structure of the missing data process. Although dealing with missing data always relies on strong assumptions about unobserved variables, the intuitions built with simple examples can provide a better understanding of approaches to missing data in real-world situations.