A framework for understanding selection bias in real-world healthcare data

Author:

Kundu Ritoban1,Shi Xu1,Morrison Jean1,Barrett Jessica2ORCID,Mukherjee Bhramar3ORCID

Affiliation:

1. Department of Biostatistics, University of Michigan , Ann Arbor , USA

2. MRC Investigator, Biostatistics Unit, Medical Research Council, University of Cambridge , Cambridge , UK

3. Department of Biostatistics and Epidemiology, University of Michigan , Ann Arbor , USA

Abstract

Abstract Using administrative patient-care data such as Electronic Health Records (EHR) and medical/pharmaceutical claims for population-based scientific research has become increasingly common. With vast sample sizes leading to very small standard errors, researchers need to pay more attention to potential biases in the estimates of association parameters of interest, specifically to biases that do not diminish with increasing sample size. Of these multiple sources of biases, in this paper, we focus on understanding selection bias. We present an analytic framework using directed acyclic graphs for guiding applied researchers to dissect how different sources of selection bias may affect estimates of the association between a binary outcome and an exposure (continuous or categorical) of interest. We consider four easy-to-implement weighting approaches to reduce selection bias with accompanying variance formulae. We demonstrate through a simulation study when they can rescue us in practice with analysis of real-world data. We compare these methods using a data example where our goal is to estimate the well-known association of cancer and biological sex, using EHR from a longitudinal biorepository at the University of Michigan Healthcare system. We provide annotated R codes to implement these weighted methods with associated inference.

Funder

NSF DMS

NIH/NCI

NIH

Publisher

Oxford University Press (OUP)

Reference63 articles.

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