Machine learning for improving high-dimensional proxy confounder adjustment in healthcare database studies: An overview of the current literature.
Richard WyssChen YanoverTal El-HayDimitri BennettRobert W PlattAndrew R ZulloGrammati SariXuerong WenYizhou YeHongbo YuanMugdha GokhaleElisabetta PatornoKueiyu Joshua LinPublished in: Pharmacoepidemiology and drug safety (2022)
There is a growing body of evidence showing that machine-learning algorithms for high-dimensional proxy-confounder adjustment can supplement investigator-specified variables to improve confounding control compared to adjustment based on investigator-specified variables alone. However, more research is needed on best practices for feature generation and diagnostic assessment when applying methods for high-dimensional proxy confounder adjustment in pharmacoepidemiologic studies.