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Machine learning for improving high‐dimensional proxy confounder adjustment in healthcare database studies: An overview of the current literature.

Authors :
Wyss, Richard
Yanover, Chen
El‐Hay, Tal
Bennett, Dimitri
Platt, Robert W.
Zullo, Andrew R.
Sari, Grammati
Wen, Xuerong
Ye, Yizhou
Yuan, Hongbo
Gokhale, Mugdha
Patorno, Elisabetta
Lin, Kueiyu Joshua
Source :
Pharmacoepidemiology & Drug Safety; Sep2022, Vol. 31 Issue 9, p932-943, 12p
Publication Year :
2022

Abstract

Purpose: Supplementing investigator‐specified variables with large numbers of empirically identified features that collectively serve as 'proxies' for unspecified or unmeasured factors can often improve confounding control in studies utilizing administrative healthcare databases. Consequently, there has been a recent focus on the development of data‐driven methods for high‐dimensional proxy confounder adjustment in pharmacoepidemiologic research. In this paper, we survey current approaches and recent advancements for high‐dimensional proxy confounder adjustment in healthcare database studies. Methods: We discuss considerations underpinning three areas for high‐dimensional proxy confounder adjustment: (1) feature generation—transforming raw data into covariates (or features) to be used for proxy adjustment; (2) covariate prioritization, selection, and adjustment; and (3) diagnostic assessment. We discuss challenges and avenues of future development within each area. Results: There is a large literature on methods for high‐dimensional confounder prioritization/selection, but relatively little has been written on best practices for feature generation and diagnostic assessment. Consequently, these areas have particular limitations and challenges. Conclusions: 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. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10538569
Volume :
31
Issue :
9
Database :
Complementary Index
Journal :
Pharmacoepidemiology & Drug Safety
Publication Type :
Academic Journal
Accession number :
158412535
Full Text :
https://doi.org/10.1002/pds.5500