Challenges of Estimating Global Feature Importance in Real-World Health Care Data

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Abstract

Feature importance is often used to explain clinical prediction models. In this work, we examine three challenges using experiments with electronic health record data: computational feasibility, choosing between methods, and interpretation of the resulting explanation. This work aims to create awareness of the disagreement between feature importance methods and underscores the need for guidance to practitioners how to deal with these discrepancies.

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APA

Markus, A. F., Fridgeirsson, E. A., Kors, J. A., Verhamme, K. M. C., & Rijnbeek, P. R. (2023). Challenges of Estimating Global Feature Importance in Real-World Health Care Data. In Studies in Health Technology and Informatics (Vol. 302, pp. 1057–1061). IOS Press BV. https://doi.org/10.3233/SHTI230346

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