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Boosting the interpretability of clinical risk scores with intervention predictions

Authors :
Loreaux, Eric
Yu, Ke
Kemp, Jonas
Seneviratne, Martin
Chen, Christina
Roy, Subhrajit
Protsyuk, Ivan
Harris, Natalie
D'Amour, Alexander
Yadlowsky, Steve
Chen, Ming-Jun
Publication Year :
2022

Abstract

Machine learning systems show significant promise for forecasting patient adverse events via risk scores. However, these risk scores implicitly encode assumptions about future interventions that the patient is likely to receive, based on the intervention policy present in the training data. Without this important context, predictions from such systems are less interpretable for clinicians. We propose a joint model of intervention policy and adverse event risk as a means to explicitly communicate the model's assumptions about future interventions. We develop such an intervention policy model on MIMIC-III, a real world de-identified ICU dataset, and discuss some use cases that highlight the utility of this approach. We show how combining typical risk scores, such as the likelihood of mortality, with future intervention probability scores leads to more interpretable clinical predictions.<br />Comment: Accepted by DSHealth on KDD 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2207.02941
Document Type :
Working Paper