An interpretable data-driven approach to optimizing clinical fall risk assessment
Fardin Ganjkhanloo, Emmett Springer, Erik H. Hoyer, Daniel L. Young, Holley Farley, Kimia Ghobadi

TL;DR
This paper introduces an interpretable, data-driven method to improve inpatient fall risk prediction by reweighting existing assessment tools, leading to better patient safety and resource allocation in hospitals.
Contribution
The study develops a constrained score optimization approach that enhances the predictive accuracy of the JHFRAT while maintaining its interpretability and clinical usability.
Findings
CSO model achieved higher AUC-ROC (0.91) than JHFRAT (0.86)
Recalibrated scores protected 35 additional high-risk patients weekly
CSO models are robust to variations in risk labeling
Abstract
In this study, we aim to better align fall risk prediction from the Johns Hopkins Fall Risk Assessment Tool (JHFRAT) with additional clinically meaningful measures via a data-driven modelling approach. We conducted a retrospective cohort analysis of 54,209 inpatient admissions from three Johns Hopkins Health System hospitals between March 2022 and October 2023. A total of 20,208 admissions were included as high fall risk encounters, and 13,941 were included as low fall risk encounters. To incorporate clinical knowledge and maintain interpretability, we employed constrained score optimization (CSO) models to reweight the JHFRAT scoring weights, while preserving its additive structure and clinical thresholds. Recalibration refers to adjusting item weights so that the resulting score can order encounters more consistently by the study's risk labels, and without changing the tool's form…
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Taxonomy
TopicsBalance, Gait, and Falls Prevention · Frailty in Older Adults · Sepsis Diagnosis and Treatment
