Document Type
Article
Publication Date
3-28-2026
Abstract
Risk stratification during hospitalization may support real-world discharge planning. We developed and validated machine learning models and an interpretable risk score to predict discharge destination among patients hospitalized with Parkinson's disease using a nationwide administrative claims database. Adults aged ≥50 years hospitalized between November 2017 and June 2023 were included, and the first hospitalization was defined as the index admission. Discharge destination was categorized as home, facility, or in-hospital death. The dataset was randomly divided into training (80%) and testing (20%) cohorts. Random forest models were constructed for all discharge outcomes, and an elastic net logistic regression model was developed for facility discharge. Among 281,664 index admissions, 48.0% were discharged home, 44.8% to a facility, and 7.2% died in hospital. The random forest models achieved AUCs of 0.775 for home discharge, 0.774 for facility discharge, and 0.832 for mortality. The elastic net model demonstrated an AUC of 0.752. A seven-item risk score identified a high-risk group with a 73.8% facility discharge rate compared with 40.6% in the low-risk group. These models provide clinically interpretable risk stratification to support multidisciplinary discharge planning.
Recommended Citation
Kamo, Hikaru; Mehta, Tejas R.; Remz, Matthew; Burke, Rachael M.; Brooks, Anne; Smiley, Adrianne; Okun, Michael S.; and Hess, Christopher W., "Machine Learning Prediction of Discharge Destination in Patients With Parkinson’s Disease; A Nationwide Cohort Study" (2026). Department of Neurology Faculty Papers. Paper 403.
https://jdc.jefferson.edu/neurologyfp/403
Creative Commons License

This work is licensed under a Creative Commons Attribution-Noncommercial-No Derivative Works 4.0 License.
PubMed ID
41896562
Language
English

Comments
This article is the author’s final published version in npj Parkinson's Disease, Volume 12, Issue 1, 2026, Article number 120.
The published version is available at https://doi.org/10.1038/s41531-026-01309-8. Copyright © The Author(s) 2026.