Machine Learning-Based Prediction Models for Different Clinical Risks in Different Hospitals: Evaluation of Live Performance.
Hong SunKristof DepraetereLaurent MeessemanPatricia Cabanillas SilvaRalph SzymanowskyJanis FliegenschmidtNikolai HuldeVera von DossowMartijn VanbiervlietJos De BaerdemaekerDiana M Roccaro-WaldmeyerJörg StiegManuel Domínguez HidalgoFried-Michael DahlweidPublished in: Journal of medical Internet research (2022)
Calibrating the prediction model with data from different deployment hospitals led to good performance in live settings. The performance degradation in the cross-hospital evaluation identified limitations in developing a generic model for different hospitals. Designing a generic process for model development to generate specialized prediction models for each hospital guarantees model performance in different hospitals.