A scalable approach for developing clinical risk prediction applications in different hospitals
Hong Sun, Kristof Depraetere, Laurent Meesseman, Jos De Roo, Martijn, Vanbiervliet, Jos De Baerdemaeker, Herman Muys, Vera von Dossow, Nikolai, Hulde, Ralph Szymanowsky

TL;DR
This paper presents a scalable, automated approach for developing and deploying clinical risk prediction models across multiple hospitals with different EHR systems, focusing on common data representations.
Contribution
It introduces a generic process and calibration tool for creating risk models for various diseases across different hospital EHR systems, emphasizing scalability.
Findings
Achieved high AUROC scores for delirium, sepsis, and AKI models across hospitals.
Demonstrated the feasibility of scalable model development using common data representations.
Focused on syntactic interoperability without requiring shared data semantics.
Abstract
Objective: Machine learning algorithms are now widely used in predicting acute events for clinical applications. While most of such prediction applications are developed to predict the risk of a particular acute event at one hospital, few efforts have been made in extending the developed solutions to other events or to different hospitals. We provide a scalable solution to extend the process of clinical risk prediction model development of multiple diseases and their deployment in different Electronic Health Records (EHR) systems. Materials and Methods: We defined a generic process for clinical risk prediction model development. A calibration tool has been created to automate the model generation process. We applied the model calibration process at four hospitals, and generated risk prediction models for delirium, sepsis and acute kidney injury (AKI) respectively at each of these…
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Taxonomy
TopicsMachine Learning in Healthcare · Sepsis Diagnosis and Treatment · Healthcare Technology and Patient Monitoring
