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conference paper

Real-World Deployment of a ML Pipeline for Pressure Wounds Prediction

Despraz, Jérémie
•
Nektarijevic, S.  
•
Vancauwenberghe, Laure  
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May 15, 2025
35th Medical Informatics Europe Conference

Hospital-acquired pressure injuries (HAPIs) are common complications that impact patient outcomes and strain healthcare resources. The Braden Scale is the standard tool for assessing HAPI risk, but it has limitations, including a high false-positive rate, potential oversight of subtle symptoms, and added workload for nurses. To address these issues, a fully automated AI clinical decision support system (CDSS) achieving 0.90 AUROC on retrospective data has been deployed.

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10.3233_shti250280.pdf

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Main Document

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Published version

Access type

openaccess

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CC BY-NC

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374.69 KB

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674b13347a28490107e5010846777b6f

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