Interdisciplinary Human-Centered AI for Hospital Readmission Prediction of Heart Failure Patients

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Abstract

The evolution of clinical decision support (CDS) tools has been improved by usage of new technologies, yet there is an increased need to develop user-friendly, evidence-based, and expert-curated CDS solutions. In this paper, we show with a use-case how interdisciplinary expertise can be combined to develop CDS tool for hospital readmission prediction of heart failure patients. We also discuss how to make the tool integrated in clinical workflow by understanding end-user needs and have clinicians-in-the-loop during the different development stages.

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APA

Soliman, A., Nair, M., Petersson, M., Lundgren, L., Dryselius, P., Fogelberg, E., … Nygren, J. (2023). Interdisciplinary Human-Centered AI for Hospital Readmission Prediction of Heart Failure Patients. In Studies in Health Technology and Informatics (Vol. 302, pp. 556–560). IOS Press BV. https://doi.org/10.3233/SHTI230204

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