Published on in Vol 13 (2024)

Preprints (earlier versions) of this paper are available at https://preprints.jmir.org/preprint/52744, first published .
Machine Learning Model for Readmission Prediction of Patients With Heart Failure Based on Electronic Health Records: Protocol for a Quasi-Experimental Study for Impact Assessment

Machine Learning Model for Readmission Prediction of Patients With Heart Failure Based on Electronic Health Records: Protocol for a Quasi-Experimental Study for Impact Assessment

Machine Learning Model for Readmission Prediction of Patients With Heart Failure Based on Electronic Health Records: Protocol for a Quasi-Experimental Study for Impact Assessment

Monika Nair   1 , PhD ;   Lina E Lundgren   2 , PhD ;   Amira Soliman   3 , PhD ;   Petra Dryselius   4 , BSc ;   Ebba Fogelberg   4 , BSc ;   Marcus Petersson   4 , PhD ;   Omar Hamed   3 , MSc ;   Miltiadis Triantafyllou   5 , MD ;   Jens Nygren   1 , Prof Dr

1 School of Health and Welfare, Halmstad University, Halmstad, Sweden

2 School of Business, Innovation and Sustainability, Halmstad University, Halmstad, Sweden

3 School of Information Technology, Halmstad University, Halmstad, Sweden

4 Cambio Healthcare Systems AB, Linköping, Sweden

5 Clinical Cardiology at Halmstad Hospital, Halmstad, Sweden

Corresponding Author:

  • Monika Nair, PhD
  • School of Health and Welfare
  • Halmstad University
  • Kristian IV:s väg 3
  • Halmstad, 30118
  • Sweden
  • Phone: 46 707993854
  • Email: monika.nair@hh.se