Predicting the risk of mortality and rehospitalization in heart failure patients: A retrospective cohort study by machine learning approach

Author:

Ketabi Marzieh1,Andishgar Aref2,Fereidouni Zhila3,Sani Maryam Mojarrad4,Abdollahi Ashkan5,Vali Mohebat6,Alkamel Abdulhakim7,Tabrizi Reza78ORCID

Affiliation:

1. Student Research Committee Fasa University of Medical Sciences Fasa Iran

2. USERN Office Fasa University of Medical Sciences Fasa Iran

3. Department of Medical Surgical Nursing Fasa University of Medical Science Fars Iran

4. School of Medicine Tehran University of Medical Sciences Tehran Iran

5. School of Medicine Shiraz University of Medical Sciences Shiraz Iran

6. Student Research Committee Shiraz University of Medical Sciences Shiraz Iran

7. Noncommunicable Diseases Research Center Fasa University of Medical Science Fasa Iran

8. Clinical Research Development Unit Fasa University of Medical Sciences Fasa Iran

Abstract

AbstractBackgroundHeart failure (HF) is a global problem, affecting more than 26 million people worldwide. This study evaluated the performance of 10 machine learning (ML) algorithms and chose the best algorithm to predict mortality and readmission of HF patients by using The Fasa Registry on Systolic HF (FaRSH) database.HypothesisML algorithms may better identify patients at increased risk of HF readmission or death with demographic and clinical data.MethodsThrough comprehensive evaluation, the best‐performing model was used for prediction. Finally, all the trained models were applied to the test data, which included 20% of the total data. For the final evaluation and comparison of the models, five metrics were used: accuracy, F1‐score, sensitivity, specificity and Area Under Curve (AUC).ResultsTen ML algorithms were evaluated. The CatBoost (CAT) algorithm uses a series of decision tree models to create a nonlinear model, and this CAT algorithm performed the best of the 10 models studied. According to the three final outcomes from this study, which involved 2488 participants, 366 (14.7%) of the patients were readmitted to the hospital, 97 (3.9%) of the patients died within 1 month of the follow‐up, and 342 (13.7%) of the patients died within 1 year of the follow‐up. The most significant variables to predict the events were length of stay in the hospital, hemoglobin level, and family history of MI.ConclusionsThe ML‐based risk stratification tool was able to assess the risk of 5‐year all‐cause mortality and readmission in patients with HF. ML could provide an explicit explanation of individualized risk prediction and give physicians an intuitive understanding of the influence of critical features in the model.

Publisher

Wiley

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