Machine learning–based 30-day readmission prediction models for patients with heart failure: a systematic review

Author:

Yu Min-Young1ORCID,Son Youn-Jung2ORCID

Affiliation:

1. Department of Nursing, Graduate School of Chung-Ang University, 84, Heukseok-ro, Dongjak-gu , 06974 Seoul , South Korea

2. Red Cross College of Nursing, Chung-Ang University , 84, Heukseok-ro, Dongjak-gu, 06974 Seoul , South Korea

Abstract

Abstract Aims Heart failure (HF) is one of the most frequent diagnoses for 30-day readmission after hospital discharge. Nurses have a role in reducing unplanned readmission and providing quality of care during HF trajectories. This systematic review assessed the quality and significant factors of machine learning (ML)-based 30-day HF readmission prediction models. Methods and results Eight academic and electronic databases were searched to identify all relevant articles published between 2013 and 2023. Thirteen studies met our inclusion criteria. The sample sizes of the selected studies ranged from 1778 to 272 778 patients, and the patients’ average age ranged from 70 to 81 years. Quality appraisal was performed. Conclusion The most commonly used ML approaches were random forest and extreme gradient boosting. The 30-day HF readmission rates ranged from 1.2 to 39.4%. The area under the receiver operating characteristic curve for models predicting 30-day HF readmission was between 0.51 and 0.93. Significant predictors included 60 variables with 9 categories (socio-demographics, vital signs, medical history, therapy, echocardiographic findings, prescribed medications, laboratory results, comorbidities, and hospital performance index). Future studies using ML algorithms should evaluate the predictive quality of the factors associated with 30-day HF readmission presented in this review, considering different healthcare systems and types of HF. More prospective cohort studies by combining structured and unstructured data are required to improve the quality of ML-based prediction model, which may help nurses and other healthcare professionals assess early and accurate 30-day HF readmission predictions and plan individualized care after hospital discharge. Registration PROSPERO: CRD 42023455584.

Funder

Chung-Ang University Research Scholarship

National Research Foundation of Korea

NRF

Korea government

Publisher

Oxford University Press (OUP)

Reference44 articles.

1. Global burden of heart failure: a comprehensive and updated review of epidemiology;Savarese;Cardiovasc Res,2023

2. Prevalence, outcomes and costs of a contemporary, multinational population with heart failure;Norhammar;Heart,2023

3. Repeat hospitalizations predict mortality in patients with heart failure;Lin;Mil Med,2017

4. Hospital readmissions of patients with heart failure from real world: timing and associated risk factors;Wideqvist;ESC Heart Fail,2021

5. Trends in 30- and 90-day readmission rates for heart failure;Khan;Circ Heart Fail,2021

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