Abstract

BackgroundAdvances in machine learning (ML) provide great opportunities in the prediction of hospital readmission. This review synthesizes the literature on ML methods and their performance for predicting hospital readmission in the US.MethodsThis review was performed according to the Preferred Reporting Items for Systematic Reviews and Meta-Analysis Extension for Scoping Reviews (PRISMA-ScR) Statement. The extraction of items was also guided by the Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies (CHARMS). Electronic databases PUBMED, MEDLINE, and EMBASE were systematically searched from January 1, 2015, through December 10, 2019. The articles were imported into COVIDENCE online software for title/abstract screening and full-text eligibility. Observational studies using ML techniques for hospital readmissions among US patients were eligible for inclusion. Articles without a full text available in the English language were excluded. A qualitative synthesis included study characteristics, ML algorithms utilized, and model validation, and quantitative analysis assessed model performance. Model performances in terms of Area Under the Curve (AUC) were analyzed using R software. Quality in Prognosis Studies (QUIPS) tool was used to assess the quality of the reviewed studies.ResultsOf 522 citations reviewed, 43 studies met the inclusion criteria. A majority of the studies used electronic health records (24, 56%), followed by population-based data sources (15, 35%) and administrative claims data (4, 9%). The most common algorithms were tree-based methods (23, 53%), neural network (NN) (14, 33%), regularized logistic regression (12, 28%), and support vector machine (SVM) (10, 23%). Most of these studies (37, 85%) were of high quality. A majority of these studies (28, 65%) reported ML algorithms with an AUC above 0.70. There was a range of variability within AUC reported by these studies with a median of 0.68 (IQR: 0.64–0.76; range: 0.50–0.90).ConclusionsThe ML algorithms involving tree-based methods, NN, regularized logistic regression, and SVM are commonly used to predict hospital readmission in the US. Further research is needed to compare the performance of ML algorithms for hospital readmission prediction.

Highlights

  • Advances in machine learning (ML) provide great opportunities in the prediction of hospital readmission

  • The authors searched the databases of PUBMED, MEDLINE, and EMBASE from January 1, 2015 to December 10, 2019 to identify all potentially observational studies of applying ML techniques in hospital readmission risk prediction based on datasets of the US population

  • Readmission risk prediction involved a variety of ML techniques

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Summary

Introduction

Advances in machine learning (ML) provide great opportunities in the prediction of hospital readmission. Readmission causes a significant financial burden for public and private payers [3, 4]. In response to such problems, multiple initiatives have been mandated through the Affordable Care Act in the efforts to reduce hospital readmissions [5]. Reduction in readmission rates has been recognized as a part of national strategies for quality improvement through other incentives of health care policies [8, 9]. Models for predicting readmission risk are in great demand, and these tools could help to identify and reduce readmission with a goal to improve overall patient care and reduce healthcare costs

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