Abstract

Background and objectivesDiabetes mellitus is a major chronic disease that results in readmissions due to poor disease control. Here we established and compared machine learning (ML)-based readmission prediction methods to predict readmission risks of diabetic patients.MethodsThe dataset analyzed in this study was acquired from the Health Facts Database, which includes over 100,000 records of diabetic patients from 1999 to 2008. The basic data distribution characteristics of this dataset were summarized and then analyzed. In this study, 30-days readmission was defined as a readmission period of less than 30 days. After data preprocessing and normalization, multiple risk factors in the dataset were examined for classifier training to predict the probability of readmission using ML models. Different ML classifiers such as random forest, Naive Bayes, and decision tree ensemble were adopted to improve the clinical efficiency of the classification. In this study, the Konstanz Information Miner platform was used to preprocess and model the data, and the performances of the different classifiers were compared.ResultsA total of 100,244 records were included in the model construction after the data preprocessing and normalization. A total of 23 attributes, including race, sex, age, admission type, admission location, length of stay, and drug use, were finally identified as modeling risk factors. Comparison of the performance indexes of the three algorithms revealed that the RF model had the best performance with a higher area under receiver operating characteristic curve (AUC) than the other two algorithms, suggesting that its use is more suitable for making readmission predictions.ConclusionThe factors influencing 30-days readmission predictions in diabetic patients, including number of inpatient admissions, age, diagnosis, number of emergencies, and sex, would help healthcare providers to identify patients who are at high risk of short-term readmission and reduce the probability of 30-days readmission. The RF algorithm with the highest AUC is more suitable for making 30-days readmission predictions and deserves further validation in clinical trials.

Highlights

  • Background and objectivesDiabetes mellitus is a major chronic disease that results in readmissions due to poor disease control

  • The factors influencing 30-days readmission predictions in diabetic patients, including number of inpatient admissions, age, diagnosis, number of emergencies, and sex, would help healthcare providers to identify patients who are at high risk of short-term readmission and reduce the probability of 30-days readmission

  • The dataset used in this study described each patient’s personal information, clinical treatment-related characteristics, and diagnosis-related characteristics

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Summary

Introduction

Diabetes mellitus is a major chronic disease that results in readmissions due to poor disease control. The vast majority of patients with diabetes mellitus (DM), a major non-communicable chronic disease, require repeated hospitalizations due to poor disease control. The 30-days readmission rate after an index hospitalization has become an important hospital performance measure used by the Centers for Medicare and Medicaid Services and is receiving increased scrutiny as a marker of poor patient care [3, 4]. Readmission plays an essential role in the increasing hospital-related costs and is becoming more common among elderly DM patients; as a result, DM readmissions become a growing and costly economic burden on both patients and public finance budgets, deserving our intensive attentions

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