Abstract

BackgroundAlcohol use disorder (AUD) is a chronic disease with a higher recurrence rate than that of other mental illnesses. Moreover, it requires continuous outpatient treatment for the patient to maintain abstinence. However, with a low probability of these patients to continue outpatient treatment, predicting and managing patients who might discontinue treatment becomes necessary. Accordingly, we developed a machine learning (ML) algorithm to predict which the risk of patients dropping out of outpatient treatment schemes.MethodsA total of 839 patients were selected out of 2,206 patients admitted for AUD in three hospitals under the Catholic Central Medical Center in Korea. We implemented six ML models—logistic regression, support vector machine, k-nearest neighbor, random forest, neural network, and AdaBoost—and compared the prediction performances thereof.ResultsAmong the six models, AdaBoost was selected as the final model for recommended use owing to its area under the receiver operating characteristic curve (AUROC) of 0.72. The four variables affecting the prediction based on feature importance were the length of hospitalization, age, residential area, and diabetes.ConclusionAn ML algorithm was developed herein to predict the risk of patients with AUD in Korea discontinuing outpatient treatment. By testing and validating various machine learning models, we determined the best performing model, AdaBoost, as the final model for recommended use. Using this model, clinicians can manage patients with high risks of discontinuing treatment and establish patient-specific treatment strategies. Therefore, our model can potentially enable patients with AUD to successfully complete their treatments by identifying them before they can drop out.

Highlights

  • According to a 2016 Korean epidemiological survey on mental illness, the lifetime prevalence of alcohol use disorders (AUDs), including alcohol dependence and abuse, was 12.2% (18.1% for men and 6.4% for women), which is the highest among mental disorders [1]

  • AdaBoost was selected as the final model for recommended use owing to its area under the receiver operating characteristic curve (AUROC) of 0.72

  • The four variables affecting the prediction based on feature importance were the length of hospitalization, age, residential area, and diabetes

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Summary

Introduction

According to a 2016 Korean epidemiological survey on mental illness, the lifetime prevalence of alcohol use disorders (AUDs), including alcohol dependence and abuse, was 12.2% (18.1% for men and 6.4% for women), which is the highest among mental disorders [1]. AUD is a disease with a higher recurrence rate than that of other mental illnesses [5,6,7]. The disorder must be managed over a long time without stopping the treatment at all [8, 9]. Alcohol use disorder (AUD) is a chronic disease with a higher recurrence rate than that of other mental illnesses. It requires continuous outpatient treatment for the patient to maintain abstinence. With a low probability of these patients to continue outpatient treatment, predicting and managing patients who might discontinue treatment becomes necessary. We developed a machine learning (ML) algorithm to predict which the risk of patients dropping out of outpatient treatment schemes

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