Machine Learning-Based Prediction Models for 30-Day Readmission after Hospitalization for Chronic Obstructive Pulmonary Disease.

Journal: COPD
Published Date:

Abstract

While machine learning approaches can enhance prediction ability, little is known about their ability to predict 30-day readmission after hospitalization for Chronic Obstructive Pulmonary Disease (COPD). We identified patients aged ≥40 years with unplanned hospitalization due to COPD in the Diagnosis Procedure Combination database, an administrative claims database in Japan, from 2011 through 2016 (index hospitalizations). COPD was defined by ICD-10-CM diagnostic codes, according to Centers for Medicare and Medicaid Services (CMS) readmission measures. The primary outcome was any readmission within 30 days after index hospitalization. In the training set (randomly-selected 70% of sample), patient characteristics and inpatient care data were used as predictors to derive a conventional logistic regression model and two machine learning models (lasso regression and deep neural network). In the test set (remaining 30% of sample), the prediction performances of the machine learning models were examined by comparison with the reference model based on CMS readmission measures. Among 44,929 index hospitalizations for COPD, 3413 (7%) were readmitted within 30 days after discharge. The reference model had the lowest discrimination ability (C-statistic: 0.57 [95% confidence interval (CI) 0.56-0.59]). The two machine learning models had moderate, significantly higher discrimination ability (C-statistic: lasso regression, 0.61 [95% CI 0.59-0.61],  = 0.004; deep neural network, 0.61 [95% CI 0.59-0.63],  = 0.007). Tube feeding duration, blood transfusion, thoracentesis use, and male sex were important predictors. In this study using nationwide administrative data in Japan, machine learning models improved the prediction of 30-day readmission after COPD hospitalization compared with a conventional model.

Authors

  • Tadahiro Goto
    Department of Emergency Medicine, Massachusetts General Hospital, Harvard Medical School, Boston, MA, United States of America. Electronic address: tag695@mail.harvard.edu.
  • Taisuke Jo
    Department of Health Services Research, The University of Tokyo, Tokyo, Japan.
  • Hiroki Matsui
    Department of Clinical Epidemiology and Health Economics, School of Public Health, The University of Tokyo, Tokyo, Japan.
  • Kiyohide Fushimi
    Department of Health Care Informatics, Graduate School of Medicine, Tokyo Medical and Dental University, Tokyo, Japan.
  • Hiroyuki Hayashi
  • Hideo Yasunaga
    Department of Clinical Epidemiology and Health Economics, School of Public Health, The University of Tokyo.