Department of Clinical Epidemiology and Health Economics, School of Public Health, The University of Tokyo, Tokyo, Japan.
Graduate School of Medical Sciences, The University of Fukui, Fukui, Japan.
COPD. 2019 Dec;16(5-6):338-343. doi: 10.1080/15412555.2019.1688278. Epub 2019 Nov 11.
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.
虽然机器学习方法可以提高预测能力,但对于它们预测慢性阻塞性肺疾病(COPD)住院后 30 天再入院的能力知之甚少。我们从日本的诊断程序组合数据库(一个行政索赔数据库)中确定了 2011 年至 2016 年(索引住院)因 COPD 计划外住院的年龄≥40 岁的患者。COPD 根据医疗保险和医疗补助服务中心(CMS)再入院措施的 ICD-10-CM 诊断代码进行定义。主要结果是索引住院后 30 天内的任何再入院。在训练集(样本的随机选择的 70%)中,患者特征和住院护理数据被用作预测因素,以推导出一个传统的逻辑回归模型和两个机器学习模型(lasso 回归和深度神经网络)。在测试集(样本的其余 30%)中,通过与基于 CMS 再入院措施的参考模型进行比较,检查了机器学习模型的预测性能。在 44929 例 COPD 索引住院中,有 3413 例(7%)在出院后 30 天内再次入院。参考模型的区分能力最低(C 统计量:0.57[95%置信区间(CI)0.56-0.59])。两种机器学习模型具有中度、显著更高的区分能力(C 统计量:lasso 回归,0.61[95%CI0.59-0.61], = 0.004;深度神经网络,0.61[95%CI0.59-0.63], = 0.007)。管饲持续时间、输血、胸腔穿刺术的使用和男性是重要的预测因素。在这项使用日本全国性行政数据的研究中,与传统模型相比,机器学习模型提高了 COPD 住院后 30 天再入院的预测能力。