University of Toronto, Toronto, ON, Canada.
Biostatistics Research Unit, University Health Network, Toronto, ON, Canada.
COPD. 2023 Dec;20(1):274-283. doi: 10.1080/15412555.2023.2242493.
Approximately 20% of patients who are discharged from hospital for an acute exacerbation of COPD (AECOPD) are readmitted within 30 days. To reduce this, it is important both to identify all individuals admitted with AECOPD and to predict those who are at higher risk for readmission.
To develop two clinical prediction models using data available in electronic medical records: 1) identifying patients admitted with AECOPD and 2) predicting 30-day readmission in patients discharged after AECOPD.
Two datasets were created using all admissions to General Internal Medicine from 2012 to 2018 at two hospitals: one cohort to identify AECOPD and a second cohort to predict 30-day readmissions. We fit and internally validated models with four algorithms.
Of the 64,609 admissions, 3,620 (5.6%) were diagnosed with an AECOPD. Of those discharged, 518 (15.4%) had a readmission to hospital within 30 days. For identification of patients with a diagnosis of an AECOPD, the top-performing models were LASSO and a four-variable regression model that consisted of specific medications ordered within the first 72 hours of admission. For 30-day readmission prediction, a two-variable regression model was the top performing model consisting of number of COPD admissions in the previous year and the number of non-COPD admissions in the previous year.
We generated clinical prediction models to identify AECOPDs during hospitalization and to predict 30-day readmissions after an acute exacerbation from a dataset derived from available EMR data. Further work is needed to improve and externally validate these models.
大约 20%因慢性阻塞性肺疾病急性加重(AECOPD)出院的患者在 30 天内再次入院。为了降低这一比例,重要的是既要识别所有因 AECOPD 入院的患者,又要预测那些再入院风险较高的患者。
利用电子病历中可用的数据开发两个临床预测模型:1)识别因 AECOPD 入院的患者,2)预测 AECOPD 出院后 30 天内的再入院。
使用两家医院 2012 年至 2018 年所有内科综合住院患者的数据创建了两个数据集:一个队列用于识别 AECOPD,另一个队列用于预测 30 天内再入院。我们使用四种算法拟合和内部验证模型。
在 64609 例住院患者中,有 3620 例(5.6%)被诊断为 AECOPD。在出院患者中,有 518 例(15.4%)在 30 天内再次住院。对于识别诊断为 AECOPD 的患者,表现最好的模型是 LASSO 和一个包含入院后前 72 小时内开具的特定药物的四变量回归模型。对于 30 天内再入院预测,表现最好的模型是一个由前一年 COPD 住院次数和前一年非 COPD 住院次数组成的两变量回归模型。
我们生成了临床预测模型,以在住院期间识别 AECOPD,并预测急性加重后 30 天的再入院。需要进一步的工作来改进和外部验证这些模型。