Dorajoo Sreemanee Raaj, See Vincent, Chan Chen Teng, Tan Joyce Zhenyin, Tan Doreen Su Yin, Abdul Razak Siti Maryam Binte, Ong Ting Ting, Koomanan Narendran, Yap Chun Wei, Chan Alexandre
Department of Pharmacy, National University of Singapore, Singapore.
Department of Pharmacy, Khoo Teck Puat Hospital Singapore, Singapore.
Pharmacotherapy. 2017 Mar;37(3):268-277. doi: 10.1002/phar.1896. Epub 2017 Feb 20.
Stratifying patients according to 15-day readmission risk would be useful in identifying those who may benefit from targeted interventions during and/or following hospital discharge that are designed to reduce the likelihood of readmission.
A prediction model was derived via a case-control analysis of patients discharged from a tertiary hospital in Singapore using multivariate logistic regression. The model was validated in two independent external cohorts separated temporally and geographically. Model discrimination was assessed using the C-statistic, while calibration was assessed using the Hosmer-Lemeshow χ and the Brier score statistics.
A total of 1291 patients were included with 670, 101, and 520 patients in the derivation, temporal, and geographical validation cohorts, respectively. Age (odds ratio [OR] 1.02, 95% confidence interval [CI] 1.01-1.03, p=0.008), anemia (OR 2.08, 95% CI 1.15-8.05, p=0.015), malignancy (OR 3.37, 95% CI 1.16-9.80, p=0.026), peptic ulcer disease (OR 3.05, 95% CI 1.12-8.26, p=0.029), chronic obstructive pulmonary disease (OR 3.16, 95% CI 1.24-8.05, p=0.016), number of discharge medications (OR 1.06, 95% CI 1.01-1.12, p=0.026), discharge to nursing homes (OR 3.57, 95% CI 1.57-8.34, p=0.003), and premature discharge against medical advice (OR 5.05, 95% CI 1.20-21.23, p=0.027) were independent predictors of 15-day readmission risk. The model demonstrated reasonable discrimination on the temporal and geographical validation cohorts with a C-statistic of 0.65 and 0.64, respectively. Model miscalibration was observed in both validation cohorts.
A 15-day readmission risk prediction model is proposed and externally validated. The model facilitates the targeting of interventions for patients who are at high risk of an early readmission.
根据15天再入院风险对患者进行分层,有助于识别那些可能从旨在降低再入院可能性的出院期间和/或出院后针对性干预措施中获益的患者。
通过对新加坡一家三级医院出院患者进行病例对照分析,采用多因素逻辑回归得出一个预测模型。该模型在两个在时间和地理上相互独立的外部队列中进行了验证。使用C统计量评估模型的区分度,使用Hosmer-Lemeshow χ检验和Brier评分统计量评估校准度。
总共纳入了1291例患者,分别有670例、101例和520例患者纳入推导队列、时间验证队列和地理验证队列。年龄(比值比[OR]1.02,95%置信区间[CI]1.01-1.03,p=0.008)、贫血(OR 2.08,95%CI 1.15-8.05,p=0.015)、恶性肿瘤(OR 3.37,95%CI 1.16-9.80,p=0.026)、消化性溃疡疾病(OR 3.05,95%CI 1.12-8.26,p=0.029)、慢性阻塞性肺疾病(OR 3.16,95%CI 1.24-8.05,p=0.016)、出院带药数量(OR 1.06,95%CI 1.01-1.12)、出院至养老院(OR 3.57,95%CI 1.57-8.34,p=0.003)以及违反医嘱提前出院(OR 5.05,95%CI 1.20-21.23,p=0.027)是15天再入院风险的独立预测因素。该模型在时间验证队列和地理验证队列中显示出合理的区分度,C统计量分别为0.65和0.64。在两个验证队列中均观察到模型校准错误。
提出了一个15天再入院风险预测模型并进行了外部验证。该模型有助于针对早期再入院高风险患者进行干预。