University Department of Anaesthesia, Critical Care, and Pain Medicine, School of Clinical Sciences, University of Edinburgh, Edinburgh, UK.
Usher Institute for Population Health Sciences and Informatics, University of Edinburgh, Edinburgh, UK.
Thorax. 2019 Nov;74(11):1046-1054. doi: 10.1136/thoraxjnl-2017-210822. Epub 2018 Apr 5.
Intensive care unit (ICU) survivors experience high levels of morbidity after hospital discharge and are at high risk of unplanned hospital readmission. Identifying those at highest risk before hospital discharge may allow targeting of novel risk reduction strategies. We aimed to identify risk factors for unplanned 90-day readmission, develop a risk prediction model and assess its performance to screen for ICU survivors at highest readmission risk.
Population cohort study linking registry data for patients discharged from general ICUs in Scotland (2005-2013). Independent risk factors for 90-day readmission and discriminant ability (c-index) of groups of variables were identified using multivariable logistic regression. Derivation and validation risk prediction models were constructed using a time-based split.
Of 55 975 ICU survivors, 24.1% (95%CI 23.7% to 24.4%) had unplanned 90-day readmission. Pre-existing health factors were fair discriminators of readmission (c-index 0.63, 95% CI 0.63 to 0.64) but better than acute illness factors (0.60) or demographics (0.54). In a subgroup of those with no comorbidity, acute illness factors (0.62) were better discriminators than pre-existing health factors (0.56). Overall model performance and calibration in the validation cohort was fair (0.65, 95% CI 0.64 to 0.66) but did not perform sufficiently well as a screening tool, demonstrating high false-positive/false-negative rates at clinically relevant thresholds.
Unplanned 90-day hospital readmission is common. Pre-existing illness indices are better predictors of readmission than acute illness factors. Identifying additional patient-centred drivers of readmission may improve risk prediction models. Improved understanding of risk factors that are amenable to intervention could improve the clinical and cost-effectiveness of post-ICU care and rehabilitation.
重症监护病房(ICU)幸存者在出院后会经历较高水平的发病率,并且存在计划外再次住院的高风险。在出院前确定哪些患者的风险最高,可能有助于确定新的降低风险策略。我们旨在确定计划外 90 天内再次住院的风险因素,开发风险预测模型,并评估其筛查 ICU 幸存者中再入院风险最高的能力。
这是一项将苏格兰普通 ICU 出院患者的登记数据进行链接的人群队列研究(2005-2013 年)。使用多变量逻辑回归确定 90 天内再次住院的独立风险因素和组变量的判别能力(C 指数)。使用基于时间的分割构建了推导和验证风险预测模型。
在 55975 例 ICU 幸存者中,24.1%(95%CI 23.7%至 24.4%)发生了计划外 90 天内再次住院。既往健康因素是再入院的公平判别因素(C 指数 0.63,95%CI 0.63 至 0.64),但优于急性疾病因素(0.60)或人口统计学因素(0.54)。在无合并症的亚组中,急性疾病因素(0.62)的判别能力优于既往健康因素(0.56)。验证队列中的总体模型性能和校准结果中等(0.65,95%CI 0.64 至 0.66),但作为筛查工具的性能不够好,在临床相关阈值下表现出高假阳性/假阴性率。
计划外 90 天内再次住院很常见。既往疾病指数比急性疾病因素更能预测再入院。确定其他以患者为中心的再入院驱动因素可能会改善风险预测模型。对可干预的风险因素的深入了解可能会提高 ICU 后护理和康复的临床和成本效益。