Department of Epidemiology, University of Groningen, University Medical Center Groningen, 9700 Groningen, The Netherlands.
Eur J Heart Fail. 2012 Feb;14(2):168-75. doi: 10.1093/eurjhf/hfr163. Epub 2011 Dec 7.
Several models for predicting the prognosis of heart failure (HF) patients have been developed, but all of them focus on a single outcome variable, such as all-cause mortality. The purpose of this study was to develop a multistate model for simultaneously predicting survival and HF-related hospitalization in patients discharged alive from hospital after recovery from acute HF.
The model was derived in the COACH (Coordinating Study Evaluating Outcomes of Advising and Counseling in Heart Failure) cohort, a multicentre, randomized controlled trial in which 1023 patients were enrolled after hospitalization because of HF. External validation was attained with the FINN-AKVA (Finish Acute Heart Failure Study) cohort, a prospective, multicentre study with 620 patients hospitalized due to acute HF. The observed vs. predicted 18-month survival was 72.1% vs. 72.3% in the derivation cohort and 71.4% vs. 71.2% in the validation cohort. The corresponding values of the c statistic were 0.733 [95% confidence interval (CI) 0.705-0.761] and 0.702 (95% CI 0.663-0.744), respectively. The model's accuracy in predicting HF hospitalization was excellent, with predicted values that closely resembled the values observed in the derivation cohort.
The COACH risk engine accurately predicted survival and various measures of recurrent hospitalization in (acute) HF patients. It may therefore become a valuable tool in improving and personalizing patient care and optimizing the use of scarce healthcare resources.
已经开发出了几种用于预测心力衰竭(HF)患者预后的模型,但它们都只关注单一的结局变量,例如全因死亡率。本研究的目的是开发一种多状态模型,以同时预测急性 HF 恢复后存活出院患者的生存和 HF 相关住院情况。
该模型源自 COACH(心力衰竭咨询和指导协调研究)队列,这是一项多中心、随机对照试验,共纳入了 1023 名因 HF 住院的患者。外部验证是通过 FINN-AKVA(芬兰急性心力衰竭研究)队列实现的,这是一项前瞻性、多中心研究,共纳入了 620 名因急性 HF 住院的患者。在推导队列中,观察到的 18 个月生存率为 72.1%,预测生存率为 72.3%;在验证队列中,观察到的 18 个月生存率为 71.4%,预测生存率为 71.2%。相应的 c 统计量值分别为 0.733 [95%置信区间(CI)0.705-0.761]和 0.702(95% CI 0.663-0.744)。该模型预测 HF 住院的准确性非常高,预测值与推导队列中的观察值非常接近。
COACH 风险引擎准确预测了(急性)HF 患者的生存和各种再住院情况。因此,它可能成为改善和个性化患者护理以及优化稀缺医疗资源利用的有价值的工具。