Zhou Pi-Qi, Zheng Shao-Ping, Yu Min, He Sheng-Song, Weng Zhi-Hong
Pi-Qi Zhou, Department of Integrated Traditional and Chinese Medicine, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan 430022, Hubei Province, China.
World J Gastroenterol. 2015 Aug 28;21(32):9614-22. doi: 10.3748/wjg.v21.i32.9614.
To establish a new model for predicting survival in acute-on-chronic liver failure (ACLF) patients treated with an artificial liver support system.
One hundred and eighty-one ACLF patients who were admitted to the hospital from January 1, 2012 to December 31, 2014 and were treated with an artificial liver support system were enrolled in this retrospective study, including a derivation cohort (n = 113) and a validation cohort (n = 68). Laboratory parameters at baseline were analyzed and correlated with clinical outcome. In addition to standard medical therapy, ACLF patients underwent plasma exchange (PE) or plasma bilirubin adsorption (PBA) combined with plasma exchange. For the derivation cohort, Kaplan-Meier methods were used to estimate survival curves, and Cox regression was used in survival analysis to generate a prognostic model. The performance of the new model was tested in the validation cohort using a receiver-operator curve.
The mean overall survival for the derivation cohort was 441 d (95%CI: 379-504 d), and the 90- and 270-d survival probabilities were 70.3% and 58.3%, respectively. The mean survival times of patients treated with PBA plus PE and patients treated with PE were 531 d (95%CI: 455-605 d) and 343 d (95%CI: 254-432 d), respectively, which were significantly different (P = 0.012). When variables with bivariate significance were selected for inclusion into the multivariate Cox regression model, number of complications, age, scores of the model for end-stage liver disease (MELD) and type of artificial liver support system were defined as independent risk factors for survival in ACLF patients. This new prognostic model could accurately discriminate the outcome of patients with different scores in this cohort (P < 0.001). The model also had the ability to assign a predicted survival probability for individual patients. In the validation cohort, the new model remained better than the MELD.
A novel model was constructed to predict prognosis and accurately discriminate survival in ACLF patients treated with an artificial liver support system.
建立一种预测接受人工肝支持系统治疗的慢加急性肝衰竭(ACLF)患者生存情况的新模型。
本回顾性研究纳入了2012年1月1日至2014年12月31日期间入院并接受人工肝支持系统治疗的181例ACLF患者,包括一个推导队列(n = 113)和一个验证队列(n = 68)。分析基线时的实验室参数并将其与临床结局相关联。除标准药物治疗外,ACLF患者接受了血浆置换(PE)或血浆胆红素吸附(PBA)联合血浆置换。对于推导队列,采用Kaplan-Meier方法估计生存曲线,并在生存分析中使用Cox回归生成预后模型。使用受试者工作特征曲线在验证队列中测试新模型的性能。
推导队列的平均总生存期为441天(95%CI:379 - 504天),90天和270天的生存概率分别为70.3%和58.3%。接受PBA加PE治疗的患者和接受PE治疗的患者的平均生存时间分别为531天(95%CI:455 - 605天)和343天(95%CI:254 - 432天),差异有统计学意义(P = 0.012)。当选择具有双变量显著性的变量纳入多变量Cox回归模型时,并发症数量、年龄、终末期肝病模型(MELD)评分和人工肝支持系统类型被确定为ACLF患者生存的独立危险因素。这个新的预后模型能够准确区分该队列中不同评分患者的结局(P < 0.001)。该模型还能够为个体患者分配预测的生存概率。在验证队列中,新模型仍然优于MELD。
构建了一种新模型来预测接受人工肝支持系统治疗的ACLF患者的预后并准确区分生存情况。