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基于贝叶斯网络的晚期胆囊癌生存预测模型:一项多机构研究

[The survival prediction model of advanced gallbladder cancer based on Bayesian network: a multi-institutional study].

作者信息

Tang Z H, Geng Z M, Chen C, Si S B, Cai Z Q, Song T Q, Gong P, Jiang L, Qiu Y H, He Y, Zhai W L, Li S P, Zhang Y C, Yang Y

机构信息

Department of General Surgery, Shanghai Xin Hua Hospital Affiliated to School of Medicine, Shanghai Jiaotong University, Shanghai 200092, China.

出版信息

Zhonghua Wai Ke Za Zhi. 2018 May 1;56(5):342-349. doi: 10.3760/cma.j.issn.0529-5815.2018.05.005.

Abstract

To investigate the clinical value of Bayesian network in predicting survival of patients with advanced gallbladder cancer(GBC)who underwent curative intent surgery. The clinical data of patients with advanced GBC who underwent curative intent surgery in 9 institutions from January 2010 to December 2015 were analyzed retrospectively.A median survival time model based on a tree augmented naïve Bayes algorithm was established by Bayesia Lab software.The survival time, number of metastatic lymph nodes(NMLN), T stage, pathological grade, margin, jaundice, liver invasion, age, sex and tumor morphology were included in this model.Confusion matrix, the receiver operating characteristic curve and area under the curve were used to evaluate the accuracy of the model.A priori statistical analysis of these 10 variables and a posterior analysis(survival time as the target variable, the remaining factors as the attribute variables)was performed.The importance rankings of each variable was calculated with the polymorphic Birnbaum importance calculation based on the posterior analysis results.The survival probability forecast table was constructed based on the top 4 prognosis factors. The survival curve was drawn by the Kaplan-Meier method, and differences in survival curves were compared using the Log-rank test. A total of 316 patients were enrolled, including 109 males and 207 females.The ratio of male to female was 1.0∶1.9, the age was (62.0±10.8)years.There was 298 cases(94.3%) R0 resection and 18 cases(5.7%) R1 resection.T staging: 287 cases(90.8%) T3 and 29 cases(9.2%) T4.The median survival time(MST) was 23.77 months, and the 1, 3, 5-year survival rates were 67.4%, 40.8%, 32.0%, respectively.For the Bayesian model, the number of correctly predicted cases was 121(≤23.77 months) and 115(>23.77 months) respectively, leading to a 74.86% accuracy of this model.The prior probability of survival time was 0.503 2(≤23.77 months) and 0.496 8(>23.77 months), the importance ranking showed that NMLN(0.366 6), margin(0.350 1), T stage(0.319 2) and pathological grade(0.258 9) were the top 4 prognosis factors influencing the postoperative MST.These four factors were taken as observation variables to get the probability of patients in different survival periods.Basing on these results, a survival prediction score system including NMLN, margin, T stage and pathological grade was designed, the median survival time(month) of 4-9 points were 66.8, 42.4, 26.0, 9.0, 7.5 and 2.3, respectively, there was a statistically significant difference in the different points(<0.01). The survival prediction model of GBC based on Bayesian network has high accuracy.NMLN, margin, T staging and pathological grade are the top 4 risk factors affecting the survival of patients with advanced GBC who underwent curative resection.The survival prediction score system based on these four factors could be used to predict the survival and to guide the decision making of patients with advanced GBC.

摘要

探讨贝叶斯网络在预测接受根治性手术的晚期胆囊癌(GBC)患者生存情况中的临床价值。回顾性分析2010年1月至2015年12月期间在9家机构接受根治性手术的晚期GBC患者的临床资料。利用Bayesia Lab软件建立基于树增强朴素贝叶斯算法的中位生存时间模型。该模型纳入了生存时间、转移淋巴结数目(NMLN)、T分期、病理分级、切缘、黄疸、肝侵犯、年龄、性别和肿瘤形态等因素。采用混淆矩阵、受试者工作特征曲线及曲线下面积评估模型的准确性。对这10个变量进行先验统计分析,并进行后验分析(以生存时间为目标变量,其余因素为属性变量)。根据后验分析结果,采用多态Birnbaum重要性计算方法计算各变量的重要性排名。基于前4个预后因素构建生存概率预测表。采用Kaplan-Meier法绘制生存曲线,并用Log-rank检验比较生存曲线的差异。共纳入316例患者,其中男性109例,女性207例。男女比例为1.0∶1.9,年龄为(62.0±10.8)岁。R0切除298例(94.3%),R1切除18例(5.7%)。T分期:T3期287例(90.8%),T4期29例(9.2%)。中位生存时间(MST)为23.77个月,1年、3年、5年生存率分别为67.4%、40.8%、32.0%。对于贝叶斯模型,正确预测病例数分别为121例(≤23.77个月)和115例(>23.77个月),该模型的准确率为74.86%。生存时间的先验概率为0.503 2(≤23.77个月)和0.496 8(>23.77个月),重要性排名显示NMLN(0.366 6)、切缘(0.350 1)、T分期(0.319 2)和病理分级(0.258 9)是影响术后MST的前4个预后因素。将这4个因素作为观察变量,得出不同生存期患者的概率。基于这些结果,设计了一个包括NMLN、切缘、T分期和病理分级的生存预测评分系统,4~9分的中位生存时间(月)分别为66.8、42.4、26.0、9.0、7.5和2.3,不同分数间差异有统计学意义(<0.01)。基于贝叶斯网络的GBC生存预测模型具有较高的准确性。NMLN、切缘、T分期和病理分级是影响接受根治性切除的晚期GBC患者生存的前4个危险因素。基于这4个因素的生存预测评分系统可用于预测晚期GBC患者的生存情况并指导其决策。

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