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分子决策树算法预测局部晚期鼻咽癌的个体复发模式。

Molecular Decision Tree Algorithms Predict Individual Recurrence Pattern for Locally Advanced Nasopharyngeal Carcinoma.

作者信息

Cai Hongmin, Pang Xiaolin, Dong Dong, Ma Yan, Huang Yan, Fan Xinjuan, Wu Peihuang, Chen Haiyang, He Fang, Cheng Yikan, Liu Shuai, Yu Yizhen, Hong Minghuang, Xiao Jian, Wan Xiangbo, Lv Yanchun, Zheng Jian

机构信息

Department of Radiation Oncology, The Sixth Affiliated Hospital, Sun Yat-sen University, Guangzhou 510655, China.

School of Computer Science and Engineering, South China University of Technology, Guangzhou 510641, China.

出版信息

J Cancer. 2019 Jun 2;10(15):3323-3332. doi: 10.7150/jca.29693. eCollection 2019.

Abstract

: Recurrence remains one of the key reasons of relapse after the radical radiation for locally advanced nasopharyngeal carcinoma (NPC). Here, the multiple molecular and clinical variables integrated decision tree algorithms were designed to predict individual recurrence patterns (with VS without recurrence) for locally advanced NPC. : A total of 136 locally advanced NPC patients retrieved from a randomized controlled phase III trial, were included. For each patient, the expression levels of 33 clinicopathological biomarkers in tumor specimen, 3 Epstein-Barr virus related serological antibody titer and 5 clinicopathological variables, were detected and collected to construct the decision tree algorithm. The expression level of 33 clinicopathological biomarkers in tumor specimen was evaluated by immunohistochemistry staining. : Three algorithm classifiers, augmented by the adaptive boosting algorithm for variable selection and classification, were designed to predict individual recurrence pattern. The classifiers were trained in the training subset and further tested using a 10-fold cross-validation scheme in the validation subset. In total, 13 molecules expression level in tumor specimen, including AKT1, Aurora-A, Bax, Bcl-2, N-Cadherin, CENP-H, HIF-1α, LMP-1, C-Met, MMP-2, MMP-9, Pontin and Stathmin, and N stage were selected to construct three 10-fold cross-validation decision tree classifiers. These classifiers showed high predictive sensitivity (87.2-93.3%), specificity (69.0-100.0%), and overall accuracy (84.5-95.2%) to predict recurrence pattern individually. Multivariate analyses confirmed the decision tree classifier was an independent prognostic factor to predict individual recurrence (algorithm 1: hazard ration (HR) 0.07, 95% confidence interval (CI) 0.03-0.16, < 0.01; algorithm 2: HR 0.13, 95% CI 0.04-0.44, < 0.01; algorithm 3: HR 0.13, 95% CI 0.03-0.68, = 0.02). : Multiple molecular and clinicopathological variables integrated decision tree algorithms may individually predict the recurrence pattern for locally advanced NPC. This decision tree algorism provides a potential tool to select patients with high recurrence risk for intensive follow-up, and to diagnose recurrence at an earlier stage for salvage treatment in the NPC endemic region.

摘要

复发仍然是局部晚期鼻咽癌(NPC)根治性放疗后复发的关键原因之一。在此,设计了多分子和临床变量综合决策树算法,以预测局部晚期NPC的个体复发模式(复发与未复发)。

共纳入了136例从一项随机对照III期试验中检索出的局部晚期NPC患者。对于每位患者,检测并收集肿瘤标本中33种临床病理生物标志物的表达水平、3种爱泼斯坦-巴尔病毒相关血清学抗体滴度以及5种临床病理变量,以构建决策树算法。通过免疫组织化学染色评估肿瘤标本中33种临床病理生物标志物的表达水平。

设计了三种算法分类器,通过自适应增强算法进行变量选择和分类,以预测个体复发模式。这些分类器在训练子集中进行训练,并在验证子集中使用10折交叉验证方案进行进一步测试。总共选择了肿瘤标本中的13种分子表达水平,包括AKT1、Aurora-A、Bax、Bcl-2、N-钙黏蛋白、CENP-H、HIF-1α、LMP-1、C-Met、MMP-2、MMP-9、Pontin和Stathmin,以及N分期,构建三个10折交叉验证决策树分类器。这些分类器在个体预测复发模式方面显示出高预测敏感性(87.2 - 93.3%)、特异性(69.0 - 100.0%)和总体准确性(84.5 - 95.2%)。多变量分析证实决策树分类器是预测个体复发的独立预后因素(算法1:风险比(HR)0.07,95%置信区间(CI)0.03 - 0.16,<0.01;算法2:HR 0.13,95% CI 0.04 - 0.44,<0.01;算法3:HR 0.13,95% CI 0.03 - 0.68,=0.02)。

多分子和临床病理变量综合决策树算法可个体预测局部晚期NPC的复发模式。这种决策树算法为选择具有高复发风险的患者进行强化随访,以及在NPC流行地区早期诊断复发以进行挽救治疗提供了一种潜在工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6607/6603411/240617563878/jcav10p3323g001.jpg

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