Department of Surgical Oncology and General Surgery, Key Laboratory of Precision Diagnosis and Treatment of Gastrointestinal Tumors, Ministry of Education, The First Affiliated Hospital of China Medical University, Shenyang City, China.
Cancer Med. 2020 May;9(9):3043-3056. doi: 10.1002/cam4.2952. Epub 2020 Mar 9.
It is critical to identify patients with stage II and III colorectal cancer (CRC) who will benefit from adjuvant chemotherapy (ACT) after curative surgery, while the only use of clinical factors is insufficient to predict this beneficial effect. In this study, we performed genetic algorithm (GA) to select ACT candidate genes, and built a predictive model of support vector machine (SVM) using gene expression profiles from the Gene Expression Omnibus database. The model contained four ACT candidate genes (EDEM1, MVD, SEMA5B, and WWP2) and TNM stage (stage II or III). After using Subpopulation Treatment Effect Pattern Plot to determine the optimal cutoff value of predictive scores, the validated patients from The Cancer Genome Atlas database can be divided into the predictive ACT-benefit/-futile groups. Patients in the predictive ACT-benefit group with 5-fluorouracil (5-Fu)-based ACT had significantly longer relapse-free survival (RFS) compared to those without ACT (P = .015); However, the difference in RFS in the predictive ACT-futile group was insignificant (P = .596). The multivariable analysis found that the predictive groups were significantly associated with the effect of ACT (P = .011). Consequently, we developed a predictive model based on the SVM and GA algorithm which was further validated to define patients who benefit from ACT on recurrence.
识别接受根治性手术后可能从辅助化疗(ACT)中获益的 II 期和 III 期结直肠癌(CRC)患者至关重要,而仅使用临床因素不足以预测这种获益效果。在本研究中,我们使用遗传算法(GA)选择 ACT 候选基因,并使用来自基因表达综合数据库的基因表达谱构建支持向量机(SVM)预测模型。该模型包含四个 ACT 候选基因(EDEM1、MVD、SEMA5B 和 WWP2)和 TNM 分期(II 期或 III 期)。使用亚群处理效应模式图确定预测评分的最佳截断值后,可将来自癌症基因组图谱数据库的验证患者分为预测 ACT 获益/无效组。在基于氟尿嘧啶(5-Fu)的 ACT 治疗中,预测 ACT 获益组的患者无复发生存率(RFS)明显长于未接受 ACT 治疗的患者(P=0.015);然而,在预测 ACT 无效组中,RFS 的差异无统计学意义(P=0.596)。多变量分析发现,预测组与 ACT 的效果显著相关(P=0.011)。因此,我们开发了一种基于 SVM 和 GA 算法的预测模型,进一步验证了该模型可以定义在复发方面从 ACT 中获益的患者。