Bian Jin, Long Jun-Yu, Yang Xu, Yang Xiao-Bo, Xu Yi-Yao, Lu Xin, Sang Xin-Ting, Zhao Hai-Tao
Department of Liver Surgery, Peking Union Medical College Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing 100730, China.
World J Gastroenterol. 2020 Nov 7;26(41):6414-6430. doi: 10.3748/wjg.v26.i41.6414.
Gastric cancer (GC) ranks as the third leading cause of cancer-related death worldwide. Epigenetic alterations contribute to tumor heterogeneity in early stages.
To identify the specific deoxyribonucleic acid (DNA) methylation sites that influence the prognosis of GC patients and explore the prognostic value of a model based on subtypes of DNA methylation.
Patients were randomly classified into training and test sets. Prognostic DNA methylation sites were identified by integrating DNA methylation profiles and clinical data from The Cancer Genome Atlas GC cohort. In the training set, unsupervised consensus clustering was performed to identify distinct subgroups based on methylation status. A risk score model was built based on Kaplan-Meier, least absolute shrinkage and selector operation, and multivariate Cox regression analyses. A test set was used to validate this model.
Three subgroups based on DNA methylation profiles in the training set were identified using 1061 methylation sites that were significantly associated with survival. These methylation subtypes reflected differences in T, N, and M category, age, stage, and prognosis. Forty-one methylation sites were screened as specific hyper- or hypomethylation sites for each specific subgroup. Enrichment analysis revealed that they were mainly involved in pathways related to carcinogenesis, tumor growth, and progression. Finally, two methylation sites were chosen to generate a prognostic model. The high-risk group showed a markedly poor prognosis compared to the low-risk group in both the training [hazard ratio (HR) = 2.24, 95% confidence interval (CI): 1.28-3.92, < 0.001] and test (HR = 2.12, 95%CI: 1.19-3.78, = 0.002) datasets.
DNA methylation-based classification reflects the epigenetic heterogeneity of GC and may contribute to predicting prognosis and offer novel insights for individualized treatment of patients with GC.
胃癌(GC)是全球癌症相关死亡的第三大主要原因。表观遗传改变在早期阶段促成肿瘤异质性。
确定影响GC患者预后的特定脱氧核糖核酸(DNA)甲基化位点,并探索基于DNA甲基化亚型的模型的预后价值。
将患者随机分为训练集和测试集。通过整合来自癌症基因组图谱GC队列的DNA甲基化谱和临床数据,确定预后DNA甲基化位点。在训练集中,基于甲基化状态进行无监督一致性聚类以识别不同的亚组。基于Kaplan-Meier、最小绝对收缩和选择算子操作以及多变量Cox回归分析建立风险评分模型。使用测试集验证该模型。
利用与生存显著相关的1061个甲基化位点,在训练集中确定了基于DNA甲基化谱的三个亚组。这些甲基化亚型反映了T、N和M类别、年龄、分期和预后的差异。筛选出41个甲基化位点作为每个特定亚组的特定高甲基化或低甲基化位点。富集分析表明,它们主要参与与致癌、肿瘤生长和进展相关的途径。最后,选择两个甲基化位点生成预后模型。在训练集[风险比(HR)=2.24,95%置信区间(CI):1.28 - 3.92,P<0.001]和测试集(HR = 2.12,95%CI:1.19 - 3.78,P = 0.002)中,高风险组的预后明显比低风险组差。
基于DNA甲基化的分类反映了GC的表观遗传异质性,可能有助于预测预后,并为GC患者的个体化治疗提供新的见解。