He Cai-Yun, Qiu Miao-Zhen, Yang Xin-Hua, Zhou Da-Lei, Ma Jiang-Jun, Long Ya-Kang, Ye Zu-Lu, Xu Bo-Heng, Zhao Qi, Jin Ying, Lu Shi-Xun, Wang Zhi-Qiang, Guan Wen-Long, Zhao Bai-Wei, Zhou Zhi-Wei, Shao Jian-Yong, Xu Rui-Hua
State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Sun Yat-sen University, Guangzhou, P. R. China.
Department of Molecular Diagnostics, Sun Yat-sen University Cancer Center, Sun Yat-sen University, Guangzhou, P. R. China.
Clin Transl Med. 2020 Jan;10(1):353-362. doi: 10.1002/ctm2.32.
To identify how Epstein-Barr virus (EBV) status combined with molecular profiling predicts the prognosis of gastric cancer patients and their associated clinical actionable biomarkers.
A next-generation sequencing assay targeting 295 cancer-related genes was performed in 73 EBV-associated gastric cancer (EBVaGC) and 75 EBV-negative gastric cancer (EBVnGC) specimens and these results were compared with overall survival (OS).
PIK3CA, ARID1A, SMAD4, and PIK3R1 mutated significantly more frequently in EBVaGC compared with their corresponding mutation rate in EBVnGC. As the most frequently mutated gene in EBVnGC (62.7%), TP53 also displayed a mutation rate of 15.1% in EBVaGC. PIK3R1 was revealed as a novel mutated gene (11.0%) associated almost exclusively with EBVaGC. PIK3CA, SMAD4, PIK3R1, and BCOR were revealed to be unique driver genes in EBVaGC. ARID1A displayed a significantly large proportion of inactivated variants in EBVaGC. A notable finding was that integrating the EBV status with tumor mutation burden (TMB) and large genomic instability (LGI) categorized the tumors into four distinct molecular subtypes and optimally predicted patient prognosis. The corresponding median OSs for the EBV+/TMB-high, EBV+/TMB-low, EBV-/LGI-, and EBV-/LGI+ subtypes were 96.2, 75.3, 44.4, and 20.2 months, respectively. The different subtypes were significantly segregated according to distinct mutational profiles and pathways.
Novel mutations in PIK3R1 and TP53 genes, driver genes such as PIK3CA, SMAD4, PIK3R1, BCOR, and ARID1A, and distinguished genomic profiles from EBVnGC were identified in EBVaGC tumors. The classification of gastric cancer by EBV, TMB, and LGI could be a good prognostic indicator, and provides distinguishing, targetable markers for treatment.
确定爱泼斯坦-巴尔病毒(EBV)状态与分子谱分析如何预测胃癌患者的预后及其相关的临床可操作生物标志物。
对73例EBV相关胃癌(EBVaGC)和75例EBV阴性胃癌(EBVnGC)标本进行了针对295个癌症相关基因的二代测序分析,并将这些结果与总生存期(OS)进行比较。
与EBVnGC中的相应突变率相比,PIK3CA、ARID1A、SMAD4和PIK3R1在EBVaGC中的突变频率显著更高。作为EBVnGC中最常突变的基因(62.7%),TP53在EBVaGC中的突变率也为15.1%。PIK3R1被发现是一个几乎仅与EBVaGC相关的新突变基因(11.0%)。PIK3CA、SMAD4、PIK3R1和BCOR被发现是EBVaGC中的独特驱动基因。ARID1A在EBVaGC中显示出显著比例的失活变异。一个值得注意的发现是,将EBV状态与肿瘤突变负担(TMB)和大基因组不稳定性(LGI)相结合,可将肿瘤分为四种不同的分子亚型,并能最佳地预测患者预后。EBV+/TMB高、EBV+/TMB低、EBV-/LGI-和EBV-/LGI+亚型的相应中位总生存期分别为96.2、75.3、44.4和20.2个月。不同亚型根据不同的突变谱和途径明显分开。
在EBVaGC肿瘤中鉴定出PIK3R1和TP53基因的新突变、PIK3CA、SMAD4、PIK3R1、BCOR和ARID1A等驱动基因,以及与EBVnGC不同的基因组图谱。通过EBV、TMB和LGI对胃癌进行分类可能是一个良好的预后指标,并为治疗提供独特的、可靶向的标志物。