Peterson Leif E, Kovyrshina Tatiana
Center for Biostatistics, Houston Methodist Research Institute, Houston, TX 77030, USA.
Dept. of Healthcare Policy and Research, Weill Cornell Medical College, Cornell University, New York, NY 10065, USA.
Heliyon. 2017 Apr 11;3(4):e00277. doi: 10.1016/j.heliyon.2017.e00277. eCollection 2017 Apr.
Computational methods were employed to determine progression inference of genomic alterations in commonly occurring cancers. Using cross-sectional TCGA data, we computed evolutionary trajectories involving selectivity relationships among pairs of gene-specific genomic alterations such as somatic mutations, deletions, amplifications, downregulation, and upregulation among the top 20 driver genes associated with each cancer. Results indicate that the majority of hierarchies involved TP53, PIK3CA, ERBB2, APC, KRAS, EGFR, IDH1, VHL, etc. Research into the order and accumulation of genomic alterations among cancer driver genes will ever-increase as the costs of nextgen sequencing subside, and personalized/precision medicine incorporates whole-genome scans into the diagnosis and treatment of cancer.
采用计算方法来确定常见癌症中基因组改变的进展推断。利用横断面的癌症基因组图谱(TCGA)数据,我们计算了涉及基因特异性基因组改变对之间选择性关系的进化轨迹,这些改变包括与每种癌症相关的前20个驱动基因中的体细胞突变、缺失、扩增、下调和上调。结果表明,大多数层级涉及TP53、PIK3CA、ERBB2、APC、KRAS、EGFR、IDH1、VHL等。随着新一代测序成本的下降,以及个性化/精准医学将全基因组扫描纳入癌症的诊断和治疗中,对癌症驱动基因间基因组改变的顺序和积累的研究将会不断增加。