Federal Institute of Sao Paulo, Sao Carlos, SP, Brazil.
University of Sao Paulo, Sao Carlos, SP, Brazil.
Sci Rep. 2021 Dec 7;11(1):23551. doi: 10.1038/s41598-021-02671-8.
Identifying significantly mutated genes in cancer is essential for understanding the mechanisms of tumor initiation and progression. This task is a key challenge since large-scale genomic studies have reported an endless number of genes mutated at a shallow frequency. Towards uncovering infrequently mutated genes, gene interaction networks combined with mutation data have been explored. This work proposes Discovering Significant Cancer Genes (DiSCaGe), a computational method for discovering significant genes for cancer. DiSCaGe computes a mutation score for the genes based on the type of mutations they have. The influence received for their neighbors in the network is also considered and obtained through an asymmetric spreading strength applied to a consensus gene network. DiSCaGe produces a ranking of prioritized possible cancer genes. An experimental evaluation with six types of cancer revealed the potential of DiSCaGe for discovering known and possible novel significant cancer genes.
鉴定癌症中显著突变的基因对于理解肿瘤发生和发展的机制至关重要。由于大规模基因组研究报告了大量以浅频率突变的基因,因此这项任务是一个关键挑战。为了揭示低频突变的基因,已经探索了结合突变数据的基因相互作用网络。这项工作提出了 Discovering Significant Cancer Genes (DiSCaGe),这是一种用于发现癌症中显著基因的计算方法。DiSCaGe 根据基因所具有的突变类型为基因计算突变得分。还考虑了它们在网络中的邻居所收到的影响,并通过应用于共识基因网络的不对称扩展强度来获得。DiSCaGe 生成了优先考虑的可能癌症基因的排名。对六种类型的癌症进行的实验评估表明,DiSCaGe 具有发现已知和可能的新的显著癌症基因的潜力。