National Center for Biotechnology Information, National Library of Medicine, National Institutes of Health, 8600 Rockville Pike, 20894, Bethesda, USA.
Current address: Faculty of Mathematics, Informatics, and Mechanics, University of Warsaw, ul. Banacha 2, 02-097, Warszawa, Poland.
Genome Med. 2023 Mar 6;15(1):15. doi: 10.1186/s13073-023-01162-x.
There has been a growing appreciation recently that mutagenic processes can be studied through the lenses of mutational signatures, which represent characteristic mutation patterns attributed to individual mutagens. However, the causal links between mutagens and observed mutation patterns as well as other types of interactions between mutagenic processes and molecular pathways are not fully understood, limiting the utility of mutational signatures.
To gain insights into these relationships, we developed a network-based method, named GENESIGNET that constructs an influence network among genes and mutational signatures. The approach leverages sparse partial correlation among other statistical techniques to uncover dominant influence relations between the activities of network nodes.
Applying GENESIGNET to cancer data sets, we uncovered important relations between mutational signatures and several cellular processes that can shed light on cancer-related processes. Our results are consistent with previous findings, such as the impact of homologous recombination deficiency on clustered APOBEC mutations in breast cancer. The network identified by GENESIGNET also suggest an interaction between APOBEC hypermutation and activation of regulatory T Cells (Tregs), as well as a relation between APOBEC mutations and changes in DNA conformation. GENESIGNET also exposed a possible link between the SBS8 signature of unknown etiology and the Nucleotide Excision Repair (NER) pathway.
GENESIGNET provides a new and powerful method to reveal the relation between mutational signatures and gene expression. The GENESIGNET method was implemented in python, and installable package, source codes and the data sets used for and generated during this study are available at the Github site https://github.com/ncbi/GeneSigNet.
最近人们越来越认识到,可以通过突变特征来研究诱变过程,这些特征代表了归因于单个诱变剂的特征突变模式。然而,诱变剂与观察到的突变模式之间的因果关系以及诱变过程与分子途径之间的其他类型的相互作用尚未完全了解,这限制了突变特征的实用性。
为了深入了解这些关系,我们开发了一种基于网络的方法,名为 GENESIGNET,它在基因和突变特征之间构建了一个影响网络。该方法利用稀疏的部分相关和其他统计技术来揭示网络节点活动之间的主要影响关系。
将 GENESIGNET 应用于癌症数据集,我们揭示了突变特征与几个细胞过程之间的重要关系,这些关系可以阐明与癌症相关的过程。我们的结果与以前的发现一致,例如同源重组缺陷对乳腺癌中簇状 APOBEC 突变的影响。GENESIGNET 识别的网络还表明 APOBEC 高突变与调节性 T 细胞(Treg)的激活之间存在相互作用,以及 APOBEC 突变与 DNA构象变化之间存在关系。GENESIGNET 还揭示了未知病因的 SBS8 特征与核苷酸切除修复(NER)途径之间的可能联系。
GENESIGNET 提供了一种新的、强大的方法来揭示突变特征与基因表达之间的关系。GENESIGNET 方法是用 python 实现的,可安装的包、用于本研究的数据和生成的数据都可以在 Github 网站 https://github.com/ncbi/GeneSigNet 上获得。