Division of Data Science, College of Information and Communication Technology, The University of Suwon, Hwaseong 18323, Korea.
School of Life Sciences, Gwangju Institute of Science and Technology, Gwangju 61005, Korea.
Int J Mol Sci. 2021 Oct 15;22(20):11114. doi: 10.3390/ijms222011114.
Genetic interactions (GIs), such as the synthetic lethal interaction, are promising therapeutic targets in precision medicine. However, despite extensive efforts to characterize GIs by large-scale perturbation screening, considerable false positives have been reported in multiple studies. We propose a new computational approach for improved precision in GI identification by applying constraints that consider actual biological phenomena. In this study, GIs were characterized by assessing mutation, loss of function, and expression profiles in the DEPMAP database. The expression profiles were used to exclude loss-of-function data for nonexpressed genes in GI characterization. More importantly, the characterized GIs were refined based on Kyoto Encyclopedia of Genes and Genomes (KEGG) or protein-protein interaction (PPI) networks, under the assumption that genes genetically interacting with a certain mutated gene are adjacent in the networks. As a result, the initial GIs characterized with CRISPR and RNAi screenings were refined to 65 and 23 GIs based on KEGG networks and to 183 and 142 GIs based on PPI networks. The evaluation of refined GIs showed improved precision with respect to known synthetic lethal interactions. The refining process also yielded a synthetic partner network (SPN) for each mutated gene, which provides insight into therapeutic strategies for the mutated genes; specifically, exploring the SPN of mutated revealed as a potential target for treating -mutated cancer, as validated by previous research. We expect that this work will advance cancer therapeutic research.
遗传相互作用(GIs),如合成致死相互作用,是精准医学中有前途的治疗靶点。然而,尽管通过大规模扰动筛选对 GIs 进行了广泛的特征描述,但在多项研究中都报道了相当多的假阳性。我们提出了一种新的计算方法,通过应用考虑实际生物学现象的约束条件,来提高 GI 识别的精度。在本研究中,通过评估 DEPMAP 数据库中的突变、功能丧失和表达谱来描述 GIs。表达谱用于在 GI 特征描述中排除 GI 特征描述中无表达基因的功能丧失数据。更重要的是,根据京都基因与基因组百科全书(KEGG)或蛋白质-蛋白质相互作用(PPI)网络对特征化的 GIs 进行了细化,假设与某个突变基因遗传相互作用的基因在网络中是相邻的。结果,通过 CRISPR 和 RNAi 筛选初始特征化的 GIs 分别根据 KEGG 网络细化为 65 个和 23 个 GI,根据 PPI 网络细化为 183 个和 142 个 GI。对精炼 GI 的评估显示,与已知的合成致死相互作用相比,其精度有所提高。精炼过程还为每个突变基因生成了一个合成伙伴网络(SPN),这为突变基因的治疗策略提供了深入的了解;具体来说,探索突变的 SPN 揭示了作为治疗突变癌症的潜在靶点,这一结果在之前的研究中得到了验证。我们希望这项工作将推进癌症治疗研究。