The Blavatnik School of Computer Science, Sackler School of Medicine, and Department of Molecular Microbiology and Biotechnology, Faculty of Life Sciences, Tel-Aviv University, Tel-Aviv 69978, Israel.
Proc Natl Acad Sci U S A. 2013 Nov 19;110(47):19166-71. doi: 10.1073/pnas.1312361110. Epub 2013 Nov 6.
Gene suppression and overexpression are both fundamental tools in linking genotype to phenotype in model organisms. Computational methods have proven invaluable in studying and predicting the deleterious effects of gene deletions, and yet parallel computational methods for overexpression are still lacking. Here, we present Expression-Dependent Gene Effects (EDGE), an in silico method that can predict the deleterious effects resulting from overexpression of either native or foreign metabolic genes. We first test and validate EDGE's predictive power in bacteria through a combination of small-scale growth experiments that we performed and analysis of extant large-scale datasets. Second, a broad cross-species analysis, ranging from microorganisms to multiple plant and human tissues, shows that genes that EDGE predicts to be deleterious when overexpressed are indeed typically down-regulated. This reflects a universal selection force keeping the expression of potentially deleterious genes in check. Third, EDGE-based analysis shows that cancer genetic reprogramming specifically suppresses genes whose overexpression impedes proliferation. The magnitude of this suppression is large enough to enable an almost perfect distinction between normal and cancerous tissues based solely on EDGE results. We expect EDGE to advance our understanding of human pathologies associated with up-regulation of particular transcripts and to facilitate the utilization of gene overexpression in metabolic engineering.
基因抑制和过表达都是将基因型与模型生物表型联系起来的基本工具。计算方法已被证明在研究和预测基因缺失的有害影响方面非常宝贵,但过表达的平行计算方法仍然缺乏。在这里,我们提出了表达依赖性基因效应(EDGE),这是一种可以预测过表达天然或外来代谢基因所产生的有害影响的计算方法。我们首先通过我们进行的小规模生长实验的组合以及对现有大规模数据集的分析,测试和验证了 EDGE 在细菌中的预测能力。其次,从微生物到多种植物和人类组织的广泛跨物种分析表明,EDGE 预测过表达时有害的基因实际上通常被下调。这反映了一种普遍的选择力量,可防止潜在有害基因的表达失控。第三,基于 EDGE 的分析表明,癌症遗传重编程特别抑制了那些过表达会阻碍增殖的基因。这种抑制的幅度之大,足以仅基于 EDGE 结果就能在正常组织和癌症组织之间做出几乎完美的区分。我们预计 EDGE 将增进我们对与特定转录物上调相关的人类病理的理解,并促进基因过表达在代谢工程中的利用。