The Blavatnik School of Computer Science, Tel-Aviv University, Tel-Aviv 69978, Israel.
Nat Commun. 2013;4:2632. doi: 10.1038/ncomms3632.
The growing availability of 'omics' data and high-quality in silico genome-scale metabolic models (GSMMs) provide a golden opportunity for the systematic identification of new metabolic drug targets. Extant GSMM-based methods aim at identifying drug targets that would kill the target cell, focusing on antibiotics or cancer treatments. However, normal human metabolism is altered in many diseases and the therapeutic goal is fundamentally different--to retrieve the healthy state. Here we present a generic metabolic transformation algorithm (MTA) addressing this issue. First, the prediction accuracy of MTA is comprehensively validated using data sets of known perturbations. Second, two predicted yeast lifespan-extending genes, GRE3 and ADH2, are experimentally validated, together with their associated hormetic effect. Third, we show that MTA predicts new drug targets for human ageing that are enriched with orthologs of known lifespan-extending genes and with genes downregulated following caloric restriction mimetic treatments. MTA offers a promising new approach for the identification of drug targets in metabolically related disorders.
“组学”数据的日益丰富和高质量的计算机基因组规模代谢模型(GSMM)为系统地鉴定新的代谢药物靶点提供了绝佳机会。现有的基于 GSMM 的方法旨在识别杀死靶细胞的药物靶点,重点是抗生素或癌症治疗。然而,许多疾病会改变正常的人类代谢,治疗目标从根本上是不同的——恢复健康状态。在这里,我们提出了一种通用的代谢转化算法(MTA)来解决这个问题。首先,使用已知扰动数据集全面验证 MTA 的预测准确性。其次,通过实验验证了两个预测的延长酵母寿命的基因 GRE3 和 ADH2,以及它们相关的激效作用。第三,我们表明 MTA 预测了人类衰老的新药物靶点,这些靶点富含与已知延长寿命基因的同源物以及与卡路里限制模拟治疗后下调的基因。MTA 为代谢相关疾病的药物靶点鉴定提供了一种有前途的新方法。