Division of System Cohort, Medical Institute of Bioregulation, Kyushu University, 3-1-1 Maidashi, Higashi-ku, Fukuoka, Fukuoka, 812-8582, Japan.
RIKEN Center for Advanced Intelligence Project, Nihonbashi 1-chome Mitsui Building, 15th floor, 1-4-1 Nihonbashi, Chuo-ku, Tokyo, 103-0027, Japan.
Sci Rep. 2018 Jan 9;8(1):156. doi: 10.1038/s41598-017-18315-9.
Genome-wide identification of all target proteins of drug candidate compounds is a challenging issue in drug discovery. Moreover, emerging phenotypic effects, including therapeutic and adverse effects, are heavily dependent on the inhibition or activation of target proteins. Here we propose a novel computational method for predicting inhibitory and activatory targets of drug candidate compounds. Specifically, we integrated chemically-induced and genetically-perturbed gene expression profiles in human cell lines, which avoided dependence on chemical structures of compounds or proteins. Predictive models for individual target proteins were simultaneously constructed by the joint learning algorithm based on transcriptomic changes in global patterns of gene expression profiles following chemical treatments, and following knock-down and over-expression of proteins. This method discriminates between inhibitory and activatory targets and enables accurate identification of therapeutic effects. Herein, we comprehensively predicted drug-target-disease association networks for 1,124 drugs, 829 target proteins, and 365 human diseases, and validated some of these predictions in vitro. The proposed method is expected to facilitate identification of new drug indications and potential adverse effects.
在药物发现中,鉴定候选药物化合物的所有靶蛋白是一个具有挑战性的问题。此外,新兴的表型效应,包括治疗和不良反应,在很大程度上取决于靶蛋白的抑制或激活。在这里,我们提出了一种预测候选药物化合物的抑制和激活靶蛋白的新计算方法。具体来说,我们整合了化学诱导和遗传扰动的人类细胞系基因表达谱,从而避免了对化合物或蛋白质化学结构的依赖。通过基于化学处理后基因表达谱的全局模式的转录组变化以及蛋白质敲低和过表达的联合学习算法,同时构建了针对单个靶蛋白的预测模型。该方法可区分抑制性和激活性靶标,并能准确识别治疗效果。在此,我们全面预测了 1124 种药物、829 种靶蛋白和 365 种人类疾病的药物-靶-病关联网络,并在体外验证了其中的一些预测。该方法有望促进新的药物适应症和潜在不良反应的鉴定。