Li Peng, Bai Chujie, Zhan Lingmin, Zhang Haoran, Zhang Yuanyuan, Zhang Wuxia, Wang Yingdong, Zhao Jinzhong
Shanxi key lab for modernization of TCVM, College of Basic Sciences, Shanxi Agricultural University, Jinzhong, Shanxi, China.
Department of Orthopedic Oncology, Peking University Cancer Hospital & Institute, Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education), Beijing, China.
Front Pharmacol. 2023 Jan 16;13:1089217. doi: 10.3389/fphar.2022.1089217. eCollection 2022.
Identification of the biological targets of a compound is of paramount importance for the exploration of the mechanism of action of drugs and for the development of novel drugs. A concept of the Connectivity Map (CMap) was previously proposed to connect genes, drugs, and disease states based on the common gene-expression signatures. For a new query compound, the CMap-based method can infer its potential targets by searching similar drugs with known targets (reference drugs) and measuring the similarities into their specific transcriptional responses between the query compound and those reference drugs. However, the available methods are often inefficient due to the requirement of the reference drugs as a medium to link the query agent and targets. Here, we developed a general procedure to extract target-induced consensus gene modules from the transcriptional profiles induced by the treatment of perturbagens of a target. A specific transcriptional gene module pair (GMP) was automatically identified for each target and could be used as a direct target signature. Based on the GMPs, we built the target network and identified some target gene clusters with similar biological mechanisms. Moreover, a gene module pair-based target identification (GMPTI) approach was proposed to predict novel compound-target interactions. Using this method, we have discovered novel inhibitors for three PI3K pathway proteins PI3Kα/β/δ, including PU-H71, alvespimycin, reversine, astemizole, raloxifene HCl, and tamoxifen.
确定化合物的生物学靶点对于探索药物作用机制和开发新药至关重要。先前提出了连接性图谱(CMap)的概念,以基于共同的基因表达特征连接基因、药物和疾病状态。对于一种新的查询化合物,基于CMap的方法可以通过搜索具有已知靶点的相似药物(参考药物)并测量查询化合物与那些参考药物之间其特定转录反应的相似性来推断其潜在靶点。然而,由于需要参考药物作为连接查询药物和靶点的媒介,现有的方法往往效率低下。在此,我们开发了一种通用程序,从由靶点的干扰剂处理诱导的转录谱中提取靶点诱导的共表达基因模块。为每个靶点自动识别一个特定的转录基因模块对(GMP),其可作为直接的靶点特征。基于这些GMP,我们构建了靶点网络并鉴定了一些具有相似生物学机制的靶点基因簇。此外,还提出了一种基于基因模块对的靶点识别(GMPTI)方法来预测新型化合物-靶点相互作用。使用这种方法,我们发现了三种PI3K途径蛋白PI3Kα/β/δ的新型抑制剂,包括PU-H71、阿维斯比星、雷弗西丁、阿司咪唑、盐酸雷洛昔芬和他莫昔芬。