Li Bin, Xiong Min, Zhang Hong-Yu
National Key Laboratory of Crop Genetic Improvement, Agricultural Bioinformatics Key Laboratory of Hubei Province, Huazhong Agricultural University, Wuhan 430070, China.
Int J Mol Sci. 2014 Jun 25;15(7):11245-54. doi: 10.3390/ijms150711245.
Due to the diverse medicinal effects, polyphenols are among the most intensively studied natural products. However, it is a great challenge to elucidate the polypharmacological mechanisms of polyphenols. To address this challenge, we establish a method for identifying multiple targets of chemical agents through analyzing the module profiles of gene expression upon chemical treatments. By using FABIA algorithm, we have performed a biclustering analysis of gene expression profiles derived from Connectivity Map (cMap), and clustered the profiles into 49 gene modules. This allowed us to define a 49 dimensional binary vector to characterize the gene module profiles, by which we can compare the expression profiles for each pair of chemical agents with Tanimoto coefficient. For the agent pairs with similar gene expression profiles, we can predict the target of one agent from the other. Drug target enrichment analysis indicated that this method is efficient to predict the multiple targets of chemical agents. By using this method, we identify 148 targets for 20 polyphenols derived from cMap. A large part of the targets are validated by experimental observations. The results show that the medicinal effects of polyphenols are far beyond their well-known antioxidant activities. This method is also applicable to dissect the polypharmacology of other natural products.
由于多酚具有多种药用功效,它们是研究最为深入的天然产物之一。然而,阐明多酚的多药理学机制是一项巨大的挑战。为应对这一挑战,我们建立了一种通过分析化学处理后基因表达的模块概况来鉴定化学试剂多个靶点的方法。利用FABIA算法,我们对来自连通性图谱(cMap)的基因表达谱进行了双聚类分析,并将这些谱聚类为49个基因模块。这使我们能够定义一个49维的二元向量来表征基因模块概况,通过该向量我们可以用Tanimoto系数比较每对化学试剂的表达谱。对于具有相似基因表达谱的试剂对,我们可以从另一个试剂预测出一个试剂的靶点。药物靶点富集分析表明该方法能有效地预测化学试剂的多个靶点。通过使用该方法,我们从cMap中鉴定出20种多酚的148个靶点。大部分靶点已通过实验观察得到验证。结果表明,多酚的药用效果远不止其众所周知的抗氧化活性。该方法也适用于剖析其他天然产物的多药理学。