Tan Fujian, Yang Ruizhi, Xu Xiaoxue, Chen Xiujie, Wang Yunfeng, Ma Hongzhe, Liu Xiangqiong, Wu Xin, Chen Yuelong, Liu Lei, Jia Xiaodong
College of Bioinformatics Science and Technology, Harbin Medical University, 194 Xuefu Road, Harbin, Heilongjiang 150081, PR China.
Mol Biosyst. 2014 May;10(5):1126-38. doi: 10.1039/c3mb70554d.
Drug repositioning, also known as drug repurposing or reprofiling, is the process of finding new indications for established drugs. Because drug repositioning can reduce costs and enhance the efficiency of drug development, it is of paramount importance in medical research. Here, we present a systematic computational method to identify potential novel indications for a given drug. This method utilizes some prior knowledge such as 3D drug chemical structure information, drug-target interactions and gene semantic similarity information. Its prediction is based on another form of 'expression profile', which contains scores ranging from -1 to 1, reflecting the consensus response scores (CRSs) between each drug of 965 and 1560 proteins. The CRS integrates chemical structure similarity and gene semantic similarity information. We define the degree of similarity between two drugs as the absolute value of their correlation coefficients. Finally, we establish a drug similarity network (DSN) and obtain 33 modules of drugs with similar modes of action, determining their common indications. Using these modules, we predict new indications for 143 drugs and identify previously unknown indications for 42 drugs without ATC codes. This method overcomes the instability of gene expression profiling derived from experiments due to experimental conditions, and predicts indications for a new compound feasibly, requiring only the 3D structure of the compound. In addition, the high literature validation rate of 71.8% also suggests that our method has the potential to discover novel drug indications for existing drugs.
药物重新定位,也称为药物再利用或重新剖析,是为已上市药物寻找新适应症的过程。由于药物重新定位可以降低成本并提高药物开发效率,因此在医学研究中至关重要。在此,我们提出一种系统的计算方法来识别给定药物的潜在新适应症。该方法利用一些先验知识,如三维药物化学结构信息、药物-靶点相互作用和基因语义相似性信息。其预测基于另一种形式的“表达谱”,其中包含从-1到1的分数,反映了965种药物与1560种蛋白质之间的共识反应分数(CRS)。CRS整合了化学结构相似性和基因语义相似性信息。我们将两种药物之间的相似程度定义为它们相关系数的绝对值。最后,我们建立了一个药物相似性网络(DSN),并获得了33个具有相似作用模式的药物模块,确定了它们的共同适应症。利用这些模块,我们预测了143种药物的新适应症,并确定了42种无ATC代码药物的先前未知适应症。该方法克服了因实验条件导致的实验性基因表达谱的不稳定性,并且仅需化合物的三维结构就能可行地预测新化合物的适应症。此外,71.8%的高文献验证率也表明我们的方法有潜力发现现有药物的新适应症。