Wang Yunguan, Yella Jaswanth, Jegga Anil G
Division of Biomedical Informatics, Cincinnati Children's Hospital Medical Center, Cincinnati, OH, USA.
Department of Computer Science, University of Cincinnati College of Engineering, Cincinnati, OH, USA.
Methods Mol Biol. 2019;1903:73-95. doi: 10.1007/978-1-4939-8955-3_5.
Conventional drug discovery in general is costly and time-consuming with extremely low success and relatively high attrition rates. The disparity between high cost of drug discovery and vast unmet medical needs resulted in advent of an increasing number of computational approaches that can "connect" disease with a candidate therapeutic. This includes computational drug repurposing or repositioning wherein the goal is to discover a new indication for an approved drug. Computational drug discovery approaches that are commonly used are similarity-based wherein network analysis or machine learning-based methods are used. One such approach is matching gene expression signatures from disease to those from small molecules, commonly referred to as connectivity mapping. In this chapter, we will focus on how publicly available existing transcriptomic data from diseases can be reused to identify novel candidate therapeutics and drug repositioning candidates. To elucidate these, we will present two case studies: (1) using transcriptional signature similarity or positive correlation to identify novel small molecules that are similar to an approved drug and (2) identifying candidate therapeutics via reciprocal connectivity or negative correlation between transcriptional signatures from a disease and small molecule.
一般来说,传统的药物研发成本高昂且耗时,成功率极低,淘汰率相对较高。药物研发的高成本与大量未满足的医疗需求之间的差距,导致越来越多的计算方法出现,这些方法能够将疾病与候选治疗药物“联系”起来。这包括计算药物重新利用或重新定位,其目标是发现已批准药物的新适应症。常用的计算药物发现方法是基于相似性的,其中使用网络分析或基于机器学习的方法。一种这样的方法是将疾病的基因表达特征与小分子的基因表达特征进行匹配,通常称为连接图谱。在本章中,我们将重点关注如何重新利用现有的公开疾病转录组数据来识别新型候选治疗药物和药物重新定位候选物。为了阐明这些内容,我们将展示两个案例研究:(1)使用转录特征相似性或正相关来识别与已批准药物相似的新型小分子;(2)通过疾病转录特征与小分子之间的相互连接或负相关来识别候选治疗药物。