药物重新定位
化学信息学
重新调整用途
药物发现
计算机科学
数据科学
生物信息学
化学
药品
药物开发
大数据
系统生物学
生物学数据
计算生物学
模拟生物系统
医学
虚拟筛选
制药工业
药理学
疾病
批准的药物
生物信息学
临床试验
重症监护医学
药物作用
数据挖掘
生物
基因
生物化学
生态学
作者
Berin Karaman,Wolfgang Sippl
标识
DOI:10.2174/0929867325666180530100332
摘要
: Biomedical discovery has been reshaped upon the exploding digitization of data which can be retrieved from a number of sources, ranging from clinical pharmacology to cheminformatics-driven databases. Now, supercomputing platforms and publicly available resources such as biological, physicochemical, and clinical data, can all be integrated to construct a detailed map of signaling pathways and drug mechanisms of action in relation to drug candidates. Recent advancements in computer-aided data mining have facilitated analyses of ‘big data’ approaches and the discovery of new indications for pre-existing drugs has been accelerated. Linking gene-phenotype associations to predict novel drug-disease signatures or incorporating molecular structure information of drugs and protein targets with other kinds of data derived from systems biology provide great potential to accelerate drug discovery and improve the success of drug repurposing attempts. In this review, we highlight commonly used computational drug repurposing strategies, including bioinformatics and cheminformatics tools, to integrate large-scale data emerging from the systems biology, and consider both the challenges and opportunities of using this approach. Moreover, we provide successful examples and case studies that combined various in silico drug-repurposing strategies to predict potential novel uses for known therapeutics.
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