Network-based Drug Repurposing: A Critical Review.

Q3 Medicine
Nagaraj Selvaraj, Akey Krishna Swaroop, Bala Sai Soujith Nidamanuri, Rajesh R Kumar, Jawahar Natarajan, Jubie Selvaraj
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引用次数: 1

Abstract

New drug development for a disease is a tedious, time-consuming, complex, and expensive process. Even if it is done, the chances for success of newly developed drugs are still very low. Modern reports state that repurposing the pre-existing drugs will have more efficient functioning than newly developed drugs. This repurposing process will save time, reduce expenses and provide more success rate. The only limitation for this repurposing is getting a desired pharmacological and characteristic parameter of various drugs from vast data about medications, their effects, and target mechanisms. This drawback can be avoided by introducing computational methods of analysis. This includes various network analysis types that use various biological processes and relationships with various drugs to simplify data interpretation. Some of the data sets now available in standard, and simplified forms include gene expression, drug-target interactions, protein networks, electronic health records, clinical trial results, and drug adverse event reports. Integrating various data sets and interpretation methods allows a more efficient and easy way to repurpose an exact drug for the desired target and effect. In this review, we are going to discuss briefly various computational biological network analysis methods like gene regulatory networks, metabolic networks, protein-protein interaction networks, drug-target interaction networks, drugdisease association networks, drug-drug interaction networks, drug-side effects networks, integrated network-based methods, semantic link networks, and isoform-isoform networks. Along with this, we briefly discussed the drug's limitations, prediction methodologies, and data sets utilised in various biological networks for drug repurposing.

基于网络的药物再利用:综述。
一种疾病的新药开发是一个乏味、耗时、复杂和昂贵的过程。即使这样做了,新开发的药物成功的机会仍然很低。现代报告指出,重新利用已有的药物将比新开发的药物更有效。这种重新利用的过程将节省时间,减少费用,并提供更高的成功率。这种重新利用的唯一限制是从大量关于药物、其作用和靶机制的数据中获得各种药物所需的药理学和特征参数。这一缺点可以通过引入计算分析方法来避免。这包括各种网络分析类型,使用各种生物过程和与各种药物的关系来简化数据解释。目前以标准和简化形式提供的一些数据集包括基因表达、药物靶标相互作用、蛋白质网络、电子健康记录、临床试验结果和药物不良事件报告。整合各种数据集和解释方法可以更有效和更容易地将药物重新用于所需的目标和效果。在这篇综述中,我们将简要讨论各种计算生物网络分析方法,如基因调控网络、代谢网络、蛋白质-蛋白质相互作用网络、药物-靶点相互作用网络、药物-疾病关联网络、药物-药物相互作用网络、药物副作用网络、基于综合网络的方法、语义链接网络和异构体-异构体网络。与此同时,我们简要地讨论了药物的局限性,预测方法,以及在各种生物网络中用于药物再利用的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Current Drug Research Reviews
Current Drug Research Reviews Medicine-Psychiatry and Mental Health
CiteScore
3.70
自引率
0.00%
发文量
38
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