Application of Transcriptomics for Predicting Protein Interaction Networks, Drug Targets and Drug Candidates

IF 2.7 Q3 ENGINEERING, BIOMEDICAL
Dulshani Kankanige, L. Liyanage, M. O’Connor
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引用次数: 1

Abstract

Protein interaction pathways and networks are critically-required for a vast range of biological processes. Improved discovery of candidate druggable proteins within specific cell, tissue and disease contexts will aid development of new treatments. Predicting protein interaction networks from gene expression data can provide valuable insights into normal and disease biology. For example, the resulting protein networks can be used to identify potentially druggable targets and drug candidates for testing in cell and animal disease models. The advent of whole-transcriptome expression profiling techniques—that catalogue protein-coding genes expressed within cells and tissues—has enabled development of individual algorithms for particular tasks. For example,: (i) gene ontology algorithms that predict gene/protein subsets involved in related cell processes; (ii) algorithms that predict intracellular protein interaction pathways; and (iii) algorithms that correlate druggable protein targets with known drugs and/or drug candidates. This review examines approaches, advantages and disadvantages of existing gene expression, gene ontology, and protein network prediction algorithms. Using this framework, we examine current efforts to combine these algorithms into pipelines to enable identification of druggable targets, and associated known drugs, using gene expression datasets. In doing so, new opportunities are identified for development of powerful algorithm pipelines, suitable for wide use by non-bioinformaticians, that can predict protein interaction networks, druggable proteins, and related drugs from user gene expression datasets.
转录组学在预测蛋白质相互作用网络、药物靶点和候选药物中的应用
蛋白质相互作用途径和网络对于广泛的生物过程是至关重要的。在特定的细胞、组织和疾病环境中改进候选药物蛋白的发现将有助于开发新的治疗方法。从基因表达数据预测蛋白质相互作用网络可以为正常和疾病生物学提供有价值的见解。例如,由此产生的蛋白质网络可用于识别潜在的可药物靶点和候选药物,以便在细胞和动物疾病模型中进行测试。全转录组表达谱技术的出现——对细胞和组织内表达的蛋白质编码基因进行编目——使得针对特定任务的个人算法得以发展。例如:(i)预测参与相关细胞过程的基因/蛋白质子集的基因本体算法;(ii)预测细胞内蛋白质相互作用途径的算法;以及(iii)将可药物蛋白靶点与已知药物和/或候选药物相关联的算法。本文综述了现有的基因表达、基因本体和蛋白质网络预测算法的方法、优缺点。利用这一框架,我们研究了目前将这些算法结合到管道中的努力,以便使用基因表达数据集识别可药物靶标和相关已知药物。在此过程中,为开发强大的算法管道确定了新的机会,适合非生物信息学家广泛使用,可以从用户基因表达数据集预测蛋白质相互作用网络,可药物蛋白质和相关药物。
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
CiteScore
3.70
自引率
0.00%
发文量
0
审稿时长
13 weeks
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