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From protein-protein interactions to rational drug design: Are computational methods up to the challenge?

机译:从蛋白质相互作用到合理的药物设计:计算方法是否可以应对挑战?

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The study of protein-protein interactions (PPIs) has been growing for some years now, mainly as a result of easy access to high-throughput experimental data. Several computational approaches have been presented throughout the years as means to infer PPIs not only within the same species, but also between different species (e.g., host-pathogen interactions). The importance of unveiling the human protein interaction network is undeniable, particularly in the biological, biomedical and pharmacological research areas. Even though protein interaction networks evolve over time and can suffer spontaneous alterations, occasional shifts are often associated with disease conditions. These disorders may be caused by external pathogens, such as bacteria and viruses, or by intrinsic factors, such as auto-immune disorders and neurological impairment. Therefore, having the knowledge of how proteins interact with each other will provide a great opportunity to understand pathogenesis mechanisms, and subsequently support the development of drugs focused on very specific disease pathways and re-targeting already commercialized drugs to new gene products. Computational methods for PPI prediction have been highlighted as an interesting option for interactome mapping. In this paper we review the techniques and strategies used for both experimental identification and computational inference of PPIs. We will then discuss how this knowledge can be used to create protein interaction networks (PINs) and the various methodologies applied to characterize and predict the so-called "disease genes" and "disease networks". This will be followed by an overview of the strategies employed to predict drug targets.
机译:如今,蛋白质-蛋白质相互作用(PPI)的研究一直在增长,这主要是因为易于获得高通量实验数据。多年来,已经提出了几种计算方法,不仅可以推断同一物种内的PPI,还可以推断不同物种之间的PPI(例如,宿主与病原体的相互作用)。揭露人类蛋白质相互作用网络的重要性不可否认,尤其是在生物学,生物医学和药理学研究领域。尽管蛋白质相互作用网络会随着时间的发展而发展,并可能遭受自发的改变,但偶尔的变化通常也与疾病状况有关。这些疾病可能是由外部病原体(例如细菌和病毒)引起的,也可能是由内在因素(例如自身免疫性疾病和神经功能障碍)引起的。因此,了解蛋白质之间的相互作用方式将为理解发病机理提供一个很好的机会,并随后支持专注于非常特定的疾病途径的药物的开发以及将已经商业化的药物重新靶向新的基因产品。 PPI预测的计算方法已被突出为交互组作图的有趣选择。在本文中,我们回顾了用于PPI的实验识别和计算推断的技术和策略。然后,我们将讨论如何将该知识用于创建蛋白质相互作用网络(PIN),以及用于表征和预测所谓的“疾病基因”和“疾病网络”的各种方法。接下来将概述用于预测药物靶标的策略。

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