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Network pharmacology strategies toward multi-target anticancer therapies: from computational models to experimental design principles.

机译:面向多目标抗癌治疗的网络药理策略:从计算模型到实验设计原则。

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摘要

Polypharmacology has emerged as novel means in drug discovery for improving treatment response in clinical use. However, to really capitalize on the polypharmacological effects of drugs, there is a critical need to better model and understand how the complex interactions between drugs and their cellular targets contribute to drug efficacy and possible side effects. Network graphs provide a convenient modeling framework for dealing with the fact that most drugs act on cellular systems through targeting multiple proteins both through on-target and off-target binding. Network pharmacology models aim at addressing questions such as how and where in the disease network should one target to inhibit disease phenotypes, such as cancer growth, ideally leading to therapies that are less vulnerable to drug resistance and side effects by means of attacking the disease network at the systems level through synergistic and synthetic lethal interactions. Since the exponentially increasing number of potential drug target combinations makes pure experimental approach quickly unfeasible, this review depicts a number of computational models and algorithms that can effectively reduce the search space for determining the most promising combinations for experimental evaluation. Such computational-experimental strategies are geared toward realizing the full potential of multi-target treatments in different disease phenotypes. Our specific focus is on system-level network approaches to polypharmacology designs in anticancer drug discovery, where we give representative examples of how network-centric modeling may offer systematic strategies toward better understanding and even predicting the phenotypic responses to multi-target therapies.
机译:多元药理学已经成为药物发现中改善临床使用中治疗反应的新手段。但是,要真正利用药物的多药理作用,迫切需要更好地建模和理解药物与其细胞靶标之间复杂的相互作用如何促进药物功效和可能的副作用。网络图为处理以下事实提供了方便的建模框架:大多数药物通过靶上结合和靶外结合靶向多种蛋白质,从而作用于细胞系统。网络药理模型旨在解决以下问题:如何在疾病网络中以及如何在何处靶向抑制疾病表型(例如癌症生长),理想情况下会导致通过攻击疾病网络而变得更不易产生耐药性和副作用的疗法在系统层面通过协同和综合致命的相互作用。由于潜在的药物靶标组合​​数量呈指数级增长,使得单纯的实验方法很快无法实现,因此,本综述描述了许多计算模型和算法,这些模型和算法可以有效地减少用于确定最有希望的实验评估组合的搜索空间。此类计算实验策略旨在实现不同疾病表型的多靶点治疗的全部潜力。我们的重点是抗癌药物发现中多药理学设计的系统级网络方法,在此我们以网络为中心的建模如何为更好地理解甚至预测对多靶点疗法的表型反应提供系统策略的典型实例。

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