Lecca Paola, Re Angela
Department of Mathematics, University of Trento, via Sommarive 14, 38123, Povo Trento, Italy.
Senior Member of Association for Computing Machinery, New York, USA.
Methods Mol Biol. 2017;1513:101-117. doi: 10.1007/978-1-4939-6539-7_8.
A long-standing paradigm in drug discovery has been the concept of designing maximally selective drugs to act on individual targets considered to underlie a disease of interest. Nonetheless, although some drugs have proven to be successful, many more potential drugs identified by the "one gene, one drug, one disease" approach have been found to be less effective than expected or to cause notable side effects. Advances in systems biology and high-throughput in-depth genomic profiling technologies along with an analysis of the successful and failed drugs uncovered that the prominent factor to determine drug sensitivity is the intrinsic robustness of the response of biological systems in the face of perturbations. The complexity of the molecular and cellular bases of systems responses to drug interventions has fostered an increased interest in systems-oriented approaches to drug discovery. Consonant with this knowledge of the multifactorial mechanistic basis of drug sensitivity and resistance is the application of network-based approaches for the identification of molecular (multi-)feature signatures associated with desired (multi-)drug phenotypic profiles. This chapter illustrates the principal network analysis and inference techniques which have found application in systems-oriented drug design and considers their benefits and drawbacks in relation to the nature of the data produced by network pharmacology.
药物研发中一个长期存在的范式是设计具有最大选择性的药物,作用于被认为是某种感兴趣疾病基础的单个靶点。然而,尽管一些药物已被证明是成功的,但通过“一个基因、一种药物、一种疾病”方法确定的更多潜在药物却被发现效果不如预期,或会引起显著的副作用。系统生物学和高通量深度基因组分析技术的进展,以及对成功和失败药物的分析发现,决定药物敏感性的突出因素是生物系统在面对干扰时反应的内在稳健性。系统对药物干预反应的分子和细胞基础的复杂性,激发了人们对以系统为导向的药物研发方法的更大兴趣。与药物敏感性和耐药性的多因素机制基础这一知识相一致的是,基于网络的方法被应用于识别与期望的(多)药物表型特征相关的分子(多)特征信号。本章阐述了已在以系统为导向的药物设计中得到应用的主要网络分析和推理技术,并结合网络药理学产生的数据性质,考量了它们的优缺点。