走向定量生物学:整合生物信息以阐明疾病途径并指导药物发现。

Hans Peter Fischer
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引用次数: 56

摘要

开发新药是一项乏味而昂贵的工作。最近发展起来的高通量实验技术,概括为基因组学、转录组学、蛋白质组学和代谢组学,首次提供了全面监测疾病过程分子水平的手段。“组学”技术有助于系统地描述药物靶点的生理特征,从而有助于降低发现项目中典型的高损耗率,并提高药物研究过程的整体效率。目前,充分利用新的实验技术的瓶颈是快速增长的自动产生的生物数据量。缺乏可扩展的数据库系统和目标发现的计算工具被认为是一个主要障碍。本文将对计算生物学在药物发现应用方面的最新进展进行综述。重点将放在重建调控网络、信号级联和代谢途径的新型计算机方法上,重点是比较基因组学和基于微阵列的方法。在探索项目的应用背景下,讨论了有前途的方法,如路径动力学的数学模拟。本文最后举例说明了药物研究中具体的数据驱动研究,这些研究证明了集成计算系统在药物靶点识别和验证、筛选分析开发以及候选药物功效和毒性评估方面的价值。
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Towards quantitative biology: integration of biological information to elucidate disease pathways and to guide drug discovery.

Developing a new drug is a tedious and expensive undertaking. The recently developed high-throughput experimental technologies, summarised by the terms genomics, transcriptomics, proteomics and metabolomics provide for the first time ever the means to comprehensively monitor the molecular level of disease processes. The "-omics" technologies facilitate the systematic characterisation of a drug target's physiology, thereby helping to reduce the typically high attrition rates in discovery projects, and improving the overall efficiency of pharmaceutical research processes. Currently, the bottleneck for taking full advantage of the new experimental technologies are the rapidly growing volumes of automatically produced biological data. A lack of scalable database systems and computational tools for target discovery has been recognised as a major hurdle. In this review, an overview will be given on recent progress in computational biology that has an impact on drug discovery applications. The focus will be on novel in silico methods to reconstruct regulatory networks, signalling cascades, and metabolic pathways, with an emphasis on comparative genomics and microarray-based approaches. Promising methods, such as the mathematical simulation of pathway dynamics are discussed in the context of applications in discovery projects. The review concludes by exemplifying concrete data-driven studies in pharmaceutical research that demonstrate the value of integrated computational systems for drug target identification and validation, screening assay development, as well as drug candidate efficacy and toxicity evaluations.

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