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Databases and tools for constructing signal transduction networks in cancer

机译:用于构建癌症信号转导网络的数据库和工具

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摘要

Traditionally, biologists have devoted their careers to studying individual biological entities of their own interest, partly due to lack of available data regarding that entity. Large, high-throughput data, too complex for conventional processing methods (i.e., “big data”), has accumulated in cancer biology, which is freely available in public data repositories. Such challenges urge biologists to inspect their biological entities of interest using novel approaches, firstly including repository data retrieval. Essentially, these revolutionary changes demand new interpretations of huge datasets at a systems-level, by so called “systems biology”. One of the representative applications of systems biology is to generate a biological network from high-throughput big data, providing a global map of molecular events associated with specific phenotype changes. In this review, we introduce the repositories of cancer big data and cutting-edge systems biology tools for network generation, and improved identification of therapeutic targets.
机译:传统上,生物学家致力于研究自己感兴趣的单个生物实体,部分原因是缺乏有关该实体的可用数据。对于常规处理方法而言过于复杂的大型,高通量数据(即“大数据”)已经在癌症生物学中积累,可以在公共数据存储库中免费获得。这些挑战促使生物学家使用新颖的方法来检查其感兴趣的生物实体,首先包括存储库数据检索。本质上,这些革命性的变化要求通过所谓的“系统生物学”对系统级的大型数据集进行新的解释。系统生物学的代表性应用之一是从高通量大数据生成生物学网络,从而提供与特定表型变化相关的分子事件的全局图。在这篇综述中,我们介绍了癌症大数据存储库和用于网络生成的尖端系统生物学工具,以及改进了对治疗靶标的识别。

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