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FUNCTION PREDICTION OF UNCHARACTERIZED PROTEINS

机译:未表征蛋白质的功能预测

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Function prediction of uncharacterized protein sequences generated by genome projects has emerged as an important focus for computational biology. We have categorized several approaches beyond traditional sequence similarity that utilize the overwhelmingly large amounts of available data for computational function prediction, including structure-, association (genomic context)-, interaction (cellular context)-, process (metabolic context)-, and proteomics-experiment-based methods. Because they incorporate structural and experimental data that is not used in sequence-based methods, they can provide additional accuracy and reliability to protein function prediction. Here, first we review the definition of protein function. Then the recent developments of these methods are introduced with special focus on the type of predictions that can be made. The need for further development of comprehensive systems biology techniques that can utilize the ever-increasing data presented by the genomics and proteomics communities is emphasized. For the readers' convenience, tables of useful online resources in each category are included. The role of computational scientists in the near future of biological research and the interplay between computational and experimental biology are also addressed.
机译:基因组计划生成的未表征蛋白质序列的功能预测已成为计算生物学的重要重点。除了传统序列相似性以外,我们还对几种方法进行了分类,这些方法利用大量的可用数据进行计算功能预测,包括结构,关联(基因组环境),相互作用(细胞环境),过程(代谢环境)和蛋白质组学-基于实验的方法。由于它们包含了基于序列的方法中未使用的结构和实验数据,因此它们可以为蛋白质功能预测提供额外的准确性和可靠性。在这里,首先我们回顾一下蛋白质功能的定义。然后介绍这些方法的最新发展,并特别关注可以做出的预测类型。强调需要进一步开发可利用基因组学和蛋白质组学界不断增长的数据的综合系统生物学技术。为了方便读者,在每个类别中都包含有用的在线资源表。还讨论了计算科学家在不久的将来的生物学研究中的作用以及计算生物学和实验生物学之间的相互作用。

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