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High-precision high-coverage functional inference from integrated data sources

机译:来自集成数据源的高精度高覆盖率功能推断

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摘要

BackgroundInformation obtained from diverse data sources can be combined in a principled manner using various machine learning methods to increase the reliability and range of knowledge about protein function. The result is a weighted functional linkage network (FLN) in which linked neighbors share at least one function with high probability. Precision is, however, low. Aiming to provide precise functional annotation for as many proteins as possible, we explore and propose a two-step framework for functional annotation (1) construction of a high-coverage and reliable FLN via machine learning techniques (2) development of a decision rule for the constructed FLN to optimize functional annotation.
机译:背景技术可以使用各种机器学习方法以原则方式组合从各种数据源获得的信息,以提高有关蛋白质功能的知识的可靠性和范围。结果是一个加权功能链接网络(FLN),其中链接的邻居有很高的概率共享至少一个功能。但是,精度低。为了为尽可能多的蛋白质提供精确的功能注释,我们探索并提出了两步进行功能注释的框架(1)通过机器学习技术构建高覆盖度和可靠的FLN(2)制定决策规则构造的FLN以优化功能注释。

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