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Combining heterogeneous data sources for accurate functional annotation of proteins

机译:结合异构数据源对蛋白质进行准确的功能注释

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摘要

Combining heterogeneous sources of data is essential for accurate prediction of protein function. The task is complicated by the fact that while sequence-based features can be readily compared across species, most other data are species-specific. In this paper, we present a multi-view extension to GOstruct, a structured-output framework for function annotation of proteins. The extended framework can learn from disparate data sources, with each data source provided to the framework in the form of a kernel. Our empirical results demonstrate that the multi-view framework is able to utilize all available information, yielding better performance than sequence-based models trained across species and models trained from collections of data within a given species. This version of GOstruct participated in the recent Critical Assessment of Functional Annotations (CAFA) challenge; since then we have significantly improved the natural language processing component of the method, which now provides performance that is on par with that provided by sequence information. The GOstruct framework is available for download at .
机译:结合异构数据对于准确预测蛋白质功能至关重要。尽管可以轻松地在物种之间比较基于序列的特征,但大多数其他数据是物种特定的,这一事实使任务变得复杂。在本文中,我们提出了对GOstruct的多视图扩展,GOstruct是一种用于蛋白质功能注释的结构化输出框架。扩展框架可以从不同的数据源中学习,每个数据源都以内核的形式提供给框架。我们的经验结果表明,多视图框架能够利用所有可用信息,比跨物种训练的基于序列的模型和从给定物种内的数据收集训练的模型产生更好的性能。此版本的GOstruct参与了最近的功能注释关键评估(CAFA)挑战;从那时起,我们大大改进了该方法的自然语言处理组件,该组件现在提供的性能与序列信息所提供的性能相当。 GOstruct框架可从下载。

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