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Exploiting ontology graph for predicting sparsely annotated gene function

机译:利用本体图预测稀疏注释的基因功能

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Motivation: Systematically predicting gene (or protein) function based on molecular interaction networks has become an important tool in refining and enhancing the existing annotation catalogs, such as the Gene Ontology (GO) database. However, functional labels with only a few ( 10) annotated genes, which constitute about half of the GO terms in yeast, mouse and human, pose a unique challenge in that any prediction algorithm that independently considers each label faces a paucity of information and thus is prone to capture non-generalizable patterns in the data, resulting in poor predictive performance. There exist a variety of algorithms for function prediction, but none properly address this 'overfitting' issue of sparsely annotated functions, or do so in a manner scalable to tens of thousands of functions in the human catalog.
机译:动机:基于分子相互作用网络系统地预测基因(或蛋白质)功能已成为完善和增强现有注释目录(如基因本体(GO)数据库)的重要工具。但是,只有少数(<10个)带注释基因的功能标签构成酵母,小鼠和人类中GO术语的大约一半,这构成了一个独特的挑战,因为任何独立考虑每个标签的预测算法都缺乏信息,因此易于捕获数据中不可概括的模式,从而导致不良的预测性能。存在多种用于函数预测的算法,但是没有一种算法能够正确解决稀疏注释函数的这种“过拟合”问题,也不能以可扩展到人类目录中成千上万个函数的方式来解决。

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