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Evaluating the impact of topological protein features on the negative examples selection

机译:评估拓扑蛋白质特征对阴性样本选择的影响

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摘要

BackgroundSupervised machine learning methods when applied to the problem of automated protein-function prediction (AFP) require the availability of both positive examples (i.e., proteins which are known to possess a given protein function) and negative examples (corresponding to proteins not associated with that function). Unfortunately, publicly available proteome and genome data sources such as the Gene Ontology rarely store the functions not possessed by a protein. Thus the negative selection, consisting in identifying informative negative examples, is currently a central and challenging problem in AFP. Several heuristics have been proposed through the years to solve this problem; nevertheless, despite their effectiveness, to the best of our knowledge no previous existing work studied which protein features are more relevant to this task, that is, which protein features help more in discriminating reliable and unreliable negatives.
机译:背景技术当应用于自动蛋白质功能预测(AFP)问题时,监督式机器学习方法既需要阳性示例(即已知具有给定蛋白质功能的蛋白质),也需要阴性示例(对应于与此无关的蛋白质)的可用性功能)。不幸的是,诸如基因本体论之类的可公开获得的蛋白质组和基因组数据源很少存储蛋白质不具备的功能。因此,包括确定信息丰富的负面例子在内的负面选择,目前是法新社的一个中心且具有挑战性的问题。这些年来,已经提出了几种启发式方法来解决这个问题。然而,尽管它们有效,但据我们所知,以前没有工作研究过哪些蛋白质特征与该任务更相关,也就是说,哪些蛋白质特征更有助于区分可靠和不可靠的阴性结果。

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