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Improving protein function prediction methods with integrated literature data

机译:利用整合的文献数据改进蛋白质功能预测方法

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摘要

BackgroundDetermining the function of uncharacterized proteins is a major challenge in the post-genomic era due to the problem's complexity and scale. Identifying a protein's function contributes to an understanding of its role in the involved pathways, its suitability as a drug target, and its potential for protein modifications. Several graph-theoretic approaches predict unidentified functions of proteins by using the functional annotations of better-characterized proteins in protein-protein interaction networks. We systematically consider the use of literature co-occurrence data, introduce a new method for quantifying the reliability of co-occurrence and test how performance differs across species. We also quantify changes in performance as the prediction algorithms annotate with increased specificity.
机译:背景技术由于问题的复杂性和规模,在后基因组时代确定未表征蛋白质的功能是一项重大挑战。鉴定蛋白质的功能有助于了解其在相关途径中的作用,其作为药物靶标的适用性以及其修饰蛋白质的潜力。几种图论方法通过使用蛋白质-蛋白质相互作用网络中更好表征的蛋白质的功能注释来预测蛋白质的未鉴定功能。我们系统地考虑了文献共现数据的使用,介绍了一种量化共现可靠性的新方法,并测试了物种之间的性能差异。当预测算法以增加的特异性注释时,我们还量化了性能变化。

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