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Predicting protein function from domain content

机译:从域内容预测蛋白质功能

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Motivation: Computational assignment of protein function may be the single most vital application of bioinformatics in the post-genome era. These assignments are made based on various protein features, where one is the presence of identifiable domains. The relationship between protein domain content and function is important to investigate, to understand how domain combinations encode complex functions.Results: Two different models are presented on how protein domain combinations yield specific functions: one rule-based and one probabilistic. We demonstrate how these are useful for Gene Ontology annotation transfer. The first is an intuitive generalization of the Pfam2GO mapping, and detects cases of strict functional implications of sets of domains. The second uses a probabilistic model to represent the relationship between domain content and annotation terms, and was found to be better suited for incomplete training sets. We implemented these models as predictors of Gene Ontology functional annotation terms. Both predictors were more accurate than conventional best BLAST-hit annotation transfer and more sensitive than a single-domain model on a large-scale dataset. We present a number of cases where combinations of Pfam-A protein domains predict functional terms that do not follow from the individual domains.
机译:动机:蛋白质功能的计算分配可能是后基因组时代生物信息学最重要的应用。这些分配是基于各种蛋白质特征进行的,其中一个是可识别域的存在。蛋白质结构域含量和功能之间的关系对于研究,理解结构域组合如何编码复杂功能非常重要。结果:针对蛋白质结构域组合如何产生特定功能,提出了两种不同的模型:一种基于规则,另一种基于概率。我们演示了这些对基因本体注释转移的有用性。第一个是Pfam2GO映射的直观概括,并检测域集对功能有严格影响的情况。第二种使用概率模型来表示域内容和注释术语之间的关系,并被发现更适合于不完整的训练集。我们将这些模型用作基因本体功能注释术语的预测变量。这两个预测变量都比常规的最佳BLAST命中注解传递更为准确,并且比大规模数据集上的单域模型更敏感。我们介绍了许多情况,其中Pfam-A蛋白结构域的组合预测的功能术语并非来自单个结构域。

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