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Support-vector-machine classification of linear functional motifs in proteins

机译:支持向量机对蛋白质中线性功能基序的分类

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摘要

Our algorithm predicts short linear functional motifs in proteins using only sequence information. Statistical models for short linear functional motifs in proteins are built using the database of short sequence fragments taken from proteins in the current release of the Swiss-Prot database. Those segments are confirmed by experiments to have single-residue post-translational modification. The sensitivities of the classification for various types of short linear motifs are in the range of 70%. The query protein sequence is dissected into short overlapping fragments. All segments are represented as vectors. Each vector is then classified by a machine learning algorithm (Support Vector Machine) as potentially modifiable or not. The resulting list of plausible post-translational sites in the query protein is returned to the user. We also present a study of the human protein kinase C family as a biological application of our method.
机译:我们的算法仅使用序列信息即可预测蛋白质中的短线性功能基序。使用Swiss-Prot数据库当前版本中从蛋白质中提取的短序列片段数据库,建立了蛋白质中短线性功能基序的统计模型。这些片段通过实验证实具有单残基的翻译后修饰。各种类型的短线性基序的分类敏感性在70%的范围内。查询蛋白序列被分成短的重叠片段。所有段均表示为向量。然后,通过机器学习算法(支持向量机)将每个向量归类为可能可修改或不可修改的类别。查询蛋白中的可能的翻译后位点列表将返回给用户。我们还提出了对人类蛋白激酶C家族的研究,作为我们方法的生物学应用。

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