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Hierarchical motif vectors for prediction of functional sites in amino acid sequences using quasi-supervised learning

机译:使用准监督学习预测氨基酸序列中功能位点的层次基序载体

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摘要

We propose hierarchical motif vectors to represent local amino acid sequence configurations for predicting the functional attributes of amino acid sites on a global scale in a quasi-supervised learning framework. The motif vectors are constructed via wavelet decomposition on the variations of physico-chemical amino acid properties along the sequences. We then formulate a prediction scheme for the functional attributes of amino acid sites in terms of the respective motif vectors using the quasi-supervised learning algorithm that carries out predictions for all sites in consideration using only the experimentally verified sites. We have carried out comparative performance evaluation of the proposed method on the prediction of N-glycosylation of 55,184 sites possessing the consensus N-glycosylation sequon identified over 15,104 human proteins, out of which only 1,939 were experimentally verified N-glycosylation sites. In the experiments, the proposed method achieved better predictive performance than the alternative strategies from the literature. In addition, the predicted N-glycosylation sites showed good agreement with existing potential annotations, while the novel predictions belonged to proteins known to be modified by glycosylation.
机译:我们提出了分层的基序载体,以代表局部氨基酸序列构型,以在准监督学习框架中预测全球范围内氨基酸位点的功能属性。通过沿着序列的理化氨基酸性质的变化的小波分解来构建基序载体。然后,我们使用准监督学习算法(根据仅使用经过实验验证的位点对所有位点进行预测),针对相应基序向量制定了氨基酸位点的功能属性的预测方案。我们已经对提议的方法进行了比较性能评估,以预测55184个具有N-糖基化序列的共识的55184个位点的N-糖基化序列,该序列已鉴定出超过15104种人类蛋白质,其中只有1939个经过实验验证的N-糖基化位点。在实验中,与文献中的替代策略相比,该方法具有更好的预测性能。另外,预测的N-糖基化位点与现有的潜在注释显示出良好的一致性,而新的预测属于已知被糖基化修饰的蛋白质。

著录项

  • 作者

    Karaçalı Bilge;

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 eng
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