首页> 外文OA文献 >A novel model-based method for feature extraction from protein sequences for classification Siniflandirma için protein dizilerinin özniteliklerinin çikarilmasinda model tabanli yeni bir yöntem
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A novel model-based method for feature extraction from protein sequences for classification Siniflandirma için protein dizilerinin özniteliklerinin çikarilmasinda model tabanli yeni bir yöntem

机译:一种新的基于模型的蛋白质序列特征提取方法一种基于模型的新方法提取蛋白质序列属性的方法

摘要

Representation of amino-acid sequences constitutes the key point in classification of proteins into functional or structural classes. The representation should contain the biologically meaningful information hidden in the primary sequence of the protein. Conserved or similar subsequences are strong indicators of functional and structural similarity. In this study we present a feature mapping that takes into account the models of the subsequences of protein sequences. An expectation-maximization algorithm along with an HMM mixture model is used to cluster and learn the models of subsequences of a given set of proteins. © 2006 IEEE.
机译:氨基酸序列的表示构成将蛋白质分类为功能或结构类别的关键。该表示应包含隐藏在蛋白质一级序列中的生物学意义的信息。保守或相似的子序列是功能和结构相似性的有力指标。在这项研究中,我们提出了一种特征映射,该映射考虑了蛋白质序列子序列的模型。期望最大化算法与HMM混合模型一起用于聚类和学习给定蛋白质组的子序列模型。 ©2006 IEEE。

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  • 年度 2006
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  • 正文语种 tur
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  • 入库时间 2022-08-20 20:26:13

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