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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Pattern recognition methods for advanced stochastic protein sequence analysis using HMMs
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Pattern recognition methods for advanced stochastic protein sequence analysis using HMMs

机译:使用HMM进行高级随机蛋白质序列分析的模式识别方法

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摘要

Currently, Profile Hidden Markov Models (Profile HMMs) are the methodology of choice for probabilistic protein family modeling. Unfortunately, despite substantial progress the general problem of remote homology analysis is still far from being solved. In this article we propose new approaches for robust protein family modeling by consequently exploiting general pattern recognition techniques. A new feature based representation of amino acid sequences serves as the basis for semi-continuous protein family HMMs. Due to this paradigm shift in processing biological sequences the complexity of family models can be reduced substantially resulting in less parameters which need to be trained. This is especially favorable when only little training data is available as in most current tasks of molecular biology research. In various experiments we prove the superior performance of advanced stochastic protein family modeling for remote homology analysis which is especially relevant for e.g. drug discovery applications. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:当前,Profile Hidden Markov模型(Profile HMM)是概率蛋白家族建模的首选方法。不幸的是,尽管取得了长足的进步,但远程同源性分析的普遍问题仍然远远没有解决。在本文中,我们通过利用常规模式识别技术,提出了用于鲁棒蛋白质家族建模的新方法。基于氨基酸序列的新特征表示法作为半连续蛋白家族HMM的基础。由于在处理生物序列中的这种范式转移,可以大大降低家族模型的复杂性,从而减少需要训练的参数。当分子生物学研究的大多数当前任务中只有很少的训练数据时,这特别有利。在各种实验中,我们证明了用于远程同源性分析的高级随机蛋白质家族建模的卓越性能,这尤其适用于例如药物发现应用。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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