Meta-MEME:基于基序的蛋白质家族隐马尔可夫模型。

W N Grundy, T L Bailey, C P Elkan, M E Baker
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引用次数: 219

摘要

动机:使用隐马尔可夫模型(hmm)建模相关生物序列的家族,尽管越来越广泛,但至少面临一个主要问题:由于这些数学模型的复杂性,它们需要相对较大的训练集才能准确识别给定的家族。对于已知序列很少的家族,标准线性HMM包含太多参数,无法充分训练。结果:这项工作试图通过产生更小的hmm来解决这个问题,这些hmm精确地模拟了家族的保守区域。这些hmm是使用MEME软件从EM算法生成的基序模型构建而成的。由于基于图案的hmm具有相对较少的参数,因此它们可以使用较小的数据集进行训练。对短链醇脱氢酶和4Fe-4S铁氧化还原蛋白的研究支持了基于基元的hmm在数据库搜索中表现出更高的敏感性和选择性的说法,特别是当训练集包含很少的序列时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Meta-MEME: motif-based hidden Markov models of protein families.

Motivation: Modeling families of related biological sequences using Hidden Markov models (HMMs), although increasingly widespread, faces at least one major problem: because of the complexity of these mathematical models, they require a relatively large training set in order to accurately recognize a given family. For families in which there are few known sequences, a standard linear HMM contains too many parameters to be trained adequately.

Results: This work attempts to solve that problem by generating smaller HMMs which precisely model only the conserved regions of the family. These HMMs are constructed from motif models generated by the EM algorithm using the MEME software. Because motif-based HMMs have relatively few parameters, they can be trained using smaller data sets. Studies of short chain alcohol dehydrogenases and 4Fe-4S ferredoxins support the claim that motif-based HMMs exhibit increased sensitivity and selectivity in database searches, especially when training sets contain few sequences.

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