Fuzzy Profile Hidden Markov Models for Protein Sequence Analysis

Niranjan P. Bidargaddi, M. Chetty, J. Kamruzzaman
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引用次数: 3

Abstract

Profile HMMs based on classical hidden Markov models have been widely applied for alignment and classification of protein sequence families. The formulation of the forward and backward variables in profile HMMs is made under statistical independence assumption of the probability theory. We propose a fuzzy profile hidden Markov model to overcome the limitations of the statistical independence assumption of probability theory. The strong correlations and the sequence preference involved in the protein structures make fuzzy architecture based models as suitable candidates for building profiles of a given family since fuzzy set can handle uncertainties better than classical methods. The proposed model fuzzifies the forward and backward variables by incorporating Sugeno fuzzy measures using Choquet integrals which is extended to fuzzy Baum-Welch parameter estimation algorithm for profiles. It was built and tested on widely studied globin and kinase family sequences and its performance was compared with classical HMM. A comparative analysis based on Log-Likelihood (LL) scores of sequences and Receiver Operating Characteristic (ROC) demonstrates the superiority of fuzzy profile HMMs over the classical profile model.
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蛋白质序列分析的模糊隐马尔可夫模型
基于经典隐马尔可夫模型的hmm在蛋白质序列家族的定位和分类中得到了广泛的应用。在概率论的统计独立性假设下,给出了剖面hmm正、后变量的表达式。为了克服概率论中统计独立性假设的局限性,提出了一种模糊轮廓隐马尔可夫模型。蛋白质结构的强相关性和序列偏好使基于模糊结构的模型成为构建给定家族剖面的合适候选,因为模糊集比经典方法能更好地处理不确定性。该模型采用基于Choquet积分的Sugeno模糊测度对前后变量进行模糊化,并将其推广到轮廓的模糊Baum-Welch参数估计算法中。该方法在广泛研究的珠蛋白和激酶家族序列上进行了构建和测试,并与经典HMM进行了性能比较。基于序列的对数似然(LL)分数和接收者工作特征(ROC)的对比分析表明,模糊剖面hmm模型优于经典剖面模型。
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