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A hidden Markov model for progressive multiple alignment

机译:用于渐进多重对准的隐马尔可夫模型

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Motivation: Progressive algorithms are widely used heuristics for the production of alignments among multiple nucleic-acid or protein sequences. Probabilistic approaches providing measures of global and/or local reliability of individual solutions would constitute valuable developments. Results: We present here a new method for multiple sequence alignment that combines an HMM approach, a progressive alignment algorithm, and a probabilistic evolution model describing the character substitution process. Our method works by iterating pairwise alignments according to a guide tree and defining each ancestral sequence form the pairwise alignment of its child nodes, thus, progressively constructing a multiple alignment. Our method allows for the computation of each column minimum posterior probability and we show that this value correlates with the correctness of the result, hence, providing an efficient mean by which unreliably aligned columns can be filtered out from a multiple alignment.
机译:动机:渐进算法广泛用于启发式算法,以在多个核酸或蛋白质序列之间产生比对。提供个别解决方案的全局和/或局部可靠性的度量的概率方法将构成有价值的发展。结果:我们在这里提出了一种新的多序列比对方法,该方法结合了HMM方法,渐进比对算法和描述字符替换过程的概率进化模型。我们的方法通过根据引导树迭代成对比对并定义每个祖先序列来形成其子节点的成对比对,从而逐步构造多重比对。我们的方法允许计算每列的最小后验概率,并且我们证明了该值与结果的正确性相关,因此提供了一种有效的均值,通过该均值可以从多重对齐中滤除不可靠对齐的列。

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