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Learning HMMs for nucleotide sequences from amino acid alignments

机译:从氨基酸比对中学习HMM的核苷酸序列

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Profile hidden Markov models (profile HMMs) are known to efficiently predict whether an amino acid (AA) sequence belongs to a specific protein family. Profile HMMs can also be used to search for protein domains in genome sequences. In this case, HMMs are typically learned from AA sequences and then used to search on the six-frame translation of nucleotide (NT) sequences. However, this approach demands additional processing of the original data and search results. Here, we propose an alternative and more direct method which converts an AA alignment into an NT one, after which an NT-based HMM is trained to be applied directly on a genome.
机译:已知轮廓隐式马尔可夫模型(轮廓HMM)可有效预测氨基酸(AA)序列是否属于特定蛋白质家族。 Profile HMM还可以用于搜索基因组序列中的蛋白质结构域。在这种情况下,通常从AA序列中学习HMM,然后将其用于搜索核苷酸(NT)序列的六帧翻译。但是,这种方法需要对原始数据和搜索结果进行额外的处理。在这里,我们提出了另一种更直接的方法,将AA比对转换为NT,然后训练基于NT的HMM直接应用于基因组。

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