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A self-organizing neural network approach for the identification of motifs with insertions and deletions in protein sequences

机译:一种自组织神经网络方法,可识别蛋白质序列中插入和缺失的基序

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Current popular algorithms of motif identification in protein sequences face two difficulties, large computation and insertions and deletions of letters. In this paper, we provide a new strategy that solves this problem in a more efficient and effective way. We build a self-organizing neural network with multiple levels of subnetworks to classify subsequences obtained from the protein sequences. We maintain a low computational complexity through the use of this multi-level structure so that the classification of each subsequence is performed with respect to a small subspace of the whole input space. The new definition of pairwise distance between motif patterns provided in this paper can deal with more insertions/deletions allowed in a motif than other algorithms. In the simulation result, our algorithm significantly outperforms existing algorithms in both accuracy and reliability aspects.
机译:当前流行的蛋白质序列中的基序识别算法面临两个难题,即大量计算以及字母的插入和删除。在本文中,我们提供了一种新的策略,可以更有效,更有效地解决此问题。我们建立了具有多个子网络级别的自组织神经网络,以对从蛋白质序列中获得的子序列进行分类。通过使用这种多级结构,我们保持了较低的计算复杂度,从而相对于整个输入空间的一小部分子空间执行了每个子序列的分类。与其他算法相比,本文提供的主题图案之间成对距离的新定义可以处理主题中允许的更多插入/删除。在仿真结果中,我们的算法在准确性和可靠性方面均明显优于现有算法。

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