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Back-propagation and counter-propagation neural networks for phylogenetic classification of ribosomal RNA sequences

机译:反向传播和反向传播神经网络用于核糖体RNA序列的系统发育分类

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A neural network system has been developed for rapid and accurate classification of ribosomal RNA sequences according to phylogenetic relationship. The molecular sequences are encoded into neural input vectors using an n-gram hashing method. A SVD (singular value decomposition) method is used to compress and reduce the size of long and sparse ngram input vectors. The neural networks used are three-layered, feed-forward networks that employ supervised learning paradigms, including the backpropagation algorithm and a modified counterpropagation algorithm. A pedagogical pattern selection strategy is used to reduce the training time. After trained with ribosomal RNA sequences of the RDP (Ribosomal Database Project) database, the system can classify query sequences into more than one hundred phylogenetic classes with a 100% accuracy at a rate of less than 0.3 CPU second per sequence on a workstation. When compared to other sequence similarity search methods, including Similarity Rank, Blast and Fasta, the neural network method has a higher classification accuracy at a speed of about an order of magnitude faster. The software tool will be made available to the biology community, and the system may be extended into a gene identification system for classifying indiscriminately sequenced DNA fragments.
机译:已经开发了用于根据系统发育关系对核糖体RNA序列进行快速准确分类的神经网络系统。使用n-gram哈希方法将分子序列编码为神经输入向量。 SVD(奇异值分解)方法用于压缩和减小长而稀疏的ngram输入向量的大小。所使用的神经网络是三层前馈网络,采用监督学习范式,包括反向传播算法和改进的反向传播算法。教学模式选择策略可减少培训时间。在使用RDP(核糖体数据库项目)数据库的核糖体RNA序列进行训练后,该系统可以以100%的准确度将查询序列分类为一百多个系统发育类别,并且工作站上每个序列的发生时间少于0.3 CPU秒。当与其他序列相似性搜索方法(包括“相似性等级”,“ Blast”和“ Fasta”)进行比较时,神经网络方法具有较高的分类精度,且速度约快一个数量级。该软件工具将提供给生物学界,并且该系统可以扩展到基因识别系统中,以对不加选择地测序的DNA片段进行分类。

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