构建系统发育的负面信息。

Supaporn Chairungsee, Maxime Crochemore
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引用次数: 0

摘要

序列中的缺席词(在其他上下文中也称为禁止词或unword)是不出现在给定序列中的片段。如果它的所有适当因素都按照给定的顺序出现,那么它就是一个最小的缺词。在这篇文章中,我们回顾了最小缺失词的概念,它包括了最短缺失词的概念,但更强大。我们提出了一种利用有界深度Trie来计算DNA序列有界长度最小缺失词的有效方法,表示有界长度因子。该方法输出整个最小缺失词集,并且我们的技术提供了一个线性时间算法,比以前的解决方案占用更少的内存。我们还提出了一种方法来区分序列不同的生物体使用他们的最小缺席词。该方法采用长度加权指数对序列进行区分,结果表明,该方法可以建立基于专利信息的系统发育树。
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Negative information for building phylogenies.

An absent word (also called a forbidden word or an unword in other contexts) in a sequence is a segment that does not appear in the given sequence. It is a minimal absent word if all its proper factors occur in the given sequence. In this article, we review the concept of minimal absent words, which includes the notion of shortest absent words but is much stronger. We present an efficient method for computing the minimal absent words of bounded length for DNA sequence using a Trie of bounded depth, representing bounded length factors. This method outputs the whole set of minimal absent words and furthermore our technique provides a linear-time algorithm with less memory usage than previous solutions. We also present an approach to distinguish sequences of different organisms using their minimal absent words. Our solution applies a length-weighted index to discriminate sequences and the results show that we can build phylogenetic tree based on the patent collected information.

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