Longest k-tuple Common Sub-Strings

Tiantian Li, Daming Zhu, Haitao Jiang, Haodi Feng, Xuefeng Cui
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Abstract

We focus on a new problem that is formulated to find a longest k-tuple of common sub-strings (abbr. k-CSSs) of two or more strings. We present a suffix tree based algorithm for this problem, which can find a longest k-CSS of m strings in $O(kmn^{k})$ time and $O(kmn)$ space where n is the length sum of the m strings. This algorithm can be used to approximate the longest k-CSS problem to a performance ratio $\frac{1}{\epsilon}$ in $O(kmn^{\lceil\epsilon k\rceil})$ time for $\epsilon\in(0,1]$. Since the algorithm has the space complexity in linear order of n, it will show advantage in comparing particularly long strings. This algorithm proves that the problem that asks to find a longest gapped pattern of non-constant number of strings is polynomial time solvable if the gap number is restricted constant, although the problem without any restriction on the gap number was proved NP-Hard. Using a C++ tool that is reliant on the algorithm, we performed experiments of finding longest 2-CSSs, 3-CSSs and 5-CSSs of 2 ~ 14 COVID-19 S-proteins. Under the help of longest 2-CSSs and 3-CSSs of COVID-19 S-proteins, we identified the mutation sites in the S-proteins of two COVID-19 variants Delta and Omicron. The algorithm based tool is available for downloading at https://github.com/lytt0/k-CSS.
最长的k元组公共子字符串
我们关注的是一个新的问题,该问题被表述为寻找两个或多个字符串的公共子字符串(缩写为k- css)的最长k元组。我们提出了一种基于后缀树的算法,该算法可以在$O(kmn^{k})$时间和$O(kmn)$空间中找到m个字符串的最长k-CSS,其中n为m个字符串的长度和。该算法可用于将最长k-CSS问题近似为$\epsilon\in(0,1]$在$O(kmn^{\lceil\epsilon k\rceil})$时间内的性能比率$\frac{1}{\epsilon}$。由于该算法的空间复杂度为n的线性数量级,因此在比较特别长的字符串时将显示出优势。该算法证明了当间隙数为限制常数时,求非常数串最长间隙模式的问题是多项式时间可解的,尽管不限制间隙数的问题被证明为NP-Hard。利用依赖于该算法的c++工具,我们对214个COVID-19 s蛋白进行了最长2- css、3- css和5- css的实验。在COVID-19 s蛋白最长的2-CSSs和3-CSSs的帮助下,我们确定了两个COVID-19变体Delta和Omicron的s蛋白突变位点。基于算法的工具可从https://github.com/lytt0/k-CSS下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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