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Maximising Overlap Score in DNA Sequence Assembly Problem by Stochastic Diffusion Search

机译:通过随机扩散搜索最大化DNA序列装配问题中的重叠分数

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This paper introduces a novel study on the performance of Stochastic Diffusion Search (SDS)-a swarm intelligence algorithm-to address DNA sequence assembly problem. This is an NP-hard problem and one of the primary problems in computational molecular biology that requires optimisation methodologies to reconstruct the original DNA sequence. In this work, SDS algorithm is adapted for this purpose and several experiments are run in order to evaluate the performance of the presented technique over several frequently used benchmarks. Given the promising results of the newly proposed algorithm and its success in assembling the input fragments, its behaviour is further analysed, thus shedding light on the process through which the algorithm conducts the task. Additionally, the algorithm is applied to overlap score matrices which are generated from the raw input fragments; the algorithm optimises the overlap score matrices to find better results. In these experiments real-world data are used and the performance of SDS is compared with several other algorithms which are used by other researchers in the field, thus demonstrating its weaknesses and strengths in the experiments presented in the paper.
机译:本文介绍了一种针对群体扩散智能算法随机扩散搜索(SDS)的性能的新研究,该算法可解决DNA序列组装问题。这是一个NP难题,也是计算分子生物学中的主要问题之一,它需要优化方法来重建原始DNA序列。在这项工作中,SDS算法为此目的进行了修改,并进行了一些实验,以便在几种常用基准之上评估所提出技术的性能。鉴于新提出的算法的有希望的结果以及它在组装输入片段方面的成功,将进一步分析其行为,从而为该算法执行任务的过程提供了启示。另外,该算法应用于从原始输入片段生成的重叠分数矩阵。该算法优化了重叠分数矩阵,以找到更好的结果。在这些实验中,使用了真实世界的数据,并将SDS的性能与该领域其他研究人员使用的其他几种算法进行了比较,从而证明了本文提出的实验中SDS的弱点和优势。

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