RPPMD (Randomly projected possible motif discovery): An efficient bucketing method for finding DNA planted Motif

Faisal Bin Ashraf, Ali Imam Abir, Md Sirajus Salekin, M. Mottalib
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引用次数: 5

Abstract

DNA contains the information of structure and function of different molecules of any living being. Short repeating patterns in a DNA sequence, called Motifs, are useful to understand and analyze this information. Recent advancements in gene expression analysis already prompt the scientists to introduce a number of motif finding algorithms. Among different motif search problems, one of them is Planted Motif Search (PMS). In this paper, we have proposed an approximate algorithm for Planted Motif Search which at first generates all possible motif set and use a bucketing concept to find out the proper motifs from the whole dataset. Two benchmark datasets of DNA sequences are used to evaluate the performance of the proposed method and its comparative analysis with other approaches. Experimental results demonstrate that proposed bucketing approach is more robust than the other approximate algorithms providing more amounts of motifs within less amount of time. Most of the time, above 80% of the possible motifs of the given input set are found within a reasonable time.
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RPPMD(随机投影可能基序发现):一种高效的寻找DNA植入基序的方法
DNA包含了任何生物不同分子的结构和功能信息。DNA序列中的短重复模式,称为基序,对理解和分析这些信息很有用。基因表达分析的最新进展已经促使科学家引入了许多基序查找算法。在不同的基序搜索问题中,种植基序搜索(PMS)是其中的一种。本文提出了一种近似的植入式Motif搜索算法,该算法首先生成所有可能的Motif集,然后使用桶形概念从整个数据集中找出合适的Motif。利用两个DNA序列的基准数据集来评估该方法的性能,并与其他方法进行比较分析。实验结果表明,该方法比其他近似算法具有更强的鲁棒性,可以在更短的时间内提供更多数量的基序。大多数情况下,在合理的时间内,给定输入集的80%以上的可能母题被找到。
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