TrieAMD: a scalable and efficient apriori motif discovery approach

IF 0.2 4区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY International Journal of Data Mining and Bioinformatics Pub Date : 2015-07-01 DOI:10.1504/IJDMB.2015.070833
Isra M. Al-Turaiki, G. Badr, H. Mathkour
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引用次数: 4

Abstract

Motif discovery is the problem of finding recurring patterns in biological sequences. It is one of the hardest and long-standing problems in bioinformatics. Apriori is a well-known data-mining algorithm for the discovery of frequent patterns in large datasets. In this paper, we apply the Apriori algorithm and use the Trie data structure to discover motifs. We propose several modifications so that we can adapt the classic Apriori to our problem. Experiments are conducted on Tompa's benchmark to investigate the performance of our proposed algorithm, the Trie-based Apriori Motif Discovery (TrieAMD). Results show that our algorithm outperforms all of the tested tools on real datasets for the average sensitivity measure, which means that our approach is able to discover more motifs. In terms of specificity, the performance of our algorithm is comparable to the other tools. The results also confirm both linear time and linear space scalability of the algorithm.
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TrieAMD:一种可扩展的、高效的先验基序发现方法
基序发现是在生物序列中发现重复模式的问题。这是生物信息学中最困难和长期存在的问题之一。Apriori是一种著名的数据挖掘算法,用于发现大型数据集中的频繁模式。在本文中,我们使用Apriori算法和Trie数据结构来发现motif。我们提出了一些修改,以便我们可以使经典Apriori适应我们的问题。实验在Tompa的基准上进行,以研究我们提出的算法,基于trie的Apriori Motif Discovery (TrieAMD)的性能。结果表明,我们的算法在实际数据集上的平均灵敏度测量优于所有测试工具,这意味着我们的方法能够发现更多的基序。在特异性方面,我们的算法的性能与其他工具相当。结果还证实了该算法具有线性时间和线性空间的可扩展性。
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1.00
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>12 weeks
期刊介绍: Mining bioinformatics data is an emerging area at the intersection between bioinformatics and data mining. The objective of IJDMB is to facilitate collaboration between data mining researchers and bioinformaticians by presenting cutting edge research topics and methodologies in the area of data mining for bioinformatics. This perspective acknowledges the inter-disciplinary nature of research in data mining and bioinformatics and provides a unified forum for researchers/practitioners/students/policy makers to share the latest research and developments in this fast growing multi-disciplinary research area.
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