Gene microarray data analysis using parallel point-symmetry-based clustering.

IF 0.2 4区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Anasua Sarkar, Ujjwal Maulik
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引用次数: 5

Abstract

Identification of co-expressed genes is the central goal in microarray gene expression analysis. Point-symmetry-based clustering is an important unsupervised learning technique for recognising symmetrical convex- or non-convex-shaped clusters. To enable fast clustering of large microarray data, we propose a distributed time-efficient scalable approach for point-symmetry-based K-Means algorithm. A natural basis for analysing gene expression data using symmetry-based algorithm is to group together genes with similar symmetrical expression patterns. This new parallel implementation also satisfies linear speedup in timing without sacrificing the quality of clustering solution on large microarray data sets. The parallel point-symmetry-based K-Means algorithm is compared with another new parallel symmetry-based K-Means and existing parallel K-Means over eight artificial and benchmark microarray data sets, to demonstrate its superiority, in both timing and validity. The statistical analysis is also performed to establish the significance of this message-passing-interface based point-symmetry K-Means implementation. We also analysed the biological relevance of clustering solutions.

基于并行点对称聚类的基因微阵列数据分析。
鉴定共表达基因是微阵列基因表达分析的中心目标。基于点对称的聚类是一种重要的无监督学习技术,用于识别对称凸形或非凸形聚类。为了实现大型微阵列数据的快速聚类,我们提出了一种基于点对称的K-Means算法的分布式时间高效可扩展方法。使用基于对称的算法分析基因表达数据的自然基础是将具有相似对称表达模式的基因分组在一起。这种新的并行实现在不牺牲大型微阵列数据集聚类解决方案质量的情况下,在时间上满足线性加速。将基于并行点对称的K-Means算法与另一种新的基于并行点对称的K-Means算法以及现有的8个人工和基准微阵列数据集上的并行K-Means算法进行了比较,证明了其在时序和有效性方面的优越性。还进行了统计分析,以确定这种基于消息传递接口的点对称k -均值实现的意义。我们还分析了聚类解决方案的生物学相关性。
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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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
0
审稿时长
>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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