Dynamic Clustering of Gene Expression Data Using a Fuzzy Approach

A. Sirbu, G. Czibula, Maria-Iuliana Bocicor
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引用次数: 4

Abstract

The amount of gene expression data gathered in the last decade has increased exponentially due to modern technologies like micro array and next-generation sequencing, which allow measuring the levels of expression of thousands of genes simultaneously. Clustering is a data mining technique often used for analysing this kind of data, as it is able to discover patterns in genes that are very important for understanding functional genomics. To study biological processes which are dynamic by nature, researchers must analyse data gradually, as the processes evolve. There are two ways to achieve this: perform re-clustering from scratch every time new gene expression levels are available, or adapt the previously obtained partition using a dynamic clustering algorithm, which is more efficient. In this paper we propose a fuzzy approach for dynamic clustering of gene expression data and we prove its effectiveness through a set of experimental evaluations performed on a real-life data set.
基于模糊方法的基因表达数据动态聚类
由于微阵列和下一代测序等现代技术,在过去十年中收集的基因表达数据量呈指数级增长,这些技术可以同时测量数千个基因的表达水平。聚类是一种数据挖掘技术,经常用于分析这类数据,因为它能够发现基因中的模式,这对于理解功能基因组学非常重要。为了研究本质上是动态的生物过程,研究人员必须随着过程的演变逐渐分析数据。有两种方法可以实现这一点:每当有新的基因表达水平可用时,从头开始执行重新聚类,或者使用更有效的动态聚类算法调整先前获得的分区。本文提出了一种基因表达数据动态聚类的模糊方法,并通过对真实数据集进行的一组实验评估证明了其有效性。
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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