基因表达数据的动态分层聚类方法

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

摘要

发现基因表达数据中的模式是理解功能基因组学的一个极其重要的步骤,它可以通过聚类过程来实现。生物过程是动态的,因此数据是不断变化的。研究人员可以等到所有的数据都可用,或者随着实验的进行逐渐分析。目前,后者只能通过从头开始重复集群过程来完成。考虑到要处理的大量数据,这将非常耗时,并可能导致重要的延迟。在本文中,我们提出了一种动态的基因表达数据分层聚类方法,该方法可以通过调整先前获得的分区来处理新到达的数据,而无需从头开始重新运行算法。在一个真实的基因表达数据集上进行了实验评估,得到的结果显示了我们模型的性能,并根据几个评估指标进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A dynamic approach for hierarchical clustering of gene expression data
Discovering patterns in gene expression data is an extremely important step in understanding functional genomics and it can be achieved through a clustering process. Biological processes are dynamic, therefore the data is continuously subject to change. Researchers can either wait until all data is available, or analyze it gradually, as the experiment progresses. Currently, the latter can only be accomplished by repeating the clustering process from the beginning. This would be very time consuming and could lead to important delays, considering the huge amounts of data to be dealt with. In this article we propose a dynamic approach for hierarchical clustering of gene expression data, which can handle the newly arrived data by adapting a previously obtained partition, without the need of re-running the algorithm from scratch. The experimental evaluation is performed on a real-life gene expression data set and the performance of our model is shown by the obtained results, which are analyzed in terms of several evaluation measures.
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