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Efficiently Mining Gene Expression Data via Integrated Clustering and Validation Techniques

机译:通过集成的聚类和验证技术有效地挖掘基因表达数据

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In recent years, the microarray techniques have received extensive attentions due to its wide applications in biomedical industry. The main advantage of microarray technique is it allows simultaneous studies of the expressions of thousands of genes in a single experiment. Analyzing the microarray data is a challenge that arises the applications of various clustering methods used for data mining. Although a number of clustering methods have been proposed, they can not meet the requirements of automation, high quality and high efficiency at the same time in analyzing gene expression data. In this paper, we propose an automatic and efficient clustering approach for mining gene expression data produced via microarray techniques. Through performance experiments on real data sets, the proposed method is shown to achieve higher efficiency, clustering quality and automation than other clustering methods.
机译:近年来,由于其在生物医学工业中的广泛应用,微阵列技术受到了广泛的关注。微阵列技术的主要优势在于,它允许在单个实验中同时研究数千种基因的表达。分析微阵列数据是一个挑战,它引起了用于数据挖掘的各种聚类方法的应用。尽管已经提出了许多聚类方法,但是它们在分析基因表达数据时不能同时满足自动化,高质量和高效率的要求。在本文中,我们提出了一种自动高效的聚类方法,用于挖掘通过微阵列技术产生的基因表达数据。通过对真实数据集的性能实验,表明该方法比其他聚类方法具有更高的效率,聚类质量和自动化程度。

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