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BIBM
2007
IEEE

A Multi-metric Similarity Based Analysis of Microarray Data

14 years 7 months ago
A Multi-metric Similarity Based Analysis of Microarray Data
Clustering has been shown to be effective in analyzing functional relationships of genes. However, no single clustering method with single distance metric is capable of capturing all types of relationships that a gene may have with other genes. In this paper we introduce a framework which groups genes around a query gene, and ranks them in order corresponding to different levels of similarity utilizing multiple metrics. The focus of our efforts is to create gene centric clusters. The notion of Strong Group (SG) is presented as a cluster definition where no two genes are distant from each other, greater than a threshold value. The genes are then ranked on their frequency of co-occurrence. The grouping and rankings are drawn by applying set operations over results of multiple distance metrics, each capturing particular similarities such as shifted relationships, negative correlations and strong positive relationships. The effectiveness of the algorithm is demonstrated on two case studi...
Fatih Altiparmak, Selnur Erdal, Ozgur Ozturk, Haka
Added 02 Jun 2010
Updated 02 Jun 2010
Type Conference
Year 2007
Where BIBM
Authors Fatih Altiparmak, Selnur Erdal, Ozgur Ozturk, Hakan Ferhatosmanoglu
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