Microarray data clustering based on temporal variation: FCV with TSD preclustering

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The aim of this paper is to present a new clustering algorithm for short time-series gene expression data that is able to characterise temporal relations in the clustering environment (ie data-space), which is not achieved by other conventional clustering algorithms such as k -means or hierarchical clustering. The algorithm called fuzzy c -varieties clustering with transitional state discrimination preclustering (FCV-TSD) is a two-step approach which identifies groups of points ordered in a line configuration in particular locations and orientations of the data-space that correspond to similar expressions in the time domain. We present the validation of the algorithm with both artificial and real experimental datasets, where k -means and random clustering are used for comparison. The performance was evaluated with a measure for internal cluster correlation and the geometrical properties of the clusters, showing that the FCV-TSD algorithm had better performance than the k -means algorithm on both datasets.
Publisher
Adis
Issue Date
2003-01
Language
English
Citation

APPLIED BIOINFORMATICS, v.2, no.1, pp.35 - 45

ISSN
1175-5636
URI
http://hdl.handle.net/10203/84452
Appears in Collection
BiS-Journal Papers(저널논문)
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