Combined clustering models for the analysis of gene expression
Version 2 2024-06-04, 10:12Version 2 2024-06-04, 10:12
Version 1 2017-05-11, 15:04Version 1 2017-05-11, 15:04
journal contribution
posted on 2024-06-04, 10:12 authored by M Angelova, J EllmanClustering has become one of the fundamental tools for analyzing gene expression and producing gene classifications. Clustering models enable finding patterns of similarity in order to understand gene function, gene regulation, cellular processes and sub-types of cells. The clustering results however have to be combined with sequence data or knowledge about gene functionality in order to make biologically meaningful conclusions. In this work, we explore a new model that integrates gene expression with sequence or text information. © 2010 Pleiades Publishing, Ltd.
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Journal
Physics of Atomic NucleiVolume
73Pagination
242-246ISSN
1063-7788Language
engPublication classification
CN.1 Other journal articleIssue
2Publisher
Pleiades PublishingUsage metrics
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