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Inference of Gene Coexpression Networks by Integrative Analysis across Microarray Experiments
Elo, Laura L. ; Lahesmaa, Riitta ; Aittokallio, Tero
Journal of Integrative Bioinformatics - JIB (ISSN 1613-4516)
Abstract:
We improve the reliability of detecting coexpressed gene pairs from microarray data by introducing a novel probe-level quality-weighted similarity measure for combining data across different Affymetrix experiments. In construction of gene coexpression networks, the proposed procedure is less sensitive to noise than the corresponding single-experiment approaches or the conventional integrative approaches, even when a relatively small number of samples and conditions is available. The present results indicate how the accumulated microarray data can be effectively exploited to increase the quality of the inferred networks. In particular, we demonstrate its biological relevance in identifying coexpressions in mouse T helper cell differentiation.
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Faculty of Technology, Research Groups in Informatics |
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Data processing, computer science, computer systems |
Suggested Citation:
Elo, Laura L. ; Lahesmaa, Riitta ; Aittokallio, Tero ( 2006) Inference of Gene Coexpression Networks by Integrative Analysis across Microarray Experiments.
Journal of Integrative Bioinformatics - JIB (ISSN 1613-4516), 3(2), 2006. Special Issue: 3rd Integrative Bioinformatics Workshop, Harpenden, United Kingdom, 2
Online-Journal: http://journal.imbio.de/index.php?paper_id=33
URL:
http://biecoll.ub.uni-bielefeld.de/volltexte/2007/214
Also published by Shaker:
Ralf Hofestädt, Thoralf Töpel (eds.). Integrative Bioinformatics - Yearbook 2006. Shaker, 2007.
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