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Measuring similarities between gene expression profiles through new data transformations SCIE SCOPUS

Title
Measuring similarities between gene expression profiles through new data transformations
Authors
Kim, KZhang, SBJiang, KNCai, LLee, IBFeldman, LJHuang, HY
Date Issued
2007-01-27
Publisher
BIOMED CENTRAL LTD
Abstract
Background: Clustering methods are widely used on gene expression data to categorize genes with similar expression profiles. Finding an appropriate (dis)similarity measure is critical to the analysis. In our study, we developed a new measure for clustering the genes when the key factor is the shape of the profile, and when the expression magnitude should also be accounted for in determining the gene relationship. This is achieved by modeling the shape and magnitude parameters separately in a gene expression profile, and then using the estimated shape and magnitude parameters to define a measure in a new feature space. Results: We explored several different transformation schemes to construct the feature spaces that include a space whose features are determined by the mutual differences of the original expression components, a space derived from a parametric covariance matrix, and the principal component space in traditional PCA analysis. The former two are the newly proposed and the latter is explored for comparison purposes. The new measures we defined in these feature spaces were employed in a K-means clustering procedure to perform analyses. Applying these algorithms to a simulation dataset, a developing mouse retina SAGE dataset, a small yeast sporulation cDNA dataset, and a maize root affymetrix microarray dataset, we found from the results that the algorithm associated with the first feature space, named TransChisq, showed clear advantages over other methods. Conclusion: The proposed TransChisq is very promising in capturing meaningful gene expression clusters. This study also demonstrates the importance of data transformations in defining an efficient distance measure. Our method should provide new insights in analyzing gene expression data. The clustering algorithms are available upon request.
URI
https://oasis.postech.ac.kr/handle/2014.oak/9849
DOI
10.1186/1471-2105-8-
ISSN
1471-2105
Article Type
Article
Citation
BMC BIOINFORMATICS, vol. 8, 2007-01-27
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이인범LEE, IN BEUM
Dept. of Chemical Enginrg
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