MIrExpress: A Database for Gene Coexpression Correlation in Immune Cells Based on Mutual Information and Pearson Correlation

Most current gene coexpression databases support the analysis for linear correlation of gene pairs, but not nonlinear correlation of them, which hinders precisely evaluating the gene-gene coexpression strengths. Here, we report a new database, MIrExpress, which takes advantage of the information the...

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Main Authors: Luman Wang, Qiaochu Mo, Jianxin Wang
Format: Article
Language:English
Published: Hindawi Limited 2015-01-01
Series:Journal of Immunology Research
Online Access:http://dx.doi.org/10.1155/2015/140819
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spelling doaj-c19291f6f4c54a4c95ecf6ed6f98742d2020-11-24T21:35:01ZengHindawi LimitedJournal of Immunology Research2314-88612314-71562015-01-01201510.1155/2015/140819140819MIrExpress: A Database for Gene Coexpression Correlation in Immune Cells Based on Mutual Information and Pearson CorrelationLuman Wang0Qiaochu Mo1Jianxin Wang2School of Information, Beijing Forestry University, Beijing 100083, ChinaSchool of Information, Beijing Forestry University, Beijing 100083, ChinaSchool of Information, Beijing Forestry University, Beijing 100083, ChinaMost current gene coexpression databases support the analysis for linear correlation of gene pairs, but not nonlinear correlation of them, which hinders precisely evaluating the gene-gene coexpression strengths. Here, we report a new database, MIrExpress, which takes advantage of the information theory, as well as the Pearson linear correlation method, to measure the linear correlation, nonlinear correlation, and their hybrid of cell-specific gene coexpressions in immune cells. For a given gene pair or probe set pair input by web users, both mutual information (MI) and Pearson correlation coefficient (r) are calculated, and several corresponding values are reported to reflect their coexpression correlation nature, including MI and r values, their respective rank orderings, their rank comparison, and their hybrid correlation value. Furthermore, for a given gene, the top 10 most relevant genes to it are displayed with the MI, r, or their hybrid perspective, respectively. Currently, the database totally includes 16 human cell groups, involving 20,283 human genes. The expression data and the calculated correlation results from the database are interactively accessible on the web page and can be implemented for other related applications and researches.http://dx.doi.org/10.1155/2015/140819
collection DOAJ
language English
format Article
sources DOAJ
author Luman Wang
Qiaochu Mo
Jianxin Wang
spellingShingle Luman Wang
Qiaochu Mo
Jianxin Wang
MIrExpress: A Database for Gene Coexpression Correlation in Immune Cells Based on Mutual Information and Pearson Correlation
Journal of Immunology Research
author_facet Luman Wang
Qiaochu Mo
Jianxin Wang
author_sort Luman Wang
title MIrExpress: A Database for Gene Coexpression Correlation in Immune Cells Based on Mutual Information and Pearson Correlation
title_short MIrExpress: A Database for Gene Coexpression Correlation in Immune Cells Based on Mutual Information and Pearson Correlation
title_full MIrExpress: A Database for Gene Coexpression Correlation in Immune Cells Based on Mutual Information and Pearson Correlation
title_fullStr MIrExpress: A Database for Gene Coexpression Correlation in Immune Cells Based on Mutual Information and Pearson Correlation
title_full_unstemmed MIrExpress: A Database for Gene Coexpression Correlation in Immune Cells Based on Mutual Information and Pearson Correlation
title_sort mirexpress: a database for gene coexpression correlation in immune cells based on mutual information and pearson correlation
publisher Hindawi Limited
series Journal of Immunology Research
issn 2314-8861
2314-7156
publishDate 2015-01-01
description Most current gene coexpression databases support the analysis for linear correlation of gene pairs, but not nonlinear correlation of them, which hinders precisely evaluating the gene-gene coexpression strengths. Here, we report a new database, MIrExpress, which takes advantage of the information theory, as well as the Pearson linear correlation method, to measure the linear correlation, nonlinear correlation, and their hybrid of cell-specific gene coexpressions in immune cells. For a given gene pair or probe set pair input by web users, both mutual information (MI) and Pearson correlation coefficient (r) are calculated, and several corresponding values are reported to reflect their coexpression correlation nature, including MI and r values, their respective rank orderings, their rank comparison, and their hybrid correlation value. Furthermore, for a given gene, the top 10 most relevant genes to it are displayed with the MI, r, or their hybrid perspective, respectively. Currently, the database totally includes 16 human cell groups, involving 20,283 human genes. The expression data and the calculated correlation results from the database are interactively accessible on the web page and can be implemented for other related applications and researches.
url http://dx.doi.org/10.1155/2015/140819
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