Literature DB >> 22797655

Application of the Gini correlation coefficient to infer regulatory relationships in transcriptome analysis.

Chuang Ma1, Xiangfeng Wang.   

Abstract

One of the computational challenges in plant systems biology is to accurately infer transcriptional regulation relationships based on correlation analyses of gene expression patterns. Despite several correlation methods that are applied in biology to analyze microarray data, concerns regarding the compatibility of these methods with the gene expression data profiled by high-throughput RNA transcriptome sequencing (RNA-Seq) technology have been raised. These concerns are mainly due to the fact that the distribution of read counts in RNA-Seq experiments is different from that of fluorescence intensities in microarray experiments. Therefore, a comprehensive evaluation of the existing correlation methods and, if necessary, introduction of novel methods into biology is appropriate. In this study, we compared four existing correlation methods used in microarray analysis and one novel method called the Gini correlation coefficient on previously published microarray-based and sequencing-based gene expression data in Arabidopsis (Arabidopsis thaliana) and maize (Zea mays). The comparisons were performed on more than 11,000 regulatory relationships in Arabidopsis, including 8,929 pairs of transcription factors and target genes. Our analyses pinpointed the strengths and weaknesses of each method and indicated that the Gini correlation can compensate for the shortcomings of the Pearson correlation, the Spearman correlation, the Kendall correlation, and the Tukey's biweight correlation. The Gini correlation method, with the other four evaluated methods in this study, was implemented as an R package named rsgcc that can be utilized as an alternative option for biologists to perform clustering analyses of gene expression patterns or transcriptional network analyses.

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Year:  2012        PMID: 22797655      PMCID: PMC3440197          DOI: 10.1104/pp.112.201962

Source DB:  PubMed          Journal:  Plant Physiol        ISSN: 0032-0889            Impact factor:   8.340


  33 in total

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Review 5.  Co-expression tools for plant biology: opportunities for hypothesis generation and caveats.

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Journal:  Plant Cell Environ       Date:  2009-08-27       Impact factor: 7.228

6.  Mapping and quantifying mammalian transcriptomes by RNA-Seq.

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8.  edgeR: a Bioconductor package for differential expression analysis of digital gene expression data.

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9.  Characterization of WRKY co-regulatory networks in rice and Arabidopsis.

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  28 in total

1.  Inference of transcriptional networks in Arabidopsis through conserved noncoding sequence analysis.

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Journal:  Plant Cell       Date:  2015-03-17       Impact factor: 11.277

3.  AnnoLnc: A One-Stop Portal to Systematically Annotate Novel Human Long Noncoding RNAs.

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4.  CAFU: a Galaxy framework for exploring unmapped RNA-Seq data.

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6.  Revealing shared and distinct gene network organization in Arabidopsis immune responses by integrative analysis.

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Journal:  Plant Physiol       Date:  2015-01-22       Impact factor: 8.340

7.  Machine learning-based differential network analysis: a study of stress-responsive transcriptomes in Arabidopsis.

Authors:  Chuang Ma; Mingming Xin; Kenneth A Feldmann; Xiangfeng Wang
Journal:  Plant Cell       Date:  2014-02-11       Impact factor: 11.277

8.  Construction and Optimization of a Large Gene Coexpression Network in Maize Using RNA-Seq Data.

Authors:  Ji Huang; Stefania Vendramin; Lizhen Shi; Karen M McGinnis
Journal:  Plant Physiol       Date:  2017-08-02       Impact factor: 8.340

9.  Evolution of intron-poor clades and expression patterns of the glycosyltransferase family 47.

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10.  Predicting Protein Functions Based on Differential Co-expression and Neighborhood Analysis.

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Journal:  J Comput Biol       Date:  2020-04-17       Impact factor: 1.479

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