Literature DB >> 22329341

Comparative analysis of different label-free mass spectrometry based protein abundance estimates and their correlation with RNA-Seq gene expression data.

Kang Ning1, Damian Fermin, Alexey I Nesvizhskii.   

Abstract

An increasing number of studies involve integrative analysis of gene and protein expression data taking advantage of new technologies such as next-generation transcriptome sequencing (RNA-Seq) and highly sensitive mass spectrometry (MS) instrumentation. Thus, it becomes interesting to revisit the correlative analysis of gene and protein expression data using more recently generated data sets. Furthermore, within the proteomics community there is a substantial interest in comparing the performance of different label-free quantitative proteomic strategies. Gene expression data can be used as an indirect benchmark for such protein-level comparisons. In this work we use publicly available mouse data to perform a joint analysis of genomic and proteomic data obtained on the same organism. First, we perform a comparative analysis of different label-free protein quantification methods (intensity based and spectral count based and using various associated data normalization steps) using several software tools on the proteomic side. Similarly, we perform correlative analysis of gene expression data derived using microarray and RNA-Seq methods on the genomic side. We also investigate the correlation between gene and protein expression data, and various factors affecting the accuracy of quantitation at both levels. It is observed that spectral count based protein abundance metrics, which are easy to extract from any published data, are comparable to intensity based measures with respect to correlation with gene expression data. The results of this work should be useful for designing robust computational pipelines for extraction and joint analysis of gene and protein expression data in the context of integrative studies.

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Year:  2012        PMID: 22329341      PMCID: PMC3744887          DOI: 10.1021/pr201052x

Source DB:  PubMed          Journal:  J Proteome Res        ISSN: 1535-3893            Impact factor:   4.466


  53 in total

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Review 2.  Guidelines for the design, analysis and interpretation of 'omics' data: focus on human endometrium.

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Review 4.  Proteolytic Systems in Milk: Perspectives on the Evolutionary Function within the Mammary Gland and the Infant.

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6.  Proteomics-based identification of low-abundance signaling and regulatory protein complexes in native plant tissues.

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Review 7.  Tools for label-free peptide quantification.

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8.  Deep proteome coverage based on ribosome profiling aids mass spectrometry-based protein and peptide discovery and provides evidence of alternative translation products and near-cognate translation initiation events.

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9.  Leveraging the complementary nature of RNA-Seq and shotgun proteomics data.

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Journal:  Proteomics       Date:  2014-11-17       Impact factor: 3.984

10.  ANPELA: analysis and performance assessment of the label-free quantification workflow for metaproteomic studies.

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