Coexpression of mRNAs under multiple conditions is
commonly used to infer cofunctionality of their gene products
despite well-known limitations of this “guilt-by-association”
(GBA) approach. Recent advancements in mass
spectrometry-based proteomic technologies have enabled
global expression profiling at the protein level; however,
whether proteome profiling data can outperform transcriptome
profiling data for coexpression based gene function
prediction has not been systematically investigated. Here,
we address this question by constructing and analyzing
mRNA and protein coexpression networks for three cancer
types with matched mRNA and protein profiling data from
The Cancer Genome Atlas (TCGA) and the Clinical Proteomic
Tumor Analysis Consortium (CPTAC). Our analyses
revealed a marked difference in wiring between the mRNA
and protein coexpression networks. Whereas protein coexpression
was driven primarily by functional similarity between
coexpressed genes, mRNA coexpression was driven
by both cofunction and chromosomal colocalization of the
genes. Functionally coherent mRNA modules were more
likely to have their edges preserved in corresponding protein
networks than functionally incoherent mRNA modules.
Proteomic data strengthened the link between gene expression
and function for at least 75% of Gene Ontology
(GO) biological processes and 90% of KEGG pathways. A
web application Gene2Net (http://cptac.gene2net.org) developed
based on the three protein coexpression networks
revealed novel gene-function relationships, such as linking
ERBB2 (HER2) to lipid biosynthetic process in breast cancer,
identifying PLG as a new gene involved in complement
activation, and identifying AEBP1 as a new epithelial-mesenchymal
transition (EMT) marker. Our results demonstrate
that proteome profiling outperforms transcriptome profiling
for coexpression based gene function prediction. Proteomics
should be integrated if not preferred in gene function
and human disease studies. Molecular & Cellular Proteomics
16: 10.1074/mcp.M116.060301, 121–134, 2017.
Revised: April 27, 2020 |
Published: January 16, 2017
Citation
Wang J., Z. Ma, S.A. Carr, P. Mertins, H. Zhang, Z. Zhang, and D.W. Chan, et al. 2017.Proteome Profiling Outperforms Transcriptome Profiling for Coexpression Based Gene Function Prediction.Molecular & Cellular Proteomics 16, no. 1:121-134.PNNL-SA-124098.doi:10.1074/mcp.M116.060301