Title
Understanding protein evolutionary rate by integrating gene co-expression with protein interactions.
Abstract
Among the many factors determining protein evolutionary rate, protein-protein interaction degree (PPID) has been intensively investigated in recent years, but its precise effect on protein evolutionary rate is still heavily debated.We first confirmed that the correlation between protein evolutionary rate and PPID varies considerably across different protein interaction datasets. Specifically, because of the maximal inconsistency between yeast two-hybrid and other datasets, we reasoned that the difference in experimental methods contributes to our inability to clearly define how PPID affects protein evolutionary rate. To address this, we integrated protein interaction and gene co-expression data to derive a co-expressed protein-protein interaction degree (ePPID) measure, which reflects the number of partners with which a protein can permanently interact. Thus, irrespective of the experimental method employed, we found that (1) ePPID is a better predictor of protein evolutionary rate than PPID, (2) ePPID is a more robust predictor of protein evolutionary rate than PPID, and (3) the contribution of ePPID to protein evolutionary rate is statistically independent of expression level. Analysis of hub proteins in the Structural Interaction Network further supported ePPID as a better predictor of protein evolutionary rate than the number of distinct binding interfaces and clarified the slower evolution of co-expressed multi-interface hub proteins over that of other hub proteins.Our study firmly established ePPID as a robust predictor of protein evolutionary rate, irrespective of experimental method, and underscored the importance of permanent interactions in shaping the evolutionary outcome.
Year
DOI
Venue
2010
10.1186/1752-0509-4-179
BMC systems biology
Keywords
Field
DocType
algorithms,yeast two hybrid,gene expression regulation,protein binding,genomics,interaction network,gene expression profiling,systems biology,bioinformatics,proteins,protein protein interaction,statistical independence
Plasma protein binding,Protein–protein interaction,Gene,Biology,Codon Adaptation Index,Systems biology,Genomics,Regulation of gene expression,Computational biology,Bioinformatics,Genetics,Gene expression profiling
Journal
Volume
Issue
ISSN
4
1
1752-0509
Citations 
PageRank 
References 
12
0.40
12
Authors
5
Name
Order
Citations
PageRank
Kaifang Pang1383.36
Chao Cheng2462.90
Zhenyu Xuan319234.51
Huanye Sheng47918.33
Xiaotu Ma5644.96