Title :
Critical protein detection in dynamic PPI networks with multi-source integrated deep belief nets
Author :
Yuan Zhang ; Nan Du ; Kang Li ; Jinchao Feng ; Kebin Jia ; Aidong Zhang
Author_Institution :
Coll. of Electron. Inf. & Control Eng., Beijing Univ. of Technol., Beijing, China
Abstract :
Critical node detection in dynamic networks is of great value in many areas, such as the evolving of friendship in social networks, the development of epidemics, molecular pathogenesis of diseases and so on. As for detecting critical nodes in dynamic Protein-Protein Interaction Networks (PPINs), there are mainly two challenges: the first is to construct the dynamic PPINs that are not available directly from biological experiments in laboratories; and the second is how to identify the most critical units that are responsible for the dynamic processes. This paper proposes effective framework to tackle these two problems. First of all, this paper proposes to construct the dynamic PPINs by simultaneously modeling the activity of proteins and assembling the dynamic co-regulation protein network at each time point. As result, more comprehensive dynamic PPINs are built. Besides, a novel critical protein detection method that integrates multiple PPI networks into a Deep Belief Network model (referred to as MIDBN) is developed. The integrated model is trained to get hierarchical common representations of multiple sources which are used to reconstruct the original data. The variabilities of the reconstruction errors across the time courses are ranked to finally get the top proteins that have significantly different evolving structural patterns than the other nodes in the dynamic networks. We evaluated our network construction method by comparing the functional representations of the derived networks with that of two other traditional construction methods, and our method achieved superior function analysis results. The ranking results of critical proteins from MIDBN were compared with results from two baseline methods and the comparison results showed that MIDBN had better reconstruction rate and identified more proteins of critical value to yeast cell cycle process.
Keywords :
belief networks; cellular biophysics; diseases; epidemics; functional analysis; medical computing; microorganisms; proteins; proteomics; Deep Belief Network model; MIDBN; baseline method; comprehensive dynamic PPIN; critical node detection; critical protein detection method; critical unit; critical value; diseases; dynamic PPI networks; dynamic Protein-Protein Interaction Networks; dynamic co-regulation protein network; dynamic network; effective framework; epidemics development; evolving structural pattern; functional representations; hierarchical common representation; molecular pathogenesis; multiple PPI network; multisource integrated deep belief nets; network construction method; original data reconstruction; protein activity modeling; reconstruction error variabilities; reconstruction rate; social network; superior function analysis; time courses; time point; top proteins; traditional construction method; yeast cell cycle process; Correlation; Data models; Diseases; Gene expression; Joints; Proteins; Vectors;
Conference_Titel :
Bioinformatics and Biomedicine (BIBM), 2013 IEEE International Conference on
Conference_Location :
Shanghai
DOI :
10.1109/BIBM.2013.6732606