Title
Feature ranking in transcriptional networks: Packet receipt as a dynamical metric.
Abstract
Machine learning techniques may be useful in determining the features contributing to some biological properties, such as robustness, which is the tendency for biological systems to resist a change of state. In this work, we compare transcriptional subnetworks extracted from the bacterium Escherichia coli and the baker's yeast Saccharomyces cerevisiae using in silico experiments. We use the packet receipt rate as a metric to quantify biological robustness, which is different from the usual structural metrics since it captures the dynamic behavior of the network. We define seventeen features based on structural significance, such as transcriptional motifs, and conventional metrics, such as average shortest path and network density, among others. Feature ranking is performed, based on a grid-search method to identify Support Vector Machine classifier parameters using cross validation. Our results indicate that feed-forward loop based features are important for bacterial transcriptional networks, whereas network density, degree-centrality based and bifan-based features are found to be significant for yeast-derived transcriptional networks. Interestingly, results suggest that feature significance varies with network size (number of nodes). As a first, this study quantifies the impact of the feed-forward loop and bifan transcriptional motif abundance observed in natural networks.
Year
DOI
Venue
2014
10.4108/icst.bict.2014.257930
BICT
Keywords
Field
DocType
complex networks,machine learning
Data mining,Shortest path problem,Computer science,Transcriptional Networks,Network packet,Feature ranking,Robustness (computer science),Complex network,Cross-validation,In silico
Conference
Citations 
PageRank 
References 
3
0.47
9
Authors
5
Name
Order
Citations
PageRank
Bhanu K. Kamapantula1163.11
Michael L. Mayo2253.78
Edward J. Perkins322520.46
Ahmed F. Abdelzaher462.36
Preetam Ghosh534943.69