February 18, 2011
Journal Article

Enriching regulatory networks by bootstrap learning using optimised GO-based gene similarity and gene links mined from PubMed abstracts

Abstract

Transcriptional regulatory networks are being determined using “reverse engineering” methods that infer connections based on correlations in gene state. Corroboration of such networks through independent means such as evidence from the biomedical literature is desirable. Here, we explore a novel approach, a bootstrapping version of our previous Cross-Ontological Analytic method (XOA) that can be used for semi-automated annotation and verification of inferred regulatory connections, as well as for discovery of additional functional relationships between the genes. First, we use our annotation and network expansion method on a biological network learned entirely from the literature. We show how new relevant links between genes can be iteratively derived using a gene similarity measure based on the Gene Ontology that is optimized on the input network at each iteration. Second, we apply our method to annotation, verification, and expansion of a set of regulatory connections found by the Context Likelihood of Relatedness algorithm.

Revised: April 11, 2011 | Published: February 18, 2011

Citation

Taylor R.C., A.P. Sanfilippo, J.E. McDermott, R.L. Baddeley, R.M. Riensche, R.S. Jensen, and M. Verhagen, et al. 2011. Enriching regulatory networks by bootstrap learning using optimised GO-based gene similarity and gene links mined from PubMed abstracts. International Journal of Computational Biology and Drug Design 4, no. 1:56-82. PNNL-SA-76542. doi:10.1504/IJCBDD.2011.038657