Learning biological networks via bootstrapping with optimized go-based gene similarity

  • Authors:
  • Ronald Taylor;Bob Baddeley;Antonio Sanfilippo;Rick Riensche;Marc Verhagen;Jason McDermott;Russ Jensen

  • Affiliations:
  • Pacific Northwest National Lab, Richland, WA;Pacific Northwest National Lab, Richland, WA;Pacific Northwest National Lab, Richland, WA;Pacific Northwest National Lab, Richland, WA;Brandeis University, Waltham, MA;Pacific Northwest National Lab, Richland, WA;Pacific Northwest National Lab, Richland, WA

  • Venue:
  • Proceedings of the First ACM International Conference on Bioinformatics and Computational Biology
  • Year:
  • 2010

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Abstract

Microarray gene expression data provide a unique information resource for learning biological networks using "reverse engineering" methods. However, there are a variety of cases in which we know which genes are involved in a given pathology of interest, but we do not have enough experimental evidence to support the use of fully-supervised/reverse-engineering learning methods. Moreover, corroboration of the reverse engineered networks through independent means such as evidence from the biomedical literature is always desirable. In this paper, we explore a novel semi-supervised approach in which biological networks are learned from a reference list of genes and a partial set of links for these genes extracted automatically from PubMed abstracts, using a knowledge-driven bootstrapping algorithm. 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. An initial evaluation indicates the viability of the approach as an alternate or complementary technique to fully supervised methods.