Abstract

BackgroundBiomedical knowledge grows in complexity, and becomes encoded in network-based repositories, which include focused, expert-drawn diagrams, networks of evidence-based associations and established ontologies. Combining these structured information sources is an important computational challenge, as large graphs are difficult to analyze visually.ResultsWe investigate knowledge discovery in manually curated and annotated molecular interaction diagrams. To evaluate similarity of content we use: i) Euclidean distance in expert-drawn diagrams, ii) shortest path distance using the underlying network and iii) ontology-based distance. We employ clustering with these metrics used separately and in pairwise combinations. We propose a novel bi-level optimization approach together with an evolutionary algorithm for informative combination of distance metrics. We compare the enrichment of the obtained clusters between the solutions and with expert knowledge. We calculate the number of Gene and Disease Ontology terms discovered by different solutions as a measure of cluster quality.Our results show that combining distance metrics can improve clustering accuracy, based on the comparison with expert-provided clusters. Also, the performance of specific combinations of distance functions depends on the clustering depth (number of clusters). By employing bi-level optimization approach we evaluated relative importance of distance functions and we found that indeed the order by which they are combined affects clustering performance.Next, with the enrichment analysis of clustering results we found that both hierarchical and bi-level clustering schemes discovered more Gene and Disease Ontology terms than expert-provided clusters for the same knowledge repository. Moreover, bi-level clustering found more enriched terms than the best hierarchical clustering solution for three distinct distance metric combinations in three different instances of disease maps.ConclusionsIn this work we examined the impact of different distance functions on clustering of a visual biomedical knowledge repository. We found that combining distance functions may be beneficial for clustering, and improve exploration of such repositories. We proposed bi-level optimization to evaluate the importance of order by which the distance functions are combined. Both combination and order of these functions affected clustering quality and knowledge recognition in the considered benchmarks. We propose that multiple dimensions can be utilized simultaneously for visual knowledge exploration.

Highlights

  • Biomedical knowledge grows in complexity, and becomes encoded in network-based repositories, which include focused, expert-drawn diagrams, networks of evidence-based associations and established ontologies

  • In this paper we investigate the application of clustering to visual knowledge exploration in large molecular interaction maps

  • Combination of distance functions improves clustering quality Hierarchical clustering We compared the quality of hierarchical clustering with Ward grouping (HCW) for three distance functions Euclidean, network and Gene Ontology-based (Biological Process) - and their pairwise combinations on the contents of the PD map and two versions of AlzPathway

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Summary

Introduction

Biomedical knowledge grows in complexity, and becomes encoded in network-based repositories, which include focused, expert-drawn diagrams, networks of evidence-based associations and established ontologies Combining these structured information sources is an important computational challenge, as large graphs are difficult to analyze visually. Canonical pathway databases like KEGG [1], Reactome [2] or Wikipathways [3] provide small-scale, manually drawn diagrams of molecular mechanisms Another type of repositories, like STRING [4], NDex [5] or SIGNOR [6], rely on large databases of associations, which are queried and visualized as graphs. An important kind of knowledge repository combines the properties of pathway databases and association repositories These are middle to large size molecular interaction diagrams, established in the context of systems biomedicine projects. In the area of human diseases they offer contextualized insight into interactions between numerous convoluted factors like genetic profile, environmental influences or effects of medications

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