Abstract

BackgroundIdentifying perturbed pathways in a given condition is crucial in understanding biological phenomena. In addition to identifying perturbed pathways individually, pathway analysis should consider interactions among pathways. Currently available pathway interaction prediction methods are based on the existence of overlapping genes between pathways, protein-protein interaction (PPI) or functional similarities. However, these approaches just consider the pathways as a set of genes, thus they do not take account of topological features. In addition, most of the existing approaches do not handle the explicit gene expression quantity information that is routinely measured by RNA-sequecing.ResultsTo overcome these technical issues, we developed a new pathway interaction network construction method using PPI, closeness centrality and shortest paths. We tested our approach on three different high-throughput RNA-seq data sets: pregnant mice data to reveal the role of serotonin on beta cell mass, bone-metastatic breast cancer data and autoimmune thyroiditis data to study the role of IFN- α. Our approach successfully identified the pathways reported in the original papers. For the pathways that are not directly mentioned in the original papers, we were able to find evidences of pathway interactions by the literature search. Our method outperformed two existing approaches, overlapping gene-based approach (OGB) and protein-protein interaction-based approach (PB), in experiments with the three data sets.ConclusionOur results show that PINTnet successfully identified condition-specific perturbed pathways and the interactions between the pathways. We believe that our method will be very useful in characterizing biological mechanisms at the pathway level. PINTnet is available at http://biohealth.snu.ac.kr/software/PINTnet/.

Highlights

  • Identifying perturbed pathways in a given condition is crucial in understanding biological phenomena

  • We investigated the evidences for every edge that connected the pathways reported in the original papers through the literature search and established the evaluation criteria for the performance of PINTnet and two existing pathway interaction network construction methods, overlapping gene-based approach (OGB) and protein-protein interaction (PPI)-based approach (PB), were used for the performance comparison

  • Running PINTnet on the three datasets to test the performance, we observed that it successfully rescued the findings reported in the original papers

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Summary

Introduction

Identifying perturbed pathways in a given condition is crucial in understanding biological phenomena. Available pathway interaction prediction methods are based on the existence of overlapping genes between pathways, protein-protein interaction (PPI) or functional similarities. These approaches just consider the pathways as a set of genes, they do not take account of topological features. Overrepresentation analysis (ORA) [1], gene set enrichment analysis (GSEA) [2,3,4], signaling pathway impact analysis (SPIA) [5] and EnrichNet [6] are widely used approaches to identify such pathways. The approach estimated pathway interaction based on Gene Ontology (GO) similarities

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