Pathway and Network Analysis of Transcriptomic and Genomic Data

Abstract

Department of Biological SciencesThe development of high-throughput technologies has enabled to produce omics data and it has facilitated the systemic analysis of biomolecules in cells. In addition, thanks to the vast amount of knowledge in molecular biology accumulated for decades, numerous biological pathways have been categorized as gene-sets. Using these omics data and pre-defined gene-sets, the pathway analysis identifies genes that are collectively altered on a gene-set level under a phenotype. It helps the biological interpretation of the phenotype, and find phenotype-related genes that are not detected by single gene-based approach. Besides, the high-throughput technologies have contributed to construct various biological networks such as the protein-protein interactions (PPIs), metabolic/cell signaling networks, gene-regulatory networks and gene co-expression networks. Using these networks, we can visualize the relationships among gene-set members and find the hub genes, or infer new biological regulatory modules. Overall, this thesis/dissertation describes three approaches to enhance the performance of pathway and/or network analysis of transcriptomic and genomic data. First, a simple but effective method that improves the gene-permuting gene-set enrichment analysis (GSEA) of RNA-sequencing data will be addressed, which is especially useful for small replicate data. By taking absolute statistic, it greatly reduced the false positive rate caused by inter-gene correlation within gene-sets, and improved the overall discriminatory ability in gene-permuting GSEA. Next, a powerful competitive gene-set analysis tool for GWAS summary data, named GSA-SNP2, will be introduced. The z-score method applied with adjusted gene score greatly improved sensitivity compared to existing competitive gene-set analysis methods while exhibiting decent false positive control. The performance was validated using both simulation and real data. In addition, GSA-SNP2 visualizes protein interaction networks within and across the significant pathways so that the user can prioritize the core subnetworks for further mechanistic study. Finally, a novel approach to predict condition-specific miRNA target network by biclustering a large collection of mRNA fold-change data for sequence-specific targets will be introduced. The bicluster targets exhibited on average 17.0% (median 19.4%) improved gain in certainty (sensitivity + specificity). The net gain was further increased up to 32.0% (median 33.2%) by filtering them using functional network information. The analysis of cancer-related biclusters revealed that PI3K/Akt signaling pathway is strongly enriched in targets of a few miRNAs in breast cancer and diffuse large B-cell lymphoma. Among them, five independent prognostic miRNAs were identified, and repressions of bicluster targets and pathway activity by mir-29 were experimentally validated. The BiMIR database provides a useful resource to search for miRNA regulation modules for 459 human miRNAs.clos

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