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Systems Analysis of Biliary Atresia Through Integration of High-Throughput Biological Data.

Abstract
Biliary atresia (BA), blockage of the proper bile flow due to loss of extrahepatic bile ducts, is a rare, complex disease of the liver and the bile ducts with unknown etiology. Despite ongoing investigations to understand its complex pathogenesis, BA remains the most common cause of liver failure requiring liver transplantation in children. To elucidate underlying mechanisms, we analyzed the different types of high-throughput genomic and transcriptomic data collected from the blood and liver tissue samples of children suffering from BA. Through use of a novel integrative approach, we identified potential biomarkers and over-represented biological functions and pathways to derive a comprehensive network showing the dysfunctional mechanisms associated with BA. One of the pathways highlighted in the integrative network was hypoxia signaling. Perturbation with hypoxia inducible factor activator, dimethyloxalylglycine, induced the biliary defects of BA in a zebrafish model, serving as a validation for our studies. Our approach enables a systems-level understanding of human BA biology that is highlighted by the interaction between key biological functions such as fibrosis, inflammation, immunity, hypoxia, and development.
AuthorsJun Min, Mylarappa Ningappa, Juhoon So, Donghun Shin, Rakesh Sindhi, Shankar Subramaniam
JournalFrontiers in physiology (Front Physiol) Vol. 11 Pg. 966 ( 2020) ISSN: 1664-042X [Print] Switzerland
PMID32848883 (Publication Type: Journal Article)
CopyrightCopyright © 2020 Min, Ningappa, So, Shin, Sindhi and Subramaniam.

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