Ontology-based systematic classification and analysis of coronaviruses, hosts, and host-coronavirus interactions towards deep understanding of COVID-19
Hong Yu, Li Li, Hsin-hui Huang, Yang Wang, Yingtong Liu, Edison Ong,, Anthony Huffman, Tao Zeng, Jingsong Zhang, Pengpai Li, Zhiping Liu, Xiangyan, Zhang, Xianwei Ye, Samuel K. Handelman, Gerry Higgins, Gilbert S. Omenn,, Brian Athey, Junguk Hur, Luonan Chen, Yongqun He

TL;DR
This paper develops an ontology-based framework to classify, analyze, and predict host-coronavirus interactions and disease outcomes, enhancing understanding of COVID-19 mechanisms.
Contribution
It introduces a novel ontology-driven approach for systematic classification and analysis of host-coronavirus interactions and predicts new protein-protein interactions related to COVID-19.
Findings
Created HPI-Outcome postulates and models
Annotated coronaviruses, hosts, and phenotypes using ontologies
Predicted new host-virus protein interactions and their pathological targets
Abstract
Given the existing COVID-19 pandemic worldwide, it is critical to systematically study the interactions between hosts and coronaviruses including SARS-Cov, MERS-Cov, and SARS-CoV-2 (cause of COVID-19). We first created four host-pathogen interaction (HPI)-Outcome postulates, and generated a HPI-Outcome model as the basis for understanding host-coronavirus interactions (HCI) and their relations with the disease outcomes. We hypothesized that ontology can be used as an integrative platform to classify and analyze HCI and disease outcomes. Accordingly, we annotated and categorized different coronaviruses, hosts, and phenotypes using ontologies and identified their relations. Various COVID-19 phenotypes are hypothesized to be caused by the backend HCI mechanisms. To further identify the causal HCI-outcome relations, we collected 35 experimentally-verified HCI protein-protein interactions…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Biomedical Text Mining and Ontologies · Machine Learning in Bioinformatics
