Ontology-based systematic classification and analysis of coronaviruses, hosts, and host-coronavirus interactions towards deep understanding of COVID-19
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-Outc...
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Zusammenfassung: | 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 (PPIs), and applied
literature mining to identify additional host PPIs in response to coronavirus
infections. The results were formulated in a logical ontology representation
for integrative HCI-outcome understanding. Using known PPIs as baits, we also
developed and applied a domain-inferred prediction method to predict new PPIs
and identified their pathological targets on multiple organs. Overall, our
proposed ontology-based integrative framework combined with computational
predictions can be used to support fundamental understanding of the intricate
interactions between human patients and coronaviruses (including SARS-CoV-2)
and their association with various disease outcomes. |
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DOI: | 10.48550/arxiv.2006.00639 |