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Knowledge4COVID-19: A semantic-based approach for constructing a COVID-19 related knowledge graph from various sources and analyzing treatments’ toxicities

Sakor, Ahmad; Jozashoori, Samaneh; Niazmand, Emetis; Rivas, Ariam; Bougiatiotis, Konstantinos; Aisopos, Fotis; Iglesias, Enrique; Rohde, Philipp D; Padiya, Trupti; Krithara, Anastasia; Paliouras, Georgios; Vidal, Maria-Esther

Authors

Ahmad Sakor

Samaneh Jozashoori

Emetis Niazmand

Ariam Rivas

Konstantinos Bougiatiotis

Fotis Aisopos

Enrique Iglesias

Philipp D Rohde

Trupti Padiya

Anastasia Krithara

Georgios Paliouras

Maria-Esther Vidal



Abstract

In this paper, we present Knowledge4COVID-19, a framework that aims to showcase the power of integrating disparate sources of knowledge to discover adverse drug effects caused by drug–drug interactions among COVID-19 treatments and pre-existing condition drugs. Initially, we focus on constructing the Knowledge4COVID-19 knowledge graph (KG) from the declarative definition of mapping rules using the RDF Mapping Language. Since valuable information about drug treatments, drug–drug interactions, and side effects is present in textual descriptions in scientific databases (e.g., DrugBank) or in scientific literature (e.g., the CORD-19, the Covid-19 Open Research Dataset), the Knowledge4COVID-19 framework implements Natural Language Processing. The Knowledge4COVID-19 framework extracts relevant entities and predicates that enable the fine-grained description of COVID-19 treatments and the potential adverse events that may occur when these treatments are combined with treatments of common comorbidities, e.g., hypertension, diabetes, or asthma. Moreover, on top of the KG, several techniques for the discovery and prediction of interactions and potential adverse effects of drugs have been developed with the aim of suggesting more accurate treatments for treating the virus. We provide services to traverse the KG and visualize the effects that a group of drugs may have on a treatment outcome. Knowledge4COVID-19 was part of the Pan-European hackathon#EUvsVirus in April 2020 and is publicly available as a resource through a GitHub repository and a DOI.

Citation

Sakor, A., Jozashoori, S., Niazmand, E., Rivas, A., Bougiatiotis, K., Aisopos, F., …Vidal, . M. (2023). Knowledge4COVID-19: A semantic-based approach for constructing a COVID-19 related knowledge graph from various sources and analyzing treatments’ toxicities. Journal of Web Semantics, 75, Article 100760. https://doi.org/10.1016/j.websem.2022.100760

Journal Article Type Article
Acceptance Date Oct 5, 2022
Online Publication Date Oct 13, 2022
Publication Date Jan 31, 2023
Deposit Date Aug 3, 2023
Publicly Available Date Oct 14, 2024
Journal Journal of Web Semantics
Print ISSN 1570-8268
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 75
Article Number 100760
DOI https://doi.org/10.1016/j.websem.2022.100760
Public URL https://uwe-repository.worktribe.com/output/10937904

Files

This file is under embargo until Oct 14, 2024 due to copyright reasons.

Contact Trupti.Padiya@uwe.ac.uk to request a copy for personal use.



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