CovMulNet19, Integrating Proteins, Diseases, Drugs, and Symptoms: A Network Medicine Approach to COVID-19

Introduction: We introduce in this study CovMulNet19, a comprehensive COVID-19 network containing all available known interactions involving SARS-CoV-2 proteins, interacting-human proteins, diseases and symptoms that are related to these human proteins, and compounds that can potentially target them...

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Veröffentlicht in:Network and systems medicine 2020-11, Vol.3 (1), p.13-141
Hauptverfasser: Verstraete, Nina, Jurman, Giuseppe, Bertagnolli, Giulia, Ghavasieh, Arsham, Pancaldi, Vera, De Domenico, Manlio
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container_end_page 141
container_issue 1
container_start_page 13
container_title Network and systems medicine
container_volume 3
creator Verstraete, Nina
Jurman, Giuseppe
Bertagnolli, Giulia
Ghavasieh, Arsham
Pancaldi, Vera
De Domenico, Manlio
description Introduction: We introduce in this study CovMulNet19, a comprehensive COVID-19 network containing all available known interactions involving SARS-CoV-2 proteins, interacting-human proteins, diseases and symptoms that are related to these human proteins, and compounds that can potentially target them. Materials and Methods: Extensive network analysis methods, based on a bootstrap approach, allow us to prioritize a list of diseases that display a high similarity to COVID-19 and a list of drugs that could potentially be beneficial to treat patients. As a key feature of CovMulNet19, the inclusion of symptoms allows a deeper characterization of the disease pathology, representing a useful proxy for COVID-19-related molecular processes. Results: We recapitulate many of the known symptoms of the disease and we find the most similar diseases to COVID-19 reflect conditions that are risk factors in patients. In particular, the comparison between CovMulNet19 and randomized networks recovers many of the known associated comorbidities that are important risk factors for COVID-19 patients, through identified similarities with intestinal, hepatic, and neurological diseases as well as with respiratory conditions, in line with reported comorbidities. Conclusion: CovMulNet19 can be suitably used for network medicine analysis, as a valuable tool for exploring drug repurposing while accounting for the intervening multidimensional factors, from molecular interactions to symptoms.
doi_str_mv 10.1089/nsm.2020.0011
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subjects Coronaviruses
COVID-19
Disease
Drugs
Gene expression
Genotype & phenotype
Medicine
Ontology
Original Research: COVID-19 Research in Network and Systems Medicine
Pathology
Proteins
Severe acute respiratory syndrome coronavirus 2
title CovMulNet19, Integrating Proteins, Diseases, Drugs, and Symptoms: A Network Medicine Approach to COVID-19
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