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CovMulNet19.zip (1.03 MB)

CovMulNet19.zip

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Version 6 2020-11-20, 13:51
Version 5 2020-09-15, 14:08
Version 4 2020-09-15, 14:04
Version 3 2020-09-15, 13:57
Version 2 2020-06-25, 19:45
Version 1 2020-06-25, 13:33
dataset
posted on 2020-09-15, 14:08 authored by nina verstraete, Giulia Bertagnolli, Arsham GhavasiehArsham Ghavasieh, Vera Pancaldi, Giuseppe JurmanGiuseppe Jurman, Manlio De domenicoManlio De domenico
CovMulNet19 is a comprehensive 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. Extensive network analysis methods, based on a bootstrap approach, allow us to prioritise a list of diseases that display a high similarity to \covid 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 CoVid19-related molecular processes. 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.

Funding

INSERM

National Health and Medical Research Council

Find out more...

Foundation Toulouse Cancer Santé

BioInfo4Women programme at the BarcelonaSupercomputing Cente

PierreFabre Research Institute as part of the Chair of Bioinformatics in Oncologyof the CRCT

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