In silico analyses of immune system protein interactome network, single-cell RNA sequencing of human tissues, and artificial neural networks reveal potential therapeutic targets for drug repurposing against COVID-19
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López Cortés, Andrés
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In silico analyses of immune system protein interactome network, single-cell RNA sequencing of human tissues, and artificial neural networks reveal potential therapeutic targets for drug repurposing against COVID-19
Author
- López Cortés, Andrés;
- Guevara Ramírez, Patricia;
- Kyriakidis, Nikolaos C.;
- Barba Ostria, Carlos;
- León Cáceres, Ángela;
- Guerrero, Santiago;
- Ortiz Prado, Esteban;
- Munteanu, Cristian R.;
- Tejera, Eduardo;
- Cevallos Robalino, Doménica;
- Gómez Jaramillo, Ana María;
- Simbaña Rivera, Katherine;
- Granizo Martínez, Adriana;
- Pérez M., Gabriela;
- Moreno, Silvana;
- García Cárdenas, Jennyfer M.;
- Zambrano, Ana Karina;
- Pérez Castillo, Yunierkis;
- Cabrera Andrade, Alejandro;
- Puig San Andrés, Lourdes;
- Proaño Castro, Carolina;
- Bautista, Jhommara;
- Quevedo, Andreina;
- Varela Figueroa, Nelson Miguel Edgardo;
- Quiñones Sepúlveda, Luis Abel;
- Paz y Miño, César;
Abstract
Background: There is pressing urgency to identify therapeutic targets and drugs that
allow treating COVID-19 patients effectively.
Methods: We performed in silico analyses of immune system protein interactome
network, single-cell RNA sequencing of human tissues, and artificial neural networks to
reveal potential therapeutic targets for drug repurposing against COVID-19.
Results: We screened 1,584 high-confidence immune system proteins in ACE2 and
TMPRSS2 co-expressing cells, finding 25 potential therapeutic targets significantly
overexpressed in nasal goblet secretory cells, lung type II pneumocytes, and ileal
absorptive enterocytes of patients with several immunopathologies. Then, we performed fully connected deep neural networks to find the best multitask classification
model to predict the activity of 10,672 drugs, obtaining several approved drugs,
compounds under investigation, and experimental compounds with the highest area
under the receiver operating characteristics.
Conclusion: After being effectively analyzed in clinical trials, these drugs can be
considered for treatment of severe COVID-19 patients. Scripts can be downloaded at
https://github.com/muntisa/immuno-drug-repurposing-COVID-19.
Patrocinador
ANID-Chile COVID0789
Latin American Society of Pharmacogenomics and Personalized Medicine (SOLFAGEM)
Consolidation and Structuring of Competitive Research Units -Competitive Reference Groups - Ministry of Education, University and Vocational Training of the Xunta de Galicia ED431C 2018/49
European Commission
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Artículo de publícación WoS Artículo de publicación SCOPUS
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Frontiers in Pharmacology February 2021 | Volume 12 | Article 598925
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