A comparative study of COVID-19 transcriptional signatures between clinical samples and preclinical cell models in the search for disease master regulators and drug repositioning candidates

•The molecular signature of severe COVID-19 in lung autopsies was stablished.•Six transcription factors were found as Master Regulators for COVID-19 severe form.•52 drugs were proposed as reversers of the severe COVID-19 molecular signature.•A limited overlap between clinical and pre-clinical COVID-...

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Veröffentlicht in:Virus research 2023-03, Vol.326, p.199053-199053, Article 199053
Hauptverfasser: Chapola, Henrique, de Bastiani, Marco Antônio, Duarte, Marcelo Mendes, Freitas, Matheus Becker, Schuster, Jussara Severo, de Vargas, Daiani Machado, Klamt, Fábio
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Sprache:eng
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Zusammenfassung:•The molecular signature of severe COVID-19 in lung autopsies was stablished.•Six transcription factors were found as Master Regulators for COVID-19 severe form.•52 drugs were proposed as reversers of the severe COVID-19 molecular signature.•A limited overlap between clinical and pre-clinical COVID-19 data was identified. Coronavirus disease 2019 (COVID-19) is an acute viral disease with millions of cases worldwide. Although the number of daily new cases and deaths has been dropping, there is still a need for therapeutic alternatives to deal with severe cases. A promising strategy to prospect new therapeutic candidates is to investigate the regulatory mechanisms involved in COVID-19 progression using integrated transcriptomics approaches. In this work, we aimed to identify COVID-19 Master Regulators (MRs) using a series of publicly available gene expression datasets of lung tissue from patients which developed the severe form of the disease. We were able to identify a set of six potential COVID-19 MRs related to its severe form, namely TAL1, TEAD4, EPAS1, ATOH8, ERG, and ARNTL2. In addition, using the Connectivity Map drug repositioning approach, we identified 52 different drugs which could be used to revert the disease signature, thus being candidates for the design of novel clinical treatments. Furthermore, we compared the identified signature and drugs with the ones obtained from the analysis of nasopharyngeal swab samples from infected patients and preclinical cell models. This comparison showed significant similarities between them, although also revealing some limitations on the overlap between clinical and preclinical data in COVID-19, highlighting the need for careful selection of the best model for each disease stage.
ISSN:0168-1702
1872-7492
DOI:10.1016/j.virusres.2023.199053