Cargando…
In Silico Identification and Clinical Validation of a Novel Long Non-Coding RNA/mRNA/miRNA Molecular Network for Potential Biomarkers for Discriminating SARS CoV-2 Infection Severity
(1) Background: The coronavirus (COVID-19) pandemic is still a major global health problem, despite the development of several vaccines and diagnostic assays. Moreover, the broad symptoms, from none to severe pneumonia, and the various responses to vaccines and the assays, make infection control cha...
Autores principales: | , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
MDPI
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8625524/ https://www.ncbi.nlm.nih.gov/pubmed/34831321 http://dx.doi.org/10.3390/cells10113098 |
_version_ | 1784606442516381696 |
---|---|
author | Agwa, Sara H. A. Elghazaly, Hesham Meteini, Mahmoud Shawky El Shawky, Sherif M. Ali, Marwa Abd Elsamee, Aya M. Sayed, Safa Matbouly Sherif, Nadine Sharaf, Howida M. Alhadidy, Mohamed A. Matboli, Marwa |
author_facet | Agwa, Sara H. A. Elghazaly, Hesham Meteini, Mahmoud Shawky El Shawky, Sherif M. Ali, Marwa Abd Elsamee, Aya M. Sayed, Safa Matbouly Sherif, Nadine Sharaf, Howida M. Alhadidy, Mohamed A. Matboli, Marwa |
author_sort | Agwa, Sara H. A. |
collection | PubMed |
description | (1) Background: The coronavirus (COVID-19) pandemic is still a major global health problem, despite the development of several vaccines and diagnostic assays. Moreover, the broad symptoms, from none to severe pneumonia, and the various responses to vaccines and the assays, make infection control challenging. Therefore, there is an urgent need to develop non-invasive biomarkers to quickly determine the infection severity. Circulating RNAs have been proven to be potential biomarkers for a variety of diseases, including infectious ones. This study aimed to develop a genetic network related to cytokines, with clinical validation for early infection severity prediction. (2) Methods: Extensive analyses of in silico data have established a novel IL11RA molecular network (IL11RNA mRNA, LncRNAs RP11-773H22.4 and hsa-miR-4257). We used different databases to confirm its validity. The differential expression within the retrieved network was clinically validated using quantitative RT-PCR, along with routine assessment diagnostic markers (CRP, LDH, D-dimmer, procalcitonin, Ferritin), in100 infected subjects (mild and severe cases) and 100 healthy volunteers. (3) Results: IL11RNA mRNA and LncRNA RP11-773H22.4, and the IL11RA protein, were significantly upregulated, and there was concomitant downregulation of hsa-miR-4257, in infected patients, compared to the healthy controls, in concordance with the infection severity. (4) Conclusion: The in-silico data and clinical validation led to the identification of a potential RNA/protein signature network for novel predictive biomarkers, which is in agreement with ferritin and procalcitonin for determination of COVID-19 severity. |
format | Online Article Text |
id | pubmed-8625524 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | MDPI |
record_format | MEDLINE/PubMed |
spelling | pubmed-86255242021-11-27 In Silico Identification and Clinical Validation of a Novel Long Non-Coding RNA/mRNA/miRNA Molecular Network for Potential Biomarkers for Discriminating SARS CoV-2 Infection Severity Agwa, Sara H. A. Elghazaly, Hesham Meteini, Mahmoud Shawky El Shawky, Sherif M. Ali, Marwa Abd Elsamee, Aya M. Sayed, Safa Matbouly Sherif, Nadine Sharaf, Howida M. Alhadidy, Mohamed A. Matboli, Marwa Cells Article (1) Background: The coronavirus (COVID-19) pandemic is still a major global health problem, despite the development of several vaccines and diagnostic assays. Moreover, the broad symptoms, from none to severe pneumonia, and the various responses to vaccines and the assays, make infection control challenging. Therefore, there is an urgent need to develop non-invasive biomarkers to quickly determine the infection severity. Circulating RNAs have been proven to be potential biomarkers for a variety of diseases, including infectious ones. This study aimed to develop a genetic network related to cytokines, with clinical validation for early infection severity prediction. (2) Methods: Extensive analyses of in silico data have established a novel IL11RA molecular network (IL11RNA mRNA, LncRNAs RP11-773H22.4 and hsa-miR-4257). We used different databases to confirm its validity. The differential expression within the retrieved network was clinically validated using quantitative RT-PCR, along with routine assessment diagnostic markers (CRP, LDH, D-dimmer, procalcitonin, Ferritin), in100 infected subjects (mild and severe cases) and 100 healthy volunteers. (3) Results: IL11RNA mRNA and LncRNA RP11-773H22.4, and the IL11RA protein, were significantly upregulated, and there was concomitant downregulation of hsa-miR-4257, in infected patients, compared to the healthy controls, in concordance with the infection severity. (4) Conclusion: The in-silico data and clinical validation led to the identification of a potential RNA/protein signature network for novel predictive biomarkers, which is in agreement with ferritin and procalcitonin for determination of COVID-19 severity. MDPI 2021-11-09 /pmc/articles/PMC8625524/ /pubmed/34831321 http://dx.doi.org/10.3390/cells10113098 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Article Agwa, Sara H. A. Elghazaly, Hesham Meteini, Mahmoud Shawky El Shawky, Sherif M. Ali, Marwa Abd Elsamee, Aya M. Sayed, Safa Matbouly Sherif, Nadine Sharaf, Howida M. Alhadidy, Mohamed A. Matboli, Marwa In Silico Identification and Clinical Validation of a Novel Long Non-Coding RNA/mRNA/miRNA Molecular Network for Potential Biomarkers for Discriminating SARS CoV-2 Infection Severity |
title | In Silico Identification and Clinical Validation of a Novel Long Non-Coding RNA/mRNA/miRNA Molecular Network for Potential Biomarkers for Discriminating SARS CoV-2 Infection Severity |
title_full | In Silico Identification and Clinical Validation of a Novel Long Non-Coding RNA/mRNA/miRNA Molecular Network for Potential Biomarkers for Discriminating SARS CoV-2 Infection Severity |
title_fullStr | In Silico Identification and Clinical Validation of a Novel Long Non-Coding RNA/mRNA/miRNA Molecular Network for Potential Biomarkers for Discriminating SARS CoV-2 Infection Severity |
title_full_unstemmed | In Silico Identification and Clinical Validation of a Novel Long Non-Coding RNA/mRNA/miRNA Molecular Network for Potential Biomarkers for Discriminating SARS CoV-2 Infection Severity |
title_short | In Silico Identification and Clinical Validation of a Novel Long Non-Coding RNA/mRNA/miRNA Molecular Network for Potential Biomarkers for Discriminating SARS CoV-2 Infection Severity |
title_sort | in silico identification and clinical validation of a novel long non-coding rna/mrna/mirna molecular network for potential biomarkers for discriminating sars cov-2 infection severity |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8625524/ https://www.ncbi.nlm.nih.gov/pubmed/34831321 http://dx.doi.org/10.3390/cells10113098 |
work_keys_str_mv | AT agwasaraha insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT elghazalyhesham insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT meteinimahmoudshawkyel insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT shawkysherifm insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT alimarwa insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT abdelsameeayam insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT sayedsafamatbouly insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT sherifnadine insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT sharafhowidam insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT alhadidymohameda insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity AT matbolimarwa insilicoidentificationandclinicalvalidationofanovellongnoncodingrnamrnamirnamolecularnetworkforpotentialbiomarkersfordiscriminatingsarscov2infectionseverity |