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Proteomics and Machine Learning Approaches Reveal a Set of Prognostic Markers for COVID-19 Severity With Drug Repurposing Potential

The pestilential pathogen SARS-CoV-2 has led to a seemingly ceaseless pandemic of COVID-19. The healthcare sector is under a tremendous burden, thus necessitating the prognosis of COVID-19 severity. This in-depth study of plasma proteome alteration provides insights into the host physiological respo...

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Autores principales: Suvarna, Kruthi, Biswas, Deeptarup, Pai, Medha Gayathri J., Acharjee, Arup, Bankar, Renuka, Palanivel, Viswanthram, Salkar, Akanksha, Verma, Ayushi, Mukherjee, Amrita, Choudhury, Manisha, Ghantasala, Saicharan, Ghosh, Susmita, Singh, Avinash, Banerjee, Arghya, Badaya, Apoorva, Bihani, Surbhi, Loya, Gaurish, Mantri, Krishi, Burli, Ananya, Roy, Jyotirmoy, Srivastava, Alisha, Agrawal, Sachee, Shrivastav, Om, Shastri, Jayanthi, Srivastava, Sanjeeva
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8120435/
https://www.ncbi.nlm.nih.gov/pubmed/33995121
http://dx.doi.org/10.3389/fphys.2021.652799
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author Suvarna, Kruthi
Biswas, Deeptarup
Pai, Medha Gayathri J.
Acharjee, Arup
Bankar, Renuka
Palanivel, Viswanthram
Salkar, Akanksha
Verma, Ayushi
Mukherjee, Amrita
Choudhury, Manisha
Ghantasala, Saicharan
Ghosh, Susmita
Singh, Avinash
Banerjee, Arghya
Badaya, Apoorva
Bihani, Surbhi
Loya, Gaurish
Mantri, Krishi
Burli, Ananya
Roy, Jyotirmoy
Srivastava, Alisha
Agrawal, Sachee
Shrivastav, Om
Shastri, Jayanthi
Srivastava, Sanjeeva
author_facet Suvarna, Kruthi
Biswas, Deeptarup
Pai, Medha Gayathri J.
Acharjee, Arup
Bankar, Renuka
Palanivel, Viswanthram
Salkar, Akanksha
Verma, Ayushi
Mukherjee, Amrita
Choudhury, Manisha
Ghantasala, Saicharan
Ghosh, Susmita
Singh, Avinash
Banerjee, Arghya
Badaya, Apoorva
Bihani, Surbhi
Loya, Gaurish
Mantri, Krishi
Burli, Ananya
Roy, Jyotirmoy
Srivastava, Alisha
Agrawal, Sachee
Shrivastav, Om
Shastri, Jayanthi
Srivastava, Sanjeeva
author_sort Suvarna, Kruthi
collection PubMed
description The pestilential pathogen SARS-CoV-2 has led to a seemingly ceaseless pandemic of COVID-19. The healthcare sector is under a tremendous burden, thus necessitating the prognosis of COVID-19 severity. This in-depth study of plasma proteome alteration provides insights into the host physiological response towards the infection and also reveals the potential prognostic markers of the disease. Using label-free quantitative proteomics, we performed deep plasma proteome analysis in a cohort of 71 patients (20 COVID-19 negative, 18 COVID-19 non-severe, and 33 severe) to understand the disease dynamics. Of the 1200 proteins detected in the patient plasma, 38 proteins were identified to be differentially expressed between non-severe and severe groups. The altered plasma proteome revealed significant dysregulation in the pathways related to peptidase activity, regulated exocytosis, blood coagulation, complement activation, leukocyte activation involved in immune response, and response to glucocorticoid biological processes in severe cases of SARS-CoV-2 infection. Furthermore, we employed supervised machine learning (ML) approaches using a linear support vector machine model to identify the classifiers of patients with non-severe and severe COVID-19. The model used a selected panel of 20 proteins and classified the samples based on the severity with a classification accuracy of 0.84. Putative biomarkers such as angiotensinogen and SERPING1 and ML-derived classifiers including the apolipoprotein B, SERPINA3, and fibrinogen gamma chain were validated by targeted mass spectrometry-based multiple reaction monitoring (MRM) assays. We also employed an in silico screening approach against the identified target proteins for the therapeutic management of COVID-19. We shortlisted two FDA-approved drugs, namely, selinexor and ponatinib, which showed the potential of being repurposed for COVID-19 therapeutics. Overall, this is the first most comprehensive plasma proteome investigation of COVID-19 patients from the Indian population, and provides a set of potential biomarkers for the disease severity progression and targets for therapeutic interventions.
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spelling pubmed-81204352021-05-15 Proteomics and Machine Learning Approaches Reveal a Set of Prognostic Markers for COVID-19 Severity With Drug Repurposing Potential Suvarna, Kruthi Biswas, Deeptarup Pai, Medha Gayathri J. Acharjee, Arup Bankar, Renuka Palanivel, Viswanthram Salkar, Akanksha Verma, Ayushi Mukherjee, Amrita Choudhury, Manisha Ghantasala, Saicharan Ghosh, Susmita Singh, Avinash Banerjee, Arghya Badaya, Apoorva Bihani, Surbhi Loya, Gaurish Mantri, Krishi Burli, Ananya Roy, Jyotirmoy Srivastava, Alisha Agrawal, Sachee Shrivastav, Om Shastri, Jayanthi Srivastava, Sanjeeva Front Physiol Physiology The pestilential pathogen SARS-CoV-2 has led to a seemingly ceaseless pandemic of COVID-19. The healthcare sector is under a tremendous burden, thus necessitating the prognosis of COVID-19 severity. This in-depth study of plasma proteome alteration provides insights into the host physiological response towards the infection and also reveals the potential prognostic markers of the disease. Using label-free quantitative proteomics, we performed deep plasma proteome analysis in a cohort of 71 patients (20 COVID-19 negative, 18 COVID-19 non-severe, and 33 severe) to understand the disease dynamics. Of the 1200 proteins detected in the patient plasma, 38 proteins were identified to be differentially expressed between non-severe and severe groups. The altered plasma proteome revealed significant dysregulation in the pathways related to peptidase activity, regulated exocytosis, blood coagulation, complement activation, leukocyte activation involved in immune response, and response to glucocorticoid biological processes in severe cases of SARS-CoV-2 infection. Furthermore, we employed supervised machine learning (ML) approaches using a linear support vector machine model to identify the classifiers of patients with non-severe and severe COVID-19. The model used a selected panel of 20 proteins and classified the samples based on the severity with a classification accuracy of 0.84. Putative biomarkers such as angiotensinogen and SERPING1 and ML-derived classifiers including the apolipoprotein B, SERPINA3, and fibrinogen gamma chain were validated by targeted mass spectrometry-based multiple reaction monitoring (MRM) assays. We also employed an in silico screening approach against the identified target proteins for the therapeutic management of COVID-19. We shortlisted two FDA-approved drugs, namely, selinexor and ponatinib, which showed the potential of being repurposed for COVID-19 therapeutics. Overall, this is the first most comprehensive plasma proteome investigation of COVID-19 patients from the Indian population, and provides a set of potential biomarkers for the disease severity progression and targets for therapeutic interventions. Frontiers Media S.A. 2021-04-27 /pmc/articles/PMC8120435/ /pubmed/33995121 http://dx.doi.org/10.3389/fphys.2021.652799 Text en Copyright © 2021 Suvarna, Biswas, Pai, Acharjee, Bankar, Palanivel, Salkar, Verma, Mukherjee, Choudhury, Ghantasala, Ghosh, Singh, Banerjee, Badaya, Bihani, Loya, Mantri, Burli, Roy, Srivastava, Agrawal, Shrivastav, Shastri and Srivastava. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Physiology
Suvarna, Kruthi
Biswas, Deeptarup
Pai, Medha Gayathri J.
Acharjee, Arup
Bankar, Renuka
Palanivel, Viswanthram
Salkar, Akanksha
Verma, Ayushi
Mukherjee, Amrita
Choudhury, Manisha
Ghantasala, Saicharan
Ghosh, Susmita
Singh, Avinash
Banerjee, Arghya
Badaya, Apoorva
Bihani, Surbhi
Loya, Gaurish
Mantri, Krishi
Burli, Ananya
Roy, Jyotirmoy
Srivastava, Alisha
Agrawal, Sachee
Shrivastav, Om
Shastri, Jayanthi
Srivastava, Sanjeeva
Proteomics and Machine Learning Approaches Reveal a Set of Prognostic Markers for COVID-19 Severity With Drug Repurposing Potential
title Proteomics and Machine Learning Approaches Reveal a Set of Prognostic Markers for COVID-19 Severity With Drug Repurposing Potential
title_full Proteomics and Machine Learning Approaches Reveal a Set of Prognostic Markers for COVID-19 Severity With Drug Repurposing Potential
title_fullStr Proteomics and Machine Learning Approaches Reveal a Set of Prognostic Markers for COVID-19 Severity With Drug Repurposing Potential
title_full_unstemmed Proteomics and Machine Learning Approaches Reveal a Set of Prognostic Markers for COVID-19 Severity With Drug Repurposing Potential
title_short Proteomics and Machine Learning Approaches Reveal a Set of Prognostic Markers for COVID-19 Severity With Drug Repurposing Potential
title_sort proteomics and machine learning approaches reveal a set of prognostic markers for covid-19 severity with drug repurposing potential
topic Physiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8120435/
https://www.ncbi.nlm.nih.gov/pubmed/33995121
http://dx.doi.org/10.3389/fphys.2021.652799
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