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

被引:52
作者
Suvarna, Kruthi [1 ]
Biswas, Deeptarup [1 ]
Pai, Medha Gayathri J. [1 ]
Acharjee, Arup [1 ]
Bankar, Renuka [1 ]
Palanivel, Viswanthram [1 ]
Salkar, Akanksha [1 ]
Verma, Ayushi [1 ]
Mukherjee, Amrita [1 ]
Choudhury, Manisha [1 ]
Ghantasala, Saicharan [2 ]
Ghosh, Susmita [1 ]
Singh, Avinash [1 ]
Banerjee, Arghya [1 ]
Badaya, Apoorva [3 ]
Bihani, Surbhi [1 ]
Loya, Gaurish [4 ]
Mantri, Krishi [4 ]
Burli, Ananya [4 ]
Roy, Jyotirmoy [4 ]
Srivastava, Alisha [1 ,5 ]
Agrawal, Sachee [6 ]
Shrivastav, Om [6 ]
Shastri, Jayanthi [6 ]
Srivastava, Sanjeeva [1 ]
机构
[1] Indian Inst Technol, Dept Biosci & Bioengn, Mumbai, Maharashtra, India
[2] Indian Inst Technol, Ctr Res Nanotechnol & Sci, Mumbai, Maharashtra, India
[3] Indian Inst Technol, Dept Chem, Mumbai, Maharashtra, India
[4] Indian Inst Technol, Dept Chem Engn, Mumbai, Maharashtra, India
[5] Univ Delhi, Dept Genet, New Delhi, India
[6] Kasturba Hosp Infect Dis, Mumbai, Maharashtra, India
关键词
COVID-19; plasma; host response; mass spectrometry; molecular pathways; prognostic biomarkers; proteomics; drug-repurposing; machine learning; VON-WILLEBRAND-FACTOR; COMPLEMENT ACTIVATION; STRUCTURAL BASIS; CHALLENGES; DISCOVERY; SYSTEM; IMPACT;
D O I
10.3389/fphys.2021.652799
中图分类号
Q4 [生理学];
学科分类号
071003 ;
摘要
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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页数:18
相关论文
共 102 条
[11]   Emerging respiratory infections: The infectious disease pathology of SARS, MERS, pandemic influenza, and Legionella [J].
Bradley, Benjamin T. ;
Bryan, Andrew .
SEMINARS IN DIAGNOSTIC PATHOLOGY, 2019, 36 (03) :152-159
[12]  
Bryant J. W., 2009, Cardiovascular & Hematological Agents in Medicinal Chemistry, V7, P234
[13]   The effect of heat-treatment on SARS-CoV-2 viability and detection [J].
Burton, Jane ;
Love, Hannah ;
Richards, Kevin ;
Burton, Christopher ;
Summers, Sian ;
Pitman, James ;
Easterbrook, Linda ;
Davies, Katherine ;
Spencer, Peter ;
Killip, Marian ;
Cane, Patricia ;
Bruce, Christine ;
Roberts, Allen D. G. .
JOURNAL OF VIROLOGICAL METHODS, 2021, 290
[14]   Automated Classification of Significant Prostate Cancer on MRI: A Systematic Review on the Performance of Machine Learning Applications [J].
Castillo T., Jose M. ;
Arif, Muhammad ;
Niessen, Wiro J. ;
Schoots, Ivo G. ;
Veenland, Jifke F. .
CANCERS, 2020, 12 (06) :1-13
[15]   Protective Role of Kallistatin in Vascular and Organ Injury [J].
Chao, Julie ;
Bledsoe, Grant ;
Chao, Lee .
HYPERTENSION, 2016, 68 (03) :533-541
[16]  
Chappell S., 2006, PROTEINASE INHIBITOR, P507
[17]   Oral Selinexor-Dexamethasone for Triple-Class Refractory Multiple Myeloma [J].
Chari, Ajai ;
Vogl, Dan T. ;
Gavriatopoulou, Maria ;
Nooka, Ajay K. ;
Yee, Andrew J. ;
Huff, Carol A. ;
Moreau, Philippe ;
Dingli, David ;
Cole, Craig ;
Lonial, Sagar ;
Dimopoulos, Meletios ;
Stewart, A. Keith ;
Richter, Joshua ;
Vij, Ravi ;
Tuchman, Sascha ;
Raab, Marc S. ;
Weisel, Katja C. ;
Delforge, Michel ;
Cornell, Robert F. ;
Kaminetzky, David ;
Hoffman, James E. ;
Costa, Luciano J. ;
Parker, Terri L. ;
Levy, Moshe ;
Schreder, Martin ;
Meuleman, Nathalie ;
Frenzel, Laurent ;
Mohty, Mohamad ;
Choquet, Sylvain ;
Schiller, Gary ;
Comenzo, Raymond L. ;
Engelhardt, Monika ;
Illmer, Thomas ;
Vlummens, Philip ;
Doyen, Chantal ;
Facon, Thierry ;
Karlin, Lionel ;
Perrot, Aurore ;
Podar, Klaus ;
Kauffman, Michael G. ;
Shacham, Sharon ;
Li, Lingling ;
Tang, Shijie ;
Picklesimer, Carla ;
Saint-Martin, Jean-Richard ;
Crochiere, Marsha ;
Chang, Hua ;
Parekh, Samir ;
Landesman, Yosef ;
Shah, Jatin .
NEW ENGLAND JOURNAL OF MEDICINE, 2019, 381 (08) :727-738
[18]   COVID-19 Pandemic: ARIMA and Regression Model-Based Worldwide Death Cases Predictions [J].
Chaurasia V. ;
Pal S. .
SN Computer Science, 2020, 1 (5)
[19]   Clinical and immunological features of severe and moderate coronavirus disease 2019 [J].
Chen, Guang ;
Wu, Di ;
Guo, Wei ;
Cao, Yong ;
Huang, Da ;
Wang, Hongwu ;
Wang, Tao ;
Zhang, Xiaoyun ;
Chen, Huilong ;
Yu, Haijing ;
Zhang, Xiaoping ;
Zhang, Minxia ;
Wu, Shiji ;
Song, Jianxin ;
Chen, Tao ;
Han, Meifang ;
Li, Shusheng ;
Luo, Xiaoping ;
Zhao, Jianping ;
Ning, Qin .
JOURNAL OF CLINICAL INVESTIGATION, 2020, 130 (05) :2620-2629
[20]   Elevated serum levels of S100A8/A9 and HMGB1 at hospital admission are correlated with inferior clinical outcomes in COVID-19 patients [J].
Chen, Liting ;
Long, Xiaolu ;
Xu, Qian ;
Tan, Jiaqi ;
Wang, Gaoxiang ;
Cao, Yang ;
Wei, Jia ;
Luo, Hui ;
Zhu, Hui ;
Huang, Liang ;
Meng, Fankai ;
Huang, Lifang ;
Wang, Na ;
Zhou, Xiaoxi ;
Zhao, Lei ;
Chen, Xing ;
Mao, Zekai ;
Chen, Caixia ;
Li, Zhen ;
Sun, Ziyong ;
Zhao, Jianping ;
Wang, Daowen ;
Huang, Gang ;
Wang, Wei ;
Zhou, Jianfeng .
CELLULAR & MOLECULAR IMMUNOLOGY, 2020, 17 (09) :992-994