COVID-19 pandemic: A pragmatic plan for ayurveda intervention
Authors
Sanjeev Rastogi
aDept of Kaya Chikitsa, State Ayurvedic College and Hospital, Lucknow, 226003, India
Deep Pandey
bDepartment of Environment/Forests, Government of Rajasthan, Secretariat, Jaipur, 302005, Rajasthan, India
Ram Singh
cFaculty of Ayurveda, Institute of Medical Sciences, Banaras Hindu University, Varanasi, 221005, India
Keywords:
COVID-19, Pandemic, SARS-CoV-2, Traditional Medicine, Ayurveda, TCM
Abstract
World community is facing an unprecedented pandemic of novel corona virus disease (COVID-19) caused by Severe Acute Respiratory Syndrome Corona virus 2 (SARS-CoV- 2). The disease has spread globally with more than 1.43 million confirmed cases and 82,100 deaths as of April 8, 2020. Despite worldwide efforts to contain it, the pandemic is continuing to spread for want of a clinically-proven prophylaxis and therapeutic strategy. The dimensions of pandemic require an urgent harnessing of all knowledge systems available globally. Utilization of Traditional Chinese Medicine in Wuhan to treat COVID-19 cases sets the example demonstrating that traditional health care can contribute to treatment of these patients successfully. Drawing on the Ayurveda classics, contemporary scientific studies, and experiential knowledge on similar clinical settings, here we propose a pragmatic plan for intervention in India. We provide a plan for graded response, depending on the stage of infection among individuals, in a population. Notwithstanding the fact that no system of medicine has any evidence-based treatment for COVID-19 as yet, clinical interventions are required to be put in place. Therefore, pragmatic strategy proposed here for Ayurveda system of medicine requires immediate implementation. It will facilitate learning, generate evidence and shall be a way forward.
Keywords: COVID-19, Pandemic, SARS-CoV-2, Traditional Medicine, Ayurveda, TCM
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