Tavpritesh Sethi
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Dr. Tavpritesh Sethi is an Associate Professor in the Department of Computational Biology and the founding head of the Center of Excellence in Healthcare at IIIT-Delhi. His area of expertise lies at the interface of computer science and healthcare. Dr. Sethi received his M.B.B.S from Government Medical College, Amritsar, and Ph.D. from CSIR-Institute of Genomics and Integrative Biology, New Delhi, India. He worked as a research officer at the All India Institute of Medical Sciences, New Delhi, and a CSIR Quick Hire Fellow at CSIR-Fourth Paradigm Institute before joining IIIT-Delhi as a faculty member. He was a visiting faculty at Stanford University for two years in Stanford Medicine's Department of Biomedical Informatics Research. He is a Sigma Xi Fellow and has been a fellow of the DBT/Wellcome India Alliance and is a Kavli Fellow. His research interests is in integrating social determinants of health into infectious and non-communicable diseases for developing AI solutions. He has developed early warning systems in pediatric and neonatal ICUs and for COVID-19. He is also working on a WHO Alliance-sponsored project on building decision support for Mohalla Clinics using Artificial Intelligence. Dr. Sethi has published more than 50 papers in international journals and serves as an academic editor for PLOS One, Nature Scientific Reports, PeerJ, and the Journal of Genetics. Dr. Sethi is a TEDx speaker and has delivered several keynote addresses at national and international conferences focused on data and AI in healthcare. He serves on the Scientific Advisory Committees of ICMR National Institute of Epidemiology and ICMR National Institute of Occupational Health.
Research Interests
Big-data for clinical decision support, Machine learning for critical care and community medicine, Human physiology and Teaching Interests are Statistical, Complex networks and machine learning modelling for medicine and biology, Human physiology.
Teaching Interests
Bridging human physiology and computation for next-generation medicine