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One or more keywords matched the following properties of Kakarmath, Sujay
keywords machine learning
keywords artificial intelligence
overview Dr. Kakarmath is a digital health scientist at Partners Healthcare Pivot Labs and an Instructor at Harvard Medical School. His research is focused on the evaluation of the clinical utility of digital health solutions, including machine learning and artificial intelligence-based products. Dr. Kakarmath's team works closely with technology innovators from academia, startups and industry giants to guide the ideation, design, prototyping, validation, and deployment of digital health solutions. His work has been published in prestigious journals and showcased at major academic conferences such as those of the American Academy of Neurology, the American Medical Informatics Association, the International Society for Pharmacoeconomics and Outcomes Research, the Connected Health Conference, Precision Medicine Summit and HIMSS. Dr. Kakarmath is also a global health professional and works closely with esteemed scientists worldwide to conduct public health research. Highlights of this work include the assessment of population-level risk factors for cardiovascular disease in India and Tanzania, evaluation of geographic and temporal trends in cholesterol levels for the Global Burden of Disease study, reporting on the landscape of clinical care and health policy for diabetes in sub-Saharan Africa for the Lancet Commission on Diabetes in sub-Saharan Africa, and estimating the population-level impact of literacy and numeracy on health in 33 countries to guide education policy for the OECD (Organization for Economic Co-operation and Development).
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  • Artificial Intelligence
Funded by the NIH National Center for Advancing Translational Sciences through its Clinical and Translational Science Awards Program, grant number UL1TR002541.