Other ways to search: Events Calendar | UTHSC

Upcoming Webinar on May 30th: Mining insights from large scale electronic health records using machine learning for COVID-19

|

Tuesday, May 30, 2023, 2-3 pm (CST)

Speaker: Dr. Fei Wang, PhD, FACMI, FAMIA, FIAHSI, ACM Distinguished Member

Associate Professor of Health Informatics in the Department of Population Health Sciences at Weill Cornell Medicine, Cornell University, and is the Founding Director of the WCM Institute of AI for Digital Health. 

Title: Mining insights from large scale electronic health records using machine learning for COVID-19

Bio: Dr. Fei Wang is an associate professor at Department of Population Health Sciences, Weill Cornell Medicine, Cornell University. His major research interest is data mining, machine learning and their applications in health data science. He has published on the top venues of related areas such as ICML, KDD, NeurIPS, AAAI, JAMA Internal Medicine, Annals of Internal Medicine, etc. His team won the championship of the NIPS/Kaggle Challenge on Classification of Clinically Actionable Genetic Mutations in 2017 and Parkinson’s Progression Markers Initiative data challenge organized by Michael J. Fox Foundation in 2016. Dr. Wang is the recipient of the NSF CAREER Award in 2018, the inaugural research leadership award in IEEE International Conference on Health Informatics (ICHI) 2019, Amazon Machine Learning for Research Award in 2017 and 2019, Google Faculty Research Award in 2020, Sanofi iDEA Award in 2021. Dr. Wang was the chair of the Knowledge Discovery and Data Mining working group in American Medical Informatics Association (AMIA) in 2018-2019. Dr. Wang’s research has been supported by funding agencies including NSF, NIH, ONR, PCORI and MJFF. Dr. Wang is a Fellow of the American Medical Informatics Association (AMIA), a Fellow of the International Academy of Health Sciences and Informatics (IAHSI), and a Distinguished Member of the Association for Computing Machinery (ACM).

Where: ZOOM

Join Zoom Meeting
 
Meeting ID: 811 0223 3967
Passcode: pp3hFc