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Richelle Lee Peveler, MSN
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25 Courtenay Dr
Charleston, SC 29425
+1 (843) 792-1952
https://www.getcare.muschealth.org
Also at this address
Scott Douglas Hurley, FNP
Ramsey Michael Wehbe, MD
Emily Linde, AGAC-NP
Karen Lode Motley, CRNA
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Internal medicine practitioners
Scott Douglas Hurley, FNP
Ramsey Michael Wehbe, MD
Ramsey Wehbe, MD MSAI is a heart failure cardiologist and an assistant professor of medicine at MUSC, with dual appointments in the Division of Cardiology and the Biomedical Informatics Center. He is a physician scientist with expertise and formal training in artificial intelligence, and his clinical interests include cardiac imaging in the diagnosis of heart failure subtypes. Dr. Wehbe completed his undergraduate studies at Duke University and medical school at the University of North Carolina at Chapel Hill. Prior to medical school, he spent a year at the National Institutes of Health (NIH) as a clinical research fellow. He then completed his residency in internal medicine and fellowship in cardiovascular disease, both at Northwestern, followed by an innovative fellowship in Artificial Intelligence at the Northwestern Bluhm Cardiovascular Institute, which culminated in a Master of Science in Artificial Intelligence degree from the Northwestern McCormick School of Engineering. Following this program, Dr. Wehbe completed a fellowship in advanced heart failure at Northwestern. Dr. Wehbe has published extensively on the clinical application of artificial intelligence, particularly deep learning, to unstructured data sources (including imaging and free text from clinical notes) and holds several research awards/grants in this field. He sees great value in these technologies to help more deeply phenotype the heart failure syndrome and improve outcomes for patients living with heart failure.
Emily Linde, AGAC-NP
United States
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South Carolina
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Charleston
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Richelle Lee Peveler, MSN
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