Extraction of Ejection Fraction from Echocardiography Notes for Constructing a Cohort of Patients having Heart Failure with reduced Ejection Fraction (HFrEF)
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Kavishwar B. Wagholikar | Shawn N. Murphy | Christopher Herrick | Alyssa P. Goodson | Akshay S. Desai | Martin Rees | Christina M. Fischer | Eloy Toscano | Calum A. MacRae | Benjamin M. Scirica | S. Murphy | K. Wagholikar | B. Scirica | C. Macrae | C. Herrick | C. Fischer | A. Goodson | E. Toscano | Martin Rees
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