Cohort design and natural language processing to reduce bias in electronic health records research
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Lia X. Harrington | A. Philippakis | P. Ellinor | S. Atlas | S. Khurshid | S. Lubitz | M. Klarqvist | P. Batra | J. Ho | M. Ghadessi | P. Di Achille | C. Anderson | J. Ashburner | A. McElhinney | J. Cunningham | C. Reeder | Hanna M. Eilken | Lia X. Harrington | Pulkit Singh | Gopal Sarma | S. Friedman | N. Diamant | A. C. Turner | Emily S Lau | Julian S Haimovich | M. Al-alusi | Xin Wang | C. Diedrich | J. Mielke | Alice McElhinney | A. Derix | Christopher D. Anderson | Ashby C Turner | Emily S. Lau | Jennifer E. Ho
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