Representing and utilizing clinical textual data for real world studies: An OHDSI approach
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Paul M. Heider | Andrew E. Williams | Noémie Elhadad | Masoud Rouhizadeh | G. Hripcsak | R. Reeves | J. Banda | C. Reich | V. Keloth | Yifan Peng | Yanshan Wang | Kalpana Raja | Wei-Qi Wei | K. Natarajan | Feifan Liu | T. Miller | C. Blacketer | Patrick Ryan | Jianlin Shi | Hongfang Liu | Rimma Belenkaya | M. Gurley | Rui Zhang | G. Kennedy | Xiaoyan Wang | Olga V Patterson | Huanqiang Xu
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