Enabling an interstitial lung disease genomic classifier on an automated platform

H. Jiang (South San Francisco, United States of America), C. Schaper (South San Francisco, United States of America), J. Qu (South San Francisco, United States of America), N. Davis (South San Francisco, United States of America), G. Fedorowicz (South San Francisco, United States of America), M. Naranja (South San Francisco, United States of America), K. Lee (South San Francisco, United States of America), J. Storhoff (South San Francisco, United States of America), D. Pankratz (South San Francisco, United States of America), A. Sopory (South San Francisco, United States of America), S. Bhorade (South San Francisco, United States of America), J. Huang (South San Francisco, United States of America), S. Walsh (South San Francisco, United States of America), G. Kennedy (South San Francisco, United States of America)

Source: Virtual Congress 2021 – Translational and other aspects of idiopathic interstitial pneumonia
Session: Translational and other aspects of idiopathic interstitial pneumonia
Session type: E-poster
Number: 3272

Congress or journal article abstractE-poster

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H. Jiang (South San Francisco, United States of America), C. Schaper (South San Francisco, United States of America), J. Qu (South San Francisco, United States of America), N. Davis (South San Francisco, United States of America), G. Fedorowicz (South San Francisco, United States of America), M. Naranja (South San Francisco, United States of America), K. Lee (South San Francisco, United States of America), J. Storhoff (South San Francisco, United States of America), D. Pankratz (South San Francisco, United States of America), A. Sopory (South San Francisco, United States of America), S. Bhorade (South San Francisco, United States of America), J. Huang (South San Francisco, United States of America), S. Walsh (South San Francisco, United States of America), G. Kennedy (South San Francisco, United States of America). Enabling an interstitial lung disease genomic classifier on an automated platform. 3272

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