Elastic principal graphs for clinical trajectory analysis in COPD: a COPDGene study

A. Bell (Ann Arbor, United States of America), S. Ram (Ann Arbor, United States of America), W. Labaki (Ann Arbor, United States of America), S. Murray (Ann Arbor, United States of America), E. Kazerooni (Ann Arbor, United States of America), S. Galbán (Ann Arbor, United States of America), F. Martinez (New York, United States of America), C. Hatt (Minneapolis, United States of America), E. Mirkes (Leicester, United Kingdom), A. Zinovyev (Paris, France), A. Gorban (Leicester, United Kingdom), M. Han (Ann Arbor, United States of America), C. Galbán (Ann Arbor, United States of America)

Source: Virtual Congress 2021 – Deep phenotyping of obstructive diseases for precision medicine
Session: Deep phenotyping of obstructive diseases for precision medicine
Session type: Oral Presentation
Number: 1284

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A. Bell (Ann Arbor, United States of America), S. Ram (Ann Arbor, United States of America), W. Labaki (Ann Arbor, United States of America), S. Murray (Ann Arbor, United States of America), E. Kazerooni (Ann Arbor, United States of America), S. Galbán (Ann Arbor, United States of America), F. Martinez (New York, United States of America), C. Hatt (Minneapolis, United States of America), E. Mirkes (Leicester, United Kingdom), A. Zinovyev (Paris, France), A. Gorban (Leicester, United Kingdom), M. Han (Ann Arbor, United States of America), C. Galbán (Ann Arbor, United States of America). Elastic principal graphs for clinical trajectory analysis in COPD: a COPDGene study. 1284

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