Predicting childhood allergy using machine learning methods on multi-omics data

M. van Breugel (Groningen, Netherlands), C. Qi (Groningen, Netherlands), Y. Jiang (Pittsburgh, United States of America), C. Tingskov Pedersen (Copenhagen, Denmark), I. Pethoukhov (Amsterdam, Netherlands), J. Vonk (Groningen, Netherlands), U. Gehring (Utrecht, Netherlands), M. Berg (Groningen, Netherlands), M. Bügel (Amsterdam, Netherlands), O. Capraij (Groningen, Netherlands), E. Forno (Pittsburgh, United States of America), A. Morin (Chicago, United States of America), A. Ulrik Eliasen (Copenhagen, Denmark), Z. Xu (Pittsburgh, United States of America), M. Van Den Berge (Groningen, Netherlands), M. Nawijn (Groningen, Netherlands), Y. Li (Hannover, Germany), W. Chen (Pittsburgh, United States of America), L. Bont (Utrecht, Netherlands), K. Bønnelykke (Copenhagen, Denmark), J. Celedón (Pittsburgh, United States of America), G. Koppelman (Groningen, Netherlands), C. Xu (Hannover, Germany)

Source: Virtual Congress 2021 – Biomarkers and risk factors in childhood asthma
Session: Biomarkers and risk factors in childhood asthma
Session type: E-poster
Number: 3068

Congress or journal article abstractE-poster

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M. van Breugel (Groningen, Netherlands), C. Qi (Groningen, Netherlands), Y. Jiang (Pittsburgh, United States of America), C. Tingskov Pedersen (Copenhagen, Denmark), I. Pethoukhov (Amsterdam, Netherlands), J. Vonk (Groningen, Netherlands), U. Gehring (Utrecht, Netherlands), M. Berg (Groningen, Netherlands), M. Bügel (Amsterdam, Netherlands), O. Capraij (Groningen, Netherlands), E. Forno (Pittsburgh, United States of America), A. Morin (Chicago, United States of America), A. Ulrik Eliasen (Copenhagen, Denmark), Z. Xu (Pittsburgh, United States of America), M. Van Den Berge (Groningen, Netherlands), M. Nawijn (Groningen, Netherlands), Y. Li (Hannover, Germany), W. Chen (Pittsburgh, United States of America), L. Bont (Utrecht, Netherlands), K. Bønnelykke (Copenhagen, Denmark), J. Celedón (Pittsburgh, United States of America), G. Koppelman (Groningen, Netherlands), C. Xu (Hannover, Germany). Predicting childhood allergy using machine learning methods on multi-omics data. 3068

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