Integration at the network- and pathway level of multi-omics data from multiple anatomical locations facilitate COPD sub-phenotyping in small cohorts

A. Wheelock (Stockholm, Sweden)

Source: International Congress 2017 – Novel molecular and genetic targets in COPD
Session: Novel molecular and genetic targets in COPD
Session type: Poster Discussion
Number: 383
Disease area: Airway diseases

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A. Wheelock (Stockholm, Sweden). Integration at the network- and pathway level of multi-omics data from multiple anatomical locations facilitate COPD sub-phenotyping in small cohorts. 383

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