Interpretable machine learning uncovers epithelial transcriptional rewiring and a role for Gelsolin in COPD
Justin Sui,
Hanxi Xiao,
Ugonna Mbaekwe
et al.
Abstract:Transcriptomic analyses have advanced the understanding of complex disease pathophysiology including chronic obstructive pulmonary disease (COPD). However, identifying relevant biologic causative factors has been limited by the integration of high dimensionality data. COPD is characterized by lung destruction and inflammation, with smoke exposure being a major risk factor. To define previously unknown biological mechanisms in COPD, we utilized unsupervised and supervised interpretable machine learning analyses… Show more
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