1. Interpretable machine learning uncovers epithelial transcriptional rewiring and a role for Gelsolin in COPD.
- Author
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Sui J, Xiao H, Mbaekwe U, Ting NC, Murday K, Hu Q, Gregory AD, Kapellos TS, Yildirim AÖ, Königshoff M, Zhang Y, Sciurba F, Das J, and Kliment CR
- Subjects
- Humans, Animals, Mice, Epithelial Cells metabolism, Male, Disease Models, Animal, Transcriptome, Female, Gene Regulatory Networks, Gene Expression Profiling, Lung metabolism, Lung pathology, Pulmonary Disease, Chronic Obstructive genetics, Pulmonary Disease, Chronic Obstructive metabolism, Pulmonary Disease, Chronic Obstructive pathology, Gelsolin genetics, Gelsolin metabolism, Machine Learning
- 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 of single-cell RNA-Seq data from the mouse smoke-exposure model to identify significant latent factors (context-specific coexpression modules) impacting pathophysiology. The machine learning transcriptomic signatures coupled to protein networks uncovered a reduction in network complexity and new biological alterations in actin-associated gelsolin (GSN), which was transcriptionally linked to disease state. GSN was altered in airway epithelial cells in the mouse model and in human COPD. GSN was increased in plasma from patients with COPD, and smoke exposure resulted in enhanced GSN release from airway cells from patients with COPD. This method provides insights into rewiring of transcriptional networks that are associated with COPD pathogenesis and provides a translational analytical platform for other diseases.
- Published
- 2024
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