A human-based multi-gene signature enables quantitative drug repurposing for metabolic disease.
James A TimmonsAndrew AnighoroRobert J BroganJack StahlClaes WahlestedtDavid Gordon FarquharJake Taylor-KingClaude-Henry VolmarWilliam E KrausStuart M PhillipsPublished in: eLife (2022)
Insulin resistance (IR) contributes to the pathophysiology of diabetes, dementia, viral infection, and cardiovascular disease. Drug repurposing (DR) may identify treatments for IR; however, barriers include uncertainty whether in vitro transcriptomic assays yield quantitative pharmacological data, or how to optimise assay design to best reflect in vivo human disease. We developed a clinical-based human tissue IR signature by combining lifestyle-mediated treatment responses (>500 human adipose and muscle biopsies) with biomarkers of disease status (fasting IR from >1200 biopsies). The assay identified a chemically diverse set of >130 positively acting compounds, highly enriched in true positives, that targeted 73 proteins regulating IR pathways. Our multi-gene RNA assay score reflected the quantitative pharmacological properties of a set of epidermal growth factor receptor-related tyrosine kinase inhibitors, providing insight into drug target specificity; an observation supported by deep learning-based genome-wide predicted pharmacology. Several drugs identified are suitable for evaluation in patients, particularly those with either acute or severe chronic IR.
Keyphrases
- endothelial cells
- cardiovascular disease
- genome wide
- insulin resistance
- epidermal growth factor receptor
- induced pluripotent stem cells
- type diabetes
- deep learning
- high throughput
- pluripotent stem cells
- drug induced
- metabolic syndrome
- end stage renal disease
- adipose tissue
- newly diagnosed
- chronic kidney disease
- physical activity
- tyrosine kinase
- intensive care unit
- advanced non small cell lung cancer
- liver failure
- early onset
- polycystic ovary syndrome
- adverse drug
- big data
- high fat diet
- blood glucose
- rna seq
- cardiovascular events
- glycemic control
- prognostic factors