Discovering small-molecule senolytics with deep neural networks.
Felix WongSatotaka OmoriNina M DonghiaErica J ZhengJames J CollinsPublished in: Nature aging (2023)
The accumulation of senescent cells is associated with aging, inflammation and cellular dysfunction. Senolytic drugs can alleviate age-related comorbidities by selectively killing senescent cells. Here we screened 2,352 compounds for senolytic activity in a model of etoposide-induced senescence and trained graph neural networks to predict the senolytic activities of >800,000 molecules. Our approach enriched for structurally diverse compounds with senolytic activity; of these, three drug-like compounds selectively target senescent cells across different senescence models, with more favorable medicinal chemistry properties than, and selectivity comparable to, those of a known senolytic, ABT-737. Molecular docking simulations of compound binding to several senolytic protein targets, combined with time-resolved fluorescence energy transfer experiments, indicate that these compounds act in part by inhibiting Bcl-2, a regulator of cellular apoptosis. We tested one compound, BRD-K56819078, in aged mice and found that it significantly decreased senescent cell burden and mRNA expression of senescence-associated genes in the kidneys. Our findings underscore the promise of leveraging deep learning to discover senotherapeutics.
Keyphrases
- cell cycle arrest
- neural network
- induced apoptosis
- molecular docking
- oxidative stress
- small molecule
- energy transfer
- endoplasmic reticulum stress
- dna damage
- cell death
- deep learning
- endothelial cells
- signaling pathway
- transcription factor
- stem cells
- single cell
- drug induced
- dna methylation
- adipose tissue
- emergency department
- protein protein
- single molecule
- metabolic syndrome
- cell proliferation
- high glucose
- gene expression
- cell therapy
- skeletal muscle
- quantum dots
- adverse drug
- high intensity
- bone marrow
- convolutional neural network
- amino acid