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The mechanistic functional landscape of retinitis pigmentosa: a machine learning-driven approach to therapeutic target discovery.

Marina Esteban-MedinaCarlos LouceraKinza RianSheyla VelascoLorena Olivares-GonzálezRegina RodrigoJoaquín DopazoMaria Peña-Chilet
Published in: Journal of translational medicine (2024)
The possibility of building actionable disease models in combination with machine learning algorithms to learn causal drug-disease interactions opens new avenues for boosting drug discovery. Such mechanistically-based hypotheses can guide and accelerate the experimental validations prioritizing drug target candidates. In this work, a mechanistic model describing the functional disease map of Retinitis Pigmentosa was developed, identifying five promising therapeutic candidates targeted by approved drug. Further experimental validation will demonstrate the efficiency of this approach for a systematic application to other rare diseases.
Keyphrases
  • machine learning
  • drug discovery
  • artificial intelligence
  • emergency department
  • big data
  • small molecule