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Artificial intelligence-guided approach for efficient virtual screening of hits against Schistosoma mansoni .

José Teófilo Moreira-FilhoBruno Junior NevesRayssa Araujo CajasJosué de MoraesCarolina Horta Andrade
Published in: Future medicinal chemistry (2023)
Background: The impact of schistosomiasis, which affects over 230 million people, emphasizes the urgency of developing new antischistosomal drugs. Artificial intelligence is vital in accelerating the drug discovery process. Methodology & results: We developed classification and regression machine learning models to predict the schistosomicidal activity of compounds not experimentally tested. The prioritized compounds were tested on schistosomula and adult stages of Schistosoma mansoni . Four compounds demonstrated significant activity against schistosomula, with 50% effective concentration values ranging from 9.8 to 32.5 μM, while exhibiting no toxicity in animal and human cell lines. Conclusion: These findings represent a significant step forward in the discovery of antischistosomal drugs. Further optimization of these active compounds can pave the way for their progression into preclinical studies.
Keyphrases
  • artificial intelligence
  • machine learning
  • deep learning
  • big data
  • drug discovery
  • endothelial cells
  • small molecule
  • oxidative stress
  • stem cells
  • high throughput
  • single cell
  • pluripotent stem cells
  • bone marrow