Molecules (Jan 2024)

MolOptimizer: A Molecular Optimization Toolkit for Fragment-Based Drug Design

  • Adam Soffer,
  • Samuel Joshua Viswas,
  • Shahar Alon,
  • Nofar Rozenberg,
  • Amit Peled,
  • Daniel Piro,
  • Dan Vilenchik,
  • Barak Akabayov

DOI
https://doi.org/10.3390/molecules29010276
Journal volume & issue
Vol. 29, no. 1
p. 276

Abstract

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MolOptimizer is a user-friendly computational toolkit designed to streamline the hit-to-lead optimization process in drug discovery. MolOptimizer extracts features and trains machine learning models using a user-provided, labeled, and small-molecule dataset to accurately predict the binding values of new small molecules that share similar scaffolds with the target in focus. Hosted on the Azure web-based server, MolOptimizer emerges as a vital resource, accelerating the discovery and development of novel drug candidates with improved binding properties.

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