MedusaScore: An Accurate Force Field-Based Scoring Function for Virtual Drug Screening

نویسندگان

  • Shuangye Yin
  • Lada Biedermannová
  • Jirí Vondrásek
  • Nikolay V. Dokholyan
چکیده

Virtual screening is becoming an important tool for drug discovery. However, the application of virtual screening has been limited by the lack of accurate scoring functions. Here, we present a novel scoring function, MedusaScore, for evaluating protein-ligand binding. MedusaScore is based on models of physical interactions that include van der Waals, solvation, and hydrogen bonding energies. To ensure the best transferability of the scoring function, we do not use any protein-ligand experimental data for parameter training. We then test the MedusaScore for docking decoy recognition and binding affinity prediction and find superior performance compared to other widely used scoring functions. Statistical analysis indicates that one source of inaccuracy of MedusaScore may arise from the unaccounted entropic loss upon ligand binding, which suggests avenues of approach for further MedusaScore improvement.

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عنوان ژورنال:
  • Journal of chemical information and modeling

دوره 48 8  شماره 

صفحات  -

تاریخ انتشار 2008