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Statistical and machine learning approaches predict drug-to-target relationships from 2D small-molecule topology patterns. One might expect 3D information to improve these calculations. Here we apply the logic of the extended connectivity fingerprint (ECFP) to develop a rapid, alignment-invariant 3D representation of molecular conformers, the extended three-dimensional fingerprint (E3FP). By integrating E3FP with the similarity ensemble approach (SEA), we achieve higher precision-recall performance relative to SEA with ECFP on ChEMBL20 and equivalent receiver operating characteristic performance. We identify classes of molecules for which E3FP is a better predictor of similarity in bioactivity than is ECFP. Finally, we report novel drug-to-target binding predictions inaccessible by 2D fingerprints and confirm three of them experimentally with ligand efficiencies from 0.442-0.637 kcal/mol/heavy atom.
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Seth D. Axen
University of California, San Francisco
Xi‐Ping Huang
South China Agricultural University
Elena L. Cáceres
Nurix (United States)
Journal of Medicinal Chemistry
University of California, San Francisco
University of North Carolina at Chapel Hill
National Institute of Mental Health
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Axen et al. (Fri,) studied this question.
synapsesocial.com/papers/6a032eccbc3ffe278e654fef — DOI: https://doi.org/10.1021/acs.jmedchem.7b00696