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Evaluating Scalable Supervised Learning for Synthesize-on-Demand Chemical Libraries.
Alnammi, Moayad; Liu, Shengchao; Ericksen, Spencer S; Ananiev, Gene E; Voter, Andrew F; Guo, Song; Keck, James L; Hoffmann, F Michael; Wildman, Scott A; Gitter, Anthony.
Affiliation
  • Alnammi M; Department of Computer Sciences, University of Wisconsin-Madison, Madison, Wisconsin 53706, United States.
  • Liu S; Morgridge Institute for Research, Madison, Wisconsin 53715, United States.
  • Ericksen SS; Department of Information and Computer Science, King Fahd University of Petroleum & Minerals, Dhahran 31261, Saudi Arabia.
  • Ananiev GE; Department of Computer Sciences, University of Wisconsin-Madison, Madison, Wisconsin 53706, United States.
  • Voter AF; Morgridge Institute for Research, Madison, Wisconsin 53715, United States.
  • Guo S; Small Molecule Screening Facility, University of Wisconsin-Madison, Madison, Wisconsin 53792, United States.
  • Keck JL; Small Molecule Screening Facility, University of Wisconsin-Madison, Madison, Wisconsin 53792, United States.
  • Hoffmann FM; Department of Biomolecular Chemistry, University of Wisconsin-Madison, Madison, Wisconsin 53706, United States.
  • Wildman SA; Small Molecule Screening Facility, University of Wisconsin-Madison, Madison, Wisconsin 53792, United States.
  • Gitter A; Department of Biomolecular Chemistry, University of Wisconsin-Madison, Madison, Wisconsin 53706, United States.
J Chem Inf Model ; 63(17): 5513-5528, 2023 09 11.
Article in En | MEDLINE | ID: mdl-37625010
ABSTRACT
Traditional small-molecule drug discovery is a time-consuming and costly endeavor. High-throughput chemical screening can only assess a tiny fraction of drug-like chemical space. The strong predictive power of modern machine-learning methods for virtual chemical screening enables training models on known active and inactive compounds and extrapolating to much larger chemical libraries. However, there has been limited experimental validation of these methods in practical applications on large commercially available or synthesize-on-demand chemical libraries. Through a prospective evaluation with the bacterial protein-protein interaction PriA-SSB, we demonstrate that ligand-based virtual screening can identify many active compounds in large commercial libraries. We use cross-validation to compare different types of supervised learning models and select a random forest (RF) classifier as the best model for this target. When predicting the activity of more than 8 million compounds from Aldrich Market Select, the RF substantially outperforms a naïve baseline based on chemical structure similarity. 48% of the RF's 701 selected compounds are active. The RF model easily scales to score one billion compounds from the synthesize-on-demand Enamine REAL database. We tested 68 chemically diverse top predictions from Enamine REAL and observed 31 hits (46%), including one with an IC50 value of 1.3 µM.
Subject(s)

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Small Molecule Libraries / High-Throughput Screening Assays Type of study: Prognostic_studies Language: En Journal: J Chem Inf Model Journal subject: INFORMATICA MEDICA / QUIMICA Year: 2023 Type: Article Affiliation country: United States

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Small Molecule Libraries / High-Throughput Screening Assays Type of study: Prognostic_studies Language: En Journal: J Chem Inf Model Journal subject: INFORMATICA MEDICA / QUIMICA Year: 2023 Type: Article Affiliation country: United States