Active Learning Approach for Guiding Site-of-Metabolism Measurement and Annotation.

Journal: Journal of chemical information and modeling
Published Date:

Abstract

The ability to determine and predict metabolically labile atom positions in a molecule (also called "sites of metabolism" or "SoMs") is of high interest to the design and optimization of bioactive compounds, such as drugs, agrochemicals, and cosmetics. In recent years, several in silico models for SoM prediction have become available, many of which include a machine-learning component. The bottleneck in advancing these approaches is the coverage of distinct atom environments and rare and complex biotransformation events with high-quality experimental data. Pharmaceutical companies typically have measured metabolism data available for several hundred to several thousand compounds. However, even for metabolism experts, interpreting these data and assigning SoMs are challenging and time-consuming. Therefore, a significant proportion of the potential of the existing metabolism data, particularly in machine learning, remains dormant. Here, we report on the development and validation of an active learning approach that identifies the most informative atoms across molecular data sets for SoM annotation. The active learning approach, built on a highly efficient reimplementation of SoM predictor FAME 3, enables experts to prioritize their SoM experimental measurements and annotation efforts on the most rewarding atom environments. We show that this active learning approach yields competitive SoM predictors while requiring the annotation of only 20% of the atom positions required by FAME 3. The source code of the approach presented in this work is publicly available.

Authors

  • Ya Chen
    Center for Bioinformatics (ZBH), Department of Informatics, Faculty of Mathematics, Informatics and Natural Sciences, Universität Hamburg, 20146 Hamburg, Germany. chen@zbh.uni-hamburg.de.
  • Thomas Seidel
    University of Vienna, Department of Pharmaceutical Chemistry, Althanstraße 14, A-1090 Vienna, Austria.
  • Roxane Axel Jacob
    Department of Pharmaceutical Sciences, Division of Pharmaceutical Chemistry, Faculty of Life Sciences, University of Vienna, Josef-Holaubek-Platz 2, 1090 Vienna, Austria.
  • Steffen Hirte
    Center for Bioinformatics (ZBH), Department of Informatics, Faculty of Mathematics, Informatics and Natural Sciences, Universität Hamburg, 20146 Hamburg, Germany. steffen.hirte@studium.uni-hamburg.de.
  • Angelica Mazzolari
    Dipartimento di Scienze Farmaceutiche Università degli Studi di Milano, Milan, Italy.
  • Alessandro Pedretti
    Dipartimento di Scienze Farmaceutiche Università degli Studi di Milano, Milan, Italy.
  • Giulio Vistoli
    Dipartimento di Scienze Farmaceutiche Università degli Studi di Milano, Milan, Italy. giulio.vistoli@unimi.it.
  • Thierry Langer
    University of Vienna, Department of Pharmaceutical Chemistry, Althanstraße 14, A-1090 Vienna, Austria. Electronic address: thierry.langer@univie.ac.at.
  • Filip Miljković
    Department of Life Science Informatics, B-IT, LIMES Program Unit Chemical Biology and Medicinal Chemistry, Rheinische Friedrich-Wilhelms-Universität, Endenicher Allee 19c, D-53115 Bonn, Germany.
  • Johannes Kirchmair
    Department of Pharmaceutical Sciences, Division of Pharmaceutical Chemistry, Faculty of Life Sciences, University of Vienna, Josef-Holaubek-Platz 2, 1090 Vienna, Austria.