Fréchet ChemNet Distance: A Metric for Generative Models for Molecules in Drug Discovery

Kristina Preuer, Philipp Renz, Thomas Unterthiner, Sepp Hochreiter, Günter Klambauer

Research output: Chapter in Book/Report/Conference proceedingConference proceedingspeer-review

Abstract

increased the interest in deep learning driven de novo drug design. However, assessing the performance of such generative models is notoriously difficult. Metrics that are typically used to assess the performance of such generative models are the percentage of chemically valid molecules or the similarity to real molecules in terms of particular descriptors, such as the partition coefficient (logP) or druglikeness. However, method comparison is difficult because of the inconsistent use of evaluation metrics, the necessity for multiple metrics, and the fact that some of these measures can easily be tricked by simple rule-based systems. We propose a novel distance measure between two sets of molecules, called Fréchet ChemNet distance (FCD), that can be used as an evaluation metric for generative models. The FCD is similar to a recently established performance metric for comparing image generation methods, the Fréchet Inception Distance (FID). Whereas the FID uses one of the hidden layers of InceptionNet, the FCD utilizes the penultimate layer of a deep neural network called ChemNet, which was trained to predict drug activities. Thus, the FCD metric takes into account chemically and biologically relevant information about molecules, and also measures the diversity of the set via the distribution of generated molecules. The FCD's advantage over previous metrics is that it can detect if generated molecules are a) diverse and have similar b) chemical and c) biological properties as real molecules. We further provide an easy-to-use implementation that only requires the SMILES representation of the generated molecules as input to calculate the FCD.
Original languageEnglish
Title of host publicationNeural Information Processing Systems (NIPS 2018)
Number of pages1
Publication statusPublished - 2018

Fields of science

  • 303 Health Sciences
  • 304 Medical Biotechnology
  • 304003 Genetic engineering
  • 305 Other Human Medicine, Health Sciences
  • 101004 Biomathematics
  • 101018 Statistics
  • 102 Computer Sciences
  • 102001 Artificial intelligence
  • 102004 Bioinformatics
  • 102010 Database systems
  • 102015 Information systems
  • 102019 Machine learning
  • 106023 Molecular biology
  • 106002 Biochemistry
  • 106005 Bioinformatics
  • 106007 Biostatistics
  • 106041 Structural biology
  • 301 Medical-Theoretical Sciences, Pharmacy
  • 302 Clinical Medicine

JKU Focus areas

  • Computation in Informatics and Mathematics
  • Nano-, Bio- and Polymer-Systems: From Structure to Function
  • Medical Sciences (in general)
  • Health System Research
  • Clinical Research on Aging

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