The METLIN small molecule dataset for machine learning-based retention time prediction.

Journal: Nature communications
Published Date:

Abstract

Machine learning has been extensively applied in small molecule analysis to predict a wide range of molecular properties and processes including mass spectrometry fragmentation or chromatographic retention time. However, current approaches for retention time prediction lack sufficient accuracy due to limited available experimental data. Here we introduce the METLIN small molecule retention time (SMRT) dataset, an experimentally acquired reverse-phase chromatography retention time dataset covering up to 80,038 small molecules. To demonstrate the utility of this dataset, we deployed a deep learning model for retention time prediction applied to small molecule annotation. Results showed that in 70[Formula: see text] of the cases, the correct molecular identity was ranked among the top 3 candidates based on their predicted retention time. We anticipate that this dataset will enable the community to apply machine learning or first principles strategies to generate better models for retention time prediction.

Authors

  • Xavier Domingo-Almenara
  • Carlos Guijas
    Scripps Center for Metabolomics, The Scripps Research Institute, La Jolla, CA, USA.
  • Elizabeth Billings
    Scripps Center for Metabolomics, The Scripps Research Institute, La Jolla, CA, USA.
  • J Rafael Montenegro-Burke
  • Winnie Uritboonthai
  • Aries E Aisporna
    Scripps Center for Metabolomics, The Scripps Research Institute, La Jolla, CA, USA.
  • Emily Chen
    Radiation Oncology, Stanford University School of Medicine, Stanford, USA.
  • H Paul Benton
  • Gary Siuzdak