Machine learning for cluster analysis of localization microscopy data.

Journal: Nature communications
Published Date:

Abstract

Quantifying the extent to which points are clustered in single-molecule localization microscopy data is vital to understanding the spatial relationships between molecules in the underlying sample. Many existing computational approaches are limited in their ability to process large-scale data sets, to deal effectively with sample heterogeneity, or require subjective user-defined analysis parameters. Here, we develop a supervised machine-learning approach to cluster analysis which is fast and accurate. Trained on a variety of simulated clustered data, the neural network can classify millions of points from a typical single-molecule localization microscopy data set, with the potential to include additional classifiers to describe different subtypes of clusters. The output can be further refined for the measurement of cluster area, shape, and point-density. We demonstrate this approach on simulated data and experimental data of the kinase Csk and the adaptor PAG in primary human T cell immunological synapses.

Authors

  • David J Williamson
    Department of Physics and Randall Centre for Cell and Molecular Biophysics, King's College London, London, UK.
  • Garth L Burn
    Department of Physics and Randall Centre for Cell and Molecular Biophysics, King's College London, London, UK.
  • Sabrina Simoncelli
    Department of Physics and Randall Centre for Cell and Molecular Biophysics, King's College London, London, UK.
  • Juliette Griffié
    Department of Physics and Randall Centre for Cell and Molecular Biophysics, King's College London, London, UK.
  • Ruby Peters
    Department of Physics and Randall Centre for Cell and Molecular Biophysics, King's College London, London, UK.
  • Daniel M Davis
    Division of Infection, Immunity and Respiratory Medicine, University of Manchester, Manchester, UK.
  • Dylan M Owen
    Department of Physics and Randall Centre for Cell and Molecular Biophysics, King's College London, London, UK. d.owen@bham.ac.uk.