Practical segmentation of nuclei in brightfield cell images with neural networks trained on fluorescently labelled samples.

Journal: Journal of microscopy
Published Date:

Abstract

Identifying nuclei is a standard first step when analysing cells in microscopy images. The traditional approach relies on signal from a DNA stain, or fluorescent transgene expression localised to the nucleus. However, imaging techniques that do not use fluorescence can also carry useful information. Here, we used brightfield and fluorescence images of fixed cells with fluorescently labelled DNA, and confirmed that three convolutional neural network architectures can be adapted to segment nuclei from the brightfield channel, relying on fluorescence signal to extract the ground truth for training. We found that U-Net achieved the best overall performance, Mask R-CNN provided an additional benefit of instance segmentation, and that DeepCell proved too slow for practical application. We trained the U-Net architecture on over 200 dataset variations, established that accurate segmentation is possible using as few as 16 training images, and that models trained on images from similar cell lines can extrapolate well. Acquiring data from multiple focal planes further helps distinguish nuclei in the samples. Overall, our work helps to liberate a fluorescence channel reserved for nuclear staining, thus providing more information from the specimen, and reducing reagents and time required for preparing imaging experiments.

Authors

  • Dmytro Fishman
    Department of Computer Science, University of Tartu, Tartu, Estonia.
  • Sten-Oliver Salumaa
    Department of Computer Science, University of Tartu, Tartu, Estonia.
  • Daniel Majoral
    Department of Computer Science, University of Tartu, Narva Str 20, Tartu, 51009, Estonia.
  • Tõnis Laasfeld
    Department of Computer Science, University of Tartu, Narva Str 20, Tartu, 51009, Estonia.
  • Samantha Peel
    Discovery Sciences, R&D, AstraZeneca, Cambridge, UK.
  • Jan Wildenhain
    Wellcome Trust Centre for Cell Biology, School of Biological Sciences, University of Edinburgh, Edinburgh EH9 3JR, UK.
  • Alexander Schreiner
    PerkinElmer Cellular Technologies, Germany GmbH, Hamburg, Germany.
  • Kaupo Palo
    PerkinElmer Cellular Technologies Germany GmbH, Hamburg, Germany.
  • Leopold Parts
    Institute of Computer Science, University of Tartu, 50409, Estonia leopold.parts@sanger.ac.uk.