A deep learning segmentation strategy that minimizes the amount of manually annotated images.

Journal: F1000Research
Published Date:

Abstract

Deep learning has revolutionized the automatic processing of images. While deep convolutional neural networks have demonstrated astonishing segmentation results for many biological objects acquired with microscopy, this technology's good performance relies on large training datasets. In this paper, we present a strategy to minimize the amount of time spent in manually annotating images for segmentation. It involves using an efficient and open source annotation tool, the artificial increase of the training dataset with data augmentation, the creation of an artificial dataset with a conditional generative adversarial network and the combination of semantic and instance segmentations. We evaluate the impact of each of these approaches for the segmentation of nuclei in 2D widefield images of human precancerous polyp biopsies in order to define an optimal strategy.

Authors

  • Thierry Pécot
    Department of Biochemistry and Molecular Biology, Hollings Cancer Center, Medical University of South Carolina, Charleston, SC, 29407, USA.
  • Alexander Alekseyenko
    Departments of Public Health Sciences and Oral Health Sciences, Biomedical Informatics Center, Medical University of South Carolina, Charleston, SC, 29407, USA.
  • Kristin Wallace
    Department of Public Health Sciences, Medical University of South Carolina, Charleston, SC, 29407, USA.