Deep active learning for suggestive segmentation of biomedical image stacks via optimisation of Dice scores and traced boundary length.

Journal: Medical image analysis
Published Date:

Abstract

Manual segmentation of stacks of 2D biomedical images (e.g., histology) is a time-consuming task which can be sped up with semi-automated techniques. In this article, we present a suggestive deep active learning framework that seeks to minimise the annotation effort required to achieve a certain level of accuracy when labelling such a stack. The framework suggests, at every iteration, a specific region of interest (ROI) in one of the images for manual delineation. Using a deep segmentation neural network and a mixed cross-entropy loss function, we propose a principled strategy to estimate class probabilities for the whole stack, conditioned on heterogeneous partial segmentations of the 2D images, as well as on weak supervision in the form of image indices that bound each ROI. Using the estimated probabilities, we propose a novel active learning criterion based on predictions for the estimated segmentation performance and delineation effort, measured with average Dice scores and total delineated boundary length, respectively, rather than common surrogates such as entropy. The query strategy suggests the ROI that is expected to maximise the ratio between performance and effort, while considering the adjacency of structures that may have already been labelled - which decrease the length of the boundary to trace. We provide quantitative results on synthetically deformed MRI scans and real histological data, showing that our framework can reduce labelling effort by up to 60-70% without compromising accuracy.

Authors

  • Alessia Atzeni
    Centre for Medical Image Computing, Department of Medical Physics and Biomedical Engineering, University College, London, UK. Electronic address: alessia.atzeni.14@ucl.ac.uk.
  • Loïc Peter
    Chair for Computer Aided Medical Procedures, Fakultät für Informatik, Technische Universität München, Germany.
  • Eleanor Robinson
    Centre for Medical Image Computing, Department of Medical Physics and Biomedical Engineering, University College, London, UK.
  • Emily Blackburn
    Centre for Medical Image Computing, Department of Medical Physics and Biomedical Engineering, University College, London, UK.
  • Juri Althonayan
    Centre for Medical Image Computing, Department of Medical Physics and Biomedical Engineering, University College, London, UK.
  • Daniel C Alexander
    Centre for Medical Image Computing and Dept of Computer Science, University College London, Gower Street, London WC1E 6BT, UK.
  • Juan Eugenio Iglesias
    Centre for Medical Image Computing, Department of Medical Physics and Biomedical Engineering, University College London, UK; Athinoula A. Martinos Center for Biomedical Imaging, Massachusetts General Hospital and Harvard Medical School, Boston, USA; Computer Science and Artificial Intelligence Laboratory, Massachusetts Institute of Technology, Boston, USA. Electronic address: e.iglesias@ucl.ac.uk.