Self-supervised brain lesion generation for effective data augmentation of medical images.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

Accurate brain lesion delineation is important for planning neurosurgical treatment. Automatic brain lesion segmentation methods based on convolutional neural networks have demonstrated remarkable performance. However, neural network performance is constrained by the lack of large-scale well-annotated training datasets. In this manuscript, we propose a comprehensive framework to efficiently generate new samples for training a brain lesion segmentation model. We first train a self-supervised lesion generator based on the adversarial autoencoder to model lesion appearance and shape. Next, we utilize a novel image composition algorithm, Soft Poisson Blending, to seamlessly combine synthetic lesions and brain images to obtain training samples. Finally, to effectively train the brain lesion segmentation model with augmented images we introduce a new prototype consistence regularization to align real and synthetic features. Our framework is validated by extensive experiments on two public brain lesion segmentation datasets: ATLAS v2.0 and Shift MS. Our method outperforms existing brain image data augmentation schemes. For instance, our method improves the Dice from 50.36% to 60.23% compared to the UNet with conventional data augmentation techniques for the ATLAS v2.0 dataset.

Authors

  • Jiayu Huo
  • Sébastien Ourselin
    Wellcome / EPSRC Centre for Interventional and Surgical Sciences (WEISS), University College London, UK.
  • Rachel Sparks
    University College of London, Centre for Medical Image Computing, London, UK.

Keywords

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