4.7 Article

Adaptive Augmentation of Medical Data Using Independently Conditional Variational Auto-Encoders

Journal

IEEE TRANSACTIONS ON MEDICAL IMAGING
Volume 38, Issue 12, Pages 2807-2820

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2019.2914656

Keywords

Data augmentation; deep learning; conditional variational auto-encoder; magnetic resonance; ultrasound; center-line identification; tumor segmentation

Funding

  1. Natural Science and Engineering Research Council of Canada (NSERC)
  2. Canadian Institutes of Health Research (CIHR)

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Current deep supervised learning methods typically require large amounts of labeled data for training. Since there is a significant cost associated with clinical data acquisition and labeling, medical datasets used for training these models are relatively small in size. In this paper, we aim to alleviate this limitation by proposing a variational generative model along with an effective data augmentation approach that utilizes the generative model to synthesize data. In our approach, the model learns the probability distribution of image data conditioned on a latent variable and the corresponding labels. The trained model can then be used to synthesize new images for data augmentation. We demonstrate the effectiveness of the approach on two independent clinical datasets consisting of ultrasound images of the spine and magnetic resonance images of the brain. For the spine dataset, a baseline and a residual model achieve an accuracy of 85% and 92%, respectively, using our method compared to 78% and 83% using a conventional training approach for image classification task. For the brain dataset, a baseline and a U-net network achieve an accuracy of 84% and 88%, respectively, in Dice coefficient in tumor segmentation compared to 80% and 83% for the convention training approach.

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