IEEE Access (Jan 2020)

Arterial Spin Labeling Image Synthesis From Structural MRI Using Improved Capsule-Based Networks

  • Wei Huang,
  • Mingyuan Luo,
  • Xi Liu,
  • Peng Zhang,
  • Huijun Ding

DOI
https://doi.org/10.1109/ACCESS.2020.3028113
Journal volume & issue
Vol. 8
pp. 181137 – 181153

Abstract

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Medical image synthesis receives much popularity in recent years, and ample medical images can be synthesized by diverse deep learning models to alleviate the problem of lack of data in many medical imaging utilizations. However, most medical image synthesis methods still incorporate the well-known pooling operation in their convolutional neural networks-based/generative adversarial networks-based models, from which image details will be inevitably lost due to the pooling operation. In order to tackle the above problem, improved capsule-based networks, in which no pooling operation is executed and spatial details of images can be effectively preserved thanks to the equivariance characteristics of capsule models, are proposed in this paper to synthesize arterial spin labeling images, for the first time. Technically, three important issues in constructing improved capsule-based networks, including the depth of basic convolutions, the layer of capsules, and the capacity of capsules, are thoroughly investigated. Comprehensive experiments made up of region-based/voxel-based partial volume corrections and dementia diseases diagnosis based on two different datasets are conducted. The superiority of improved capsule-based networks introduced in this paper is substantiated from the statistical point of view.

Keywords