4.7 Article

Atlas-ISTN: Joint segmentation, registration and atlas construction with image-and-spatial transformer networks

Journal

MEDICAL IMAGE ANALYSIS
Volume 78, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.media.2022.102383

Keywords

Multi-label atlas construction; Image segmentation and registration

Funding

  1. HeartFlow, Inc.
  2. UKRI CDT in AI for Healthcare [P/S023283/1]

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This paper proposes a framework called Atlas-ISTN, which simultaneously learns segmentation and registration and constructs a population-derived atlas. The framework addresses the issue of noise in target images and improves the model's predictive performance. Experimental results on synthetic data and medical images demonstrate that the framework outperforms baseline models.
Deep learning models for semantic segmentation are able to learn powerful representations for pixel-wise predictions, but are sensitive to noise at test time and may lead to implausible topologies. Image registration models on the other hand are able to warp known topologies to target images as a means of segmentation, but typically require large amounts of training data, and have not widely been benchmarked against pixel-wise segmentation models. We propose the Atlas Image-and-Spatial Transformer Network (Atlas-ISTN), a framework that jointly learns segmentation and registration on 2D and 3D image data, and constructs a population-derived atlas in the process. Atlas-ISTN learns to segment multiple structures of interest and to register the constructed atlas labelmap to an intermediate pixel-wise segmentation. Additionally, Atlas-ISTN allows for test time refinement of the model's parameters to optimize the alignment of the atlas labelmap to an intermediate pixel-wise segmentation. This process both mitigates for noise in the target image that can result in spurious pixel-wise predictions, as well as improves upon the one pass prediction of the model. Benefits of the Atlas-ISTN framework are demonstrated qualitatively and quantitatively on 2D synthetic data and 3D cardiac computed tomography and brain magnetic resonance image data, out-performing both segmentation and registration baseline models. Atlas-ISTN also provides inter-subject correspondence of the structures of interest.(c) 2022 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY-NC-ND license ( http://creativecommons.org/licenses/by-nc-nd/4.0/ )

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