4.6 Article

A 3D Fully Convolutional Neural Network With Top-Down Attention-Guided Refinement for Accurate and Robust Automatic Segmentation of Amygdala and Its Subnuclei

期刊

FRONTIERS IN NEUROSCIENCE
卷 14, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fnins.2020.00260

关键词

deep learning; fully convolutional neural network; amygdala; structural MRI; segmentation; harmonization; generalization

资金

  1. NARSAD: Brain and Behavior grant [24103]
  2. National Institutes of Health [NINDS R01 NS092870]
  3. NIMH [P50 MH100031]
  4. Waisman Center U54 IDDRC from the Eunice Kennedy Shriver National Institute of Child Health and Human Development [U54 HD090256]
  5. Center for Predictive and Computational Phenotyping (CPCP) [U54-AI117924-03]
  6. Alzheimer's Disease Connectome Project (ADCP) [UF1-AG051216-01A1, R56-AG052698-01]
  7. BRAIN Initiative [R01-EB022883-01]

向作者/读者索取更多资源

Recent advances in deep learning have improved the segmentation accuracy of subcortical brain structures, which would be useful in neuroimaging studies of many neurological disorders. However, most existing deep learning based approaches in neuroimaging do not investigate the specific difficulties that exist in segmenting extremely small but important brain regions such as the subnuclei of the amygdala. To tackle this challenging task, we developed a dual-branch dilated residual 3D fully convolutional network with parallel convolutions to extract more global context and alleviate the class imbalance issue by maintaining a small receptive field that is just the size of the regions of interest (ROIs). We also conduct multi-scale feature fusion in both parallel and series to compensate the potential information loss during convolutions, which has been shown to be important for small objects. The serial feature fusion enabled by residual connections is further enhanced by a proposed top-down attention-guided refinement unit, where the high-resolution low-level spatial details are selectively integrated to complement the high-level but coarse semantic information, enriching the final feature representations. As a result, the segmentations resulting from our method are more accurate both volumetrically and morphologically, compared with other deep learning based approaches. To the best of our knowledge, this work is the first deep learning-based approach that targets the subregions of the amygdala. We also demonstrated the feasibility of using a cycle-consistent generative adversarial network (CycleGAN) to harmonize multi-site MRI data, and show that our method generalizes well to challenging traumatic brain injury (TBI) datasets collected from multiple centers. This appears to be a promising strategy for image segmentation for multiple site studies and increased morphological variability from significant brain pathology.

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