4.7 Article

Attention-modulated multi-branch convolutional neural networks for neonatal brain tissue segmentation

Journal

COMPUTERS IN BIOLOGY AND MEDICINE
Volume 146, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compbiomed.2022.105522

Keywords

Deep learning; Neural network; Image segmentation; Magnetic resonance imaging

Funding

  1. New Star of Youth Science and Technology of Shaanxi Province [2020KJXX-007]
  2. Natural Science Basic Research Program of Shaanxi [2019JM-103]
  3. Social Science Foundation of Shaanxi Province [2019H010, 2021G003]
  4. Open Research Fund of CAS Key Laboratory of Spectral Imaging Technology [LSIT201920W]
  5. National Natural Science Foundation of China [62173270]

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The study introduces a novel multi-branch convolutional neural network for neonatal brain tissue segmentation, utilizing multi-scale feature extraction and multi-branch attention mechanisms to achieve competitive segmentation results.
Accurate measurement of brain structures is essential for the evaluation of neonatal brain growth and development. The conventional methods use manual segmentation to measure brain tissues, which is very timeconsuming and inefficient. Recent deep learning achieves excellent performance in computer vision, but it is still unsatisfactory for segmenting magnetic resonance images of neonatal brains because they are immature with unique attributes. In this paper, we propose a novel attention-modulated multi-branch convolutional neural network for neonatal brain tissue segmentation. The proposed network is built on the encoder-decoder framework by introducing both multi-scale convolutions in the encoding path and multi-branch attention modules in the decoding path. Multi-scale convolutions with different kernels are used to extract rich semantic features across large receptive fields in the encoding path. Multi-branch attention modules are used to capture abundant contextual information in the decoding path for segmenting brain tissues by fusing both local features and their corresponding global dependencies. Spatial attention connections between the encoding and decoding paths are designed to increase feature propagation for both avoiding information loss during downsampling and accelerating model training convergence. The proposed network was implemented in comparison with baseline methods on three neonatal brain datasets. Our network achieves the average Dice similarity coefficients/the average Hausdorff distances of 0.9116/8.1289, 0.9367/9.8212 and 0.8931/8.1612 on the customized dCBP2021 dataset, 0.8786/11.7863, 0.8965/13.4296 and 0.8539/10.462 on the public NBAtlas dataset, as well as 0.9253/ 7.7968, 0.9448/9.5472 and 0.9132/7.5877 on the public dHCP2017 dataset in partitioning the brain into gray matter, white matter and cerebrospinal fluid, respectively. The experimental results show that the proposed method achieves competitive state-of-the-art performance in neonatal brain tissue segmentation. The code and pre-trained models are available at https://github.com/zhangyongqin/AMCNN.

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