4.6 Article

MTDCNet: A 3D multi-threading dilated convolutional network for brain tumor automatic segmentation

Journal

JOURNAL OF BIOMEDICAL INFORMATICS
Volume 133, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jbi.2022.104173

Keywords

Dilated connect; Multi -threading dilated convolution; Spatial pyramid convolution; Multi -threading adaptive pooling strategy; Brain tumor segmentation

Funding

  1. National Natural Science Foundation of China [62172248, 61863010]
  2. Natural Sci- ence Foundation of Shandong Province of China [ZR2021MF098]

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A novel 3D multithreading dilated convolutional network (MTDC-Net) was proposed for automatic brain tumor segmentation. By introducing multi-threading dilated convolution strategy, pyramid matrix fusion algorithm, spatial pyramid convolution operation, and multi-threading adaptive pooling up-sampling strategy, the model achieved high dice scores on public validation datasets.
Glioma is one of the most threatening tumors and the survival rate of the infected patient is low. The automatic segmentation of the tumors by reliable algorithms can reduce diagnosis time. In this paper, a novel 3D multithreading dilated convolutional network (MTDC-Net) is proposed for the automatic brain tumor segmentation. First of all, a multi-threading dilated convolution (MTDC) strategy is introduced in the encoder part, so that the low dimensional structural features can be extracted and integrated better. At the same time, the pyramid matrix fusion (PMF) algorithm is used to integrate the characteristic structural information better. Secondly, in order to make the better use of context semantical information, this paper proposed a spatial pyramid convolution (SPC) operation. By using convolution with different kernel sizes, the model can aggregate more semantic information. Finally, the multi-threading adaptive pooling up-sampling (MTAU) strategy is used to increase the weight of semantic information, and improve the recognition ability of the model. And a pixel-based post-processing method is used to prevent the effects of error prediction. On the brain tumors segmentation challenge 2018 (BraTS2018) public validation dataset, the dice scores of MTDC-Net are 0.832, 0.892 and 0.809 for core, whole and enhanced of the tumor, respectively. On the BraTS2020 public validation dataset, the dice scores of MTDCNet are 0.833, 0.896 and 0.797 for the core tumor, whole tumor and enhancing tumor, respectively. Mass numerical experiments show that MTDC-Net is a state-of-the-art network for automatic brain tumor segmentation.

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