Journal of Southern Medical University ›› 2023, Vol. 43 ›› Issue (12): 2118-2125.doi: 10.12122/j.issn.1673-4254.2023.12.17

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Whole-brain parcellation for macaque brain magnetic resonance images based on attention mechanism and multi-modality feature fusion

WU Xueyang, ZHANG Yu, ZHANG Hua, ZHONG Tao   

  1. School of Biomedical Engineering//Guangdong Provincial Key Laboratory of Medical Image Processing, Southern Medical University, Guangzhou 510515, China
  • Online:2023-12-20 Published:2023-12-29

Abstract: Objective We propose a novel deep learning algorithm based on attention mechanism and multimodality feature fusion (DDAM) to achieve whole-brain parcellation of macaque brain magnetic resonance (MR) images. Methods We collected multimodality brain MR images of 68 macaques (aged 13 to 36 months) with corresponding ground truth labels. To address the complexity and complementary nature of the multimodality data, we employed a multi- encoder structure to adapt to different modalities and performed feature extraction. In the decoder, an attention mechanism was introduced to construct the Attention-based Multimodality Feature Fusion module (AMFF). Leveraging the rich and complementary information between modalities, AMFF effectively integrated multimodality features of varying scales and complexities to enhance the performance of parcellation. We conducted ablation experiments and statistically analyzed the results. Results The incorporation of the multi-encoder structure and attention mechanism significantly improved the performance of the network for integrating the multimodality features, and achieved an average DSC of 0.904 and an ASD as low as 0.131 for macaque whole-brain parcellation (P<0.05). The ablation experiments validated the effectiveness of each component of the DDAM method. Conclusion The proposed DDAM method, with its enhanced ability to extract and integrate multimodality features, can significantly improve the accuracy of whole-brain MR image segmentation.

Key words: macaque brain; magnetic resonance imaging; whole-brain parcellation; deep learning; attention mechanism; multi-modality feature fusion