Learnable Brain Connectivity Structures for Identifying Neurological Disorders

Brain networks/graphs have been widely recognized as powerful and efficient tools for identifying neurological disorders. In recent years, various graph neural network models have been developed to automatically extract features from brain networks. However, a key limitation of these models is that...

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Main Authors: Zhengwang Xia (Author), Tao Zhou (Author), Zhuqing Jiao (Author), Jianfeng Lu (Author)
Format: Book
Published: IEEE, 2024-01-01T00:00:00Z.
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042 |a dc 
100 1 0 |a Zhengwang Xia  |e author 
700 1 0 |a Tao Zhou  |e author 
700 1 0 |a Zhuqing Jiao  |e author 
700 1 0 |a Jianfeng Lu  |e author 
245 0 0 |a Learnable Brain Connectivity Structures for Identifying Neurological Disorders 
260 |b IEEE,   |c 2024-01-01T00:00:00Z. 
500 |a 1534-4320 
500 |a 1558-0210 
500 |a 10.1109/TNSRE.2024.3446588 
520 |a Brain networks/graphs have been widely recognized as powerful and efficient tools for identifying neurological disorders. In recent years, various graph neural network models have been developed to automatically extract features from brain networks. However, a key limitation of these models is that the inputs, namely brain networks/graphs, are constructed using predefined statistical metrics (e.g., Pearson correlation) and are not learnable. The lack of learnability restricts the flexibility of these approaches. While statistically-specific brain networks can be highly effective in recognizing certain diseases, their performance may not exhibit robustness when applied to other types of brain disorders. To address this issue, we propose a novel module called Brain Structure Inference (termed BSI), which can be seamlessly integrated with multiple downstream tasks within a unified framework, enabling end-to-end training. It is highly flexible to learn the most beneficial underlying graph structures directly for specific downstream tasks. The proposed method achieves classification accuracies of 74.83% and 79.18% on two publicly available datasets, respectively. This suggests an improvement of at least 3% over the best-performing existing methods for both tasks. In addition to its excellent performance, the proposed method is highly interpretable, and the results are generally consistent with previous findings. 
546 |a EN 
690 |a Deep learning 
690 |a graph neural network 
690 |a graph structure learning 
690 |a brain disorder identification 
690 |a Medical technology 
690 |a R855-855.5 
690 |a Therapeutics. Pharmacology 
690 |a RM1-950 
655 7 |a article  |2 local 
786 0 |n IEEE Transactions on Neural Systems and Rehabilitation Engineering, Vol 32, Pp 3084-3094 (2024) 
787 0 |n https://ieeexplore.ieee.org/document/10640116/ 
787 0 |n https://doaj.org/toc/1534-4320 
787 0 |n https://doaj.org/toc/1558-0210 
856 4 1 |u https://doaj.org/article/2e0f23fb5e5a4d6098f65dea80c9bf7d  |z Connect to this object online.