Cai Hongmin, Deng Ranran, Yang Defu, Zhang Fa, Wu Guorong, Chen Jiazhou
IEEE J Biomed Health Inform. 2025 Jan;29(1):608-619. doi: 10.1109/JBHI.2024.3434394. Epub 2025 Jan 7.
Emerging researchindicates that the degenerative biomarkers associated with Alzheimer's disease (AD) exhibit a non-random distribution within the cerebral cortex, instead following the structural brain network. The alterations in brain networks occur much earlier than the onset of clinical symptoms, thereby affecting the progression of brain disease. In this context, the utilization of computational methods to ascertain the propagation patterns of neuropathological events would contribute to the comprehension of the pathophysiological mechanism involved in the evolution of AD. Despite the encouraging findings achieved by existing graph-based deep learning approaches in analyzing irregular graph data, their applications in identifying the spreading pathway of neuropathology are limited due to two disadvantages. They include (1) lack of a common brain network as an unbiased reference basis for group comparison, and (2) lack of an appropriate mechanism for the identification of propagation patterns. To this end, we propose a proof-of-concept harmonic wavelet neural network (HWNN) to predict the early stage of AD and localize disease-related significant wavelets, which can be used to characterize the spreading pathways of neuropathological events across the brain network. The extensive experiments constructed on both synthetic and real datasets demonstrate that our proposed method achieves superior performance in classification accuracy and statistical power of identifying propagation patterns, compared with other representative approaches.
新出现的研究表明,与阿尔茨海默病(AD)相关的退行性生物标志物在大脑皮层内呈现非随机分布,而是遵循大脑结构网络。脑网络的改变比临床症状出现要早得多,从而影响脑部疾病的进展。在这种情况下,利用计算方法来确定神经病理事件的传播模式将有助于理解AD演变过程中涉及的病理生理机制。尽管现有的基于图的深度学习方法在分析不规则图数据方面取得了令人鼓舞的成果,但由于两个缺点,它们在识别神经病理学传播途径方面的应用受到限制。这两个缺点包括:(1)缺乏一个通用的脑网络作为无偏的组间比较参考基础;(2)缺乏识别传播模式的适当机制。为此,我们提出了一种概念验证的谐波小波神经网络(HWNN),用于预测AD的早期阶段并定位与疾病相关的显著小波,这可用于表征神经病理事件在脑网络中的传播途径。在合成数据集和真实数据集上进行的大量实验表明,与其他代表性方法相比,我们提出的方法在分类准确率和识别传播模式的统计能力方面具有卓越的性能。