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引用次数: 0
摘要
烟雾病(MMD)患者的认知障碍表现早于临床症状。早期识别脑连通性变化对于揭示烟雾病认知功能障碍的发病机制至关重要。我们提出了一种时间驱动的典型相关分析(TdCCA)方法,以实现脑电图(EEG)和功能近红外光谱(fNIRS)的双模同步信息融合,以探索烟雾病患者与正常对照组之间大脑连通性的差异。基于静息状态和工作记忆状态下脑电信号相干性虚部(EEG iCOH)和近红外信号的Pearson相关系数(fNIRS COR)提取双峰融合特征。机器学习模型表明,TdCCA方法的准确率达到97%,远高于单模态特征和特征级融合CCA方法。脑连接分析显示,MMD患者右侧枕叶和额叶之间的连接强度显著降低(EEG iOCH: p = 0.022, fNIRS COR p = 0.011)。这些差异反映了烟雾病患者的短暂记忆和执行功能受损。本研究有助于了解烟雾病患者认知功能障碍的神经生理学性质,并为慢性脑缺血患者提供一种潜在的辅助早期识别方法。
TdCCA with Dual-Modal Signal Fusion: Degenerated Occipital and Frontal Connectivity of Adult Moyamoya Disease for Early Identification.
Cognitive impairment in patients with moyamoya disease (MMD) manifests earlier than clinical symptoms. Early identification of brain connectivity changes is essential for uncovering the pathogenesis of cognitive impairment in MMD. We proposed a temporally driven canonical correlation analysis (TdCCA) method to achieve dual-modal synchronous information fusion from electroencephalogram (EEG) and functional near-infrared spectroscopy (fNIRS) for exploring the differences in brain connectivity between MMD and normal control groups. The dual-modal fusion features were extracted based on the imaginary part of coherence of the EEG signal (EEG iCOH) and the Pearson correlation coefficients of the fNIRS signal (fNIRS COR) in the resting and working memory state. The machine learning model showed that the accuracy of TdCCA method reached 97%, far higher than single-modal features and feature-level fusion CCA method. Brain connectivity analysis revealed a significant reduction in the strength of the connections between the right occipital lobe and frontal lobes (EEG iOCH: p = 0.022, fNIRS COR p = 0.011) in MMD. These differences reflected the impaired transient memory and executive function in MMD patients. This study contributes to the understanding of the neurophysiological nature of cognitive impairment in MMD and provides a potential adjuvant early identification method for individuals with chronic cerebral ischemia.
期刊介绍:
Translational Stroke Research covers basic, translational, and clinical studies. The Journal emphasizes novel approaches to help both to understand clinical phenomenon through basic science tools, and to translate basic science discoveries into the development of new strategies for the prevention, assessment, treatment, and enhancement of central nervous system repair after stroke and other forms of neurotrauma.
Translational Stroke Research focuses on translational research and is relevant to both basic scientists and physicians, including but not restricted to neuroscientists, vascular biologists, neurologists, neuroimagers, and neurosurgeons.