使用静态和动态功能网络连接和机器学习表征脊髓型颈椎病的脑网络改变。

IF 1.9 4区 医学 Q3 CLINICAL NEUROLOGY Journal of Clinical Neuroscience Pub Date : 2025-01-16 DOI:10.1016/j.jocn.2025.111053
Jiyuan Yao , Bingyong Xie , Haoyu Ni , Zhibin Xu , Haoxiang Wang , Sicheng Bian , Kun Zhu , Peiwen Song , Yuanyuan Wu , Yongqiang Yu , Fulong Dong
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引用次数: 0

摘要

背景:脊髓型颈椎病(CSM)是一种影响颈椎的衰弱性疾病,可导致神经损伤。虽然CSM的神经机制尚不清楚,但大脑网络连接的变化,特别是在静态和动态功能网络连接(sFNC和dFNC)的背景下,可能为疾病病理生理学提供有价值的见解。本研究使用sFNC和dFNC结合机器学习方法研究CSM患者全脑连接的改变,以探索它们作为疾病分类和进展的生物标志物的潜力。方法:共纳入191例受试者,其中CSM患者108例,健康对照83例。静息状态fMRI数据用于导出功能连接网络(fnc),进一步分析得到sFNC和dFNC特征。采用K-means聚类方法识别不同的dFNC状态,并构建支持向量机(SVM)、决策树(DT)、线性判别分析(LDA)、逻辑回归(LR)和随机森林(RF)等机器学习模型,根据FNC特征对CSM患者和hc进行分类。结果:sFNC分析显示CSM患者脑网络连通性显著改变,包括后置默认网络(pDMN)与腹侧注意网络(vAN)、左右额顶叶网络(rFPN和lFPN)之间的连通性增强,以及其他多个网络对的连通性减弱。dFNC的K-means聚类确定了四种不同的功能状态,CSM患者在状态1和状态3表现出改变的连接。基于sFNC的机器学习模型表现出优异的分类性能,SVM模型的AUC达到0.92,准确率达到85.86%,灵敏度和特异性均超过0.80。基于dFNC的模型也表现良好,基于State 3的模型的AUC为0.91,准确率为84.97%。结论:我们的研究结果强调了CSM患者sFNC和dFNC的显著改变,表明这些连通性变化可能反映了该疾病的潜在神经机制。基于FNC特征的机器学习模型,特别是SVM,在CSM患者分类方面表现出强大的潜力,并可能作为诊断和监测疾病进展的有价值的神经成像生物标志物。未来的研究应该探索纵向研究和多模态神经成像方法来进一步验证这些发现。
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Characterizing brain network alterations in cervical spondylotic myelopathy using static and dynamic functional network connectivity and machine learning

Background

Cervical spondylotic myelopathy (CSM) is a debilitating condition that affects the cervical spine, leading to neurological impairments. While the neural mechanisms underlying CSM remain poorly understood, changes in brain network connectivity, particularly within the context of static and dynamic functional network connectivity (sFNC and dFNC), may provide valuable insights into disease pathophysiology. This study investigates brain-wide connectivity alterations in CSM patients using both sFNC and dFNC, combined with machine learning approaches, to explore their potential as biomarkers for disease classification and progression.

Methods

A total of 191 participants were included in this study, comprising 108 CSM patients and 83 healthy controls (HCs). Resting-state fMRI data were used to derive functional connectivity networks (FCNs), which were further analyzed to obtain sFNC and dFNC features. K-means clustering was applied to identify distinct dFNC states, and machine learning models, including support vector machine (SVM), decision tree (DT), linear discriminant analysis (LDA), logistic regression (LR), and random forests (RF), were constructed to classify CSM patients and HCs based on FNC features.

Results

The sFNC analysis revealed significant alterations in brain network connectivity in CSM patients, including enhanced connectivity between the posterior default mode network (pDMN) and ventral attention network (vAN), and between the right and left frontoparietal networks (rFPN and lFPN), alongside weakened connectivity in multiple other network pairs. K-means clustering of dFNC identified four distinct functional states, with CSM patients exhibiting altered connectivity in State 1 and State 3. Machine learning models based on sFNC demonstrated excellent classification performance, with the SVM model achieving an AUC of 0.92, accuracy of 85.86%, and sensitivity and specificity both exceeding 0.80. Models based on dFNC also performed well, with the State 3-based model yielding an AUC of 0.91 and accuracy of 84.97%.

Conclusions

Our findings highlight significant alterations in both sFNC and dFNC in CSM patients, suggesting that these connectivity changes may reflect underlying neural mechanisms of the disease. Machine learning models based on FNC features, particularly SVM, exhibit strong potential for classifying CSM patients and may serve as valuable neuroimaging biomarkers for diagnosis and monitoring disease progression. Future research should explore longitudinal studies and multimodal neuroimaging approaches to further validate these findings.
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来源期刊
Journal of Clinical Neuroscience
Journal of Clinical Neuroscience 医学-临床神经学
CiteScore
4.50
自引率
0.00%
发文量
402
审稿时长
40 days
期刊介绍: This International journal, Journal of Clinical Neuroscience, publishes articles on clinical neurosurgery and neurology and the related neurosciences such as neuro-pathology, neuro-radiology, neuro-ophthalmology and neuro-physiology. The journal has a broad International perspective, and emphasises the advances occurring in Asia, the Pacific Rim region, Europe and North America. The Journal acts as a focus for publication of major clinical and laboratory research, as well as publishing solicited manuscripts on specific subjects from experts, case reports and other information of interest to clinicians working in the clinical neurosciences.
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