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基于静息态功能连接对轻度残疾多发性硬化症患者进行分类。

Classifying minimally disabled multiple sclerosis patients from resting state functional connectivity.

机构信息

Department of Radiology and Medical Informatics, University of Geneva, Geneva, Switzerland.

出版信息

Neuroimage. 2012 Sep;62(3):2021-33. doi: 10.1016/j.neuroimage.2012.05.078. Epub 2012 Jun 5.

Abstract

Multiple sclerosis (MS), a variable and diffuse disease affecting white and gray matter, is known to cause functional connectivity anomalies in patients. However, related studies published to-date are post hoc; our hypothesis was that such alterations could discriminate between patients and healthy controls in a predictive setting, laying the groundwork for imaging-based prognosis. Using functional magnetic resonance imaging resting state data of 22 minimally disabled MS patients and 14 controls, we developed a predictive model of connectivity alterations in MS: a whole-brain connectivity matrix was built for each subject from the slow oscillations (<0.11 Hz) of region-averaged time series, and a pattern recognition technique was used to learn a discriminant function indicating which particular functional connections are most affected by disease. Classification performance using strict cross-validation yielded a sensitivity of 82% (above chance at p<0.005) and specificity of 86% (p<0.01) to distinguish between MS patients and controls. The most discriminative connectivity changes were found in subcortical and temporal regions, and contralateral connections were more discriminative than ipsilateral connections. The pattern of decreased discriminative connections can be summarized post hoc in an index that correlates positively (ρ=0.61) with white matter lesion load, possibly indicating functional reorganisation to cope with increasing lesion load. These results are consistent with a subtle but widespread impact of lesions in white matter and in gray matter structures serving as high-level integrative hubs. These findings suggest that predictive models of resting state fMRI can reveal specific anomalies due to MS with high sensitivity and specificity, potentially leading to new non-invasive markers.

摘要

多发性硬化症(MS)是一种影响白质和灰质的多变且弥漫性疾病,已知会导致患者的功能连接异常。然而,迄今为止发表的相关研究都是事后分析;我们的假设是,在预测性环境中,这些改变可以区分患者和健康对照者,为基于成像的预后奠定基础。使用 22 名轻度残疾 MS 患者和 14 名对照者的功能磁共振成像静息状态数据,我们开发了一种 MS 连接改变的预测模型:为每个受试者构建了一个基于区域平均时间序列慢振荡(<0.11 Hz)的全脑连接矩阵,并使用模式识别技术来学习一个判别函数,指示哪些特定的功能连接受疾病影响最大。使用严格的交叉验证的分类性能产生了 82%的敏感性(高于机会,p<0.005)和 86%的特异性(p<0.01),以区分 MS 患者和对照者。在皮质下和颞叶区域发现了最具判别力的连接变化,并且对侧连接比同侧连接更具判别力。在一个与白质病变负荷呈正相关(ρ=0.61)的指数中,可以总结出后发性降低的判别性连接模式,这可能表明为了应对病变负荷的增加而进行了功能重组。这些结果与病变在白质和灰质结构中具有微妙但广泛影响的观点一致,这些结构作为高级整合枢纽。这些发现表明,静息态 fMRI 的预测模型可以以高灵敏度和特异性揭示特定的 MS 异常,可能导致新的非侵入性标志物。

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