David M Niddam, Kuan-Lin Lai, Yi-Ting Hsiao, Yen-Feng Wang, Shuu-Jiun Wang
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引用次数: 0
Abstract
Background: The visual cortex is involved in the generation of migraine aura. Voxel-based multivariate analyses applied to this region may provide complementary information about aura mechanisms relative to the commonly used mass-univariate analyses.
Methods: Structural images constrained within the functional resting-state visual networks were obtained in migraine patients with (n = 50) and without (n = 50) visual aura and healthy controls (n = 50). The masked images entered a multivariate analysis in which Gaussian process classification was used to generate pairwise models. Generalizability was assessed by five-fold cross-validation and non-parametric permutation tests were used to estimate significance levels. A univariate voxel-based morphometry analysis was also performed.
Results: A multivariate pattern of grey matter voxels within the ventral medial visual network contained significant information related to the diagnosis of migraine with visual aura (aura vs. healthy controls: classification accuracy = 78%, p < 0.001; area under the curve = 0.84, p < 0.001; migraine with aura vs. without aura: classification accuracy = 71%, p < 0.001; area under the curve = 0.73, p < 0.003). Furthermore, patients with visual aura exhibited increased grey matter volume in the medial occipital cortex compared to the two other groups.
Conclusions: Migraine with visual aura is characterized by multivariate and univariate patterns of grey matter changes within the medial occipital cortex that have discriminative power and may reflect pathological mechanisms.
背景:视觉皮层参与了偏头痛先兆的产生。与常用的大规模单变量分析相比,对这一区域进行基于体素的多变量分析可提供有关先兆机制的补充信息:在有先兆视觉的偏头痛患者(50 人)和无先兆视觉的偏头痛患者(50 人)以及健康对照组(50 人)中获得了限制在功能静息态视觉网络内的结构图像。蒙蔽图像进入多变量分析,其中高斯过程分类用于生成成对模型。通过五倍交叉验证评估可推广性,并使用非参数置换检验来估计显著性水平。此外,还进行了基于体素的单变量形态计量分析:结果:腹内侧视觉网络中灰质体素的多变量模式包含与诊断视觉先兆性偏头痛相关的重要信息(先兆与健康对照:分类准确率=78%,p p p p 结论:偏头痛伴视觉先兆的特征是内侧枕叶皮层灰质变化的多变量和单变量模式,这些变化具有鉴别力,可能反映了病理机制。
期刊介绍:
Cephalalgia contains original peer reviewed papers on all aspects of headache. The journal provides an international forum for original research papers, review articles and short communications. Published monthly on behalf of the International Headache Society, Cephalalgia''s rapid review averages 5 ½ weeks from author submission to first decision.