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Multivariate pattern analysis reveals subtle brain anomalies relevant to the cognitive phenotype in neurofibromatosis type 1

机译:多元模式分析显示与1型神经纤维瘤病的认知表型有关的细微大脑异常

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Neurofibromatosis Type 1 (NF1) is a common genetic condition associated with cognitive dysfunction. However, the pathophysiology of the NF1 cognitive deficits is not well understood. Abnormal brain structure, including increased total brain volume, white matter (WM) and grey matter (GM) abnormalities have been reported in the NF1 brain. These previous studies employed univariate model-driven methods preventing detection of subtle and spatially distributed differences in brain anatomy. Multivariate pattern analysis allows the combination of information from multiple spatial locations yielding a discriminative power beyond that of single voxels. Here we investigated for the first time subtle anomalies in the NF1 brain, using a multivariate data-driven classification approach. We used support vector machines (SVM) to classify whole-brain GM and WM segments of structural T1-weighted MRI scans from 39 participants with NF1 and 60 non-affected individuals, divided in children/adolescents and adults groups. We also employed voxel-based morphometry (VBM) as a univariate gold standard to study brain structural differences. SVM classifiers correctly classified 94% of cases (sensitivity 92%; specificity 96%) revealing the existence of brain structural anomalies that discriminate NF1 individuals from controls. Accordingly, VBM analysis revealed structural differences in agreement with the SVM weight maps representing the most relevant brain regions for group discrimination. These included the hippocampus, basal ganglia, thalamus, and visual cortex. This multivariate data-driven analysis thus identified subtle anomalies in brain structure in the absence of visible pathology. Our results provide further insight into the neuroanatomical correlates of known features of the cognitive phenotype of NF1. Hum Brain Mapp 35:89-106, 2014.
机译:1型神经纤维瘤病(NF1)是与认知功能障碍相关的常见遗传疾病。但是,NF1认知缺陷的病理生理学还不十分清楚。据报道,NF1脑中的大脑结构异常,包括总脑容量增加,白质(WM)和灰质(GM)异常。这些先前的研究采用单变量模型驱动的方法来防止检测大脑解剖结构中细微和空间分布的差异。多元模式分析允许组合来自多个空间位置的信息,从而产生超过单个体素的判别力。在这里,我们首次使用多元数据驱动的分类方法研究了NF1脑中的细微异常。我们使用支持向量机(SVM)对来自39名NF1参与者和60名未受影响的个体(分为儿童/青少年和成人)的T1加权MRI扫描的全脑GM和WM部分进行分类。我们还采用基于体素的形态计量学(VBM)作为单变量金标准来研究大脑结构差异。 SVM分类器正确分类了94%的病例(敏感度为92%;特异性为96%),揭示出存在区分NF1个体与对照组的脑结构异常。因此,VBM分析揭示了与代表群体歧视最相关的大脑区域的SVM权重图一致的结构差异。这些包括海马,基底神经节,丘脑和视觉皮层。因此,这种多变量数据驱动的分析可以在没有可见病理的情况下识别出大脑结构中的细微异常。我们的结果提供了进一步深入了解NF1认知表型的已知特征的神经解剖学相关性。嗡嗡声大脑地图35:89-106,2014。

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