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Whole-brain connectivity analysis and classification of spinocerebellar ataxia type 7 by functional MRI

机译:功能性MRI对7型脊髓小脑性共济失调的全脑连接性分析和分类

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BackgroundSpinocerebellar ataxia type 7 (SCA7) is a genetic disorder characterized by degeneration of the motor and visual systems. Besides neural deterioration, these patients also show functional connectivity changes linked to the degenerated brain areas. However, it is not known if there are functional connectivity changes in regions not necessarily linked to the areas undergoing structural deterioration. Therefore, in this study we have explored the whole-brain functional connectivity of SCA7 patients in order to find the overall abnormal functional pattern of this disease. Twenty-six patients and age-and-gender-matched healthy controls were recruited. Whole-brain functional connectivity analysis was performed in both groups. A classification algorithm was used to find the discriminative power of the abnormal connections by classifying patients and healthy subjects. ResultsNineteen abnormal functional connections involving cerebellar and cerebral regions were selected for the classification stage. Support vector machine classification reached 92.3% accuracy with 95% sensitivity and 89.6% specificity using a 10-fold cross-validation. Most of the selected regions were well known degenerated brain regions including cerebellar and visual cortices, but at the same time, our whole-brain connectivity analysis revealed new regions not previously reported involving temporal and prefrontal cortices. ConclusionOur whole-brain connectivity approach provided information that seed-based analysis missed due to its region-specific searching method. The high classification accuracy suggests that using resting state functional connectivity may be a useful biomarker in SCA 7.
机译:背景脊髓小脑共济失调7型(SCA7)是一种遗传性疾病,其特征是运动和视觉系统退化。除了神经退化之外,这些患者还显示出与大脑退化区域相关的功能连接改变。但是,并不一定在不一定与经历结构恶化的区域相关联的区域中存在功能连通性变化。因此,在这项研究中,我们探索了SCA7患者的全脑功能连通性,以发现该疾病的整体异常功能模式。招募了26名患者和年龄和性别匹配的健康对照者。两组均进行全脑功能连接性分析。通过对患者和健康受试者进行分类,使用分类算法来发现异常连接的判别力。结果选择了19个涉及小脑和大脑区域的异常功能连接进行分类。使用10倍交叉验证,支持向量机分类达到92.3%的准确度,95%的灵敏度和89.6%的特异性。大部分选定区域是众所周知的退化的大脑区域,包括小脑和视觉皮层,但与此同时,我们的全脑连通性分析显示,以前没有报道过涉及颞叶和前额叶皮层的新区域。结论我们的全脑连接方法提供了基于种子的分析所缺少的信息,因为该分析基于特定区域的搜索方法。较高的分类准确性表明,在SCA 7中使用静态功能连接可能是有用的生物标记。

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