首页> 外文期刊>Neuroscience: An International Journal under the Editorial Direction of IBRO >Local White Matter Fiber Clustering Differentiates Parkinson's Disease Diagnoses
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Local White Matter Fiber Clustering Differentiates Parkinson's Disease Diagnoses

机译:当地白质纤维聚类区分帕金森病的疾病诊断

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摘要

Scans without evidence of dopaminergic deficit (SWEDD) patients are often misdiagnosed with Parkinson's disease (PD) but have normal dopamine transporter scans. We hypothesised that white matter tracts associated with motor and cognition functions may be affected differently by SWEDD and PD. Automatically annotated fibre clustering (AAFC) is a novel clustering method based on diffusion magnetic resonance imaging (dMRI) tractography that enables highly robust reconstruction of white matter tracts that are composed of corresponding clusters. This study aimed to investigate the white matter properties in the subdivisions of white matter tracts among SWEDD and PD groups. We applied AAFC to identify white matter tracts related to motion and cognition functions in the dataset consisting of SWEDD (n= 22), PD (n= 30) and normal control (NC) (n = 30). Then, we resampled 200 nodes along fibres of cluster, and the diffusion metric values corresponding to each node were calculated and used for comparison. Compared with NC, PD showed significant difference (p< 0.05) in two clusters in thalamo-frontal (TF), one cluster in thalamo-parietal (TP) and one cluster in thalamo-occipital (TO), whereas SWEDD presented no significant difference. Three clusters in cingulum bundle (CB) commonly exhibited significant differences in PD versus SWEDD and NC versus SWEDD. The support vector machine classifier achieved high accuracies in PD-NC, PD-SWEDD and NC-SWEDD classifications. This outcome validated these local white matter differences were useful to separate the three groups. These results suggest that PD exerts more significant effects on thalamo tracts than SWEDD, and unique microstructural changes occur in CB tract in SWEDD. (C) 2020 IBRO. Published by Elsevier Ltd. All rights reserved.
机译:没有多巴胺能缺陷(SWEDD)患者的扫描常用于帕金森病(Pd)误诊,但具有正常的多巴胺转运蛋白扫描。我们假设与电动机和认知功能相关的白质子可能因瑞典语和PD而受到不同的影响。自动注释的光纤聚类(AAFC)是一种基于扩散磁共振成像(DMRI)牵引的新型聚类方法,其能够高稳健地重建由相应的簇组成的白质。本研究旨在探讨瑞典语和Pd组白质椎间片细分的白质。我们应用AAFC识别与由SWEDD(n = 22),PD(n = 30)和正常控制(n = 30)组成的数据集中的与运动和认知函数相关的白质子沟相关。然后,我们沿集群的纤维重新采样200节点,并且计算与每个节点对应的扩散度量值进行比较。与NC相比,PD在丘脑 - 前(TF)中的两种簇中显示出显着差异(P <0.05),其中一个簇中的Thalamo-Parietal(TP)和Thalamo-ocmivital(To)中的一个簇,而瑞典则没有显着差异。 Cingulum Bundle(CB)中的三个集群通常在PD与瑞典语和NC与瑞典语与瑞典语相似的显着差异。支持向量机分类器在PD-NC,PD-SWEDD和NC-SWEDD分类中实现了高精度。这一结果验证了这些当地白质差异可用于分离三组。这些结果表明,PD对硫化的菌条施加更大的影响而不是瑞典语,并且在瑞典德的CB道中发生独特的微观结构变化。 (c)2020年度IBRO。 elsevier有限公司出版。保留所有权利。

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