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Automatic classification of patients with idiopathic Parkinson's disease and progressive supranuclear palsy using diffusion MRI datasets

机译:使用扩散MRI数据集自动分类特发性帕金森病和进步性激矩麻痹

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Parkinsonian syndromes encompass a spectrum of neurodegenerative diseases, which can be classified into various subtypes. The differentiation of these subtypes is typically conducted based on clinical criteria. Due to the overlap of intra-syndrome symptoms, the accurate differential diagnosis based on clinical guidelines remains a challenge with failure rates up to 25%. The aim of this study is to present an image-based classification method of patients with Parkinson's disease (PD) and patients with progressive supranuclear palsy (PSP), an atypical variant of PD. Therefore, apparent diffusion coefficient (ADC) parameter maps were calculated based on diffusion-tensor magnetic resonance imaging (MRI) datasets. Mean ADC values were determined in 82 brain regions using an atlas-based approach. The extracted mean ADC values for each patient were then used as features for classification using a linear kernel support vector machine classifier. To increase the classification accuracy, a feature selection was performed, which resulted in the top 17 attributes to be used as the final input features. A leave-one-out cross validation based on 56 PD and 21 PSP subjects revealed that the proposed method is capable of differentiating PD and PSP patients with an accuracy of 94.8%. In conclusion, the classification of PD and PSP patients based on ADC features obtained from diffusion MRI datasets is a promising new approach for the differentiation of Parkinsonian syndromes in the broader context of decision support systems.
机译:Parkinsonian综合症包括一种神经变性疾病的光谱,可分为各种亚型。通常基于临床标准进行这些亚型的分化。由于综合征症状的重叠,基于临床指南的准确差异诊断仍然是失败率高达25%的挑战。本研究的目的是提出一种基于图像的患者的分类方法,帕金森病(PD)和患有患者的患者的患者,PD的非典型变体。因此,基于扩散张量磁共振成像(MRI)数据集来计算表观扩散系数(ADC)参数映射。使用基于地图集的方法在82个脑区中测定平均ADC值。然后使用线性内核支持向量机分类器将每个患者的提取平均ADC值用作分类的特征。为了提高分类准确性,执行了一个特征选择,这导致了最终输入特征的前17个属性。基于56 PD和21个PSP主题的休假交叉验证揭示了所提出的方法能够区分Pd和PSP患者的精度为94.8%。总之,基于扩散MRI数据集获得的ADC特征的Pd和PSP患者的分类是在决策支持系统的更广泛的背景下为帕金森综合征分化的有希望的新方法。

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