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Automated High Accuracy Classification of Parkinsonian Disorders: A Pattern Recognition Approach

机译:帕金森氏症的自动高精度分类:一种模式识别方法

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摘要

Progressive supranuclear palsy (PSP), multiple system atrophy (MSA) and idiopathic Parkinson’s disease (IPD) can be clinically indistinguishable, especially in the early stages, despite distinct patterns of molecular pathology. Structural neuroimaging holds promise for providing objective biomarkers for discriminating these diseases at the single subject level but all studies to date have reported incomplete separation of disease groups. In this study, we employed multi-class pattern recognition to assess the value of anatomical patterns derived from a widely available structural neuroimaging sequence for automated classification of these disorders. To achieve this, 17 patients with PSP, 14 with IPD and 19 with MSA were scanned using structural MRI along with 19 healthy controls (HCs). An advanced probabilistic pattern recognition approach was employed to evaluate the diagnostic value of several pre-defined anatomical patterns for discriminating the disorders, including: (i) a subcortical motor network; (ii) each of its component regions and (iii) the whole brain. All disease groups could be discriminated simultaneously with high accuracy using the subcortical motor network. The region providing the most accurate predictions overall was the midbrain/brainstem, which discriminated all disease groups from one another and from HCs. The subcortical network also produced more accurate predictions than the whole brain and all of its constituent regions. PSP was accurately predicted from the midbrain/brainstem, cerebellum and all basal ganglia compartments; MSA from the midbrain/brainstem and cerebellum and IPD from the midbrain/brainstem only. This study demonstrates that automated analysis of structural MRI can accurately predict diagnosis in individual patients with Parkinsonian disorders, and identifies distinct patterns of regional atrophy particularly useful for this process.
机译:尽管分子病理学模式不同,但进展期核上性麻痹(PSP),多系统萎缩(MSA)和特发性帕金森氏病(IPD)在临床上是无法区分的,尤其是在早期。结构神经影像学有望为在单个受试者水平上区分这些疾病提供客观的生物标志物,但迄今为止所有研究均报告了疾病组的不完全分离。在这项研究中,我们采用了多类模式识别来评估源自广泛可用的结构神经影像序列的解剖模式的价值,以对这些疾病进行自动分类。为实现这一目标,使用结构性MRI和19位健康对照(HCs)对17例PSP,14例IPD和19例MSA进行了扫描。一种先进的概率模式识别方法被用来评估几种预定义的解剖模式以鉴别疾病的诊断价值,包括:(i)皮层下运动网络; (ii)其每个组成区域,以及(iii)整个大脑。使用皮层下运动网络可以高度准确地同时区分所有疾病组。总体上提供最准确预测的区域是中脑/脑干,该区域将所有疾病组彼此区分,也将HCs与其他疾病区分开。皮层下网络还比整个大脑及其所有组成区域产生了更准确的预测。从中脑/脑干,小脑和所有基底神经节区室可以准确预测PSP。仅来自中脑/脑干和小脑的MSA和来自中脑/脑干的IPD。这项研究表明,结构MRI的自动分析可以准确预测帕金森病患者的诊断,并且可以识别出对这一过程特别有用的不同区域萎缩模式。

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