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MR 定量分析在神经退行性帕金森病中对 PSP 的诊断准确性较高。

MR planimetry in neurodegenerative parkinsonism yields high diagnostic accuracy for PSP.

机构信息

Department of Neurology, Medical University Innsbruck, Innsbruck, Austria; Department of Neuroradiology, Medical University Innsbruck, Innsbruck, Austria.

Department of Neurology, Medical University Innsbruck, Innsbruck, Austria.

出版信息

Parkinsonism Relat Disord. 2018 Jan;46:47-55. doi: 10.1016/j.parkreldis.2017.10.020. Epub 2017 Oct 31.

Abstract

INTRODUCTION

Several previous studies examined different brainstem-derived MR planimetric measures with regards to their diagnostic accuracy in separating patients with neurodegenerative parkinsonian disorders and reported conflicting results. The current study aimed to compare their performance in a well-characterized sample of patients with neurodegenerative parkinsonian disorders.

METHODS

MR planimetric measurements were assessed in a large retrospective cohort of 55 progressive supranuclear palsy (PSP), 194 Parkinson's disease (PD) and 63 multiple system atrophy (MSA) patients. This cohort served as a training set used to build C4.5 decision tree models to discriminate PSP, PD and MSA. The models were validated in two independent test sets. The first test set comprised 84 patients with early, clinically unclassifiable parkinsonism (CUP). A prospective cohort of patients with PSP (n = 23), PD (n = 40) and MSA (n = 22) was exploited as a second test-set.

RESULTS

The pons-to-midbrain diameter ratio, the midbrain diameter, the middle cerebellar peduncle width and the pons area were identified as the most predictive parameters to separate PSP, MSA and PD in C4.5 decision tree models derived from the training set. Using these decision models, AUCs in discriminating PSP, MSA and PD were 0.90, 0.57 and 0.73 in the CUP-cohort and 0.95, 0.61 and 0.87 in the prospective cohort, respectively.

CONCLUSION

We were able to demonstrate that brainstem-derived MR planimetric measures yield high diagnostic accuracy for the discrimination of PSP from related disorders when decision tree algorithms are applied, even at early, clinically uncertain stages. However, their diagnostic accuracy in discriminating PD and MSA was suboptimal.

摘要

介绍

先前有几项研究检查了不同的脑干衍生磁共振平面测量指标,以评估其在区分神经退行性帕金森病患者方面的诊断准确性,结果相互矛盾。本研究旨在比较这些指标在神经退行性帕金森病患者中表现。

方法

对 55 例进行性核上性麻痹(PSP)、194 例帕金森病(PD)和 63 例多系统萎缩(MSA)患者的大量回顾性队列进行磁共振平面测量。该队列作为训练集,用于构建 C4.5 决策树模型以区分 PSP、PD 和 MSA。在两个独立的测试集中验证模型。第一个测试集由 84 例早期、临床无法分类的帕金森病(CUP)患者组成。利用前瞻性 PSP 患者队列(n=23)、PD 患者队列(n=40)和 MSA 患者队列(n=22)作为第二个测试集。

结果

在 C4.5 决策树模型中,桥脑-中脑直径比、中脑直径、小脑中脚宽度和桥脑面积被确定为区分 PSP、MSA 和 PD 的最具预测性参数。使用这些决策模型,在区分 CUP 队列中的 PSP、MSA 和 PD 时,AUC 分别为 0.90、0.57 和 0.73,在前瞻性队列中分别为 0.95、0.61 和 0.87。

结论

我们能够证明,当应用决策树算法时,基于磁共振的脑干平面测量指标对 PSP 与相关疾病的区分具有较高的诊断准确性,即使在早期、临床不确定的阶段也是如此。然而,它们在区分 PD 和 MSA 方面的诊断准确性并不理想。

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