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基于非运动症状和结构神经影像学对伴有和不伴有多巴胺能缺乏的帕金森病进行分类。

Classification of Parkinson's disease with and without dopaminergic deficiency based on non-motor symptoms and structural neuroimaging.

作者信息

Ronat Lucas, Rainville Pierre, Monchi Oury, Hanganu Alexandru

机构信息

Centre de Recherche de l'Institut Universitaire de Gériatrie de Montréal, M7820, 4545 ch. Queen Mary, H3W 1W6, Montréal, QC, Canada.

Faculté de Médecine, Département de Médecine, Université de Montréal, Montréal, QC, Canada.

出版信息

Neurol Sci. 2025 Jun;46(6):2611-2625. doi: 10.1007/s10072-025-08045-6. Epub 2025 Feb 19.

Abstract

The presence of non-motor symptoms (NMS) such as olfactive deficit or neuropsychiatric symptoms has been associated with the diagnosis of Parkinson's Disease (PD). NMS are also associated with different brain structural features underlying distinctive processes in PD. NMS has been poorly studied in patients with a PD-like clinical profile, showing Scans Without Evidence of Dopaminergic Deficit (SWEDD). This study proposes to compare classification models differentiating PD, SWEDD and Healthy Controls (HC) based on NMS and neurostructural factors. 683 participants (382 PD diagnosed in the last 2 years, 48 with SWEDD, 170 HC) from the PPMI dataset were compared based on available assessments. Each participant underwent an olfactive, neuropsychiatric and sleep assessment, and a 3T MRI. Brain volumes were extracted and standardized from each MRI. Classifications were based on logistic regressions using 5-fold cross-validation models combining different NMS and MRI data and determining their involvement in differentiation between patient subgroups (PD vs. SWEDD) or between patients and HC. NMS were significant factors in PD vs. SWEDD, PD vs. HC and SWEDD vs. HC classifiers, when considered alone or in combination with MRI data. No classification models were significantly different from chance based-on MRI, nor more accurate combining NMS and MRI when compared with models based on NMS only. These results highlight the importance of NMS in differentiating between PD and SWEDD, PD and HC, SWEDD and HC. However, classical imaging data such as cortical and subcortical volumetry seems insufficient to improve these classifications. Other imaging features such as connectivity could also be studied.

摘要

嗅觉减退或神经精神症状等非运动症状(NMS)的存在与帕金森病(PD)的诊断相关。NMS还与PD中不同独特过程背后的不同脑结构特征相关。在具有帕金森病样临床特征且多巴胺能缺陷扫描无证据(SWEDD)的患者中,对NMS的研究较少。本研究旨在比较基于NMS和神经结构因素区分PD、SWEDD和健康对照(HC)的分类模型。基于现有的评估,对来自PPMI数据集的683名参与者(382名在过去2年中诊断为PD的患者、48名SWEDD患者、170名HC)进行了比较。每位参与者都接受了嗅觉、神经精神和睡眠评估以及3T磁共振成像(MRI)检查。从每个MRI中提取并标准化脑容量。分类基于逻辑回归,使用5折交叉验证模型,结合不同的NMS和MRI数据,并确定它们在区分患者亚组(PD与SWEDD)或患者与HC之间的作用。单独考虑或与MRI数据结合时,NMS在PD与SWEDD、PD与HC以及SWEDD与HC分类器中都是显著因素。基于MRI的分类模型与随机分类无显著差异,与仅基于NMS的模型相比,将NMS和MRI结合使用时也没有更准确。这些结果突出了NMS在区分PD与SWEDD、PD与HC、SWEDD与HC方面的重要性。然而,诸如皮质和皮质下容积测量等经典成像数据似乎不足以改善这些分类。其他成像特征如连通性也可以进行研究。

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