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意大利版 UPSIT 8 项测试在帕金森病诊断中的筛查性能。

Screening performances of an 8-item UPSIT Italian version in the diagnosis of Parkinson's disease.

机构信息

Department of Medicine, Surgery and Dentistry "Scuola Medica Salernitana", Neuroscience Section, University of Salerno, Via Allende 43, 84081, Baronissi, SA, Italy.

Theoreo srl, Via degli Ulivi 3, 84090, Montecorvino Pugliano, Italy.

出版信息

Neurol Sci. 2023 Mar;44(3):889-895. doi: 10.1007/s10072-022-06457-2. Epub 2022 Nov 19.

Abstract

Hyposmia is a common finding in Parkinson's disease (PD) and is usually tested through the University of Pennsylvania Smell Identification Test (UPSIT). The aim of our study is to provide a briefer version of the Italian-adapted UPSIT test, able to discriminate between PD patients and healthy subjects (HS). By means of several univariate and multivariate (machine-learning-based) statistical approaches, we selected 8 items by which we trained a partial-least-square discriminant analysis (PLS-DA) and a decision tree (DT) model: class predictions of both models performed better with the 8-item version when compared to the 40-item version. An area under the receiver operating characteristic (AUC-ROC) curve built with the selected 8 odors showed the best performance (sensitivity 86.8%, specificity 82%) in predicting the PD condition at a cut-off point of ≤ 6. These performances were higher than those previously calculated for the 40-item UPSIT test (sensitivity 82% and specificity 88.2 % with a cut-off point of ≤ 21). Qualitatively, our selection contains one odor (i.e., apple) which is Italian-specific, supporting the need for cultural adaptation of smell testing; on the other hand, some of the selected best discriminating odors are in common with existing brief smell test versions validated on PD patients of other cultures, supporting the view that disease-specific odor patterns may exist and deserve a further evaluation.

摘要

嗅觉减退是帕金森病(PD)的常见表现,通常通过宾夕法尼亚大学嗅觉识别测试(UPSIT)进行测试。我们的研究目的是提供一个经过意大利语改编的 UPSIT 测试的简短版本,能够区分 PD 患者和健康受试者(HS)。通过多种单变量和多变量(基于机器学习的)统计方法,我们选择了 8 项测试题,并用其训练了偏最小二乘判别分析(PLS-DA)和决策树(DT)模型:与 40 项版本相比,这两个模型的 8 项版本的分类预测性能更好。使用选定的 8 种气味构建的接收器操作特征(ROC)曲线下面积(AUC-ROC)显示,在≤6 的截断点处,预测 PD 状态的性能最佳(敏感性 86.8%,特异性 82%)。这些性能高于以前计算的 40 项 UPSIT 测试的性能(敏感性 82%和特异性 88.2%,截断点≤21)。从定性角度来看,我们的选择包含一种意大利特有的气味(即苹果),支持嗅觉测试的文化适应性的必要性;另一方面,一些选定的最佳区分气味与其他文化的 PD 患者验证的现有简短气味测试版本相同,支持存在特定于疾病的气味模式的观点,值得进一步评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/55fa/9925598/26298c61185c/10072_2022_6457_Fig1_HTML.jpg

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