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Accuracy to Differentiate Mild Cognitive Impairment in Parkinson's Disease Using Cortical Features

机译:利用皮层特征区分帕金森氏病轻度认知障碍的准确性

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Mild cognitive impairment (MCI) is common in Parkinson's Disease (PD) patients and it is key to predict the development of dementia. There is not report of discriminant accuracy for MCI using based-surface cortical morphometry. This study used Cortical-Thickness (CT) combined to Local-Gyrification-Index (LGI) to assess discriminant accuracy for MCI stages in PD. Sixty-four patients with idiopathic PD and nineteen healthy controls (HC) were analyzed. CT and LGI were estimated using Freesurfer software. Principal Component Analysis and Lineal Discriminant Analysis (LDA) assuming a common diagonal co-variance matrix (or Naive-Bayes classifier) was used with cross-validation leave-one-subject-out scheme. Accuracy, sensibility and specificity were reported to different classification analysis. CT combined to LGI limited revealed the best discrimination with accuracy of 82,98%, sensitivity of 85.71% and specificity of 80.77%. A validation process using independent and more heterogeneous data set and further longitudinal studies, are necessary to confirm our results.
机译:轻度认知障碍(MCI)在帕金森氏病(PD)患者中很常见,这是预测痴呆症发展的关键。没有报道使用基于表面的皮层形态计量学判别MCI的准确性。这项研究使用皮质厚度(CT)结合局部回旋指数(LGI)来评估PD中MCI分期的判别准确性。分析了64例特发性PD患者和19例健康对照(HC)。使用Freesurfer软件估算CT和LGI。假设使用共同的对角协方差矩阵(或朴素贝叶斯分类器)的主成分分析和线性判别分析(LDA)与交叉验证留一对象方案一起使用。准确性,敏感性和特异性已报告给不同的分类分析。 CT与LGI limited的结合显示出最好的区分度,准确度为82.98%,敏感性为85.71%,特异性为80.77%。使用独立的,更异构的数据集以及进一步的纵向研究进行验证的过程对于确认我们的结果是必要的。

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