认知任务中高密度脑电图的深度学习将帕金森病患者与健康对照组区分开来。

IF 3.8
Yves Denoyer, Joan Duprez, Jean-François Houvenaghel, Fabrice Wendling, Pascal Benquet
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引用次数: 0

摘要

目的:帕金森病(PD)是一种以运动和非运动症状为特征的神经退行性疾病,包括认知障碍。它的诊断,过去是基于临床评估,越来越依赖于生物标志物。虽然脑电图(EEG)生物标志物仍处于实验阶段,但它们已经使用深度学习模型进行了研究。我们的目的是确定认知任务是否可以通过激活受疾病影响的皮质区域来提高基于脑电图的疾病检测的准确性。 ;方法 ;我们训练了一个深度学习模型,根据PD患者的高密度脑电图记录来区分PD患者和对照组。以前的研究采用了一系列预处理技术、模型,主要是静息状态脑电图。我们还研究了不同的网络结构和超参数,以及空间和时间分辨率的作用。主要结果最佳模型在认知任务脑电数据集上的分类准确率为83%,在静息状态脑电数据集上的分类准确率为76%。敏感性分析表明,该模型主要利用认知任务条件下脑电图的特定时间和空间成分,与静息状态不同。意义 ;我们的研究结果表明,认知任务激活的皮层揭示了脑电图特征,这些特征可以有效区分PD和对照组。这些特征可以被模型利用,从而提高其诊断的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning on high-density EEG during a cognitive task distinguishes patients with Parkinson's disease from healthy controls.

Objective.Parkinson's disease (PD) is a neurodegenerative disorder characterized by motor and non-motor symptoms, including cognitive impairment. Its diagnosis, which used to be based on clinical assessment, increasingly relies on biomarkers. While electroencephalography (EEG) biomarkers are still at an experimental stage, they have been studied using deep learning (DL) models. Our aim was to determine whether a cognitive task could improve the accuracy of EEG-based disease detection by activating cortical regions affected by the disease.Approach. We trained a DL model to discriminate PD patients from controls based on their high-density EEG recordings. Previous studies have employed a range of preprocessing techniques, models and, predominantly, resting state (RS) EEG. We also investigated different network architectures and hyperparameters, and the role of spatial and temporal resolution.Main results. The best model gave a classification accuracy of 83% on the cognitive task EEG dataset and 76% on the RS EEG dataset. Sensitivity analysis indicated that the model predominantly uses specific temporal and spatial components of the EEG in the cognitive task condition, differing from the RS.Significance. Our results suggest that cortical activation by the cognitive task unveils EEG features that are effective in distinguishing between PD and controls. These features can be used by the model, thereby improving its diagnostic accuracy.

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