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基于睡眠脑电图的深度学习对帕金森病患者轻度认知障碍的检测。

Deep-learning detection of mild cognitive impairment from sleep electroencephalography for patients with Parkinson's disease.

机构信息

Electrical and Computer Engineering, University of South Alabama, Mobile, Alabama, United States of America.

Movement Disorders Center, University of Colorado, Aurora, Colorado, United States of America.

出版信息

PLoS One. 2023 Aug 3;18(8):e0286506. doi: 10.1371/journal.pone.0286506. eCollection 2023.

Abstract

Parkinson's disease which is the second most prevalent neurodegenerative disorder in the United States is a serious and complex disease that may progress to mild cognitive impairment and dementia. The early detection of the mild cognitive impairment and the identification of its biomarkers is crucial to support neurologists in monitoring the progression of the disease and allow an early initiation of effective therapeutic treatments that will improve the quality of life for the patients. In this paper, we propose the first deep-learning based approaches to detect mild cognitive impairment in the sleep Electroencephalography for patients with Parkinson's disease and further identify the discriminative features of the disease. The proposed frameworks start by segmenting the sleep Electroencephalography time series into three sleep stages (i.e., two non-rapid eye movement sleep-stages and one rapid eye movement sleep stage), further transforming the segmented signals in the time-frequency domain using the continuous wavelet transform and the variational mode decomposition and finally applying novel convolutional neural networks on the time-frequency representations. The gradient-weighted class activation mapping was also used to visualize the features based on which the proposed deep-learning approaches reached an accurate prediction of mild cognitive impairment in Parkinson's disease. The proposed variational mode decomposition-based model offered a superior accuracy, sensitivity, specificity, area under curve, and quadratic weighted Kappa score, all above 99% as compared with the continuous wavelet transform-based model (that achieved a performance that is almost above 92%) in differentiating mild cognitive impairment from normal cognition in sleep Electroencephalography for patients with Parkinson's disease. In addition, the features attributed to the mild cognitive impairment in Parkinson's disease were demonstrated by changes in the middle and high frequency variational mode decomposition components across the three sleep-stages. The use of the proposed model on the time-frequency representation of the sleep Electroencephalography signals will provide a promising and precise computer-aided diagnostic tool for detecting mild cognitive impairment and hence, monitoring the progression of Parkinson's disease.

摘要

帕金森病是美国第二大常见的神经退行性疾病,是一种严重且复杂的疾病,可能会发展为轻度认知障碍和痴呆。早期发现轻度认知障碍并识别其生物标志物对于支持神经科医生监测疾病进展、尽早开始有效的治疗非常重要,从而提高患者的生活质量。在本文中,我们提出了第一个基于深度学习的方法,用于检测帕金森病患者睡眠脑电图中的轻度认知障碍,并进一步识别疾病的有区别特征。所提出的框架首先将睡眠脑电图时间序列分割成三个睡眠阶段(即两个非快速眼动睡眠阶段和一个快速眼动睡眠阶段),然后使用连续小波变换和变分模态分解进一步将分段信号转换到时频域,最后在时频表示上应用新型卷积神经网络。还使用梯度加权类激活映射来可视化基于这些特征的深度学习方法,这些方法实现了对帕金森病轻度认知障碍的准确预测。与基于连续小波变换的模型(性能几乎超过 92%)相比,基于变分模态分解的模型在区分帕金森病患者睡眠脑电图中的轻度认知障碍与正常认知方面提供了更高的准确性、敏感性、特异性、曲线下面积和二次加权 Kappa 评分,均超过 99%。此外,通过在三个睡眠阶段中改变中高频变分模态分解分量,证明了帕金森病轻度认知障碍的特征。该模型在睡眠脑电图信号的时频表示上的应用将为检测轻度认知障碍提供一种有前景且精确的计算机辅助诊断工具,从而监测帕金森病的进展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a61c/10399849/b1de6ba2e87b/pone.0286506.g001.jpg

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