Deep Transfer Learning for Parkinson's Disease Monitoring by Image-Based Representation of Resting-State EEG Using Directional Connectivity

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Algorithms Pub Date : 2021-12-24 DOI:10.3390/a15010005
E. Arasteh, Ailar Mahdizadeh, M. Mirian, Soojin Lee, M. McKeown
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引用次数: 10

Abstract

Parkinson’s disease (PD) is characterized by abnormal brain oscillations that can change rapidly. Tracking neural alternations with high temporal resolution electrophysiological monitoring methods such as EEG can lead to valuable information about alterations observed in PD. Concomitantly, there have been advances in the high-accuracy performance of deep neural networks (DNNs) using few-patient data. In this study, we propose a method to transform resting-state EEG data into a deep latent space to classify PD subjects from healthy cases. We first used a general orthogonalized directed coherence (gOPDC) method to compute directional connectivity (DC) between all pairwise EEG channels in four frequency bands (Theta, Alpha, Beta, and Gamma) and then converted the DC maps into 2D images. We then used the VGG-16 architecture (trained on the ImageNet dataset) as our pre-trained model, enlisted weights of convolutional layers as initial weights, and fine-tuned all layer weights with our data. After training, the classification achieved 99.62% accuracy, 100% precision, 99.17% recall, 0.9958 F1 score, and 0.9958 AUC averaged for 10 random repetitions of training/evaluating on the proposed deep transfer learning (DTL) network. Using the latent features learned by the network and employing LASSO regression, we found that latent features (as opposed to the raw DC values) were significantly correlated with five clinical indices routinely measured: left and right finger tapping, left and right tremor, and body bradykinesia. Our results demonstrate the power of transfer learning and latent space derivation for the development of oscillatory biomarkers in PD.
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深度迁移学习用于帕金森病监测——基于方向连通性的静息状态脑电图像表示
帕金森病(PD)的特征是大脑异常振荡,这种振荡可以迅速改变。使用高时间分辨率的电生理监测方法(如EEG)跟踪神经变化可以获得有关PD变化的有价值信息。与此同时,使用少量患者数据的深度神经网络(DNN)在高精度性能方面取得了进展。在这项研究中,我们提出了一种将静息状态脑电图数据转换为深层潜在空间的方法,以从健康病例中对帕金森病受试者进行分类。我们首先使用通用正交定向相干(gOPDC)方法来计算四个频带(Theta、Alpha、Beta和Gamma)中所有成对EEG通道之间的定向连接性(DC),然后将DC图转换为2D图像。然后,我们使用VGG-16架构(在ImageNet数据集上训练)作为我们的预训练模型,将卷积层的权重作为初始权重,并用我们的数据微调所有层的权重。训练后,在所提出的深度迁移学习(DTL)网络上,对10次随机重复的训练/评估,该分类实现了99.62%的准确率、100%的准确度、99.17%的召回率、0.9958的F1得分和0.9958的AUC平均值。使用网络学习的潜在特征并使用LASSO回归,我们发现潜在特征(与原始DC值相反)与常规测量的五个临床指标显著相关:左手和右手手指敲击、左右震颤和身体运动迟缓。我们的研究结果证明了迁移学习和潜在空间推导在帕金森病振荡生物标志物开发中的作用。
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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