摘要
目的:这项概念验证研究评估了将机器学习技术应用于来自静息状态脑电图 (rsEEG) 节律(判别传感器功率,19 个电极)和源连接(五个皮层感兴趣区域之间)的数据是否允许区分在 DLB 和 AD 之间。 方法:来自 DLB 患者(N=30)、AD 患者(N=30)和对照老年人(NOld,N=30)的临床、人口统计和 rsEEG 数据集,年龄、性别和教育程度相匹配,取自我们的国际数据库。包括单个(delta、theta、alpha)和固定(beta)rsEEG 频带。分类任务的 rsEEG 特征是在传感器和源级别上计算的。源级别基于 eLORETA 免费软件工具箱,用于估计皮质源活动和线性滞后连接。 rsEEG 记录的波动(每个 EEG 节律的带通波形包络)也在传感器和源水平上进行了计算。在减少盲特征后,rsEEG 特征作为支持向量机 (SVM) 分类器的输入。用标准性能指标(准确性、敏感性和特异性)衡量对三组个体的歧视。 结果:经过训练的 SVM 两类分类器显示,NOld 与 AD 的分类准确率为 97.6%,NOld 与 DLB 的分类准确率为 99.7%,AD 与 DLB 的分类准确率为 97.8%。三类分类器(AD vs. DLB vs. NOld)的分类准确率为 94.79%。结论:这些有希望的初步结果应鼓励未来使用更高分辨率 EEG 技术和协调临床程序进行前瞻性和纵向交叉验证研究,以实现这些机器学习技术的临床应用。
关键词: 阿尔茨海默病、路易体痴呆、EEG 源连接、LORETA、机器学习、特征选择。
Current Alzheimer Research
Title:Classification of Patients with Alzheimer’s Disease and Dementia with Lewy Bodies using Resting EEG Selected Features at Sensor and Source Levels: A Proof-of-Concept Study
Volume: 18 Issue: 12
关键词: 阿尔茨海默病、路易体痴呆、EEG 源连接、LORETA、机器学习、特征选择。
摘要:
Background: Early differentiation between Alzheimer’s disease (AD) and Dementia with Lewy Bodies (DLB) is important for accurate prognosis, as DLB patients typically show faster disease progression. Cortical neural networks, necessary for human cognitive function, may be disrupted differently in DLB and AD patients, allowing diagnostic differentiation between AD and DLB.
Objective: This proof-of-concept study assessed whether the application of machine learning techniques to data derived from resting-state electroencephalographic (rsEEG) rhythms (discriminant sensor power, 19 electrodes) and source connectivity (between five cortical regions of interest) allowed differentiation between DLB and AD.
Methods: Clinical, demographic, and rsEEG datasets from DLB patients (N=30), AD patients (N=30), and control seniors (NOld, N=30), matched for age, sex, and education, were taken from our international database. Individual (delta, theta, alpha) and fixed (beta) rsEEG frequency bands were included. The rsEEG features for the classification task were computed at both sensor and source levels. The source level was based on eLORETA freeware toolboxes for estimating cortical source activity and linear lagged connectivity. Fluctuations of rsEEG recordings (band-pass waveform envelopes of each EEG rhythm) were also computed at both sensor and source levels. After blind feature reduction, rsEEG features served as input to support vector machine (SVM) classifiers. Discrimination of individuals from the three groups was measured with standard performance metrics (accuracy, sensitivity, and specificity).
Results: The trained SVM two-class classifiers showed classification accuracies of 97.6% for NOld vs. AD, 99.7% for NOld vs. DLB, and 97.8% for AD vs. DLB. Three-class classifiers (AD vs. DLB vs. NOld) showed classification accuracy of 94.79%.
Conclusion: These promising preliminary results should encourage future prospective and longitudinal cross-validation studies using higher resolution EEG techniques and harmonized clinical procedures to enable the clinical application of these machine learning techniques.
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Cite this article as:
Classification of Patients with Alzheimer’s Disease and Dementia with Lewy Bodies using Resting EEG Selected Features at Sensor and Source Levels: A Proof-of-Concept Study, Current Alzheimer Research 2021; 18 (12) . https://dx.doi.org/10.2174/1567205018666211027143944
DOI https://dx.doi.org/10.2174/1567205018666211027143944 |
Print ISSN 1567-2050 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-5828 |
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