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数据增强对用于自动检测光发性反应的高度不平衡 EEG 数据集的影响。

Data Augmentation Effects on Highly Imbalanced EEG Datasets for Automatic Detection of Photoparoxysmal Responses.

机构信息

Electrical Engineering Department, University of Oviedo, 33203 Gijón, Spain.

Computer Science Department, University of Oviedo, 33003 Oviedo, Spain.

出版信息

Sensors (Basel). 2023 Feb 19;23(4):2312. doi: 10.3390/s23042312.

Abstract

Photosensitivity is a neurological disorder in which a person's brain produces epileptic discharges, known as Photoparoxysmal Responses (PPRs), when it receives certain visual stimuli. The current standardized diagnosis process used in hospitals consists of submitting the subject to the Intermittent Photic Stimulation process and attempting to trigger these phenomena. The brain activity is measured by an Electroencephalogram (EEG), and the clinical specialists manually look for the PPRs that were provoked during the session. Due to the nature of this disorder, long EEG recordings may contain very few PPR segments, meaning that a highly imbalanced dataset is available. To tackle this problem, this research focused on applying Data Augmentation (DA) to create synthetic PPR segments from the real ones, improving the balance of the dataset and, thus, the global performance of the Machine Learning techniques applied for automatic PPR detection. K-Nearest Neighbors and a One-Hidden-Dense-Layer Neural Network were employed to evaluate the performance of this DA stage. The results showed that DA is able to improve the models, making them more robust and more able to generalize. A comparison with the results obtained from a previous experiment also showed a performance improvement of around 20% for the Accuracy and Specificity measurements without Sensitivity suffering any losses. This project is currently being carried out with subjects at Burgos University Hospital, Spain.

摘要

光敏性是一种神经系统疾病,当人的大脑接收到某些视觉刺激时,会产生癫痫放电,即光发性反应(PPR)。目前医院中使用的标准化诊断过程包括让受试者接受间歇性光刺激过程,并尝试引发这些现象。大脑活动通过脑电图(EEG)进行测量,临床专家手动寻找在该过程中引发的 PPR。由于这种疾病的性质,长的 EEG 记录可能只包含很少的 PPR 段,这意味着可用的数据集是高度不平衡的。为了解决这个问题,本研究专注于应用数据增强(DA)从真实 PPR 段创建合成 PPR 段,从而改善数据集的平衡,并提高应用于自动 PPR 检测的机器学习技术的整体性能。K-最近邻和一个单隐藏密集层神经网络被用来评估这个 DA 阶段的性能。结果表明,DA 能够提高模型的鲁棒性和泛化能力。与之前实验的结果进行比较也表明,在不影响敏感性的情况下,准确性和特异性测量的性能提高了约 20%。该项目目前正在西班牙布尔戈斯大学医院的受试者中进行。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9d70/9963310/d180ae0091c1/sensors-23-02312-g001.jpg

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