一种基于数据增强和轻量级神经网络的癫痫脑电图检测方法

IF 3.7 3区 医学 Q2 ENGINEERING, BIOMEDICAL IEEE Journal of Translational Engineering in Health and Medicine-Jtehm Pub Date : 2023-08-24 DOI:10.1109/JTEHM.2023.3308196
Chenlong Wang;Lei Liu;Wenhai Zhuo;Yun Xie
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引用次数: 0

摘要

目的:癫痫是一种持久的神经系统疾病,全球约有6500万人患有癫痫,严重影响他们的身心健康。传统的癫痫检测方法是劳动密集型的,导致效率低下。尽管近年来脑信号检测的深度学习技术获得了广泛的关注,但其临床应用的进展受到训练过程中对高质量数据和计算资源的巨大需求的阻碍。方法与结果:神经网络训练最初涉及合并两个不同数据质量的数据集,即波恩大学数据集和CHB-MIT数据集,以增强其泛化能力。为了解决数据集大小和类不平衡的问题,我们采用了小窗口分割和合成少数派过采样技术(SMOTE)。增强和均衡数据的算法。然后提出了一种简化的神经网络架构,大大减少了模型的训练参数。值得注意的是,仅用9371个参数训练的模型产生了令人印象深刻的结果。组合数据集上的三分类任务准确率为98.52%,灵敏度为97.99%,特异性为99.35%,精密度为98.44%。结论:本研究的实验结果强调了该方法在减小模型尺寸和提高精度方面优于现有方法。因此,它更适合部署在低成本、低计算的硬件设备中,包括可穿戴技术和各种临床应用。临床和转化影响声明-本研究是临床前研究。轻量级神经网络易于部署在硬件设备上,用于癫痫脑电图实时检测。
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An Epileptic EEG Detection Method Based on Data Augmentation and Lightweight Neural Network
Objective: Epilepsy, an enduring neurological disorder, afflicts approximately 65 million individuals globally, significantly impacting their physical and mental wellbeing. Traditional epilepsy detection methods are labor-intensive, leading to inefficiencies. Although deep learning techniques for brain signal detection have gained traction in recent years, their clinical application advancement is hindered by the significant requirement for high-quality data and computational resources during training. Methods & Results: The neural network training initially involved merging two datasets of different data quality, namely Bonn University datasets and CHB-MIT datasets, to bolster its generalization capabilities. To tackle the issues of dataset size and class imbalance, we employed small window segmentation and Synthetic Minority Over-sampling Technique (SMOTE). algorithms to augment and equalize the data. A streamlined neural network architecture was then proposed, drastically reducing the model’s training parameters. Notably, a model trained with a mere 9,371 parameters yielded impressive results. The three-classification task on the combined dataset delivered an accuracy of 98.52%, sensitivity of 97.99%, specificity of 99.35%, and precision of 98.44%.Conclusion: The experimental findings of this study underscore the superiority of the proposed method over existing approaches in both model size reduction and accuracy enhancement. As a result, it is more apt for deployment in low-cost, low computational hardware devices, including wearable technology, and various clinical applications. Clinical and Translational Impact Statement— This study is a Pre-Clinical Research. The lightweight neural network is easily deployed on hardware device for real-time epileptic EEG detection.
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来源期刊
CiteScore
7.40
自引率
2.90%
发文量
65
审稿时长
27 weeks
期刊介绍: The IEEE Journal of Translational Engineering in Health and Medicine is an open access product that bridges the engineering and clinical worlds, focusing on detailed descriptions of advanced technical solutions to a clinical need along with clinical results and healthcare relevance. The journal provides a platform for state-of-the-art technology directions in the interdisciplinary field of biomedical engineering, embracing engineering, life sciences and medicine. A unique aspect of the journal is its ability to foster a collaboration between physicians and engineers for presenting broad and compelling real world technological and engineering solutions that can be implemented in the interest of improving quality of patient care and treatment outcomes, thereby reducing costs and improving efficiency. The journal provides an active forum for clinical research and relevant state-of the-art technology for members of all the IEEE societies that have an interest in biomedical engineering as well as reaching out directly to physicians and the medical community through the American Medical Association (AMA) and other clinical societies. The scope of the journal includes, but is not limited, to topics on: Medical devices, healthcare delivery systems, global healthcare initiatives, and ICT based services; Technological relevance to healthcare cost reduction; Technology affecting healthcare management, decision-making, and policy; Advanced technical work that is applied to solving specific clinical needs.
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