通过机器学习技术和相关的时频特征识别癫痫脑电模式。

Biomedizinische Technik. Biomedical engineering Pub Date : 2023-10-30 Print Date: 2024-04-25 DOI:10.1515/bmt-2023-0332
Sahbi Chaibi, Chahira Mahjoub, Wadhah Ayadi, Abdennaceur Kachouri
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引用次数: 0

摘要

目的:本研究旨在通过选择机器学习(ML)技术,探索癫痫模式的自动检测过程,特别是癫痫尖峰和高频振荡(HFO)。进行这项研究的主要动机主要在于需要调查长期脑电图(EEG)记录的视觉检查过程,这通常被认为是一个耗时且可能容易出错的过程,需要大量的精神关注和高度实验性的神经学家。在试图解决这一挑战时,已经对许多最先进的ML算法进行了性能评估和比较,以确定适合准确提取癫痫EEG模式的最有效算法。内容:基于颅内和模拟脑电图数据,所获得的结果表明,随机森林(RF)方法被证明是最一致有效的方法,在脑电图记录癫痫模式识别方面显著优于所有检查方法。事实上,RF分类器似乎记录了92.38的平均平衡分类率(BCR) % 关于尖峰识别过程,以及78.77 % 在HFOs检测方面。摘要:与其他方法相比,我们的结果为RF分类器作为一种强大的ML技术的有效性提供了有价值的见解,该技术适用于检测癫痫发作产生的EEG信号。展望:作为一项潜在的未来工作,我们设想通过合并更大的脑电图数据集来进一步验证和维持我们的主要发现。我们还旨在探索生成对抗性网络(GANs)的应用,以便生成合成EEG信号或将信号生成技术与深度学习方法相结合。通过这种新的思路,我们实际上预先配置了更多的自动检测方法来增强和提高其性能,从而显著增强了癫痫EEG模式识别区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Epileptic EEG patterns recognition through machine learning techniques and relevant time-frequency features.

Objectives: The present study is designed to explore the process of epileptic patterns' automatic detection, specifically, epileptic spikes and high-frequency oscillations (HFOs), via a selection of machine learning (ML) techniques. The primary motivation for conducting such a research lies mainly in the need to investigate the long-term electroencephalography (EEG) recordings' visual examination process, often considered as a time-consuming and potentially error-prone procedure, requiring a great deal of mental focus and highly experimented neurologists. On attempting to resolve such a challenge, a number of state-of-the-art ML algorithms have been evaluated and compare in terms of performance, to pinpoint the most effective algorithm fit for accurately extracting epileptic EEG patterns.

Content: Based on intracranial as well as simulated EEG data, the attained findings turn out to reveal that the randomforest (RF) method proved to be the most consistently effective approach, significantly outperforming the entirety of examined methods in terms of EEG recordings epileptic-pattern identification. Indeed, the RF classifier appeared to record an average balanced classification rate (BCR) of 92.38 % in regard to spikes recognition process, and 78.77 % in terms of HFOs detection.

Summary: Compared to other approaches, our results provide valuable insights into the RF classifier's effectiveness as a powerful ML technique, fit for detecting EEG signals born epileptic bursts.

Outlook: As a potential future work, we envisage to further validate and sustain our major reached findings through incorporating a larger EEG dataset. We also aim to explore the generative adversarial networks (GANs) application so as to generate synthetic EEG signals or combine signal generation techniques with deep learning approaches. Through this new vein of thought, we actually preconize to enhance and boost the automated detection methods' performance even more, thereby, noticeably enhancing the epileptic EEG pattern recognition area.

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