Dokare Indu, Gupta Sudha
Department of Electronics Engineering, K. J. Somaiya College of Engineering, Somaiya Vidyavihar University, Vidyanagar, Vidyavihar East, Mumbai, Maharashtra 400077 India.
Department of Computer Engineering, Vivekanand Education Society's Institute of Technology, Chembur, Mumbai, 400074 India.
Health Inf Sci Syst. 2025 Mar 19;13(1):30. doi: 10.1007/s13755-025-00348-4. eCollection 2025 Dec.
Effective seizure detection systems are crucial for health information systems and managing epilepsy, yet traditional multichannel EEG devices can be costly and complex. This study aims to optimize EEG channel selection and focus on specific frequency bands associated with epileptic activity, enhancing the system's usability and accuracy for clinical applications.
This work proposes a novel method by integrating channel selection with band-wise analysis for seizure detection. The channel selection uses an ensemble of mutual information (MI) and Random Forest (RF) techniques to select the most relevant channels. The signals from the selected channels are decomposed into different frequency bands using discrete wavelet transform (DWT). To evaluate the effectiveness of this approach, ten features are extracted from each frequency band and then classified using a support vector machine (SVM) classifier.
This work has obtained a mean accuracy of 97.70%, a mean sensitivity of 86.70%, and a mean specificity of 99.66% for seizure patients from a well-established CHB-MIT dataset and an almost 80% reduction in processing time.
These benefits make seizure detection devices more wearable, less intrusive, and easier to integrate with other health monitoring systems, allowing for discreet and comfortable monitoring that supports an active lifestyle for patients.
有效的癫痫发作检测系统对于健康信息系统和癫痫管理至关重要,但传统的多通道脑电图设备可能成本高昂且复杂。本研究旨在优化脑电图通道选择,并专注于与癫痫活动相关的特定频段,提高系统在临床应用中的可用性和准确性。
这项工作提出了一种将通道选择与频段分析相结合的癫痫发作检测新方法。通道选择使用互信息(MI)和随机森林(RF)技术的集成来选择最相关的通道。使用离散小波变换(DWT)将所选通道的信号分解为不同的频段。为了评估这种方法的有效性,从每个频段提取十个特征,然后使用支持向量机(SVM)分类器进行分类。
对于来自成熟的CHB-MIT数据集的癫痫患者,这项工作获得了97.70%的平均准确率、86.70%的平均灵敏度和99.66%的平均特异性,并且处理时间减少了近80%。
这些优势使癫痫发作检测设备更便于佩戴、侵入性更小,并且更易于与其他健康监测系统集成,从而实现对患者的谨慎且舒适的监测,支持患者积极的生活方式。