Effective diagnosis of sleep disorders using EEG and EOG signals.

Ritika Jain, Ramakrishnan Angarai Ganesan
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引用次数: 0

Abstract

This work focuses on the diagnosis of various sleep disorders such as insomnia, narcolepsy, periodic leg movement, nocturnal frontal lobe epilepsy, bruxism, REM behavior disorder, and sleep-disordered breathing. We utilize SVM for classifying each of the sleep disorders from healthy controls. The proposed approach is evaluated on the publicly available CAP dataset comprising 108 overnight recordings from healthy controls and patients with sleep disorders. A single feature called gridded distribution entropy derived from Poincaré plots of EEG signal provides 100% accuracy in distinguishing healthy controls from each pathology, except insomnia and PLM. With the EOG channel, we are able to classify these two groups as well with 100% accuracy, demonstrating the effectiveness of EOG in disambiguating insomnia and PLM from controls.Clinical relevance- Diagnosis of sleep disorders is important to facilitate appropriate treatment. It is challenging due to the diverse nature and inter-subject variation of the physiological symptoms. Automated sleep disorder detection can improve cost efficiency and reduce variability.

利用脑电图和眼电图信号有效诊断睡眠障碍。
这项工作的重点是诊断各种睡眠障碍,如失眠、嗜睡症、周期性腿部运动、夜间额叶癫痫、磨牙症、快速眼动行为障碍和睡眠呼吸障碍。我们利用支持向量机从健康对照中对每个睡眠障碍进行分类。所提出的方法是在公开可用的CAP数据集上进行评估的,该数据集包括来自健康对照组和睡眠障碍患者的108个夜间记录。从脑电图信号的poincar图中得出的一个称为网格分布熵的单一特征在区分健康对照与每种病理(除了失眠和PLM)方面提供了100%的准确性。通过EOG通道,我们能够以100%的准确率对这两组进行分类,证明了EOG在消除失眠和PLM与对照组的歧异方面的有效性。临床相关性-睡眠障碍的诊断对促进适当的治疗很重要。由于生理症状的多样性和主体间的差异,这是具有挑战性的。自动睡眠障碍检测可以提高成本效率,减少可变性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
0.80
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