脑电辅助深度知识精馏提高单导联心电图睡眠分期

Vaibhav Joshi, S. Vijayarangan, S. Preejith, M. Sivaprakasam
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引用次数: 2

摘要

脑电图(EEG)信号是目前公认的自动睡眠分期标准。最近,基于深度学习(DL)的方法可以实现接近人类的自动睡眠分期精度,从而在该领域取得了多方面的进展。然而,基于脑电图的睡眠分期需要广泛而昂贵的临床设置。此外,脑电图设置具有突发性,需要专家进行设置,这增加了被研究对象的不便,使其在护理点设置中不利。心电图(ECG)是脑电图(EEG)的一种不显眼且更合适的替代方法。不出所料,与睡眠阶段的脑电图相比,它的表现仍低于平均水平。为了利用这两种模式,将脑电图的知识转移到心电上是一种合理的方法,最终提高了基于心电的睡眠分期的性能。知识蒸馏(Knowledge Distillation, KD)是深度学习中一个很有前途的概念,它将知识从表现优异但通常更复杂的教师模型共享到表现较差但紧凑的学生模型。在此概念的基础上,提出了一个跨模态KD框架,帮助通过脑电图训练的模型学习特征,以改善基于脑电图的睡眠分期性能。此外,为了更好地理解蒸馏方法,对所提出模型的独立模块进行了广泛的实验。本研究使用蒙特利尔睡眠研究档案(MASS)数据集,包括200名受试者。3级和4级睡眠阶段加权f1评分模型的结果分别显示13.40%和14.30%的改善。本研究证明了KD在3级(W-R-N)和4级(W-R-L-D)分类中对基于单通道ECG的睡眠分期的性能增强的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EEG aided boosting of single-lead ECG based sleep staging with Deep Knowledge Distillation
An electroencephalogram (EEG) signal is currently accepted as a standard for automatic sleep staging. Lately, Near-human accuracy in automated sleep staging has been achievable by Deep Learning (DL) based approaches, enabling multi-fold progress in this area. However, An extensive and expensive clinical setup is required for EEG based sleep staging. Additionally, the EEG setup being obtrusive in nature and requiring an expert for setup adds to the inconvenience of the subject under study, making it adverse in the point of care setting. An unobtrusive and more suitable alternative to EEG is Electrocardiogram (ECG). Unsurprisingly, compared to EEG in sleep staging, its performance remains sub-par. In order to take advantage of both the modalities, transferring knowledge from EEG to ECG is a reasonable approach, ultimately boosting the performance of ECG based sleep staging. Knowledge Distillation (KD) is a promising notion in DL that shares knowledge from a superior performing but usually more complex teacher model to an inferior but compact student model. Building upon this concept, a cross-modality KD framework assisting features learned through models trained on EEG to improve ECG-based sleep staging performance is proposed. Additionally, to better understand the distillation approach, extensive experimentation on the independent modules of the proposed model was conducted. Montreal Archive of Sleep Studies (MASS) dataset consisting of 200 subjects was utilized for this study. The results from the proposed model for weighted-F1-score in 3-class and 4-class sleep staging showed a 13.40 % and 14.30 % improvement, respectively. This study demonstrates the feasibility of KD for single-channel ECG based sleep staging's performance enhancement in 3-class (W-R-N) and 4-class (W-R-L-D) classification.
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