论文标题

基准测试实时算法,用于在睡眠期间使用可穿戴的脑电图刺激低振幅的慢速波刺激的实时算法

Benchmarking real-time algorithms for in-phase auditory stimulation of low amplitude slow waves with wearable EEG devices during sleep

论文作者

Ferster, Maria Laura, Da Poian, Giulia, Menachery, Kiran, Schreiner, Simon J., Lustenberger, Caroline, Maric, Angelina, Huber, Reto, Baumann, Christian, Karlen, Walter

论文摘要

在非比型眼运动(NREM)睡眠期间,EEG慢波(SW)的听觉刺激已显示出在SW上的Up-phase递送时改善认知功能。在低振幅SW的受试者(例如老年人或患有神经退行性的患者,例如帕金森氏病(PD))中,SW增强尤其可取。但是,现有的算法以估计上相的阶段准确性在低EEG振幅下的相位准确性较差,而SW频率不恒定时。我们介绍了两种新型算法,用于对自动可穿戴设备的实时脑电图相估计。该算法基于相锁环(PLL),并且首次基于相位声码器(PV)。我们用简单的振幅阈值方法比较了这些相跟踪算法。对优化的算法进行基准测试,以达到相位的准确性,在20至60 microV之间估计阶段的能力,以及在健康的老年人和PD患者的324次记录中,SW频率高于1 Hz的频率。此外,该算法是在可穿戴设备上实现的,并且在模拟睡眠脑电图中以及与PD患者的录音期间对计算效率和性能进行了评估。所有三种算法在SW上阶段期间提供了超过70%的刺激触发器。 PV在靶向低于1 Hz的频率的低振幅SW和SW方面显示出最高的能力。对实时硬件的测试表明,PV和PLL对微控制器负载都有边缘影响,而PV的效率比PLL低4%。主动听觉刺激不会影响相跟踪。这项工作表明,在低振幅SW的种群中,可以使用可穿戴设备在家庭睡眠干预期间进行相准确的听觉刺激。

Auditory stimulation of EEG slow waves (SW) during non-rapid eye movement (NREM) sleep has shown to improve cognitive function when it is delivered at the up-phase of SW. SW enhancement is particularly desirable in subjects with low-amplitude SW such as older adults or patients suffering from neurodegeneration such as Parkinson disease (PD). However, existing algorithms to estimate the up-phase suffer from a poor phase accuracy at low EEG amplitudes and when SW frequencies are not constant. We introduce two novel algorithms for real-time EEG phase estimation on autonomous wearable devices. The algorithms were based on a phase-locked loop (PLL) and, for the first time, a phase vocoder (PV). We compared these phase tracking algorithms with a simple amplitude threshold approach. The optimized algorithms were benchmarked for phase accuracy, the capacity to estimate phase at SW amplitudes between 20 and 60 microV, and SW frequencies above 1 Hz on 324 recordings from healthy older adults and PD patients. Furthermore, the algorithms were implemented on a wearable device and the computational efficiency and the performance was evaluated on simulated sleep EEG, as well as prospectively during a recording with a PD patient. All three algorithms delivered more than 70% of the stimulation triggers during the SW up-phase. The PV showed the highest capacity on targeting low-amplitude SW and SW with frequencies above 1 Hz. The testing on real-time hardware revealed that both PV and PLL have marginal impact on microcontroller load, while the efficiency of the PV was 4% lower than the PLL. Active auditory stimulation did not influence the phase tracking. This work demonstrated that phase-accurate auditory stimulation can be delivered during home-based sleep interventions with a wearable device also in populations with low-amplitude SW.

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