IEEE J Biomed Health Inform. 2024 Oct;28(10):5804-5815. doi: 10.1109/JBHI.2024.3409165. Epub 2024 Oct 3.
Wearable EEG enables us to capture large amounts of high-quality sleep data for diagnostic purposes. To make full use of this capacity we need high-performance automatic sleep scoring models. To this end, it has been noted that domain mismatch between recording equipment can be considerable, e.g. PSG to wearable EEG, but a previously observed benefit from personalizing models to individual subjects further indicates a personal domain in sleep EEG. In this work, we have investigated the extent of such a personal domain in wearable EEG, and review supervised and unsupervised approaches to personalization as found in the literature. We investigated the personalization effect of the unsupervised Adversarial Domain Adaptation and implemented an unsupervised method based on statistics alignment. No beneficial personalization effect was observed using these unsupervised methods. We find that supervised personalization leads to a substantial performance improvement on the target subject ranging from 15% Cohen's Kappa for subjects with poor performance ( ) to roughly 2% on subjects with high performance ( ). This improvement was present for models trained on both small and large data sets, indicating that even high-performance models benefit from supervised personalization. We found that this personalization can be beneficially regularized using Kullback-Leibler regularization, leading to lower variance with negligible cost to improvement. Based on the experiments, we recommend model personalization using Kullback-Leibler regularization.
可穿戴式 EEG 使我们能够为诊断目的捕捉大量高质量的睡眠数据。为了充分利用这一能力,我们需要高性能的自动睡眠评分模型。为此,已经注意到记录设备之间的域不匹配可能相当大,例如 PSG 到可穿戴式 EEG,但从个性化模型到个体主体中观察到的先前益处进一步表明了睡眠 EEG 中的个人域。在这项工作中,我们研究了可穿戴式 EEG 中这种个人域的程度,并回顾了文献中发现的监督和无监督的个性化方法。我们研究了无监督对抗性域自适应的个性化效果,并实现了一种基于统计对齐的无监督方法。使用这些无监督方法没有观察到有益的个性化效果。我们发现,监督个性化对目标主体有很大的性能提升,对于表现不佳的主体(),Cohen's Kappa 值提高了 15%,对于表现良好的主体(),提高了约 2%。这种改进对于在小数据集和大数据集上训练的模型都存在,表明即使是高性能模型也受益于监督个性化。我们发现,这种个性化可以通过使用 KL 正则化来进行有益的正则化,从而在几乎不影响改进的情况下降低方差。基于实验,我们建议使用 KL 正则化进行模型个性化。