A limiting factor towards the wide routine use of wearables devices for continuous healthcare monitoring is their cumbersome and obtrusive nature. This is particularly true for electroencephalography (EEG) recordings, which require the placement of multiple electrodes in contact with the scalp. In this work, we propose to identify the optimal wearable EEG electrode set-up, in terms of minimal number of electrodes, comfortable location and performance, for EEG-based event detection and monitoring. By relying on the demonstrated power of autoencoder (AE) networks to learn latent representations from high-dimensional data, our proposed strategy trains an AE architecture in a one-class classification setup with different electrode set-ups as input data. The resulting models are assessed using the F-score and the best set-up is chosen according to the established optimal criteria. Using alpha wave detection as use case, we demonstrate that the proposed method allows to detect an alpha state from an optimal set-up consisting of electrodes in the forehead and behind the ear, with an average F-score of 0.78. Our results suggest that a learning-based approach can be used to enable the design and implementation of optimized wearable devices for real-life healthcare monitoring.
翻译:在这项工作中,我们提议从电极、舒适位置和性能等最低数量的角度,确定可磨损的EEG电极设置,以便以电极、舒适位置和性能为基础,探测和监测以EEG为基础的事件。通过依靠自动编码器(AE)网络所显示的力量,从高维数据中学习潜伏的表示力,我们的拟议战略将AE结构培养成一个单级分类结构,以不同电极设置作为输入数据。对所产生的模型进行评估时,采用F-计,并根据既定的最佳标准选择最佳设置。用甲型波探测作为使用,我们证明拟议方法能够从由前额和耳后电极组成的最佳设置中检测α状态,平均F-核心为0.78,我们的成果表明,基于学习的方法可以用来进行真实的寿命监测,以最佳方式设计并安装最佳的防护设备。