Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:4076-4082. doi: 10.1109/EMBC48229.2022.9870919.
Wearable and unobtrusive monitoring and prediction of epileptic seizures has the potential to significantly increase the life quality of patients, but is still an unreached goal due to challenges of real-time detection and wearable devices design. Hyperdimensional (HD) computing has evolved in recent years as a new promising machine learning approach, especially when talking about wearable applications. But in the case of epilepsy detection, standard HD computing is not performing at the level of other state-of-the-art algorithms. This could be due to the inherent complexity of the seizures and their signatures in different biosignals, such as the electroencephalogram (EEG), the highly personalized nature, and the disbalance of seizure and non-seizure instances. In the literature, different strategies for improved learning of HD computing have been proposed, such as iterative (multi-pass) learning, multi-centroid learning and learning with sample weight ("OnlineHD"). Yet, most of them have not been tested on the challenging task of epileptic seizure detection, and it stays unclear whether they can increase the HD computing performance to the level of the current state-of-the-art algorithms for wearable devices, such as random forests. Thus, in this paper, we implement different learning strategies and assess their performance on an individual basis, or in combination, regarding detection performance and memory and computational requirements. Results show that the best-performing algorithm, which is a combination of multi-centroid and multi-pass, can indeed reach the performance of the random forest model on a highly unbalanced dataset imitating a real-life epileptic seizure detection application.
可穿戴式且不引人注目的癫痫发作监测和预测有可能显著提高患者的生活质量,但由于实时检测和可穿戴设备设计的挑战,这仍然是一个尚未实现的目标。超维度(HD)计算近年来作为一种新的有前途的机器学习方法得到了发展,尤其是在可穿戴应用方面。但是,在癫痫检测的情况下,标准 HD 计算的性能不如其他最先进的算法。这可能是由于癫痫发作及其在不同生物信号(如脑电图(EEG))中的特征固有的复杂性,以及高度个性化的性质以及发作和非发作实例之间的不平衡。在文献中,已经提出了用于改进 HD 计算学习的不同策略,例如迭代(多遍)学习、多质心学习和带有样本权重的学习(“OnlineHD”)。然而,它们大多数尚未在癫痫发作检测这一具有挑战性的任务上进行测试,也不清楚它们是否可以将 HD 计算性能提高到当前最先进的可穿戴设备算法(例如随机森林)的水平。因此,在本文中,我们实现了不同的学习策略,并根据检测性能以及内存和计算要求,单独或组合评估它们的性能。结果表明,表现最佳的算法(多质心和多遍的组合)确实可以在模仿真实生活中的癫痫发作检测应用的高度不平衡数据集上达到随机森林模型的性能。