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A subject-transfer framework for obviating inter- and intra-subject variability in EEG-based drowsiness detection

机译:用于避免基于脑电图的嗜睡检测中和内部对象间变异性的主体转移框架

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Inter- and intra-subject variability pose a major challenge to decoding human brain activity in brain-computer interfaces (BCIs) based on non-invasive electroencephalogram (EEG). Conventionally, a time-consuming and laborious training procedure is performed on each new user to collect sufficient individualized data, hindering the applications of BCIs on monitoring brain states (e.g. drowsiness) in real-world settings. This study proposes applying hierarchical clustering to assess the inter- and intra-subject variability within a large-scale dataset of EEG collected in a simulated driving task, and validates the feasibility of transferring EEG-based drowsiness-detection models across subjects. A subject-transfer framework is thus developed for detecting drowsiness based on a large-scale model pool from other subjects and a small amount of alert baseline calibration data from a new user. The model pool ensures the availability of positive model transferring, whereas the alert baseline data serve as a selector of decoding models in the pool. Compared with the conventional within-subject approach, the proposed framework remarkably reduced the required calibration time for a new user by 90% (18.00 min-1.72 +/- 0.36 min) without compromising performance (p = 0.0910) when sufficient existing data are available. These findings suggest a practical pathway toward plug-and-play drowsiness detection and can ignite numerous real-world BCI applications.
机译:基于非侵入性脑电图(EEG),介绍间可变性对脑 - 计算机接口(BCIS)中的人脑活动进行了重大挑战。传统上,对每个新用户进行耗时和费力的培训程序,以收集足够的个性化数据,阻碍BCIS在实际环境中监测脑状态(例如嗜睡)的应用。本研究提出应用分层聚类来评估在模拟驾驶任务中收集的EEG的大规模数据集中的和内部内部可变性,并验证跨对象传输基于EEG的嗜血性检测模型的可行性。因此开发了一种主题转移框架,用于基于来自其他对象的大规模模型池和来自新用户的少量警报基线校准数据来检测嗜睡。模型池确保了正模型传输的可用性,而警报基线数据用作池中解码模型的选择器。与传统的对象内方法相比,所提出的框架显着降低了新用户的所需校准时间90%(18.00 min-1.72 +/- 0.36分钟),而在有足够的现有数据时(P = 0.0910) 。这些发现表明了一种实际途径朝着即插即用嗜睡检测,可以点燃众多现实世界的BCI应用。

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