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Modeling EEG-based Motor Imagery with Session to Session Online Adaptation

机译:使用会话到会话在线适应对基于EEG的运动图像建模

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Subject-specific calibration plays an important role in electroencephalography (EEG)-based Brain-Computer Interface (BCI) for Motor Imagery (MI) detection. A calibration session is often introduced to build a subject specific model, which then can be deployed into BCI system for MI detection in the following rehabilitation sessions. The model is termed as a fixed calibration model. Progressive adaptive models can also be built by using data not only from calibration session, but also from available rehabilitation sessions. It was reported that the progressive adaptive model yielded significant improved MI detection compared to the fixed model in a retrospective clinical study. In this work, we deploy the progressive adaptation model in a BCI-based stroke rehabilitation system and bring it online. We dub this system nBETTER (Neurostyle Brain Exercise Therapy Towards Enhanced Recovery). A clinical trial using the nBETTER system was conducted to evaluate the performance of 11 stroke patients who underwent a calibration session followed by 18 rehabilitation sessions over 6 weeks. We conduct retrospective analysis to compare the performance of various modeling strategies: the fixed calibration model, the online progressive adaptation model and a light-weight adaptation model, where the second one is generated online by nBETTER system and the other two models are obtained retrospectively. The mean accuracy of the three models across 11 subjects are 68.17%, 74.04% and 74.53% respectively. Statistical test conducted on the three groups using ANOVA yields a p-value of 9.83-e06. The test result shows that the two adaptation models both have significant different mean from fixed mode. Hence our study confirmed the effectiveness of using the progressive adaptive model for EEG-based BCI to detect MI in an online setting.
机译:特定于对象的校准在基于脑电图(EEG)的运动图像(MI)检测的脑机接口(BCI)中起着重要作用。通常会引入校准会话以构建特定于受试者的模型,然后可以将其部署到BCI系统中以在随后的康复会话中进行MI检测。该模型称为固定校准模型。不仅可以通过使用校准会话中的数据,还可以使用可用的康复会话中的数据来构建渐进式自适应模型。据报道,在回顾性临床研究中,与固定模型相比,渐进式适应模型可显着改善MI检测。在这项工作中,我们在基于BCI的中风康复系统中部署渐进适应模型并将其联机。我们将此系统配音为nBETTER(旨在增强恢复的神经式脑部锻炼疗法)。进行了使用nBETTER系统的临床试验,以评估11名中风患者的病情,这些患者在6周内进行了一次校准会议,随后进行了18次康复会议。我们进行回顾性分析,以比较各种建模策略的性能:固定校准模型,在线渐进适应模型和轻量适应模型,其中第二个模型是通过nBETTER系统在线生成的,另外两个模型则是追溯获得的。三种模型在11个受试者中的平均准确性分别为68.17%,74.04%和74.53%。使用ANOVA对三组进行的统计检验得出的p值为9.83-e06。测试结果表明,两种自适应模型均具有与固定模式显着不同的均值。因此,我们的研究证实了针对基于EEG的BCI使用渐进式自适应模型在在线环境中检测MI的有效性。

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