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Omitting the Intra-session Calibration in EEG-based Brain Computer Interface Used for Stroke Rehabilitation

机译:省略用于脑卒中康复的脑卒中的脑电电脑界面中的会话内校准

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Brain-computer interface (BCI) as a rehabilitation tool has been used in restoring motor functions in patients with moderate to sever stroke impairments. To achieve the best possible outcome in such an application, it is highly desirable to have a stable and accurate operation of BCI. However, since electroencephalogram (EEG) signals considerably vary between sessions of even the same user, typically a long calibration session is recorded at the beginning of each session. This process is time-consuming and inconvenient for stroke patients who undergo long-term BCI sessions with repeating same mental tasks. This paper investigates the possibility of omitting the intra-session calibration for BCI-based stroke rehabilitation when large data recorded from the same user are available. For this purpose, a large dataset of EEG signals from 11 stroke patients performing 12 BCI-based stroke rehabilitation sessions over one month is used. Our offline results suggest that after recording a number of stroke rehabilitation sessions, the patient does not require calibration any more. The experimental results show that combining 11 sessions, which each session comprises minimum 60 trials per class, yields a model that averagely outperforms the standard calibration model trained by the data recorded directly before the test session.
机译:脑电脑界面(BCI)作为康复工具,已用于恢复温和的患者中的电机功能,以防止切割冲程障碍。为了在这种应用中实现最佳结果,非常希望具有BCI的稳定和准确的操作。然而,由于脑电图(EEG)信号在甚至相同用户的会话之间显着变化,因此通常在每个会话开始时记录长校准会话。这一过程是对经过长期BCI会话的中风患者进行耗时和不方便,重复相同的精神任务。本文调查当从相同用户记录的大数据可用时省略基于BCI的中风康复的会话内校准的可能性。为此目的,使用来自11名脑卒中患者的大型数据集,从11个中卒中患者进行了一个超过一个月的基于BCI的中风康复康复会话。我们的离线结果表明,在录制许多笔划康复会话后,患者不再需要校准。实验结果表明,每个会话组合每个会话包括每个类别的60个会话,产生一个模型,平均优于由在测试会话之前直接记录的数据训练的标准校准模型。

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