首页> 外文期刊>Neuroscience Research: The Official Journal of the Japan Neuroscience Society >Sequential hypothesis testing for automatic detection of task-related changes in cerebral perfusion in a brain-computer interface
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Sequential hypothesis testing for automatic detection of task-related changes in cerebral perfusion in a brain-computer interface

机译:顺序假设检验,用于在人机界面中自动检测与任务相关的脑灌注变化

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Evidence suggests that the cerebral blood flow patterns accompanying cognitive activity are retained in many locked-in patients. These patterns can be monitored using transcranial Doppler ultrasound (TCD), a medical imaging technique that measures bilateral cerebral blood flow velocities. Recently, TCD has been proposed as an alternative imaging modality for brain-computer interfaces (BCIs). However, most previous TCD-BCI studies have performed offline analyses with impractically lengthy tasks. In this study, we designed a BCI that automatically differentiates between counting and verbal fluency tasks using sequential hypothesis testing to make decisions as quickly as possible. Ten able-bodied participants silently alternated between counting and verbal fluency tasks within the paradigm of a simulated onscreen keyboard. During this experiment, blood flow velocities were recorded within the left and right middle cerebral arteries using bilateral TCD. Twelve features were used to characterize TCD signals. In a simulated online analysis, sequential hypothesis testing was used to update estimates of class probability every 250 ms as TCD data were processed. Classification was terminated once a threshold level of certainty was reached. Mean classification accuracy across all participants was 72% after an average of 23 s, compared to an offline analysis which obtained a classification accuracy of 80% after 45 s. This represents a substantial gain in data transmission rate, while maintaining classification accuracies exceeding 70%. Furthermore, a range of decision times between 19 and 28s was observed, suggesting that the ability of sequential hypothesis testing to adapt the task duration for each individual participant is critical to achieving consistent performance across participants. These results indicate that sequential hypothesis testing is a promising alternative for online TCD-BCIs. (C) 2015 Elsevier Ireland Ltd and the Japan Neuroscience Society. All rights reserved.
机译:有证据表明,在许多锁定患者中,伴随着认知活动的脑血流模式得以保留。可以使用经颅多普勒超声(TCD)监测这些模式,TCD是一种测量双侧脑血流速度的医学成像技术。最近,TCD已被提出作为脑机接口(BCI)的替代成像方式。但是,大多数以前的TCD-BCI研究都进行了不切实际的冗长任务的离线分析。在本研究中,我们设计了一种BCI,该BCI可使用顺序假设检验自动区分计数和口头流畅性任务,从而尽快做出决策。在模拟的屏幕键盘范式中,十个身体健全的参与者默默地在计数和口头流畅性任务之间交替。在此实验中,使用双侧TCD记录了左右大脑中动脉的血流速度。十二个特征用于表征TCD信号。在模拟的在线分析中,在处理TCD数据时,每250毫秒使用顺序假设检验更新类概率的估计值。一旦达到确定性的阈值水平,分类就会终止。在平均23 s后,所有参与者的平均分类精度为72%,而离线分析在45 s后获得80%的分类精度。这代表了数据传输速率的显着提高,同时保持了分类精度超过70%。此外,观察到的决策时间范围介于19到28s之间,这表明顺序假设检验适应每个参与者的任务持续时间的能力对于在参与者之间实现一致的表现至关重要。这些结果表明,顺序假设检验是在线TCD-BCI的有希望的替代方法。 (C)2015 Elsevier Ireland Ltd和日本神经科学学会。版权所有。

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