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Real-Time Tracking of Magnetoencephalographic Neuromarkers during a Dynamic Attention-Switching Task

机译:动态关注任务期间磁性肺态标记的实时跟踪

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In the last few years, a large number of experiments have been focused on exploring the possibility of using non-invasive techniques, such as electroencephalography (EEG) and magnetoencephalography (MEG), to identify auditory-related neuromarkers which are modulated by attention. Results from several studies where participants listen to a story narrated by one speaker, while trying to ignore a different story narrated by a competing speaker, suggest the feasibility of extracting neuromarkers that demonstrate enhanced phase locking to the attended speech stream. These promising findings have the potential to be used in clinical applications, such as EEG-driven hearing aids. One major challenge in achieving this goal is the need to devise an algorithm capable of tracking these neuromarkers in real-time when individuals are given the freedom to repeatedly switch attention among speakers at will. Here we present an algorithm pipeline that is designed to efficiently recognize changes of neural speech tracking during a dynamic-attention switching task and to use them as an input for a near real-time state-space model that translates these neuromarkers into attentional state estimates with a minimal delay. This algorithm pipeline was tested with MEG data collected from participants who had the freedom to change the focus of their attention between two speakers at will. Results suggest the feasibility of using our algorithm pipeline to track changes of attention in near-real time in a dynamic auditory scene.
机译:在过去的几年中,大量的实验一直专注于探讨利用非侵入性技术,如脑电图(EEG)和脑磁图(MEG),以确定哪些是通过关注调制的听觉相关neuromarkers的可能性。参与者倾听一个演讲者叙述的故事的结果,同时试图忽略竞争扬声器叙述的不同故事,表明提取神经标志物的可行性,这些股票表现出增强的阶段锁定到参加的语音流。这些有希望的发现有可能在临床应用中使用,例如EEG驱动的助听器。实现这一目标的一个重大挑战是需要设计一种能够在当掌握扬声器中反复关注的自由时实时跟踪这些神经标记物的算法。在这里,我们介绍了一种算法流水线,该算法旨在在动态关注切换任务期间有效地识别神经语音跟踪的变化,并将它们用作近实时状态空间模型的输入,这些空间模型将这些神经标记器转化为注意力状态估计的近实时状态空间模型最小的延迟。该算法通过从参与者收集的MEG数据测试了该算法,这些数据是从事自由来改变他们在两个发言者之间的关注的重点。结果表明,在动态听觉场景中使用算法管道使用算法管道在接近实时对关注变化的可行性。

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