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倾听两位说话者:选择性和分布式注意过程中神经语音追踪的能力与权衡

Listening to two speakers: Capacity and tradeoffs in neural speech tracking during Selective and Distributed Attention.

作者信息

Kaufman Maya, Zion Golumbic Elana

机构信息

The Gonda Center for Multidisciplinary Brain Research, Bar Ilan University, Ramat Gan, Israel.

The Gonda Center for Multidisciplinary Brain Research, Bar Ilan University, Ramat Gan, Israel.

出版信息

Neuroimage. 2023 Apr 15;270:119984. doi: 10.1016/j.neuroimage.2023.119984. Epub 2023 Feb 26.

Abstract

Speech comprehension is severely compromised when several people talk at once, due to limited perceptual and cognitive resources. In such circumstances, top-down attention mechanisms can actively prioritize processing of task-relevant speech. However, behavioral and neural evidence suggest that this selection is not exclusive, and the system may have sufficient capacity to process additional speech input as well. Here we used a data-driven approach to contrast two opposing hypotheses regarding the system's capacity to co-represent competing speech: Can the brain represent two speakers equally or is the system fundamentally limited, resulting in tradeoffs between them? Neural activity was measured using magnetoencephalography (MEG) as human participants heard concurrent speech narratives and engaged in two tasks: Selective Attention, where only one speaker was task-relevant and Distributed Attention, where both speakers were equally relevant. Analysis of neural speech-tracking revealed that both tasks engaged a similar network of brain regions involved in auditory processing, attentional control and speech processing. Interestingly, during both Selective and Distributed Attention the neural representation of competing speech showed a bias towards one speaker. This is in line with proposed 'bottlenecks' for co-representation of concurrent speech and suggests that good performance on distributed attention tasks may be achieved by toggling attention between speakers over time.

摘要

由于感知和认知资源有限,当几个人同时说话时,言语理解会受到严重影响。在这种情况下,自上而下的注意力机制可以积极地优先处理与任务相关的言语。然而,行为和神经学证据表明,这种选择并非排他性的,并且该系统可能也有足够的能力来处理额外的言语输入。在这里,我们采用了一种数据驱动的方法来对比关于该系统共同表征相互竞争的言语的能力的两种相反假设:大脑能否平等地表征两个说话者,还是该系统从根本上受到限制,导致两者之间的权衡?当人类参与者听到同时进行的言语叙述并执行两项任务时,使用脑磁图(MEG)测量神经活动:选择性注意,其中只有一个说话者与任务相关;分布式注意,其中两个说话者同样相关。对神经言语跟踪的分析表明,两项任务都涉及一个类似的脑区网络,这些脑区参与听觉处理、注意力控制和言语处理。有趣的是,在选择性注意和分布式注意过程中,相互竞争的言语的神经表征都表现出对一个说话者的偏向。这与关于同时言语共同表征的“瓶颈”假设相一致,并表明通过随着时间在说话者之间切换注意力,可以在分布式注意任务上取得良好表现。

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