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Single-Trial Classification of Disfluent Brain States in Adults Who Stutter

机译:口吃成人的流脑状态的单项试验分类

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Normal human speech requires precise coordination between motor planning and sensory processing. Speech disfluencies are common when children learn to talk, but usually abate with time. About 5% of children experience stuttering. For most, this resolves within a year. However, for approximately 1% of the world population, stuttering continues into adulthood, which is termed 'persistent developmental stuttering'. Most stuttering events occur at the beginning of an utterance. So, in principle, brain activity before speaking should differ between fluent and stuttered speech. Here we present a method for classifying brain network states associated with fluent vs. stuttered speech on a single trial basis. Brain activity was recorded with EEG before people who stutter read aloud pseudo-word pairs. Offline independent component analysis (ICA) was used to identify the independent neural sources that underlie speech preparation. A time window selection algorithm extracted spectral power and coherence data from salient windows specific to each neural source. A stepwise linear discriminant analysis (sLDA) algorithm predicted fluent vs. stuttered speech for 81% of trials in two subjects. These results support the feasibility of developing a brain-computer interface (BCI) system to detect stuttering before it occurs, with potential for therapeutic application.
机译:正常的人类语音需要在运动计划和感觉处理之间进行精确协调。当孩子学习说话时,言语不均很常见,但通常会随着时间的流逝而减弱。大约5%的儿童会口吃。对于大多数人来说,这可以在一年之内解决。但是,对于约1%的世界人口,口吃一直持续到成年,这被称为“持续性发展口吃”。大多数口吃事件发生在发话的开始处。因此,原则上讲,口语流利和口吃之前的大脑活动应该有所不同。在这里,我们提出了一种在单个试验基础上对与流利语音和口吃语音相关的大脑网络状态进行分类的方法。用脑电图记录大脑活动,然后结巴的人大声朗读假单词对。离线独立成分分析(ICA)用于识别语音准备基础的独立神经源。时间窗选择算法从特定于每个神经源的显着窗中提取频谱功率和相干数据。逐步线性判别分析(sLDA)算法预测了两个对象中81%的试验中的口语与口语的对比。这些结果支持开发脑计算机接口(BCI)系统以在口吃发生之前进行检测的可行性,具有治疗应用的潜力。

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