Department of Bioengineering and Centre for Neurotechnology, Imperial College London, South Kensington Campus, SW7 2BU London, United Kingdom.
Department of Bioengineering and Centre for Neurotechnology, Imperial College London, South Kensington Campus, SW7 2BU London, United Kingdom.
Neuroimage. 2021 Jan 1;224:117427. doi: 10.1016/j.neuroimage.2020.117427. Epub 2020 Oct 7.
Transcranial alternating current stimulation (tACS) can non-invasively modulate neuronal activity in the cerebral cortex, in particular at the frequency of the applied stimulation. Such modulation can matter for speech processing, since the latter involves the tracking of slow amplitude fluctuations in speech by cortical activity. tACS with a current signal that follows the envelope of a speech stimulus has indeed been found to influence the cortical tracking and to modulate the comprehension of the speech in background noise. However, how exactly tACS influences the speech-related cortical activity, and how it causes the observed effects on speech comprehension, remains poorly understood. A computational model for cortical speech processing in a biophysically plausible spiking neural network has recently been proposed. Here we extended the model to investigate the effects of different types of stimulation waveforms, similar to those previously applied in experimental studies, on the processing of speech in noise. We assessed in particular how well speech could be decoded from the neural network activity when paired with the exogenous stimulation. We found that, in the absence of current stimulation, the speech-in-noise decoding accuracy was comparable to the comprehension of speech in background noise of human listeners. We further found that current stimulation could alter the speech decoding accuracy by a few percent, comparable to the effects of tACS on speech-in-noise comprehension. Our simulations further allowed us to identify the parameters for the stimulation waveforms that yielded the largest enhancement of speech-in-noise encoding. Our model thereby provides insight into the potential neural mechanisms by which weak alternating current stimulation may influence speech comprehension and allows to screen a large range of stimulation waveforms for their effect on speech processing.
经颅交流电刺激(tACS)可以非侵入性地调节大脑皮层中的神经元活动,特别是在应用刺激的频率下。这种调制对于语音处理很重要,因为后者涉及到皮质活动对语音中缓慢幅度波动的跟踪。具有跟随语音刺激包络的电流信号的 tACS 确实已被发现会影响皮质跟踪,并调节语音在背景噪声中的理解。然而,tACS 如何确切地影响与语音相关的皮质活动,以及它如何导致对语音理解的观察到的影响,仍然知之甚少。最近提出了一种用于在生物物理上合理的尖峰神经网络中进行皮质语音处理的计算模型。在这里,我们扩展了该模型,以研究类似于先前在实验研究中应用的不同类型的刺激波形对噪声中的语音处理的影响。我们特别评估了在与外源性刺激配对时,从神经网络活动中解码语音的效果如何。我们发现,在没有电流刺激的情况下,语音在噪声中的解码准确性与人类听众在背景噪声中理解语音的准确性相当。我们进一步发现,电流刺激可以使语音解码准确性提高几个百分点,与 tACS 对语音在噪声中理解的影响相当。我们的模拟进一步使我们能够确定产生最大增强语音在噪声中编码的刺激波形的参数。因此,我们的模型提供了对弱交流电流刺激可能影响语音理解的潜在神经机制的见解,并允许筛选大量刺激波形对语音处理的影响。