Biomedical Signals and Systems, Technical Medical Centre, University of Twente, Enschede, The Netherlands.
Biomedical Signals and Systems, Technical Medical Centre, University of Twente, Enschede, The Netherlands.
J Neurosci Methods. 2022 May 15;374:109580. doi: 10.1016/j.jneumeth.2022.109580. Epub 2022 Mar 25.
Perceptual thresholds are measured in scientific and clinical setting to evaluate performance of the nervous system in essential tasks such as vision, hearing, touch, and registration of pain. Current procedures for estimating perceptual thresholds depend on the analysis of pairs of stimuli and participant responses, relying on the commitment and cognitive ability of subjects to respond accurately and consistently to stimulation. Here, we demonstrate that it is possible to measure the threshold for the perception of nociceptive stimuli based on non-invasively recorded brain activity alone using a deep neural network.
For each stimulus, a trained deep neural network performed a 2-interval forced choice procedure, in which the network had to choose which of two time intervals in the electroencephalogram represented post-stimulus brain activity. Network responses were used to estimate the perceptual threshold in real-time using a psychophysical method of limits.
Network classification was able to match participants in reporting stimulus perception, resulting in average network-estimated perceptual thresholds that matched perceptual thresholds based on participant reports.
The neural network successfully separated trials containing brain responses from trials without and could consistently estimate perceptual thresholds in real-time during a Go-/No-Go procedure and a counting task.
Deep neural networks monitoring non-invasively recorded brain activity are now able to accurately predict stimulus perception and estimate the perceptual threshold in real-time without any verbal or motor response from the participant.
在科学和临床环境中,感知阈值是通过测量来评估神经系统在视觉、听觉、触觉和疼痛感知等基本任务中的表现。目前估计感知阈值的程序依赖于对刺激对和参与者反应的分析,依赖于参与者准确和一致地对刺激做出反应的承诺和认知能力。在这里,我们证明,仅使用深度神经网络,就可以基于非侵入性记录的大脑活动来测量疼痛感知刺激的阈值。
对于每个刺激,经过训练的深度神经网络执行 2 间隔强制选择程序,其中网络必须选择脑电图中两个时间间隔中的哪一个代表刺激后大脑活动。使用极限心理物理方法,网络响应用于实时估计感知阈值。
网络分类能够匹配报告刺激感知的参与者,从而使平均网络估计的感知阈值与基于参与者报告的感知阈值相匹配。
神经网络能够成功地区分包含大脑反应的试验和没有大脑反应的试验,并且能够在 Go/No-Go 程序和计数任务中实时一致地估计感知阈值。
现在,监测非侵入性记录的大脑活动的深度神经网络能够准确地预测刺激感知,并实时估计感知阈值,而无需参与者做出任何口头或运动反应。