4.6 Article

Modelling mouse auditory response dynamics along a continuum of consciousness using a deep recurrent neural network

期刊

JOURNAL OF NEURAL ENGINEERING
卷 19, 期 5, 页码 -

出版社

IOP Publishing Ltd
DOI: 10.1088/1741-2552/ac9257

关键词

consciousnesses; auditory neurophysiology; computational modelling; state of awareness; event-related potential; auditory novelty response

资金

  1. UK Engineering and Physical Sciences Research Council [EP/F50036X/1]
  2. Research Institute of Rangsit University [90/2561]

向作者/读者索取更多资源

This study used an RNN to model changes in ERP morphology during transitions between states of consciousness. The results showed that during the transition from anesthesia to consciousness, specific peak amplitudes within certain time ranges displayed sigmoid characteristics. This method has the potential to be applied to human data, supporting the clinical use of ERPs to predict transitions in consciousness.
Objective. Understanding neurophysiological changes that accompany transitions between anaesthetized and conscious states is a key objective of anesthesiology and consciousness science. This study aimed to characterize the dynamics of auditory-evoked potential morphology in mice along a continuum of consciousness. Approach. Epidural field potentials were recorded from above the primary auditory cortices of two groups of laboratory mice: urethane-anaesthetized (A, n = 14) and conscious (C, n = 17). Both groups received auditory stimulation in the form of a repeated pure-tone stimulus, before and after receiving 10 mg kg(-1) i.p. ketamine (AK and CK). Evoked responses were then ordered by ascending sample entropy into AK, A, CK, and C, considered to reflect physiological correlates of awareness. These data were used to train a recurrent neural network (RNN) with an input parameter encoding state. Model outputs were compared with grand-average event-related potential (ERP) waveforms. Subsequently, the state parameter was varied to simulate changes in the ERP that occur during transitions between states, and relationships with dominant peak amplitudes were quantified. Main results. The RNN synthesized output waveforms that were in close agreement with grand-average ERPs for each group (r(2) > 0.9, p < 0.0001). Varying the input state parameter generated model outputs reflecting changes in ERP morphology predicted to occur between states. Positive peak amplitudes within 25-50 ms, and negative peak amplitudes within 50-75 ms post-stimulus-onset, were found to display a sigmoidal characteristic during the transition from anaesthetized to conscious states. In contrast, negative peak amplitudes within 0-25 ms displayed greater linearity. Significance. This study demonstrates a method for modelling changes in ERP morphology that accompany transitions between states of consciousness using an RNN. In future studies, this approach may be applied to human data to support the clinical use of ERPs to predict transition to consciousness.

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