Pupil Dynamics-derived Sleep Stage Classification of a Head-fixed Mouse Using a Recurrent Neural Network.

IF 1.1 Q4 MEDICINE, RESEARCH & EXPERIMENTAL
Goh Kobayashi, Kenji F Tanaka, Norio Takata
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引用次数: 0

Abstract

The standard method for sleep state classification is thresholding the amplitudes of electroencephalography (EEG) and electromyography (EMG) data, followed by manual correction by an expert. Although popular, this method has some shortcomings: (1) the time-consuming manual correction by human experts is sometimes a bottleneck hindering sleep studies, (2) EEG electrodes on the skull interfere with wide-field imaging of the cortical activity of a head-fixed mouse under a microscope, (3) invasive surgery to fix the electrodes on the thin mouse skull risks brain tissue injury, and (4) metal electrodes for EEG and EMG recording are difficult to apply to some experimental apparatus such as that for functional magnetic resonance imaging. To overcome these shortcomings, we propose a pupil dynamics-based vigilance state classification method for a head-fixed mouse using a long short-term memory (LSTM) model, a variant of a recurrent neural network, for multi-class labeling of NREM, REM, and WAKE states. For supervisory hypnography, EEG and EMG recording were performed on head-fixed mice. This setup was combined with left eye pupillometry using a USB camera and a markerless tracking toolbox, DeepLabCut. Our open-source LSTM model with feature inputs of pupil diameter, pupil location, pupil velocity, and eyelid opening for 10 s at a 10 Hz sampling rate achieved vigilance state estimation with a higher classification performance (macro F1 score, 0.77; accuracy, 86%) than a feed-forward neural network. Findings from a diverse range of pupillary dynamics implied possible subdivision of the vigilance states defined by EEG and EMG. Pupil dynamics-based hypnography can expand the scope of alternatives for sleep stage scoring of head-fixed mice.

基于瞳孔动态的头部固定小鼠睡眠阶段分类。
睡眠状态分类的标准方法是对脑电图(EEG)和肌电图(EMG)数据的振幅进行阈值设定,然后由专家进行人工校正。虽然很流行,但这种方法也有一些缺点:(1)人类专家耗时的手工校正有时是睡眠研究的瓶颈;(2)颅骨上的脑电图电极会干扰显微镜下固定头部的小鼠皮层活动的宽视场成像;(3)将电极固定在小鼠薄颅骨上的侵入性手术有损伤脑组织的风险;(4)用于脑电图和肌电记录的金属电极难以应用于某些实验设备,如功能磁共振成像设备。为了克服这些缺点,我们提出了一种基于瞳孔动态的头部固定小鼠警觉性状态分类方法,该方法使用长短期记忆(LSTM)模型(一种递归神经网络的变体)对NREM、REM和WAKE状态进行多类别标记。在监督催眠中,对头部固定的小鼠进行脑电图和肌电图记录。该装置与使用USB摄像头和无标记跟踪工具箱DeepLabCut的左眼瞳孔测量相结合。我们的开源LSTM模型以瞳孔直径、瞳孔位置、瞳孔速度和眼睑张开为特征输入,在10 Hz的采样率下进行10 s的警戒状态估计,获得了更高的分类性能(宏观F1得分为0.77;准确率(86%)高于前馈神经网络。不同范围的瞳孔动态的发现暗示了脑电图和肌电图所定义的警觉状态的可能细分。基于瞳孔动态的催眠可以扩大头固定小鼠睡眠阶段评分的选择范围。
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来源期刊
KEIO JOURNAL OF MEDICINE
KEIO JOURNAL OF MEDICINE MEDICINE, RESEARCH & EXPERIMENTAL-
CiteScore
3.10
自引率
0.00%
发文量
23
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