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Detection of Traumatic Brain Injury Using Single Channel Electroencephalogram in Mice

机译:小鼠用单通道脑电图检测创伤性脑损伤

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Preclinical studies of traumatic brain injury (TBI) are often performed using a murine model of mild traumatic brain injury (mTBI) due to highly controlled settings and high reproducibility in this experimental model, compared to studies of human TBI. We have previously demonstrated persistent changes in the sleep wake cycle using a widely accepted mouse model of mTBI. The gold standard of sleep wake assessment is achieved by recording brain electroencephalogram (EEG), which not only allows for standard sleep staging but also allows further signal processing through quantitative EEG methods. Conventional methods of sleep staging require manual scoring by a trained expert. Here, a 1-D deep convolutional neural network (Deep CNN) is proposed to automatically score sleep stages and identify mTBI from a single-channel EEG signal with duration of 64 seconds by classifying the EEG signal into one of four classes: sham (control) wake, sham (control) sleep, mTBI wake, and mTBI sleep. We demonstrated that the proposed Deep CNN has the ability to learn features to classify the target classes. Deployment of the trained model on Raspberry Pi further indicates the capacity to perform classification in real time and mobile applications. Thus, the proposed system has the potential to provide a low-cost and fast method for detection of TBI in individuals.
机译:由于对人类TBI的研究相比,由于高度控制的环境和高再现性,通常使用温和创伤性脑损伤(MTBI)的小鼠模型进行创伤性脑损伤(TBI)的临床前研究。我们之前已经使用广泛接受的MTBI鼠标模型显示了睡眠唤醒周期的持续变化。通过记录脑脑电图(EEG)来实现睡眠唤醒评估的金标准,这不仅允许标准睡眠分期,而且还允许通过定量EEG方法进行进一步的信号处理。常规睡眠分期方法需要由训练有素的专家进行手动评分。这里,提出了一个1-D深卷积神经网络(深CNN),通过将EEG信号分类为四类中的一个:Sham(控制,从单通道EEG信号自动评分睡眠阶段并从单通道EEG信号识别MTBI,持续64秒)唤醒,假(控制)睡眠,MTBI唤醒和MTBI睡眠。我们证明,建议的深层CNN具有学习功能来分类目标类的功能。在Raspberry PI上部署训练有素的模型进一步表明了实时和移动应用程序执行分类的能力。因此,所提出的系统具有提供低成本和快速的方法,用于检测个体中的TBI。

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