In present work,EEG and BP were used as the indexes to observe the relationbetween the change of EEG and the change of BP in the endotoxic shocked rats。At maintainingshock for 1 hr,dysrhythmia of EEG appeared in 38/4...In present work,EEG and BP were used as the indexes to observe the relationbetween the change of EEG and the change of BP in the endotoxic shocked rats。At maintainingshock for 1 hr,dysrhythmia of EEG appeared in 38/46 cases.Simultaneously,there was a markeddrop in Bp,P【0.05.Following the shocked time prolonged,dysrhythmia was getting severe。AfterEA”Rengzhong"(n=14)or“Zusanli”(n=12),BP was significantly increased(P【0.05),anddysrhythmia of EEG showed clear improvement in most of the rats。There was a close relation be-tween the changes of EEG and BP,the change of EEG had a direct bearing on the change of BP.展开更多
Depression has become a major health threat around the world,especially for older people,so the effective detection method for depression is a great public health challenge.Electroencephalogram(EEG)can be used as a bi...Depression has become a major health threat around the world,especially for older people,so the effective detection method for depression is a great public health challenge.Electroencephalogram(EEG)can be used as a biomarker to effectively explore depression recognition.Motivated by the studies that multiple smaller scale kernels could increase nonlinear expression compared to a larger kernel,this article proposes a model named the three-dimensional multiscale kernels convolutional neural network model for the depression disorder recognition(3DMKDR),which is a three-dimensional convolutional neural network model with multiscale convolutional kernels for depression recognition based on EEG signals.A three-dimensional structure of the EEG is built by extending one-dimensional feature sequences into a two-dimensional electrode matrix to excavate the related spatiotemporal information among electrodes and the collected electrode matrix.By the major depressive disorder(MDD)and the multi-modal open dataset for mental-disorder analysis(MODMA)datasets,the experiment shows that the accuracies of depression recognition are up to99.86%and 98.01%in the subject-dependent experiment,and 95.80%and 82.27%in the subjectindependent experiment,which are higher than alternative competitive methods.The experimental results demonstrate that the proposed 3DMKDR is potentially useful for depression recognition in older persons in the future.展开更多
Brain-computer interfaces(BCI)use neural activity as a control signal to enable direct communication between the human brain and external devices.The electrical signals generated by the brain are captured through elec...Brain-computer interfaces(BCI)use neural activity as a control signal to enable direct communication between the human brain and external devices.The electrical signals generated by the brain are captured through electroencephalogram(EEG)and translated into neural intentions reflecting the user’s behavior.Correct decoding of the neural intentions then facilitates the control of external devices.Reinforcement learning-based BCIs enhance decoders to complete tasks based only on feedback signals(rewards)from the environment,building a general framework for dynamic mapping from neural intentions to actions that adapt to changing environments.However,using traditional reinforcement learning methods can have challenges such as the curse of dimensionality and poor generalization.Therefore,in this paper,we use deep reinforcement learning to construct decoders for the correct decoding of EEG signals,demonstrate its feasibility through experiments,and demonstrate its stronger generalization on motion imaging(MI)EEG data signals with high dynamic characteristics.展开更多
目前脑电信号(EEG)的抑郁症识别方法主要采用单一特征提取方法,无法覆盖多域特征信息,导致现有模型分类性能不高,因此提出了一种多域特征结合CBAM模型(CNN-BiLSTM-attention mechanism)的抑郁症识别算法。首先利用连续小波变换(CWT)提...目前脑电信号(EEG)的抑郁症识别方法主要采用单一特征提取方法,无法覆盖多域特征信息,导致现有模型分类性能不高,因此提出了一种多域特征结合CBAM模型(CNN-BiLSTM-attention mechanism)的抑郁症识别算法。首先利用连续小波变换(CWT)提取时频域特征,并结合脑电电极空间信息构成2D特征图像,共同保留脑电的空间、时间和频率信息;然后使用卷积神经网络(convolutional neural network,CNN)提取空间和频域特征,再输入双向长短时记忆网络(bidirectional long and short-term memory,BiLSTM)以捕获时间信息;最后结合注意力机制(attention mechanism,AM),对网络提取的多域特征赋予不同的权重,以筛选出更具代表性的抑郁特征,从而提高识别抑郁症的准确性。实验表明,本文提出的基于CBAM模型的抑郁症识别算法在公共数据集上取得了99.10%的准确率,为脑电信号抑郁症识别研究提供了一种有效的新方法。展开更多
基金The Project Supported by National Natural Science Foundation of China
文摘In present work,EEG and BP were used as the indexes to observe the relationbetween the change of EEG and the change of BP in the endotoxic shocked rats。At maintainingshock for 1 hr,dysrhythmia of EEG appeared in 38/46 cases.Simultaneously,there was a markeddrop in Bp,P【0.05.Following the shocked time prolonged,dysrhythmia was getting severe。AfterEA”Rengzhong"(n=14)or“Zusanli”(n=12),BP was significantly increased(P【0.05),anddysrhythmia of EEG showed clear improvement in most of the rats。There was a close relation be-tween the changes of EEG and BP,the change of EEG had a direct bearing on the change of BP.
基金supported by the National Natural Science Foundation of China(Nos.61862058,61962034,and 8226070356)in part by the Gansu Provincial Science&Technology Department(No.20JR10RA076)。
文摘Depression has become a major health threat around the world,especially for older people,so the effective detection method for depression is a great public health challenge.Electroencephalogram(EEG)can be used as a biomarker to effectively explore depression recognition.Motivated by the studies that multiple smaller scale kernels could increase nonlinear expression compared to a larger kernel,this article proposes a model named the three-dimensional multiscale kernels convolutional neural network model for the depression disorder recognition(3DMKDR),which is a three-dimensional convolutional neural network model with multiscale convolutional kernels for depression recognition based on EEG signals.A three-dimensional structure of the EEG is built by extending one-dimensional feature sequences into a two-dimensional electrode matrix to excavate the related spatiotemporal information among electrodes and the collected electrode matrix.By the major depressive disorder(MDD)and the multi-modal open dataset for mental-disorder analysis(MODMA)datasets,the experiment shows that the accuracies of depression recognition are up to99.86%and 98.01%in the subject-dependent experiment,and 95.80%and 82.27%in the subjectindependent experiment,which are higher than alternative competitive methods.The experimental results demonstrate that the proposed 3DMKDR is potentially useful for depression recognition in older persons in the future.
文摘Brain-computer interfaces(BCI)use neural activity as a control signal to enable direct communication between the human brain and external devices.The electrical signals generated by the brain are captured through electroencephalogram(EEG)and translated into neural intentions reflecting the user’s behavior.Correct decoding of the neural intentions then facilitates the control of external devices.Reinforcement learning-based BCIs enhance decoders to complete tasks based only on feedback signals(rewards)from the environment,building a general framework for dynamic mapping from neural intentions to actions that adapt to changing environments.However,using traditional reinforcement learning methods can have challenges such as the curse of dimensionality and poor generalization.Therefore,in this paper,we use deep reinforcement learning to construct decoders for the correct decoding of EEG signals,demonstrate its feasibility through experiments,and demonstrate its stronger generalization on motion imaging(MI)EEG data signals with high dynamic characteristics.
文摘目前脑电信号(EEG)的抑郁症识别方法主要采用单一特征提取方法,无法覆盖多域特征信息,导致现有模型分类性能不高,因此提出了一种多域特征结合CBAM模型(CNN-BiLSTM-attention mechanism)的抑郁症识别算法。首先利用连续小波变换(CWT)提取时频域特征,并结合脑电电极空间信息构成2D特征图像,共同保留脑电的空间、时间和频率信息;然后使用卷积神经网络(convolutional neural network,CNN)提取空间和频域特征,再输入双向长短时记忆网络(bidirectional long and short-term memory,BiLSTM)以捕获时间信息;最后结合注意力机制(attention mechanism,AM),对网络提取的多域特征赋予不同的权重,以筛选出更具代表性的抑郁特征,从而提高识别抑郁症的准确性。实验表明,本文提出的基于CBAM模型的抑郁症识别算法在公共数据集上取得了99.10%的准确率,为脑电信号抑郁症识别研究提供了一种有效的新方法。