1.Lance-Adams syndrome: A case report and literature review
Journal of Apoplexy and Nervous Diseases 2025;42(2):178-181
		                        		
		                        			
		                        			This article aims to improve the understanding of Lance-Adams syndrome (LAS) in clinical practice. By analyzing the clinical data of a patient diagnosed with LAS in 2021 and conducting a literature review, this article elaborates on the clinical symptoms, pathogenesis, diagnostic methods, and treatment regimens of LAS. LAS is a rare central nervous system disorder characterized by action myoclonus after cerebral hypoxia. The etiology of LAS is mainly associated with cerebral hypoxia, and cardiopulmonary resuscitation and asphyxia are the most common predisposing factors for LAS. Characteristic manifestations on electroencephalography have an important value in diagnosis. Clinicians should enhance their ability to identify LAS through typical clinical symptoms and electroencephalography in the early stage. This article also points out that there are still many challenges in the treatment of LAS, which requires further research and exploration. This article has an important reference value in improving the understanding, diagnosis, and treatment of LAS.
		                        		
		                        		
		                        		
		                        			Electroencephalography
		                        			
		                        		
		                        	
2.Multisensory Conflict Impairs Cortico-Muscular Network Connectivity and Postural Stability: Insights from Partial Directed Coherence Analysis.
Guozheng WANG ; Yi YANG ; Kangli DONG ; Anke HUA ; Jian WANG ; Jun LIU
Neuroscience Bulletin 2024;40(1):79-89
		                        		
		                        			
		                        			Sensory conflict impacts postural control, yet its effect on cortico-muscular interaction remains underexplored. We aimed to investigate sensory conflict's influence on the cortico-muscular network and postural stability. We used a rotating platform and virtual reality to present subjects with congruent and incongruent sensory input, recorded EEG (electroencephalogram) and EMG (electromyogram) data, and constructed a directed connectivity network. The results suggest that, compared to sensory congruence, during sensory conflict: (1) connectivity among the sensorimotor, visual, and posterior parietal cortex generally decreases, (2) cortical control over the muscles is weakened, (3) feedback from muscles to the cortex is strengthened, and (4) the range of body sway increases and its complexity decreases. These results underline the intricate effects of sensory conflict on cortico-muscular networks. During the sensory conflict, the brain adaptively decreases the integration of conflicting information. Without this integrated information, cortical control over muscles may be lessened, whereas the muscle feedback may be enhanced in compensation.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Muscle, Skeletal
		                        			;
		                        		
		                        			Electromyography/methods*
		                        			;
		                        		
		                        			Electroencephalography/methods*
		                        			;
		                        		
		                        			Brain
		                        			;
		                        		
		                        			Brain Mapping
		                        			
		                        		
		                        	
3.A research on epilepsy source localization from scalp electroencephalograph based on patient-specific head model and multi-dipole model.
Ruowei QU ; Zhaonan WANG ; Shifeng WANG ; Yao WANG ; Le WANG ; Shaoya YIN ; Junhua GU ; Guizhi XU
Journal of Biomedical Engineering 2023;40(2):272-279
		                        		
		                        			
		                        			Accurate source localization of the epileptogenic zone (EZ) is the primary condition of surgical removal of EZ. The traditional localization results based on three-dimensional ball model or standard head model may cause errors. This study intended to localize the EZ by using the patient-specific head model and multi-dipole algorithms using spikes during sleep. Then the current density distribution on the cortex was computed and used to construct the phase transfer entropy functional connectivity network between different brain areas to obtain the localization of EZ. The experiment result showed that our improved methods could reach the accuracy of 89.27% and the number of implanted electrodes could be reduced by (19.34 ± 7.15)%. This work can not only improve the accuracy of EZ localization, but also reduce the additional injury and potential risk caused by preoperative examination and surgical operation, and provide a more intuitive and effective reference for neurosurgeons to make surgical plans.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Scalp
		                        			;
		                        		
		                        			Brain Mapping/methods*
		                        			;
		                        		
		                        			Epilepsy/diagnosis*
		                        			;
		                        		
		                        			Electroencephalography/methods*
		                        			;
		                        		
		                        			Brain
		                        			
		                        		
		                        	
4.Automatic sleep staging based on power spectral density and random forest.
Journal of Biomedical Engineering 2023;40(2):280-285
		                        		
		                        			
		                        			The method of using deep learning technology to realize automatic sleep staging needs a lot of data support, and its computational complexity is also high. In this paper, an automatic sleep staging method based on power spectral density (PSD) and random forest is proposed. Firstly, the PSDs of six characteristic waves (K complex wave, δ wave, θ wave, α wave, spindle wave, β wave) in electroencephalogram (EEG) signals were extracted as the classification features, and then five sleep states (W, N1, N2, N3, REM) were automatically classified by random forest classifier. The whole night sleep EEG data of healthy subjects in the Sleep-EDF database were used as experimental data. The effects of using different EEG signals (Fpz-Cz single channel, Pz-Oz single channel, Fpz-Cz + Pz-Oz dual channel), different classifiers (random forest, adaptive boost, gradient boost, Gaussian naïve Bayes, decision tree, K-nearest neighbor), and different training and test set divisions (2-fold cross-validation, 5-fold cross-validation, 10-fold cross-validation, single subject) on the classification effect were compared. The experimental results showed that the effect was the best when the input was Pz-Oz single-channel EEG signal and the random forest classifier was used, no matter how the training set and test set were transformed, the classification accuracy was above 90.79%. The overall classification accuracy, macro average F1 value, and Kappa coefficient could reach 91.94%, 73.2% and 0.845 respectively at the highest, which proved that this method was effective and not susceptible to data volume, and had good stability. Compared with the existing research, our method is more accurate and simpler, and is suitable for automation.
		                        		
		                        		
		                        		
		                        			Humans
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		                        			Random Forest
		                        			;
		                        		
		                        			Bayes Theorem
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		                        			Sleep Stages
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		                        			Sleep
		                        			;
		                        		
		                        			Electroencephalography/methods*
		                        			
		                        		
		                        	
5.Automatic sleep staging algorithm for stochastic depth residual networks based on transfer learning.
Yunzhi TIAN ; Qiang ZHOU ; Wan LI
Journal of Biomedical Engineering 2023;40(2):286-294
		                        		
		                        			
		                        			The existing automatic sleep staging algorithms have the problems of too many model parameters and long training time, which in turn results in poor sleep staging efficiency. Using a single channel electroencephalogram (EEG) signal, this paper proposed an automatic sleep staging algorithm for stochastic depth residual networks based on transfer learning (TL-SDResNet). Firstly, a total of 30 single-channel (Fpz-Cz) EEG signals from 16 individuals were selected, and after preserving the effective sleep segments, the raw EEG signals were pre-processed using Butterworth filter and continuous wavelet transform to obtain two-dimensional images containing its time-frequency joint features as the input data for the staging model. Then, a ResNet50 pre-trained model trained on a publicly available dataset, the sleep database extension stored in European data format (Sleep-EDFx) was constructed, using a stochastic depth strategy and modifying the output layer to optimize the model structure. Finally, transfer learning was applied to the human sleep process throughout the night. The algorithm in this paper achieved a model staging accuracy of 87.95% after conducting several experiments. Experiments show that TL-SDResNet50 can accomplish fast training of a small amount of EEG data, and the overall effect is better than other staging algorithms and classical algorithms in recent years, which has certain practical value.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Sleep Stages
		                        			;
		                        		
		                        			Algorithms
		                        			;
		                        		
		                        			Sleep
		                        			;
		                        		
		                        			Wavelet Analysis
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		                        			Electroencephalography/methods*
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		                        			Machine Learning
		                        			
		                        		
		                        	
6.Ethics considerations on brain-computer interface technology.
Zhe ZHANG ; Xu ZHAO ; Yixin MA ; Peng DING ; Wenya NAN ; Anmin GONG ; Yunfa FU
Journal of Biomedical Engineering 2023;40(2):358-364
		                        		
		                        			
		                        			The development and potential application of brain-computer interface (BCI) technology is closely related to the human brain, so that the ethical regulation of BCI has become an important issue attracting the consideration of society. Existing literatures have discussed the ethical norms of BCI technology from the perspectives of non-BCI developers and scientific ethics, while few discussions have been launched from the perspective of BCI developers. Therefore, there is a great need to study and discuss the ethical norms of BCI technology from the perspective of BCI developers. In this paper, we present the user-centered and non-harmful BCI technology ethics, and then discuss and look forward on them. This paper argues that human beings can cope with the ethical issues arising from BCI technology, and as BCI technology develops, its ethical norms will be improved continuously. It is expected that this paper can provide thoughts and references for the formulation of ethical norms related to BCI technology.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Brain-Computer Interfaces
		                        			;
		                        		
		                        			Technology
		                        			;
		                        		
		                        			Brain
		                        			;
		                        		
		                        			User-Computer Interface
		                        			;
		                        		
		                        			Electroencephalography
		                        			
		                        		
		                        	
7.Multi-scale feature extraction and classification of motor imagery electroencephalography based on time series data enhancement.
Hongli LI ; Haoyu LIU ; Hongyu CHEN ; Ronghua ZHANG
Journal of Biomedical Engineering 2023;40(3):418-425
		                        		
		                        			
		                        			The brain-computer interface (BCI) based on motor imagery electroencephalography (MI-EEG) enables direct information interaction between the human brain and external devices. In this paper, a multi-scale EEG feature extraction convolutional neural network model based on time series data enhancement is proposed for decoding MI-EEG signals. First, an EEG signals augmentation method was proposed that could increase the information content of training samples without changing the length of the time series, while retaining its original features completely. Then, multiple holistic and detailed features of the EEG data were adaptively extracted by multi-scale convolution module, and the features were fused and filtered by parallel residual module and channel attention. Finally, classification results were output by a fully connected network. The application experimental results on the BCI Competition IV 2a and 2b datasets showed that the proposed model achieved an average classification accuracy of 91.87% and 87.85% for the motor imagery task, respectively, which had high accuracy and strong robustness compared with existing baseline models. The proposed model does not require complex signals pre-processing operations and has the advantage of multi-scale feature extraction, which has high practical application value.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Time Factors
		                        			;
		                        		
		                        			Brain
		                        			;
		                        		
		                        			Electroencephalography
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		                        			Imagery, Psychotherapy
		                        			;
		                        		
		                        			Neural Networks, Computer
		                        			
		                        		
		                        	
8.Effect of electroconvulsive therapy on brain functional network in major depressive disorder.
Shuxiang TIAN ; Guizhi XU ; Xinsheng YANG ; B Fitzgerald PAUL ; Wang ALAN
Journal of Biomedical Engineering 2023;40(3):426-433
		                        		
		                        			
		                        			Electroconvulsive therapy (ECT) is an interventional technique capable of highly effective neuromodulation in major depressive disorder (MDD), but its antidepressant mechanism remains unclear. By recording the resting-state electroencephalogram (RS-EEG) of 19 MDD patients before and after ECT, we analyzed the modulation effect of ECT on the resting-state brain functional network of MDD patients from multiple perspectives: estimating spontaneous EEG activity power spectral density (PSD) using Welch algorithm; constructing brain functional network based on imaginary part coherence (iCoh) and calculate functional connectivity; using minimum spanning tree theory to explore the topological characteristics of brain functional network. The results show that PSD, functional connectivity, and topology in multiple frequency bands were significantly changed after ECT in MDD patients. The results of this study reveal that ECT changes the brain activity of MDD patients, which provides an important reference in the clinical treatment and mechanism analysis of MDD.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Depressive Disorder, Major/therapy*
		                        			;
		                        		
		                        			Electroconvulsive Therapy
		                        			;
		                        		
		                        			Brain
		                        			;
		                        		
		                        			Algorithms
		                        			;
		                        		
		                        			Electroencephalography
		                        			
		                        		
		                        	
9.A method of mental disorder recognition based on visibility graph.
Bingtao ZHANG ; Dan WEI ; Wenwen CHANG ; Zhifei YANG ; Yanlin LI
Journal of Biomedical Engineering 2023;40(3):442-449
		                        		
		                        			
		                        			The causes of mental disorders are complex, and early recognition and early intervention are recognized as effective way to avoid irreversible brain damage over time. The existing computer-aided recognition methods mostly focus on multimodal data fusion, ignoring the asynchronous acquisition problem of multimodal data. For this reason, this paper proposes a framework of mental disorder recognition based on visibility graph (VG) to solve the problem of asynchronous data acquisition. First, time series electroencephalograms (EEG) data are mapped to spatial visibility graph. Then, an improved auto regressive model is used to accurately calculate the temporal EEG data features, and reasonably select the spatial metric features by analyzing the spatiotemporal mapping relationship. Finally, on the basis of spatiotemporal information complementarity, different contribution coefficients are assigned to each spatiotemporal feature and to explore the maximum potential of feature so as to make decisions. The results of controlled experiments show that the method in this paper can effectively improve the recognition accuracy of mental disorders. Taking Alzheimer's disease and depression as examples, the highest recognition rates are 93.73% and 90.35%, respectively. In summary, the results of this paper provide an effective computer-aided tool for rapid clinical diagnosis of mental disorders.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Mental Disorders/diagnosis*
		                        			;
		                        		
		                        			Alzheimer Disease/diagnosis*
		                        			;
		                        		
		                        			Brain Injuries
		                        			;
		                        		
		                        			Electroencephalography
		                        			;
		                        		
		                        			Recognition, Psychology
		                        			
		                        		
		                        	
10.Automatic sleep staging model based on single channel electroencephalogram signal.
Haowei ZHANG ; Zhe XU ; Chengmei YUAN ; Caojun JI ; Ying LIU
Journal of Biomedical Engineering 2023;40(3):458-464
		                        		
		                        			
		                        			Sleep staging is the basis for solving sleep problems. There's an upper limit for the classification accuracy of sleep staging models based on single-channel electroencephalogram (EEG) data and features. To address this problem, this paper proposed an automatic sleep staging model that mixes deep convolutional neural network (DCNN) and bi-directional long short-term memory network (BiLSTM). The model used DCNN to automatically learn the time-frequency domain features of EEG signals, and used BiLSTM to extract the temporal features between the data, fully exploiting the feature information contained in the data to improve the accuracy of automatic sleep staging. At the same time, noise reduction techniques and adaptive synthetic sampling were used to reduce the impact of signal noise and unbalanced data sets on model performance. In this paper, experiments were conducted using the Sleep-European Data Format Database Expanded and the Shanghai Mental Health Center Sleep Database, and achieved an overall accuracy rate of 86.9% and 88.9% respectively. When compared with the basic network model, all the experimental results outperformed the basic network, further demonstrating the validity of this paper's model, which can provide a reference for the construction of a home sleep monitoring system based on single-channel EEG signals.
		                        		
		                        		
		                        		
		                        			China
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		                        			Sleep Stages
		                        			;
		                        		
		                        			Sleep
		                        			;
		                        		
		                        			Electroencephalography
		                        			;
		                        		
		                        			Databases, Factual
		                        			
		                        		
		                        	
            
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