1.Emotional processing characteristics and electroencephalography power values in patients with Parkinson disease: A differential analysis
Journal of Apoplexy and Nervous Diseases 2026;43(3):259-264
Objective To investigate the differences in emotional processing characteristics and electroencephalography (EEG) power values in patients with Parkinson disease (PD). Methods A total of 24 PD patients were enrolled as subjects, and 30 healthy individuals were enrolled as control group. With the use of the EPIE experimental paradigm, SAM questionnaire was used to determine the scores of emotional valence and arousal, and EEG was used for real-time monitoring of cortical EEG signals. The two groups were compared in terms of the differences in valence/arousal and EEG power values under different emotions and their correlation. Results The PD group had significantly higher BAI and BDI scores than the control group[BAI(16.92±3.83)vs(11.62±3.65),t=4.521,P<0.05;BDI(22.69±2.30)vs(14.17±4.06),t=7.981,P<0.05]. In the negative mood, there were significant differences in valence/arousal between the two groups (t=4.505,-7.705,bothP<0.05). There were significant differences between the two groups in power values at Fp1,Fp2,F7,F3,F4,T3,T4, and T5(t=-4.12,-12.43,5.76,-2.90,-4.72,-5.34,-5.81,-2.65,all P<0.05). In the negative mood, for the control group, valence score was correlated with Fp1 (r=-0.837, P<0.01), Fp2 (r=-0.920, P<0.01),F4(r=-0.604,P=0.008),P3(r=-0.658,P=0.003),and P4(r=-0.546,P=0.019), and arousal score was correlated with Fp1(r=0.887, P<0.01), Fp2 (r=0.958, P=0.003),F4(r=0.683,P=0.003),P3 (r=0.721, P=0.003),and P4 (r=0.610,P=0.007); for the PD group, valence score was correlated with Fp2(r=-0.490,P=0.015) and F7(r=-0.564,P=0.004), and arousal score was correlated with Fp2 (r=0.440, P=0.031) and F7(r=0.853,P<0.01). Conclusion Patients with PD have negative emotional processing abnormalities associated with right PFC and left lateral FL.
Electroencephalography
2.Valacyclovir-Associated Neurotoxicity presenting as acute encephalopathy in an elderly hemodialysis patient: A case report.
Mark Jenzen H. TRIVILEGIO ; Joselito B. DIAZ
Journal of Medicine University of Santo Tomas 2026;10(1):1923-1927
Valacyclovir-associated neurotoxicity (VAN) is a recognized adverse effect in elderly patients with renal impairment but remains underdiagnosed due to its nonspecific presentation and overlap with acute neurologic emergencies. We report a 78-year-old Filipino female with end-stage renal disease on maintenance hemodialysis who developed acute disorientation, agitation, vivid visual hallucinations and generalized weakness shortly after initiation of valacyclovir for herpes zoster. Given the abrupt onset of neuropsychiatric symptoms, viral encephalitis was initially considered. Magnetic resonance imaging of the brain showed no evidence of acute infarction or encephalitis, while electroencephalography demonstrated diffuse generalized slowing consistent with an encephalopathic process. Review of the medication history revealed valacyclovir dosing that exceeded recommendations for patients with end-stage renal disease. Valacyclovir was discontinued and emergent hemodialysis was initiated resulting in marked improvement in sensorium after the second session and complete resolution of symptoms after the third. This case shows VAN as an important diagnostic mimic of acute encephalopathy in elderly patients with renal failure and emphasizes the critical role of early medication review in preventing unnecessary investigations and enabling prompt, reversible management.
Human ; Female ; Aged: 65-79 Yrs Old ; Magnetic Resonance Imaging ; Kidney Failure, Chronic ; Magnetic Resonance Spectroscopy ; Electroencephalography ; Medication Review ; World Health Organization
3.Prospects and technical challenges of non-invasive brain-computer interfaces in manned space missions.
Yumeng JU ; Jiajun LIU ; Zejun LI ; Yiming LIU ; Hairuo HE ; Jin LIU ; Bangshan LIU ; Mi WANG ; Yan ZHANG
Journal of Central South University(Medical Sciences) 2025;50(8):1363-1370
During long-duration manned space missions, the complex and extreme space environment exerts significant impacts on astronauts' physiological, psychological, and cognitive functions, thereby posing direct risks to mission safety and operational efficiency. As a key bridge between the brain and external devices, brain-computer interface (BCI) technology enables precise acquisition and interpretation of neural signals, offering a novel paradigm for human-machine collaboration in manned spaceflight. Non-invasive BCI technology shows broad application prospects across astronaut selection, mission training, in-orbit task execution, and post-mission rehabilitation. During mission preparation, multimodal signal assessment and neurofeedback training based on BCI can effectively enhance cognitive performance and psychological resilience. During mission execution, BCI can provide real-time monitoring of physiological and psychological states and enable intention-based device control, thereby improving operational efficiency and safety. In the post-mission rehabilitation phase, non-invasive BCI combined with neuromodulation may improve emotional and cognitive functions, support motor and cognitive recovery, and contribute to long-term health management. However, the application of BCI in space still faces challenges, including insufficient signal robustness, limited system adaptability, and suboptimal data processing efficiency. Looking forward, integrating multimodal physiological sensors with deep learning algorithms to achieve accurate monitoring and individualized intervention, and combining BCI with virtual reality and robotics to develop intelligent human-machine collaboration models, will provide more efficient support for space missions.
Brain-Computer Interfaces
;
Humans
;
Space Flight
;
Astronauts/psychology*
;
Neurofeedback
;
Cognition
;
Electroencephalography
;
Man-Machine Systems
4.Competitive roles of slow/delta oscillation-nesting-mediated sleep disruption under acute methamphetamine exposure in monkeys.
Xin LV ; Jie LIU ; Shuo MA ; Yuhan WANG ; Yixin PAN ; Xian QIU ; Yu CAO ; Bomin SUN ; Shikun ZHAN
Journal of Zhejiang University. Science. B 2025;26(7):694-707
Abuse of amphetamine-based stimulants is a primary public health concern. Recent studies have underscored a troubling escalation in the inappropriate use of prescription amphetamine-based stimulants. However, the neurophysiological mechanisms underlying the impact of acute methamphetamine exposure (AME) on sleep homeostasis remain to be explored. This study employed non-human primates and electroencephalogram (EEG) sleep staging to evaluate the influence of AME on neural oscillations. The primary focus was on alterations in spindles, delta oscillations, and slow oscillations (SOs) and their interactions as conduits through which AME influences sleep stability. AME predominantly diminishes sleep-spindle waves in the non-rapid eye movement 2 (NREM2) stage, and impacts SOs and delta waves differentially. Furthermore, the competitive relationships between SO/delta waves nesting with sleep spindles were selectively strengthened by methamphetamine. Complexity analysis also revealed that the SO-nested spindles had lost their ability to maintain sleep depth and stability. In summary, this finding could be one of the intrinsic electrophysiological mechanisms by which AME disrupted sleep homeostasis.
Animals
;
Methamphetamine
;
Electroencephalography
;
Male
;
Sleep/drug effects*
;
Central Nervous System Stimulants
;
Delta Rhythm/drug effects*
;
Sleep Stages/drug effects*
5.Effects of visual impairment and its restoration on electroencephalogram during walking in aged females.
Mingxin AO ; Hongshi HUANG ; Xuemin LI ; Yingfang AO
Chinese Medical Journal 2025;138(6):738-744
BACKGROUND:
Visual input significantly influences cerebral activity related to locomotor navigation, although the underlying mechanism remains unclear. This study aimed to analyze the effects of chronic visual impairment and its rehabilitation on sensorimotor integration during level walking in patients with age-related cataract.
METHODS:
This prospective case series enrolled 14 female patients (68.4 ± 4.7 years) with age-related cataract, scheduled for consecutive cataract surgeries at the Department of Ophthalmology in Peking University Third Hospital from June 2019 to June 2020. Electroencephalogram (EEG) signals during level walking were recorded using a portable EEG system before and 4 weeks after visual restoration. Walking speed was assessed using the Footscan system. Spectral power of the theta and alpha bands was analyzed with repeated-measures analysis of variance, with Assignment (rest and walking), Phase (preoperative and postoperative), and Electrode sites (F3, Fz, F4, O1, and O2) as within-subject factors.
RESULTS:
Compared to the visual impairment state, theta band power significantly decreased after visual restoration (13.16 ± 1.58 μV 2vs. 23.65 ± 3.48 μV 2 , P = 0.018). Theta activity was notably reduced during walking (17.24 ± 2.43 μV 2vs. 37.86 ± 6.62 μV 2 , P = 0.017), while theta power at rest was not significantly different between the two phases (9.44 ± 1.24 μV 2vs. 9.08 ± 1.74 μV 2 , P = 0.864). Changes in walking speed were correlated with alterations in theta power at electrode sites of O1 ( r = -0.574, P = 0.032) and O2 ( r = -0.648, P = 0.012). Alpha band power remained stable during walking and was unaffected by visual status.
CONCLUSIONS
Chronic visual impairment from age-related cataract triggers enhanced cerebral activation of sensorimotor integration to compensate for visual decline during locomotion. This cerebral over-activation is effectively alleviated by visual restoration.
Humans
;
Female
;
Walking/physiology*
;
Aged
;
Electroencephalography/methods*
;
Prospective Studies
;
Middle Aged
;
Cataract/physiopathology*
;
Vision Disorders/physiopathology*
6.Application and considerations of artificial intelligence and neuroimaging in the study of brain effect mechanisms of acupuncture and moxibustion.
Ruqi ZHANG ; Yiding ZHAO ; Shengchun WANG
Chinese Acupuncture & Moxibustion 2025;45(4):428-434
Electroencephalography (EEG) and magnetic resonance imaging (MRI), as neuroimaging technologies, provided objective and visualized technical tools for analyzing the brain effect mechanisms of acupuncture and moxibustion from the perspectives of brain structure, function, metabolism, and hemodynamics. The advancement of artificial intelligence (AI) algorithms can compensate for issues such as the large and scattered nature of neuroimaging data, inconsistent quality, and high heterogeneity of image information. The integration of AI with neuroimaging can facilitate individualized, intelligent, and precise prediction of acupuncture and moxibustion effects, enable intelligent classification of differential acupuncture responses, and identify brain activation patterns. This paper focuses on EEG and MRI, analyzing how machine learning and deep learning optimize multimodal neuroimaging data and their applications in the study of acupuncture and moxibustion brain effects mechanisms. Furthermore, it highlights current research gaps and limitations to provide insights for future studies on acupuncture brain effects mechanisms.
Humans
;
Acupuncture Therapy
;
Brain/physiology*
;
Moxibustion
;
Neuroimaging/methods*
;
Artificial Intelligence
;
Magnetic Resonance Imaging
;
Electroencephalography
7.Research on motor imagery recognition based on feature fusion and transfer adaptive boosting.
Yuxin ZHANG ; Chenrui ZHANG ; Shihao SUN ; Guizhi XU
Journal of Biomedical Engineering 2025;42(1):9-16
This paper proposes a motor imagery recognition algorithm based on feature fusion and transfer adaptive boosting (TrAdaboost) to address the issue of low accuracy in motor imagery (MI) recognition across subjects, thereby increasing the reliability of MI-based brain-computer interfaces (BCI) for cross-individual use. Using the autoregressive model, power spectral density and discrete wavelet transform, time-frequency domain features of MI can be obtained, while the filter bank common spatial pattern is used to extract spatial domain features, and multi-scale dispersion entropy is employed to extract nonlinear features. The IV-2a dataset from the 4 th International BCI Competition was used for the binary classification task, with the pattern recognition model constructed by combining the improved TrAdaboost integrated learning algorithm with support vector machine (SVM), k nearest neighbor (KNN), and mind evolutionary algorithm-based back propagation (MEA-BP) neural network. The results show that the SVM-based TrAdaboost integrated learning algorithm has the best performance when 30% of the target domain instance data is migrated, with an average classification accuracy of 86.17%, a Kappa value of 0.723 3, and an AUC value of 0.849 8. These results suggest that the algorithm can be used to recognize MI signals across individuals, providing a new way to improve the generalization capability of BCI recognition models.
Brain-Computer Interfaces
;
Humans
;
Support Vector Machine
;
Algorithms
;
Neural Networks, Computer
;
Imagination/physiology*
;
Pattern Recognition, Automated/methods*
;
Electroencephalography
;
Wavelet Analysis
8.Research on emotion recognition methods based on multi-modal physiological signal feature fusion.
Zhiwen ZHANG ; Naigong YU ; Yan BIAN ; Jinhan YAN
Journal of Biomedical Engineering 2025;42(1):17-23
Emotion classification and recognition is a crucial area in emotional computing. Physiological signals, such as electroencephalogram (EEG), provide an accurate reflection of emotions and are difficult to disguise. However, emotion recognition still faces challenges in single-modal signal feature extraction and multi-modal signal integration. This study collected EEG, electromyogram (EMG), and electrodermal activity (EDA) signals from participants under three emotional states: happiness, sadness, and fear. A feature-weighted fusion method was applied for integrating the signals, and both support vector machine (SVM) and extreme learning machine (ELM) were used for classification. The results showed that the classification accuracy was highest when the fusion weights were set to EEG 0.7, EMG 0.15, and EDA 0.15, achieving accuracy rates of 80.19% and 82.48% for SVM and ELM, respectively. These rates represented an improvement of 5.81% and 2.95% compared to using EEG alone. This study offers methodological support for emotion classification and recognition using multi-modal physiological signals.
Humans
;
Emotions/physiology*
;
Electroencephalography
;
Support Vector Machine
;
Electromyography
;
Signal Processing, Computer-Assisted
;
Galvanic Skin Response/physiology*
;
Machine Learning
;
Male
9.Dynamic continuous emotion recognition method based on electroencephalography and eye movement signals.
Yangmeng ZOU ; Lilin JIE ; Mingxun WANG ; Yong LIU ; Junhua LI
Journal of Biomedical Engineering 2025;42(1):32-41
Existing emotion recognition research is typically limited to static laboratory settings and has not fully handle the changes in emotional states in dynamic scenarios. To address this problem, this paper proposes a method for dynamic continuous emotion recognition based on electroencephalography (EEG) and eye movement signals. Firstly, an experimental paradigm was designed to cover six dynamic emotion transition scenarios including happy to calm, calm to happy, sad to calm, calm to sad, nervous to calm, and calm to nervous. EEG and eye movement data were collected simultaneously from 20 subjects to fill the gap in current multimodal dynamic continuous emotion datasets. In the valence-arousal two-dimensional space, emotion ratings for stimulus videos were performed every five seconds on a scale of 1 to 9, and dynamic continuous emotion labels were normalized. Subsequently, frequency band features were extracted from the preprocessed EEG and eye movement data. A cascade feature fusion approach was used to effectively combine EEG and eye movement features, generating an information-rich multimodal feature vector. This feature vector was input into four regression models including support vector regression with radial basis function kernel, decision tree, random forest, and K-nearest neighbors, to develop the dynamic continuous emotion recognition model. The results showed that the proposed method achieved the lowest mean square error for valence and arousal across the six dynamic continuous emotions. This approach can accurately recognize various emotion transitions in dynamic situations, offering higher accuracy and robustness compared to using either EEG or eye movement signals alone, making it well-suited for practical applications.
Humans
;
Electroencephalography/methods*
;
Emotions/physiology*
;
Eye Movements/physiology*
;
Signal Processing, Computer-Assisted
;
Support Vector Machine
;
Algorithms
10.Research progress on the characteristics of magnetoencephalography signals in depression.
Zhiyuan CHEN ; Yongzhi HUANG ; Haiqing YU ; Chunyan CAO ; Minpeng XU ; Dong MING
Journal of Biomedical Engineering 2025;42(1):189-196
Depression, a mental health disorder, has emerged as one of the significant challenges in the global public health domain. Investigating the pathogenesis of depression and accurately assessing the symptomatic changes are fundamental to formulating effective clinical diagnosis and treatment strategies. Utilizing non-invasive brain imaging technologies such as functional magnetic resonance imaging and scalp electroencephalography, existing studies have confirmed that the onset of depression is closely associated with abnormal neural activities and altered functional connectivity in multiple brain regions. Magnetoencephalography, unaffected by tissue conductivity and skull thickness, boasts high spatial resolution and signal-to-noise ratio, offering unique advantages and significant value in revealing the abnormal brain mechanisms and neural characteristics of depression. This review, starting from the rhythmic characteristics, nonlinear dynamic features, and connectivity characteristics of magnetoencephalography in depression patients, revisits the research progress on magnetoencephalography features related to depression, discusses current issues and future development trends, and provides insights for the study of pathophysiological mechanisms, as well as for clinical diagnosis and treatment of depression.
Humans
;
Magnetoencephalography/methods*
;
Brain/physiopathology*
;
Depression/diagnosis*
;
Electroencephalography
;
Magnetic Resonance Imaging


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