Objective: This study aims to employ physiological model simulation to systematically analyze the frequency-domain components of PPG signals and extract their key features. The efficacy of these frequency-domain features in effectively distinguishing emotional states will also be investigated.
Methods: A dual windkessel model was employed to analyze PPG signal frequency components and extract distinctive features. Experimental data collection encompassed both physiological (PPG) and psychological measurements, with subsequent analysis involving distribution patterns and statistical testing (U-tests) to examine feature-emotion relationships. The study implemented support vector machine (SVM) classification to evaluate feature effectiveness, complemented by comparative analysis using pulse rate variability (PRV) features, morphological features, and the DEAP dataset.
Results: The results demonstrate significant differentiation in PPG frequency-domain feature responses to arousal and valence variations, achieving classification accuracies of 87.5% and 81.4%, respectively. Validation on the DEAP dataset yielded consistent patterns with accuracies of 73.5% (arousal) and 71.5% (valence). Feature fusion incorporating the proposed frequency-domain features enhanced classification performance, surpassing 90% accuracy.
Conclusion: This study uses physiological modeling to analyze PPG signal frequency components and extract key features. We evaluate their effectiveness in emotion recognition and reveal relationships among physiological parameters, frequency features, and emotional states.
Significance: These findings advance understanding of emotion recognition mechanisms and provide a foundation for future research.
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http://dx.doi.org/10.3389/fphys.2025.1486763 | DOI Listing |
J Neurol
March 2025
Computational Neuroimaging Group (CNG), School of Medicine, Trinity College, Pearse Street, Dublin, Ireland.
Background: Pseudobulbar affect (PBA) is a well-recognised and troublesome clinical phenomenon in a range of neuroinflammatory, neoplastic, neurovascular and neurodegenerative conditions. It is often under-recognised in the community, frequently mistaken for psychiatric manifestations, appropriate pharmacological treatment is often delayed, and may result in a sense of embarrassment or lead to social isolation. Despite its considerable quality of life (QoL) implications and the challenges associated with its effective management, it is notoriously understudied.
View Article and Find Full Text PDFActas Esp Psiquiatr
March 2025
Department of Neurology, Hebei Yanda Hospital, 065201 Langfang, Hebei, China.
Background: Depression is a widely recognized neuropsychiatric condition that often occurs as a comorbidity with various medical illnesses, including neurodegenerative disorders like Parkinson's disease (PD). This study aimed to identify the age of onset and underlying disease characteristics associated with patients exhibiting mild to moderate depression comorbid with PD.
Methods: This retrospective case-control study included 114 elderly patients (age ≥65 years) diagnosed with Parkinson's disease.
Front Psychiatry
February 2025
Pediatric Neurorehabilitation Department, Shenzhen Longhua Maternity and Child Healthcare Hospital, Shenzhen, China.
Background: Home-based palliative care is an ideal model for providing continuous, effective, and timely care at the patient's home. However, the timely recognition of palliative home care needs remains a clinical challenge, and few studies have described the characteristics of palliative care needs and quality of life at home.
Objectives: To identify the palliative home care needs of patients with advanced cancer and explore the influencing factors in addressing these needs.
Front Physiol
February 2025
College of Biomedical Engineering and Instrument Science, Zhejiang University, Hangzhou, China.
Objective: This study aims to employ physiological model simulation to systematically analyze the frequency-domain components of PPG signals and extract their key features. The efficacy of these frequency-domain features in effectively distinguishing emotional states will also be investigated.
Methods: A dual windkessel model was employed to analyze PPG signal frequency components and extract distinctive features.
ACS Appl Mater Interfaces
March 2025
School of Mechanical Engineering, Southwest Jiaotong University, Chengdu 610031, P. R. China.
With the increasing development of metaverse and human-computer interaction (HMI) technologies, artificial intelligence (AI) applications in virtual reality (VR) environments are receiving significant attention. This study presents a self-sensing facial recognition mask (FRM) utilizing triboelectric nanogenerators (TENG) and machine learning algorithms to enhance user immersion and interaction. Various TENG negative electrode materials are evaluated to improve sensor performance, and the efficacy of a single sensor is confirmed.
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