TY - JOUR
T1 - Enhanced Multimodal Physiological Signal Analysis for Pain Assessment Using Optimized Ensemble Deep Learning
AU - Gasmi, Karim
AU - Hrizi, Olfa
AU - Aoun, Najib Ben
AU - Alrashdi, Ibrahim
AU - Alqazzaz, Ali
AU - Hamid, Omer
AU - Altaieb, Mohamed O.
AU - Abdalrahman, Alameen E.M.
AU - Ammar, Lassaad Ben
AU - Mrabet, Manel
AU - Necibi, Omrane
N1 - Publisher Copyright:
Copyright © 2025 The Authors.
PY - 2025
Y1 - 2025
N2 - The potential applications of multimodal physiological signals in healthcare, pain monitoring, and clinical decision support systems have garnered significant attention in biomedical research. Subjective self-reporting is the foundation of conventional pain assessment methods, which may be unreliable. Deep learning is a promising alternative to resolve this limitation through automated pain classification. This paper proposes an ensemble deep-learning framework for pain assessment. The framework makes use of features collected from electromyography (EMG), skin conductance level (SCL), and electrocardiography (ECG) signals. We integrate Convolutional Neural Networks (CNN), Long Short-Term Memory Networks (LSTM), Bidirectional Gated Recurrent Units (BiGRU), and Deep Neural Networks (DNN) models. We then aggregate their predictions using a weighted averaging ensemble technique to increase the classification’s robustness. To improve computing efficiency and remove redundant features, we use Particle Swarm Optimization (PSO) for feature selection. This enables us to reduce the features’ dimensionality without sacrificing the classification’s accuracy. With improved accuracy, precision, recall, and F1-score across all pain levels, the experimental results show that the suggested ensemble model performs better than individual deep learning classifiers. In our experiments, the suggested model achieved over 98% accuracy, suggesting promising automated pain assessment performance. However, due to differences in validation protocols, comparisons with previous studies are still limited. Combining deep learning and feature selection techniques significantly improves model generalization, reducing overfitting and enhancing classification performance. The evaluation was conducted using the BioVid Heat Pain Dataset, confirming the model’s effectiveness in distinguishing between different pain intensity levels.
AB - The potential applications of multimodal physiological signals in healthcare, pain monitoring, and clinical decision support systems have garnered significant attention in biomedical research. Subjective self-reporting is the foundation of conventional pain assessment methods, which may be unreliable. Deep learning is a promising alternative to resolve this limitation through automated pain classification. This paper proposes an ensemble deep-learning framework for pain assessment. The framework makes use of features collected from electromyography (EMG), skin conductance level (SCL), and electrocardiography (ECG) signals. We integrate Convolutional Neural Networks (CNN), Long Short-Term Memory Networks (LSTM), Bidirectional Gated Recurrent Units (BiGRU), and Deep Neural Networks (DNN) models. We then aggregate their predictions using a weighted averaging ensemble technique to increase the classification’s robustness. To improve computing efficiency and remove redundant features, we use Particle Swarm Optimization (PSO) for feature selection. This enables us to reduce the features’ dimensionality without sacrificing the classification’s accuracy. With improved accuracy, precision, recall, and F1-score across all pain levels, the experimental results show that the suggested ensemble model performs better than individual deep learning classifiers. In our experiments, the suggested model achieved over 98% accuracy, suggesting promising automated pain assessment performance. However, due to differences in validation protocols, comparisons with previous studies are still limited. Combining deep learning and feature selection techniques significantly improves model generalization, reducing overfitting and enhancing classification performance. The evaluation was conducted using the BioVid Heat Pain Dataset, confirming the model’s effectiveness in distinguishing between different pain intensity levels.
KW - deep learning
KW - ensemble learning
KW - feature selection
KW - optimal algorithm
KW - Pain assessment
UR - http://www.scopus.com/inward/record.url?scp=105007971191&partnerID=8YFLogxK
U2 - 10.32604/cmes.2025.065817
DO - 10.32604/cmes.2025.065817
M3 - Article
AN - SCOPUS:105007971191
SN - 1526-1492
VL - 143
SP - 2459
EP - 2489
JO - CMES - Computer Modeling in Engineering and Sciences
JF - CMES - Computer Modeling in Engineering and Sciences
IS - 2
ER -