Title Parkinson's Disease detection from electrical stimulations WiFi signals using information fusion of proposed neural networks
Authors Habib, Zeeshan ; Khan, Muhammad Attique ; Hussain, Zain ; Ng, Nathan ; Hamza, Ameer ; Alzahrani, Ahmed Ibrahim ; Alalwan, Nasser ; Iqbal, Zeshan
DOI 10.1007/s12559-026-10595-6
Full Text Download
Is Part of Cognitive computation.. New York : Springer. 2026, vol. 18, iss. 1, art. no. 46, p. 1-17.. ISSN 1866-9956. eISSN 1866-9964
Keywords [eng] Parkinson disease ; Wifi signals ; Deep learning ; Information fusion ; Neural networks
Abstract [eng] Parkinson’s disease (PD) is a degenerative, chronic neurological condition that impairs a person’s ability to move normally. People may experience difficulties with speaking, writing, walking, or performing basic tasks if dopamine-generating neurons in the brain are injured or die. Using traditional techniques for PD analysis is time-consuming and challenging, as the evaluation process is prone to high misclassification rates. Therefore, we proposed a deep learning-based architecture for classifying PD using WiFi signals in this work. The data is generated at the initial stage using WiFi signals. After that, we proposed two deep learning architectures from scratch. The first architecture, named E3-ST transformer, is based on a three-stage encoding scheme, and the second two residual-attention-block-based networks are named PD-RAN2. Both models are trained on generated WiFi signal data, and the hyperparameters are optimized using Bayesian Optimization (BO). In the next phase, trained models are used, and deep features are incorporated, employing a new method termed serial-based attention-weighted. The fused features are finally classified using neural network classifiers. The output is in label classes such as slow walking, fast walking, sitting on a chair, standing still, and FOG episodes. The Medium Neural Network (MN2) classifier achieved the best accuracy of 97.78%, whereas the individual models achieved 97.0% and 97.70%, respectively. A comparison with recent techniques shows that the proposed architectures achieve improved performance.
Published New York : Springer
Type Journal article
Language English
Publication date 2026
CC license CC license description