Enhanced EfficientNet-Extended Multimodal Parkinsonâs disease classification with Hybrid Particle Swarm and Grey Wolf Optimizer

Raajasree, K. and R, Jaichandran K. (2025) Enhanced EfficientNet-Extended Multimodal Parkinsonâs disease classification with Hybrid Particle Swarm and Grey Wolf Optimizer. Scientific Reports, 15 (1). ISSN 20452322

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Abstract

Parkinsonâs disease (PD) is a chronic neurodegenerative disorder characterized by progressive loss of dopaminergic neurons in substantia nigra, resulting in both motor impairments and cognitive decline. Traditional PD classification methods are expert-dependent and time-intensive, while existing deep learning (DL) models often suffer from inconsistent accuracy, limited interpretability, and inability to fully capture PDâs clinical heterogeneity. This study proposes a novel framework Enhanced EfficientNet-Extended Multimodal PD Classification with Hybrid Particle Swarm and Grey Wolf Optimizer (EEFN-XM-PDC-HybPS-GWO) to overcome these challenges. The model integrates T1-weighted MRI, DaTscan images, and gait scores from NTUA and PhysioNet repository respectively. Denoising is achieved via Multiscale Attention Variational Autoencoders (MSA-VAE), and critical regions are segmented using Semantic Invariant Multi-View Clustering (SIMVC). The Enhanced EfficientNet-Extended Multimodal (EEFN-XM) model extracts and fuses image and gait features, while HybPS-GWO optimizes classification weights. The system classifies subjects into early-stage PD, advanced-stage PD, and healthy controls (HCs). Ablation analysis confirms the hybrid optimizerâs contribution to performance gains. The proposed model achieved 99.2 accuracy with stratified 5-fold cross-validation, outperforming DMFEN-PDC, MMT-CA-PDC, and LSTM-PDD-GS by 7.3, 15.97, and 10.43, respectively, and reduced execution time by 33.33. EEFN-XM-PDC-HybPS-GWO demonstrates superior accuracy, computational efficiency, and clinical relevance, particularly in early-stage diagnosis and PD classification. © 2025 Elsevier B.V., All rights reserved.

Item Type: Article
Additional Information: Cited by: 0
Uncontrolled Keywords: aged; algorithm; classification; convolutional neural network; deep learning; diagnosis; diagnostic imaging; female; gait; human; male; nuclear magnetic resonance imaging; Parkinson disease; procedures; Aged; Algorithms; Convolutional Neural Networks; Deep Learning; Female; Gait; Humans; Magnetic Resonance Imaging; Male; Parkinson Disease
Subjects: Multi-Disciplinary Studies > Multidisciplinary
Divisions: Engineering and Technology > Aarupadai Veedu Institute of Technology, Chennai, India > Computer Science and Engineering
Depositing User: Unnamed user with email techsupport@mosys.org
Date Deposited: 29 Dec 2025 10:40
Last Modified: 29 Dec 2025 10:40
URI: https://ir.vmrfdu.edu.in/id/eprint/11

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