journal article Feb 25, 2026

Hybrid 1D CNN ‐ BiLSTM Model for Early Parkinson's Disease Detection From Speech Signals

View at Publisher Save 10.1002/ima.70325
Abstract
ABSTRACT
Parkinson's Disease (PD) is a chronic neurodegenerative condition characterized by loss of dopaminergic neurons in a specific region of the brain. Symptoms such as hand tremors, walking difficulties, and impaired communication become noticeable in individuals with PD. Given this problem, early and accurate detection of PD remains a key change in clinical practice. The objective of this research is to design a robust and explainable framework for PD detection based on speech signals analysis. A hybrid 1D CNN—BiLSTM framework was designed to capture spatial feature patterns and temporal dependencies. Recursive Feature Elimination (RFE) was applied to select 13 most discriminative speech features, while Synthetic Minority Oversampling Technique (SMOTE) was integrated with 5‐fold cross‐validation to address class imbalance. Ablation studies assessed the contribution of each model component, and confusion matrix analysis enabled clinical interpretation by quantifying true positives, true negatives, false positives, and false negatives. The experimental findings demonstrated that the proposed 1D CNN—BiLSTM framework achieved strong predictive performance of 92.10% accuracy, 96.43% precision, 93.10% recall, 94.33% F1 score, and clinical reliability with high true positives indicating reliable patient identification and few false negatives reducing risks of missed diagnoses when compared to alternative models. In conclusion, the proposed model demonstrates novelty by integrating explainability, feature selection, and robust validation. Its application provides a non‐invasive and reliable framework to support Parkinson's disease screening and early clinical decision making.
Topics

No keywords indexed for this article. Browse by subject →

References
44
[3]
Panda A. "Machine Learning‐Based Framework for Early Detection of Distinguishing Different Stages of Parkinson's" Specialusis Ugdymas (2022)
[15]
A.Zhao Y.Liu X.Yu X.Xing andH.Zhou “Artificial Intelligence‐Enabled Detection and Assessment of Parkinson's Disease Using Multimodal Data: A Survey ”(2025) https://doi.org/10.1016/j.inffus.2025.103175. 10.2139/ssrn.5167417
[39]
Vineela Sravya Y. "An Explainable Multimodal Deep Learning Framework for Parkinson's Disease Detection Using Handwriting, Voice, and Gait Analysis Signals" Synthesis: A Multidisciplinary Research Journal (2025)
[40]
J.Teo “Feature Normalization ”(2021) https://python‐data‐science.readthedocs.io/en/latest/normalisation.html.
[42]
V.Jayaswal “Performance Metrics: Confusion Matrix Precision Recall and F1 Score ”(2020) https://towardsdatascience.com/performance‐metrics‐confusion‐matrix‐precision‐recall‐and‐f1‐score.
[43]
S.Sheikholeslami D. D.Johnson M.Khandaker andA.Farshid “Utilizing Large Language Models for Ablation Studies in Machine Learning and Deep Learning ”in Proceeding 5th Workshop on Machine Learning and Systems (EuroMLSys ‘25) (Rotterdam Netherlands) (2025) 1–8 https://doi.org/10.1145/3721146.3721957. 10.1145/3721146.3721957
Metrics
0
Citations
44
References
Details
Published
Feb 25, 2026
Vol/Issue
36(2)
License
View
Cite This Article
John Kehinde Olawuyi, Rajesh Prasad (2026). Hybrid 1D CNN ‐ BiLSTM Model for Early Parkinson's Disease Detection From Speech Signals. International Journal of Imaging Systems and Technology, 36(2). https://doi.org/10.1002/ima.70325