Global Multidisciplinary Journal

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A Hybrid Machine Learning and Metaheuristic Framework for Early Parkinson’s Disease Diagnosis Using Voice and Biomedical Data Analytics

4 Department of Computer Science, University of Belgrade, Serbia

Abstract

Parkinson’s disease is a progressive neurodegenerative disorder that significantly impacts motor and non-motor functions, necessitating early and accurate diagnostic methods to improve patient outcomes. Traditional clinical diagnostic approaches rely heavily on subjective assessment and often detect the disease at advanced stages. In response to these limitations, machine learning and data mining techniques have emerged as promising tools for early detection, particularly through the analysis of biomedical signals such as voice recordings. This study presents a comprehensive exploration of intelligent diagnostic systems that integrate machine learning, feature selection, and metaheuristic optimization techniques to enhance classification performance in Parkinson’s disease detection. Drawing upon existing research, including fuzzy K-nearest neighbor models enhanced by chaotic bacterial foraging optimization and neural network-based voice analysis systems, this work proposes a hybrid analytical framework that emphasizes accuracy, robustness, and computational efficiency. The methodology involves data preprocessing, feature extraction, attribute selection, and classification using advanced machine learning models supported by optimization algorithms. The findings indicate that hybrid approaches combining metaheuristics and machine learning outperform traditional standalone models in terms of diagnostic precision and reliability. Furthermore, the study explores the broader implications of integrating Internet of Things and smart healthcare systems for real-time disease monitoring. Limitations such as data heterogeneity, model interpretability, and scalability are critically discussed. Future research directions highlight the need for explainable artificial intelligence and cross-domain data integration. This research contributes to the growing body of knowledge in biomedical data analytics and provides a scalable framework for early disease detection using intelligent systems.

Keywords

References

📄 Cai Z, Gu J, Wen C, Zhao D, Huang C, Huang H, Tong C, Li J, Chen H (2018) An intelligent Parkinson's disease diagnostic system based on a chaotic bacterial foraging optimization enhanced fuzzy KNN approach. Computational and Mathematical Methods in Medicine
📄 Sonu SR, Prakash V, Ranjan R, Saritha K (2017) Prediction of Parkinson's disease using data mining. International Conference on Energy, Communication, Data Analytics and Soft Computing
📄 Ayap NFM, Eugenio BA, Hinolan JIV, Puno JCV, Baldovino RG, Billones RKC (2021) A biomedical voice measurement diagnosis of Parkinson's disease through the utilization of artificial neural network. Journal of Physics Conference Series
📄 Rana A, Dumka A, Singh R, Rashid M, Ahmad N, Panda MK (2022) An efficient machine learning approach for diagnosing Parkinson's disease by utilizing voice features. Electronics
📄 Little M, McSharry P, Hunter E, Spielman J, Ramig L (2008) Suitability of dysphonia measurements for telemonitoring of Parkinson's disease
📄 Witten IH, Frank E, Hall MA (2011) Data mining: practical machine learning tools and techniques. Morgan Kaufmann
📄 Chetty N, Vaisla KS, Sudarsan SD (2015) Role of attributes selection in classification of Chronic Kidney Disease patients. International Conference on Computing, Communication and Security
📄 Onik AR, Haq NF, Alam L, Mamun TI (2015) An analytical comparison on filter feature extraction method in data mining using J48 classifier. International Journal of Computer Applications
📄 Al-Rousan N, Al-Najjar H (2020) Data analysis of coronavirus COVID-19 epidemic in South Korea based on recovered and death cases. Journal of Medical Virology
📄 Al-Najjar H, Alhady SSN, Mohamad-Saleh J, Al-Rousan N (2021) Scheduling of workflow jobs based on two-step clustering and lowest job weight. Concurrency and Computation Practice and Experience
📄 Sadja P (2006) Machine learning for detection and diagnosis of disease. Annual Review of Biomedical Engineering
📄 Suganya P, Sumathi CP (2015) A novel metaheuristic data mining algorithm for the detection and classification of Parkinson disease. Indian Journal of Science and Technology
📄 Kim GI, Kim S, Jang B (2023) Classification of mathematical test questions using machine learning on datasets of learning management system questions. PLOS One
📄 Frank E, Hall MA, Witten IH (2016) The WEKA workbench. Morgan Kaufmann
📄 Pourghebleh B, Navimipour NJ (2017) Data aggregation mechanisms in the Internet of Things: a systematic review of the literature and recommendations for future research. Journal of Network and Computer Applications
📄 Pourghebleh B, Hayyolalam V, Anvigh AA (2020) Service discovery in the Internet of Things: review of current trends and research challenges. Wireless Networks
📄 Ullah A et al (2024) Smart cities: the role of Internet of Things and machine learning in realizing a data-centric smart environment. Complex and Intelligent Systems
📄 Pourghebleh B, Hekmati N, Davoudnia Z, Sadeghi M (2022) A roadmap towards energy-efficient data fusion methods in the Internet of Things. Concurrency and Computation Practice and Experience
📄 Pourghebleh B, Wakil K, Navimipour NJ (2019) A comprehensive study on the trust management techniques in the Internet of Things. IEEE Internet of Things Journal
📄 Dubey PK, Singh B, Singh D, Dubey AK (2024) Green Internet of Things. Network Optimization in Intelligent Internet of Things Applications
📄 Canavese D, Mannella L, Regano L, Basile C (2024) Security at the edge for resource-limited IoT devices. Sensors
📄 H. K. Krishnamurthy Sukumar, "A Novel Hybrid Grey Wolf Whale Optimization for Effectual Job Scheduling and Resource Distribution in Dynamic Cloud Computing," 2025 International Conference on Sustainability, Innovation & Technology (ICSIT), Nagpur, India, 2025, pp. 1-6, doi: 10.1109/ICSIT65336.2025.11293898.

How to Cite

Dr. Elena Markovic. (2026). A Hybrid Machine Learning and Metaheuristic Framework for Early Parkinson’s Disease Diagnosis Using Voice and Biomedical Data Analytics. Global Multidisciplinary Journal, 5(02), 102-108. https://www.grpublishing.org/journals/index.php/gmj/article/view/374

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