Design of an Early Prediction Model for Parkinson’s Disease Using Machine Learning

Parkinson’s Disease (PD) is a chronic and progressive neurological disorder that impairs the body’s nervous system pathways. This disruption results in multiple complications related to movement and control, manifesting as symptoms such as tremors, rigidity, and impaired coordi...

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Main Authors: K. Velu, N. Jaisankar
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10852288/
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author K. Velu
N. Jaisankar
author_facet K. Velu
N. Jaisankar
author_sort K. Velu
collection DOAJ
description Parkinson’s Disease (PD) is a chronic and progressive neurological disorder that impairs the body’s nervous system pathways. This disruption results in multiple complications related to movement and control, manifesting as symptoms such as tremors, rigidity, and impaired coordination. In the initial phases of PD, individuals have trouble with speech and exhibit a slow rate of verbal expression. Dysphonia is seventy to ninety percent of persons with Parkinson’s disease report a speech impairment or modification in speech, and it serves as a preliminary indicator of the disease. Consequently, speech can be a crucial modality in the initial phase of Parkinson’s disease prediction. In literature, diverse Machine Learning models are employed for Parkinson’s disease diagnosis utilizing voice analysis. Challenges such as class imbalance, feature selection, and interpretable predictive analysis still need to be addressed. Furthermore, the precision and reliability of the predictive outcomes are crucial to enhance healthcare services. Consequently, we propose an Explainable balanced Recursive Feature Importance with Logistic Regression (XRFILR) model to address the abovementioned issues. The proposed model extracts the pertinent features using an RFE with a Logistic Regression classifier and evaluates the feature significance in Parkinson’s disease prediction using eXplainable Artificial Intelligence. We employed the seven machine learning classifiers the model offers to diagnose Parkinson’s disease using significant speech data. Among these ML models, the proposed model achieved an accuracy of 96.46%, surpassing existing machine learning techniques.
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spelling doaj-art-ca8ac099db9d43e592fe8f7768350be92025-01-31T00:01:49ZengIEEEIEEE Access2169-35362025-01-0113174571747210.1109/ACCESS.2025.353370310852288Design of an Early Prediction Model for Parkinson’s Disease Using Machine LearningK. Velu0https://orcid.org/0009-0007-3803-0423N. Jaisankar1https://orcid.org/0000-0002-8845-1302School of Computer Science and Engineering (SCOPE), Vellore Institute of Technology (VIT), Vellore, Tamil Nadu, IndiaSchool of Computer Science and Engineering (SCOPE), Vellore Institute of Technology (VIT), Vellore, Tamil Nadu, IndiaParkinson’s Disease (PD) is a chronic and progressive neurological disorder that impairs the body’s nervous system pathways. This disruption results in multiple complications related to movement and control, manifesting as symptoms such as tremors, rigidity, and impaired coordination. In the initial phases of PD, individuals have trouble with speech and exhibit a slow rate of verbal expression. Dysphonia is seventy to ninety percent of persons with Parkinson’s disease report a speech impairment or modification in speech, and it serves as a preliminary indicator of the disease. Consequently, speech can be a crucial modality in the initial phase of Parkinson’s disease prediction. In literature, diverse Machine Learning models are employed for Parkinson’s disease diagnosis utilizing voice analysis. Challenges such as class imbalance, feature selection, and interpretable predictive analysis still need to be addressed. Furthermore, the precision and reliability of the predictive outcomes are crucial to enhance healthcare services. Consequently, we propose an Explainable balanced Recursive Feature Importance with Logistic Regression (XRFILR) model to address the abovementioned issues. The proposed model extracts the pertinent features using an RFE with a Logistic Regression classifier and evaluates the feature significance in Parkinson’s disease prediction using eXplainable Artificial Intelligence. We employed the seven machine learning classifiers the model offers to diagnose Parkinson’s disease using significant speech data. Among these ML models, the proposed model achieved an accuracy of 96.46%, surpassing existing machine learning techniques.https://ieeexplore.ieee.org/document/10852288/Parkinson’s diseaseK-MeansSMOTErecursive feature eliminationlogistic regression classification with permutationeXplainable artificial intelligence
spellingShingle K. Velu
N. Jaisankar
Design of an Early Prediction Model for Parkinson’s Disease Using Machine Learning
IEEE Access
Parkinson’s disease
K-MeansSMOTE
recursive feature elimination
logistic regression classification with permutation
eXplainable artificial intelligence
title Design of an Early Prediction Model for Parkinson’s Disease Using Machine Learning
title_full Design of an Early Prediction Model for Parkinson’s Disease Using Machine Learning
title_fullStr Design of an Early Prediction Model for Parkinson’s Disease Using Machine Learning
title_full_unstemmed Design of an Early Prediction Model for Parkinson’s Disease Using Machine Learning
title_short Design of an Early Prediction Model for Parkinson’s Disease Using Machine Learning
title_sort design of an early prediction model for parkinson x2019 s disease using machine learning
topic Parkinson’s disease
K-MeansSMOTE
recursive feature elimination
logistic regression classification with permutation
eXplainable artificial intelligence
url https://ieeexplore.ieee.org/document/10852288/
work_keys_str_mv AT kvelu designofanearlypredictionmodelforparkinsonx2019sdiseaseusingmachinelearning
AT njaisankar designofanearlypredictionmodelforparkinsonx2019sdiseaseusingmachinelearning