Author:
Patil Saraswati,Jaybhaye Sangita,Bokariya Sujal,Jain Pranav,Phapale Siddhi,Hande Tejas
Abstract
Around the globe, thousands of people worldwide are suffering by Parkinson’s Disease (PD), a central nervous system degenerative condition. Early detection and diagnosis of PD is crucial for successful treatment and management of the disease. In past few years, Machine learning (ML) algorithms has shown great potential in predicting PD based on various physiological and neurological markers. In this disease prediction system, a system is proposed using ML-based approach to predict the presence of PD in patients. The system employs various machine learning models, including Gradient Boosted Tree, random forest, and logistic regression, to identify key markers and patterns associated with the disease. Overall, this disease prediction system provides a valuable tool for early detection and diagnosis of PD, which can lead to better management and treatment of the disease. The proposed approach can also be extended to other neurological disorders, providing a general framework for disease prediction and diagnosis.
Reference15 articles.
1. Tadse Surekha, Jain Muskan, Chandankhede Pankaj “Parkinson’s Detection Using Machine Learning” Published in: 2021 5th International Conference on Intelligent Computing and Control Systems (ICICCS) by IEEE.
2. Sivachitra M., Vijayachitra S. “Parkinson’s disease prediction using machine learning approaches” Published in: 2013 Fifth International Conference on Advanced Computing (ICoAC).
3. Development of a depression in Parkinson's disease prediction model using machine learning
4. Mall Pawan Kumar, Yadav Rajesh Kumar, Rai Arun Kumar, Narayan Vipul, Srivastava Swapnita, “Early Warning Signs Of Parkinson’s Disease Prediction Using Machine Learning Technique” by Journal of Pharmaceutical Negative Results in 2023 Special Issue, Vol. 14, p 2607-2615. 9p.
5. Boutet Alexandre, Madhavan Radhika, Elias Gavin J. B., Joel Suresh E., Gramer Robert, Ranjan Manish, Paramanandam Vijayashankar, Xu David, Germann Jurgen, Loh Aaron, Kalia Suneil K., Hodaie Mojgan, Li Bryan, Prasad Sreeram, Coblentz Ailish, Munhoz Renato P., Ashe Jeffrey, Kucharczyk Walter, Fasano Alfonso & Lozano Andres M.. Article number: 3043 (2021) “Predicting optimal deep brain stimulation parameters for Parkinson’s disease using functional MRI and machine learning” Open Access article Published: 24 May 2021.
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1. Towards Personalized Medicine: Machine Learning for Parkinson’s Disease Diagnosis;2024 Second International Conference on Data Science and Information System (ICDSIS);2024-05-17