An Improved Approach for Prediction of Parkinson's Disease using Machine Learning Techniques
Kamal Nayan Reddy Challa, Venkata Sasank Pagolu, Ganapati Panda,, Babita Majhi

TL;DR
This paper presents an improved machine learning approach for early prediction of Parkinson's disease using non-motor symptoms and biomarkers, achieving high accuracy with various classifiers.
Contribution
It introduces the use of multiple machine learning models, including Boosted Logistic Regression, for early PD prediction based on non-motor features and biomarkers.
Findings
Boosted Logistic Regression achieved 97.159% accuracy.
The models showed high ROC-AUC of 98.9%.
Extended previous work by incorporating additional biomarkers.
Abstract
Parkinson's disease (PD) is one of the major public health problems in the world. It is a well-known fact that around one million people suffer from Parkinson's disease in the United States whereas the number of people suffering from Parkinson's disease worldwide is around 5 million. Thus, it is important to predict Parkinson's disease in early stages so that early plan for the necessary treatment can be made. People are mostly familiar with the motor symptoms of Parkinson's disease, however, an increasing amount of research is being done to predict the Parkinson's disease from non-motor symptoms that precede the motor ones. If an early and reliable prediction is possible then a patient can get a proper treatment at the right time. Nonmotor symptoms considered are Rapid Eye Movement (REM) sleep Behaviour Disorder (RBD) and olfactory loss. Developing machine learning models that can help…
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Taxonomy
MethodsLogistic Regression
