Features Selection For Building An Early Diagnosis Machine Learning Model For Parkinson's Disease

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Date

2016

Journal Title

Journal ISSN

Volume Title

Type

Book chapter

Publisher

IEEE

Series Info

3rd International Conference on Artificial Intelligence and Pattern Recognition (AIPR);

Doi

Abstract

In this work, different approaches were evaluated to optimize building machine learning classification models for the early diagnosis of the Parkinson disease. The goal was to sort the medical measurements and select the most relevant parameters to build a faster and more accurate model using feature selection techniques. Decreasing the number of features to build a model could lead to more efficient machine learning algorithm and help doctors to focus on what are the most important measurements to take into account. For feature selection we compared the Filter and Wrapper techniques. Then we selected a good machine learning algorithm to detect which technique could help us by calculate the crossover scores for each technique. This research is based on a dataset which was created by Athanasius Tsanas and Max Little of the University of Oxford, in collaboration with 10 medical centers in the US and Intel Corporation. This target of these medical measurements is to find the Unified Parkinson's disease rating scale (UPDRS) which is the most commonly used scale for clinical studies of Parkinson's disease

Description

Accession Number: WOS:000386686500024

Keywords

October University for University for Parkinson, Features Selection, UPDRS

Citation

Cited References in Web of Science Core Collection: 9