International Journal of Emerging Trends & Technology in Computer Science
A Motivation for Recent Innovation & Research
ISSN 2278-6856
www.ijettcs.org
Call for Paper, Published Articles, Indexing Infromation
Title: |
Machine Learning Approaches to build Predictive System for Parkinsons Disease: A Comparative Study and Speculation
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Author Name: |
Sumit Das, Utsab Ray, Sabyasachi Sen, Dipansu Mondal, Karabi Ganguly, Ira Nath |
Abstract: |
Abstract: Orchestration of Machine Learning techniques has
turned up to be consequential and notable to manifest the
approaches in implementing the technologies to diminish several
discrepancies and barriers that are prevailing in various sectors
especially healthcare or biomedical field. In this paper, we have
worked characteristically with datasets of Parkinson’s Disease to
predict the disease which predominantly undergone miss
predictions and treatments previously, as well as machine
learning modeling by developing a predictive system based on a
relative comparison between all other algorithms of machine
learning binary classification algorithms, have been done to
develop a pathway for proper examination of this disease to
shrink several distinct deviations or dissimilitude that lead to
discrepancies and additional risks. Thus, generating effective
decision assistance for Parkinson’s disease prediction in this
research. This work moreover contributes to narrowing the
research gap in the development of effective decision support
systems for medical applications by drawing analytical case
results from several algorithms.
Keywords: Machine Learning, Healthcare, Parkinson’s
Disease, Predictive System, Classification Algorithms. |
Cite this article: |
Sumit Das, Utsab Ray, Sabyasachi Sen, Dipansu Mondal, Karabi Ganguly, Ira Nath , "
Machine Learning Approaches to build Predictive System for Parkinsons Disease: A Comparative Study and Speculation " , International Journal of Emerging Trends & Technology in Computer Science (IJETTCS),
Volume 11, Issue 4, July - August 2022 , pp.
039-047 , ISSN 2278-6856.
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