Abstract
Diabetes has become a chronic disease that seriously threatens human health. It is a group of metabolic diseases characterized
by hyperglycemia and there is no role of the age factor involved. The long-term of diabetes disease causes chronic damage and
dysfunction of various tissues, especially the eyes, kidneys, heart, blood vessels, and nerves. Most of the time people are not sure about
this common disease at the early stage and unluckily the patient moves to a critical situation to meet with major disease due to the
continuous effect of diabetes. This research is conducted to build the machine learning-based web application platform for the early
diagnosis of the disease, freely accessible anywhere anytime. We used the benchmark dataset named PIDD (Prima Indian Diabetes
Dataset) and performed the comparative analysis among the Naïve Bayes, Logistic Regression, K-Nearest Neighbors, Decision Trees,
Random Forest and Support Vector Machines. Based on the classification performance, we found that SVM performed the best among
the pool of mentioned algorithms and, therefore, adopted for the development of the intelligent web application for the diabetes
diagnosis.
Farhad Hassan, Maryam Wardah, Muhammad Yasir, Hamayoun Shahwani, Syed Attique Shah, Mohammad Imran, Muhammad Ashraf, Muhammad Qasim, Muhammad Akram, Zahid Rauf. (2020) Machine Learning-based Web Application for Early Diagnosis of Diabetes, Journal of Applied and Emerging Sciences, Volume 10, Issue-2.
-
Views
830 -
Downloads
81
Article Details
Volume
Issue
Type
Language
Received At
Accepted At