Back to Search
Journal ArticleUnknown

Automated detection and classification of diabetes disease based on Bangladesh demographic and health survey data, 2011 using machine learning approach

Author Affiliations
University of Rajshahi, Khulna University
Published InDiabetes & Metabolic Syndrome Clinical Research & Reviews
Year2020
Citations49

Abstract

BACKGROUND AND AIMS Diabetes has been recognized as a continuing health challenge for the twenty-first century, both in developed and developing countries including Bangladesh. The main objective of this study is to use machine learning (ML) based classifiers for automated detection and classification of diabetes. METHODS The diabetes dataset have taken from Bangladesh demographic and health survey, 2011 data having 1569 respondents are 127 diabetes. Two statistical tests as independent t for continuous and chi-square for categorical variables are used to determine the risk factors of diabetes. Six ML-based classifiers as support vector machine, random forest, linear discriminant analysis, logistic regression, k-nearest neighborhood, bagged classification and regression tree (Bagged CART) have been adopted to predict and classify of diabetes. RESULTS…
View at Publisher

BORR does not host full-text PDFs. The button above takes you to the original publisher.