Journal ArticleOpen Access
Accurate Diabetes Risk Stratification Using Machine Learning: Role of Missing Value and Outliers
Author Affiliations
Johns Hopkins University, University of Rajshahi, Rajshahi University of Engineering and Technology, Brown University, ...
Published InJournal of Medical Systems
Year2018
Citations271
Abstract
Diabetes mellitus is a group of metabolic diseases in which blood sugar levels are too high. About 8.8% of the world was diabetic in 2017. It is projected that this will reach nearly 10% by 2045. The major challenge is that when machine learning-based classifiers are applied to such data sets for risk stratification, leads to lower performance. Thus, our objective is to develop an optimized and robust machine learning (ML) system under the assumption that missing values or outliers if replaced by a median configuration will yield higher risk stratification accuracy. This ML-based risk stratification is designed, optimized and evaluated, where: (i) the features are extracted and optimized from the six feature selection techniques (random forest, logistic regression, mutual…
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