Abstract

Diabetes is a chronic health condition that impairs the body's ability to convert food to energy, recognized by persistently high levels of blood glucose. Undiagnosed diabetes can cause many complications, including retinopathy, nephropathy, neuropathy, and other vascular disorders. Machine learning methods can be very useful for disease identification, prediction, and treatment. This paper proposes a new ensemble learning approach for type 2 diabetes prediction based on a hybrid meta-classifier of fuzzy clustering and logistic regression. The proposed approach consists of two levels. First, a base-learner comprising six machine learning algorithms is utilized for predicting diabetes. Second, a hybrid meta-learner that combines fuzzy clustering and logistic regression is employed to appropriately integrate predictions from the base-learners and provide an accurate prediction of diabetes. The hybrid meta-learner employs the Fuzzy C-means Clustering (FCM) algorithm to generate highly significant clusters of predictions from base-learners. The predictions of base-learners and their fuzzy clusters are then employed as inputs to the Logistic Regression (LR) algorithm, which generates the final diabetes prediction result. Experiments were conducted using two publicly available datasets, the Pima Indians Diabetes Database (PIDD) and the Schorling Diabetes Dataset (SDD) to demonstrate the efficacy of the proposed method for predicting diabetes. When compared with other models, the proposed approach outperformed them and obtained the highest prediction accuracies of 99.00% and 95.20% using the PIDD and SDD datasets, respectively.

Highlights

  • Diabetes Mellitus (DM) is a common chronic disease that affects approximately 425 million people worldwide, and this figure is expected to rise to 629 million by 2045 [1]

  • Zolfaghari [10] proposed a stack of an Support Vector Machines (SVM) and artificial neural network for diabetes diagnosis based on the Pima Indians Diabetes Database (PIDD) dataset; the proposed approach achieved an accuracy of 88.04% and outperformed the single classifiers

  • Diabetes mellitus refers to a group of metabolic disorders that are defined by persistently high blood glucose levels

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Summary

Introduction

Diabetes Mellitus (DM) is a common chronic disease that affects approximately 425 million people worldwide, and this figure is expected to rise to 629 million by 2045 [1]. It is a metabolic condition characterized by elevated blood glucose levels. The consequences include a variety of health-related issues, such as early death, blindness, cardiac disease, and kidney problems. The seriousness of this disorder can be compounded by the fact that it can be ppdiagnosis of diabetes will help decrease the occurrence of the disease and related complications

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