Diabetes Complication Prediction using Deep Learning-Based Analytics | IEEE Conference Publication | IEEE Xplore

Diabetes Complication Prediction using Deep Learning-Based Analytics


Abstract:

The high levels of blood sugar (or glucose) that occur in diabetes can damage organs such as the heart, blood vessels, eyes, kidneys, and nerves in time. Type 2 diabetes ...Show More

Abstract:

The high levels of blood sugar (or glucose) that occur in diabetes can damage organs such as the heart, blood vessels, eyes, kidneys, and nerves in time. Type 2 diabetes typically affects adults and is most prevalent in adults due to an insufficient supply of insulin. On the other hand, Diabetes type 1, also known as juvenile diabetes or insulin-dependent diabetes, is a chronic disease in which the body cannot produce insulin on its own. Diabetes prevalence has increased over the past three decades at every income level. Affordable treatment is vital for those with diabetes. Several cost-effective interventions can improve patient outcomes. However, a diagnosis of this disease can be costly and difficult. The aim of this research is, therefore, to demonstrate a comparative analysis and improved performance using deep learning to classify diabetic and non-diabetic patients that will provide a feasible way to diagnose this chronic disease. In this work, we used a neural network model with very low variance applying the synthetic minority oversampling technique to augment and improve the variety of data. By removing imbalances and classifying diabetes based on different features, our model achieved an accuracy of approximately 99 % for training and 98 % for validation.
Date of Conference: 24-26 February 2022
Date Added to IEEE Xplore: 29 July 2022
ISBN Information:
Conference Location: Gazipur, Bangladesh

I. Introduction

Diabetes is a chronic disease that results from either not producing enough insulin or not being able to utilize the insulin that is produced. The hormone insulin is responsible for regulating blood sugar levels. Uncontrolled diabetes causes hyperglycemia or raised blood sugar, which over time damages many of the body's systems, including the nerves and blood vessels. As of 2014, there were 422 million people with diabetes, up from 108 million in 1980. In countries with lower and middle incomes, the prevalence is increasing faster than in countries with high incomes [1]. Between 2000 and 2016, there was a 5% increase in premature mortality from diabetes [15]. Diet, fitness, medication, regular screenings, and treatment for complications can help to control diabetes and to delay its complications. Correctly interpreting diabetes data is key to diagnosing diabetes disease. In order to make a prediction for several diseases, there have been many studies done to a degree that today's humans can rely on smart algorithms and decision-supporting models. In the medical field, decision support models are used to diagnose illnesses such as diabetes [2].

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References

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