Diabetes Mellitus Prediction using Supervised Machine Learning Techniques

Srishti Mahajan, P. Sarangi, A. Sahoo, Mukesh Rohra
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引用次数: 1

Abstract

Diabetes is a long-term condition that occurs when either the body cannot use insulin properly or the pancreas does not produce sufficient amounts of hormone to control blood glucose levels. High blood sugar levels are a hallmark of diabetes, which belongs to a group of metabolic diseases. The two most prevalent varieties of diabetes are type 1 and type 2, but there are other types as well, such as gestational diabetes, which develops during pregnancy. The number of people with type 1 diabetes has significantly increased. The genetic condition known as type 1 diabetes has a long incubation period and frequently manifests early in life. Cells in people with type 2 diabetes do not properly respond to insulin. It changes over time and mostly depends on how people live their lives. According to a 2022 report by the International Diabetes Federation, currently around 382 million people worldwide have diabetes. By 2035, the Figure is expected to increase to 592 million. One of the most common causes of tissue and organ damage and dysfunction, including blindness, kidney failure, heart failure, and stroke, is diabetes. As a result, early detection of diabetes is critical. This work aims at implementing two machine learning methods like Logistic Regression and Random Forest for diabetes prediction. Each algorithm is calculated to determine the model’s accuracy. Furthermore, the highest accuracy of 99.03% is received by Random Forest.
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使用监督机器学习技术预测糖尿病
糖尿病是一种长期疾病,当身体不能正常使用胰岛素或胰腺不能产生足够数量的激素来控制血糖水平时就会发生。高血糖是糖尿病的标志,糖尿病属于一组代谢疾病。糖尿病的两种最常见的类型是1型和2型,但也有其他类型,如妊娠糖尿病,在怀孕期间发展。1型糖尿病患者的数量显著增加。被称为1型糖尿病的遗传条件有很长的潜伏期,并且经常在生命早期表现出来。2型糖尿病患者体内的细胞不能对胰岛素做出适当的反应。它随着时间的推移而变化,主要取决于人们如何生活。根据国际糖尿病联合会2022年的一份报告,目前全球约有3.82亿人患有糖尿病。到2035年,这一数字预计将增加到5.92亿。导致组织和器官损伤和功能障碍(包括失明、肾衰竭、心力衰竭和中风)的最常见原因之一是糖尿病。因此,早期发现糖尿病至关重要。这项工作旨在实现两种机器学习方法,如逻辑回归和随机森林,用于糖尿病预测。计算每个算法以确定模型的精度。此外,Random Forest的准确率最高,达到99.03%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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