机器学习与深度学习方法在早期糖尿病预测中的比较分析

Md. Abu Rumman Refat, Md. Al Amin, Chetna Kaushal, Mst. Nilufa Yeasmin, Md. Khairul Islam
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引用次数: 18

摘要

糖尿病是一种影响身体处理血糖的疾病,通常被称为糖尿病。当胰腺不能产生足够的胰岛素或人体不能使用产生的胰岛素时,就会出现胰岛素不足和胰岛素使用无效。胰岛素是胰腺分泌的一种激素,帮助将食物中的葡萄糖作为能量输送到细胞中。不受控制的糖尿病的常见影响是高血糖,加上其他健康问题,引发严重的健康问题,主要是神经和血管。根据2014年的统计数据,18岁及以上的人患有糖尿病,根据2019年的统计数据,仅糖尿病就造成150万人死亡。然而,由于机器学习(ML)和深度学习(DL)分类算法的快速发展,在健康科学等不同领域,现在在早期阶段检测糖尿病非常容易。在这个实验中,我们对几种用于早期糖尿病疾病预测的ML和DL技术进行了比较分析。此外,我们使用了UCI存储库中的糖尿病数据集,该数据集具有17个属性,包括类别,并使用各种性能指标评估了所有提议的机器学习和深度学习分类算法的性能。根据我们的实验,XGBoost分类器的准确率比其他算法高出约100.0%,而其他算法的准确率超过90.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Analysis of Early Stage Diabetes Prediction using Machine Learning and Deep Learning Approach
Diabetes is a disease that affects how your body processes blood sugar and is often referred to as diabetes mellitus. Insulin insufficiency and ineffective insulin use coincide when the pancreas cannot produce enough insulin or the human body cannot use the insulin that is produced. Insulin is a hormone produced by the pancreas that helps in the transport of glucose from food into cells for use as energy. The common effect of uncontrolled diabetes is hyper-glycemia, or high blood sugar, which plus other health concerns, raises serious health issues, majorly towards the nerves and blood vessels. According to 2014 statistics, people aged 18 or older had diabetes and, according to 2019 statistics, diabetes alone caused 1.5 million deaths. However, because of the rapid growth of machine learning(ML) and deep learning (DL) classification algorithms, indifferent sectors, like health science, it is now remarkably easy to detect diabetes in its early stages. In this experiment, we have conducted a comparative analysis of several ML and DL techniques for early diabetes disease prediction. Additionally, we used a diabetes dataset from the UCI repository that has 17 attributes, including class, and evaluated the performance of all proposed machine learning and deep learning classification algorithms using a variety of performance metrics. According to our experiments, the XGBoost classifier outperformed the rest of the algorithms by approximately 100.0%, while the rest of the algorithms were over 90.0% accurate.
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