Web Based Diabetes Prediction System Using Machine Learning

Mayur Patil, Swatej Patil, Prashant Singh
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Abstract

Diabetes is a critical condition that affects a large number of people. It can be caused by age, obesity, lack of exercise, genetic diabetes, lifestyle, poor diet, high blood pressure, and other factors. People with diabetes have an increased risk of developing heart disease, kidney disease, stroke, eye problems, nerve damage, and more. The current practice of the hospital is to gather the necessary information for the diagnosis of diabetes using various tests, and then to provide appropriate treatment according to the diagnosis. Big Data Analytics is important in the healthcare industry. Data stored in the healthcare industry is huge in size. By using large data statistics, one can scan large data sets to reveal hidden information and trends, enabling one to obtain data and predictably produce results accordingly. The classification and prediction accuracy of the current method is not very good. In this study, we present a predictive model of diabetes for advanced diabetes classification that includes a few external variables that cause diabetes in addition to normal components such as glucose, BMI, age, insulin, and so on. Compared to the old database, the new database improves the accuracy of categories. In addition, a diabetic pipeline model was developed for the purpose of improving the accuracy of the sections.
基于网络的机器学习糖尿病预测系统
糖尿病是一种影响许多人的严重疾病。它可能由年龄、肥胖、缺乏运动、遗传性糖尿病、生活方式、不良饮食、高血压和其他因素引起。糖尿病患者患心脏病、肾病、中风、眼疾、神经损伤等疾病的风险更高。医院目前的做法是通过各种检查收集诊断糖尿病所需的信息,然后根据诊断提供适当的治疗。大数据分析在医疗保健行业非常重要。医疗保健行业存储的数据规模巨大。通过使用大数据统计,可以扫描大数据集以揭示隐藏的信息和趋势,从而使人们能够获得数据并相应地可预测地产生结果。现有方法的分类和预测精度不是很好。在这项研究中,我们提出了一个晚期糖尿病分类的预测模型,该模型除了包括葡萄糖、BMI、年龄、胰岛素等正常成分外,还包括一些导致糖尿病的外部变量。与旧数据库相比,新数据库提高了分类的准确性。此外,为了提高切片的准确性,开发了糖尿病管道模型。
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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