基于深度学习分析的糖尿病并发症预测

Takrim Rahman Albi, Md Nakhla Rafi, Tasfia Anika Bushra, Dewan Ziaul Karim
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引用次数: 2

摘要

糖尿病患者的高血糖(或葡萄糖)会及时损害心脏、血管、眼睛、肾脏和神经等器官。2型糖尿病通常影响成年人,由于胰岛素供应不足,在成年人中最为普遍。另一方面,1型糖尿病,也被称为青少年糖尿病或胰岛素依赖型糖尿病,是一种身体不能自行产生胰岛素的慢性疾病。在过去三十年中,每个收入水平的糖尿病患病率都有所上升。负担得起的治疗对糖尿病患者至关重要。一些具有成本效益的干预措施可以改善患者的预后。然而,这种疾病的诊断既昂贵又困难。因此,本研究的目的是展示使用深度学习对糖尿病和非糖尿病患者进行分类的比较分析和改进的性能,从而为诊断这种慢性疾病提供一种可行的方法。在这项工作中,我们使用了一个非常低方差的神经网络模型,应用合成少数过采样技术来增加和改善数据的多样性。通过消除不平衡并根据不同的特征对糖尿病进行分类,我们的模型在训练和验证方面的准确率分别达到了约99%和98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diabetes Complication Prediction using Deep Learning-Based Analytics
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.
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