使用各种机器学习算法对糖尿病进行性能分析和预测

Saurav Dev, B. Kumar, D. Dobhal, Harendra Singh Negi
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引用次数: 1

摘要

如今,糖尿病已经变得非常普遍。每个家庭都应该有一个糖尿病患者。这是一种具有威胁性的疾病,意味着危险,这种疾病被称为慢性疾病。这种情况的发生是由于人体内的葡萄糖或糖的水平很高,然后在我们的一生中保持一个糖的水平就变得非常重要,所以需要在开始的日子里更早地预测。它们主要是1型和2型,也有妊娠,发生在怀孕期间。糖尿病可能导致眼压升高和青光眼等眼病。有可能患心脏病,胰腺的恢复速度也很慢。在本文中,我们将使用不同特征的数据集(葡萄糖、BMI、年龄等)提出并分析用于糖尿病预测的机器学习算法。本文的结果是各种机器学习算法的准确性、精密度、召回率和f1-score。考虑实现所有功能,糖尿病和非糖尿病患者无葡萄糖和无妊娠。对于所有特征,logistic回归的准确率最高,为74.45%,对于不含葡萄糖特征的KNN,准确率最高,为68.83%,对于不含妊娠特征的KNN,准确率为76.19%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis and Prediction of Diabetes using Various Machine Learning Algorithms
Nowadays, diabetes has become very common. In every house, there should be a person who has diabetes. It is a menacing condition, which means dangerous, and this disease is known as a chronic illness. This happens due to a high level of glucose or sugar in the human body, and then it becomes very indispensable to maintain a level of sugar throughout our lifetime, so it needs to be predicted earlier in the starting days. They are majorly in type 1 and type 2, and gestation is also there, which occurs in pregnancy. Diabetes may cause eye diseases like increasing eye pressure and glaucoma. There may be a chance of heart disease and a slow recovery rate of the pancreas. In this article, we are going to propose and analyze the machine learning algorithms for diabetes prediction by using a dataset of different features (Glucose, BMI, Age, etc.). Outcome of this paper is accuracy, precision, recall and f1-score for various machine learning algorithms. Consideration of implementation on all features, without glucose and without pregnancy for diabetic and non-diabetic. For all features logistic regression has highest accuracy i.e 74.45%, for without glucose feature KNN gives highest accuracy level i.e 68.83% and without pregnancy feature, KNN accuracy with 76.19%.
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