一种预测糖尿病的机器学习方法

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引用次数: 0

摘要

糖尿病是一种慢性疾病,许多人都患有这种疾病。它可能会引起许多并发症,并有患心脏病、肾病、中风、眼部问题、神经损伤等疾病的高风险。毫无疑问,这个惊人的数字需要高度关注。随着机器学习的快速发展,机器学习已经应用于医疗健康的许多方面。有几种机器学习算法用于在各个领域执行预测分析。医疗保健中的预测分析是一项具有挑战性的任务,但最终可以帮助从业者获得有关患者健康和治疗的数据。在这个项目中,出于实验目的,我们采用了一个数据集,该数据集最初来自国家糖尿病、消化道和肾脏疾病研究所。这里的所有患者都是至少21岁的皮马印第安人。通过研究数据集,我们必须找到隐藏的信息,隐藏的模式,从数据中发现知识,并相应地预测结果。该项目的目的是根据数据集中包含的某些诊断测量结果,对患者是否患有糖尿病进行诊断预测。我们通过应用一些流行的机器学习算法,即Logistic回归、随机森林算法和KNN算法来预测糖尿病,提出了一个糖尿病预测模型,以更好地对糖尿病进行分类。
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A Machine Learning Approach for Prediction of Diabetes Mellitus
Diabetes Mellitus is among chronic diseases and lots of people are suffering with this disease. It may cause many complications and have a high risk of diseases like heart disease, kidney disease, stroke, eye problem, nerve damage, etc. There is no doubt that this alarming figure needs great attention. With the rapid development of Machine Learning, machine learning has been applied to many aspects of medical health. There are several Machine learning algorithms that are used to perform predictive analysis in various fields. Predictive analysis in healthcare is a challenging task but ultimately can help practitioners make data informed about a patient's health and treatment. In this project, for experiment purposes, we have taken a dataset which is originally from the National Institute of diabetes and digestive and kidney diseases. All patients here are females at least 21 years old of Pima Indian heritage. By studying the dataset, we must find hidden information, hidden patterns to discover knowledge from the data and predict outcomes accordingly. The objective of this project is to diagnostically predict whether the patient has diabetes or not, based on certain diagnostic measurements included in the dataset. We have proposed a diabetes prediction model for better classification of diabetes by applying some popular machine learning algorithms namely, Logistic Regression, Random Forest Algorithm and KNN Algorithm to predict Diabetes.
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