XGBoost模型在糖尿病预测领域的应用

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摘要

糖尿病是一种威胁人类健康的代谢性疾病,标准化筛查是早期诊断和治疗的重要途径。通过数据筛选成本低、效率高,因此早期预测糖尿病变得至关重要。本文以糖尿病患者为研究对象,利用XGBoost算法对患者体检数据进行处理,建立糖尿病预测模型,预测患者血糖水平,探索XGBoost模型在糖尿病预测领域的应用。实验结果表明,使用该模型的样本均方误差仅为0.0598,验证了该模型的预测误差小,精度高,将很快为糖尿病的预筛选和临床预测提供良好的手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of XGBoost Model in the Field of Diabetes Prediction
Diabetes is a metabolic disorder that threatens people's health, and standardized screening is an important way to diagnose and treat it early. It is low cost and high efficiency to screen through data, therefore, to predict diabetes early has become crucial. Diabetics were taken as the research subject in this paper, and XGBoost algorithm was used to process the patient's data from physical examination, so a model for predicting diabetes was established to predict the blood glucose level of patients and to explore the application of XGBoost model in the field of diabetes prediction. The experimental results have been shown that the mean square error of the sample using this model has been just 0.0598, and it have been verified that the prediction error of the model is small and the accuracy is high, which will soon provide a good means for the pre-screening and clinical prediction of diabetes.
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