使用机器学习技术在早期阶段预测糖尿病

Sarra Samet, Mohamed Ridda Laouar, Issam Bendib
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引用次数: 4

摘要

由于其改善疾病预测的能力,机器学习在医疗保健服务(HCS)中占据了突出的地位。人工智能和机器学习技术已经在这一领域得到了应用。为了在早期阶段预测疾病,通常使用数据挖掘技术。近年来,糖尿病已成为世界范围内众所周知的公共慢性疾病。由于不适当的生活方式、垃圾食品的消费增加以及缺乏健康意识,它正在迅速增加。医疗保健中的预测分析是一项艰巨的任务,但它最终可以帮助从业者根据大量数据及时做出有关患者健康和治疗的决策。为了预测糖尿病,我们研究了7种最重要的机器学习分类技术。作为本研究中使用的多种机器学习方法的比较结果,已经确定了哪种算法最适合预测糖尿病。XGBoost的F1得分为0.94,优于其他分类器。为了帮助医生和从业者使用机器学习方法更准确地预测糖尿病,撰写了这项研究。模型被证明比现有的工作更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Machine Learning Techniques to Predict Diabetes at an Early Stage
Because of its ability to improve disease prediction, machine learning has taken a prominent place in healthcare services (HCS). Artificial intelligence and machine learning techniques have already been used in this area. In order to anticipate disease at an early stage, data mining techniques are commonly used. Diabetes has recently become a well-known public chronic condition all across the world. It is rapidly increasing as a result of improper lifestyles, increased consumption of junk food, and a lack of health awareness. Predictive analytics in healthcare is a difficult task, but it can ultimately assist practitioners in making timely decisions regarding a patient’s health and treatment based on huge data. For the purpose of predicting diabetes, seven of the most important machine learning classification techniques have been examined. As a result of a comparison of the multiple machine learning approaches utilized in this study, it has been determined which algorithm is best for prediction of diabetes. With an F1 score of 0,94, XGBoost outperformed other classifiers. To help doctors and practitioners anticipate diabetes earlier using machine learning approaches with more accuracy, this study was written. Models were shown to be more effective than existing work.
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