Research on Diabetes Prediction Based on Machine Learning

Yixuan Li
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Abstract

Diabetes is a serious chronic disease and successful prediction can effectively improve early intervention and subsequent treatment. Nowadays, machine learning technology is gradually attracting people’s attention in diabetes prediction. However, previous research is relatively limited for now. This review systematically and comprehensively reviews the current status of diabetes prediction, the application of machine learning in this field, and the current challenges faced by machine learning. First, the epidemiological characteristics of diabetes and the background of the rise of machine learning in the medical field are introduced. Secondly, the latest progress and typical cases of machine learning technology in diabetes prediction are discussed. Subsequently, the methods and challenges of data collection and feature processing are discussed in detail, as well as commonly used machine learning models and their evaluation methods. We will further comprehensively analyze the main findings and results of existing research, evaluate the application effect of machine learning in diabetes prediction, and look forward to future research directions and development trends. This review will provide researchers with a comprehensive guide to the latest advances and methods of machine learning in diabetes prediction and promote further research and applications in related fields.
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基于机器学习的糖尿病预测研究
糖尿病是一种严重的慢性疾病,成功的预测可以有效改善早期干预和后续治疗。如今,机器学习技术在糖尿病预测方面逐渐受到人们的关注。然而,前人的研究目前还相对有限。本综述系统、全面地回顾了糖尿病预测的现状、机器学习在该领域的应用以及当前机器学习面临的挑战。首先,介绍了糖尿病的流行病学特征和机器学习在医学领域兴起的背景。其次,讨论了机器学习技术在糖尿病预测领域的最新进展和典型案例。随后,详细讨论了数据收集和特征处理的方法和挑战,以及常用的机器学习模型及其评估方法。我们将进一步全面分析现有研究的主要发现和成果,评估机器学习在糖尿病预测中的应用效果,并展望未来的研究方向和发展趋势。本综述将为研究人员提供一份全面的指南,帮助他们了解机器学习在糖尿病预测中的最新进展和方法,促进相关领域的深入研究和应用。
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