基于监督学习算法的早期糖尿病风险分类

R. Deepa, M. Sakthivadivel, S. Saravanakumar, V. Ganesh Karthikeyan, S. Madumitha
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引用次数: 0

摘要

糖尿病是最具破坏性的疾病之一,影响着许多人。糖尿病可由多种原因引起,包括衰老、肥胖、缺乏运动、遗传、不良饮食、高血压等。糖尿病增加了患多种疾病的可能性,包括心脏病、肾病、中风、眼疾、神经损伤等。诊断糖尿病所需的信息目前是通过医院使用的各种测试收集的,然后诊断用于确定最佳治疗方案。医疗保健领域对机器学习(ML)有相当大的应用。医疗保健领域的数据库非常庞大。可以使用ML技术检查大数据集,以查找隐藏的信息和模式,从而允许人们从数据中学习并正确预测结果。使用现有的预报方法,预报的精度不是很好。在这项研究中,我们提出了一个早期糖尿病预测模型,该模型结合了几个有助于糖尿病发展的外在特征,以及更广泛使用的措施,如多尿、体重减轻、多食、视力模糊、脱发、肥胖等。支持向量机(SVM)、逻辑回归(LOR)、提升树(BOT)和袋装树(BAT)是本文中用于早期预测糖尿病的四种不同的分类器。该设备的性能是根据准确性、召回率、特异性、精密度和f-measure来评估的。结果表明,在分类器中,BAT的准确率最高,达到98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early diabetes risk classification using supervised learning algorithms
Diabetes is one of the most devastating diseases and affects many people. Diabetes can be caused by a variety of causes, including ageing, obesity, inactivity, genetics, a poor diet, high blood pressure, and others. Diabetes increases the likelihood of developing several illnesses, including heart disease, renal disease, stroke, eye problems, nerve damage, etc. The information needed to diagnose diabetes is currently gathered through a variety of tests used in hospitals, and the diagnosis is then used to determine the best course of treatment. The healthcare sector has a considerable application for machine learning (ML). Databases in the healthcare sector are very vast. Big datasets can be examined using ML techniques to find hidden information and patterns, allowing one to learn from the data and predict outcomes properly. Using the existing methods, the forecast’s accuracy is not very good. In this study, we proposed an early diabetes prediction model that incorporates several extrinsic characteristics that contribute to the development of diabetes together with more widely used measures like polyuria, weight loss, polyphagia, visual blurring, alopecia, obesity, etc. The Support Vector Machine (SVM), the Logistic Regression (LOR), the Boosted Tree (BOT), and the Bagged Tree (BAT) are four different classifiers that are utilized in this paper to predict diabetes early on. The device’s performance is assessed in terms of accuracy, recall, specificity, precision, and f-measure. Results show that among the classifiers, BAT has the highest accuracy, at 98%.
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