糖尿病患者分类的计算机辅助技术

Faiza Mehreen, A. Rehman, Tahir Ali, Sabeen Javaid, Ali Nawaz
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引用次数: 1

摘要

糖尿病是一种慢性疾病,当体内的糖水平过高或身体不能产生足够的胰岛素时就会发生,它会影响所有年龄组的每个人。它有一段迷人的历史,近年来由于城市化而显著增加,影响了全世界数百万人。未确诊的糖尿病可导致许多危及生命的疾病,通常会导致人死亡。因此,糖尿病的早期发现对维持健康生活至关重要,它可以帮助预防并发症,降低患者的健康风险。本文致力于设计一个模型,通过使用不同的机器学习算法来提供最大的准确性,从而帮助在早期阶段发现疾病。为此,使用随机森林、决策树、k近邻、Naïve贝叶斯和深度学习五个分类器,然后应用投票集成方法,该方法被认为是“最佳实践”,是工作流程的一部分,并以最高的准确率提供最佳可能的结果。作为本分析一部分的信息数据取自Kaggle早期糖尿病分类数据集,并在RapidMiner工具上对这些数据进行了预处理。本研究的重点是实现不同的基于机器学习的分类模型,并对其进行比较分析。因此,通过使用这些算法对糖尿病的诊断进行统计评估和比较。实验结果表明,在投票集合中,随机森林与K-NN在精度、f-measure和灵敏度等参数上给出了97.97%的最高准确率的最佳结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Computer Aided Technique for Classification of Patients with Diabetes
Diabetes is a chronic disease that occurs when the sugar level is too high in the body or when the body doesn't make enough insulin and it impacts each individual of all age groups. It has a captivating history that has increased significantly in recent years as a result of urbanization and affected millions of people worldwide. Undiagnosed diabetes can cause many life-threatening diseases which usually lead to the death of a person. So, the early detection of diabetes is very vital to maintain a healthy life and it can help to prevent complications and reduce patients' health risks. This paper undertakes to design a model which gives maximum accuracy by using different machine learning algorithms that help detect the disease in its early stage. For this purpose, used five classifiers which are Random Forest, Decision Tree, K-Nearest Neighbor, Naïve Bayes, and Deep learning, then apply the Vote ensemble approach that is considered “best practice” and is a part of the workflow and provides the best possible outcomes with the highest accuracy percentage. The informational data employed as a part of this analysis is taken from the Kaggle dataset of Early Diabetes Classification and preprocessed this all data on the RapidMiner Tool. The main point of this research is the implementation of the different ML based classification models to show their comparative analysis. Thus, by using these algorithms the diagnosis of diabetes is statistically evaluated and compared. The experimental outcomes show that in the vote ensemble, Random Forest with K-NN gives optimum results with the highest accuracy of 97.97% along with parameters like precision, f-measure, and sensitivity.
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