NDM-Finder:一种基于机器学习的2型(新生儿)糖尿病预测方法

Mounita Ghosh, Ferdib-Al-Islam
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引用次数: 1

摘要

2型糖尿病是胰腺胰岛素不能正常发挥作用的一种严重疾病。在英国,约90%的糖尿病患者患有2型糖尿病。这是一种严重的疾病,可能会持续一生。2型糖尿病目前尚无治愈方法。然而,在早期阶段进行正确的诊断,2型糖尿病可能得到控制,并减少患2型糖尿病的机会。在这项研究中,机器学习已被应用于检测患者中是否存在2型糖尿病。探索性数据分析已经进行,以揭示2型糖尿病预测数据集的见解。采用了支持向量机(Support Vector Machine)、随机森林(Random Forest)和XGBoost算法等几种分类算法,然后计算特征重要性分数,了解特征对机器学习模型开发的影响。XGBoost模型在准确率(100%)、精密度(100%)和召回率(100%)等不同指标上实现了更好的执行,并且优于以前的工作。
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NDM-Finder: A Machine Learning Based Approach for Type-2 (Neonatal) Diabetes Mellitus Prediction
Type 2 diabetes mellitus is a severe disease in which the pancreas' insulin does not act correctly. In the United Kingdom, type 2 diabetes affects around 90% of diabetics. It is a severe ailment that might last a lifetime. Type 2 diabetes has no known cure. However, with the proper diagnosis at an early stage, type 2 diabetes may be managed, and the chance of getting it is reduced. In this research, machine learning has been applied to detect the presence of type 2 diabetes in patients. Exploratory Data Analysis has been performed to uncover the insights of the type 2 diabetes prediction dataset. Several classification algorithms - Support Vector Machine, Random Forest, and XGBoost algorithm were applied, and then feature importance scores were also computed to understand the feature impact on the development of the machine learning model. XGBoost model achieved better execution in different metrics like accuracy (100%), precision (100%), and recall (100%) and outperformed previous works.
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