基于xgboost的早期糖尿病风险数据集分析

Jayson A. Sabejon, Jeyhozaphat B. Rejas, Gernel S. Lumacad, Reymund L. Zarate, Edwin Anthony D. Mendez, Frances Marie Lynn O. Tinoy
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引用次数: 0

摘要

糖尿病是一种代谢疾病,由胰腺缺乏胰岛素产生或身体对胰岛素的利用不足引起。它是最普遍的疾病之一,没有已知的治疗方法,然而,及时发现可以提高生存率。本研究讨论了一种称为极端梯度增强(XGBoost)算法的集成学习方法在早期糖尿病风险数据集分析中的应用。首先,利用XGBoost算法建立预测模型,对糖尿病阳性或阴性病例进行分类。其次,实现特征重要性分析,衡量数据集中每个输入特征的相对重要性。最后,生成一个XGBoost决策树结构,说明糖尿病阴性或阳性病例的设置条件。实验结果表明,所建立的预测模型准确率为0.9903,kappa系数为0.9797,f-score为0.990,优于前人的预测方法。特征重要性分析显示,“年龄”变量对早期糖尿病风险预测的相对得分最高。这一结果证实了先前的发现,即年龄通常会影响糖尿病,因为胰岛素抵抗增加和胰岛功能受损与衰老有关。在本文的后半部分,XGBoost决策树模型为早期糖尿病风险预测提供了13种不同的决策规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
XGBoost–Based Analysis of the Early–Stage Diabetes Risk Dataset
Diabetes is a metabolic condition caused by either a lack of insulin production from the pancreas or insufficient utilization of insulin by the body. It is among the most prevalent diseases without a known cure, however, survival can be increased with timely detection. This study discussed the utilization of an ensemble learning method called extreme gradient boosting (XGBoost) algorithm for analyzing the early-stage diabetes risk dataset. First, a predictive model is formulated using the XGBoost algorithm in classifying a positive or negative diabetes case. Second, a feature importance analysis is implemented to measure the relative importance of each input feature in the dataset. Lastly, an XGBoost decision tree structure is generated illustrating set conditions of a negative or positive diabetes case. Experimental result showed that the formulated predictive model (accuracy = 0.9903, kappa coefficient = 0.9797, f-score = 0.990) outperformed the methods discussed in previous literatures. The feature importance analysis revealed that the ‘age’ variable has the highest relative score for early-stage diabetes risk prediction. This result confirms previous findings that age often does influence diabetes, since increased insulin resistance and impaired pancreatic islet function is associated with aging. In the latter part of this paper, the XGBoost decision tree model provided 13 different decision rules for early-stage diabetes risk prediction.
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