An Improved Ensemble Machine Learning Approach for Diabetes Diagnosis

IF 0.6 Q3 MULTIDISCIPLINARY SCIENCES
Mohanad Mohammed Rashid, Omar Mahmood Yaseen, Rana Riyadh Saeed, M. Alasaady
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引用次数: 0

Abstract

Diabetes is recognized as one of the most detrimental diseases worldwide, characterized by elevated levels of blood glucose stemming from either insulin deficiency or decreased insulin efficacy. Early diagnosis of diabetes enables patients to initiate treatment promptly, thereby minimizing or eliminating the risk of severe complications. Although years of research in computational diagnosis have demonstrated that machine learning offers a robust methodology for predicting diabetes, existing models leave considerable room for improvement in terms of accuracy. This paper proposes an improved ensemble machine learning approach using multiple classifiers for diabetes diagnosis based on the Pima Indians Diabetes Dataset (PIDD). The proposed ensemble voting classifier amalgamates five machine learning algorithms: Decision Tree (DT), Logistic Regression (LR), K-Nearest Neighbor (KNN), Random Forests (RF), and XGBoost. We obtained the individual model accuracies and used the ensemble method to improve accuracy. The proposed approach uses a pre-processing stage of standardization and imputation and applies the Local Outlier Factor (LOF) to remove data anomalies. The model was evaluated using sensitivity, specificity, and accuracy criteria. With a reported accuracy of 81%, the proposed approach shows promise compared to prior classification techniques.
一种用于糖尿病诊断的改进型集合机器学习方法
糖尿病是世界公认的危害最大的疾病之一,其特点是由于胰岛素缺乏或胰岛素功效降低导致血糖升高。糖尿病的早期诊断使患者能够及时开始治疗,从而最大限度地降低或消除严重并发症的风险。尽管多年的计算诊断研究表明,机器学习为预测糖尿病提供了一种可靠的方法,但现有模型在准确性方面仍有相当大的改进空间。本文基于皮马印第安人糖尿病数据集(PIDD),提出了一种改进的集合机器学习方法,使用多个分类器进行糖尿病诊断。所提出的集合投票分类器融合了五种机器学习算法:决策树(DT)、逻辑回归(LR)、K-近邻(KNN)、随机森林(RF)和 XGBoost。我们获得了单个模型的准确度,并使用集合方法提高了准确度。所提出的方法使用了标准化和估算的预处理阶段,并应用了局部离群因子(LOF)来消除数据异常。使用灵敏度、特异性和准确性标准对模型进行了评估。据报告,该方法的准确率为 81%,与之前的分类技术相比,显示出了良好的前景。
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来源期刊
Pertanika Journal of Science and Technology
Pertanika Journal of Science and Technology MULTIDISCIPLINARY SCIENCES-
CiteScore
1.50
自引率
16.70%
发文量
178
期刊介绍: Pertanika Journal of Science and Technology aims to provide a forum for high quality research related to science and engineering research. Areas relevant to the scope of the journal include: bioinformatics, bioscience, biotechnology and bio-molecular sciences, chemistry, computer science, ecology, engineering, engineering design, environmental control and management, mathematics and statistics, medicine and health sciences, nanotechnology, physics, safety and emergency management, and related fields of study.
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