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A rule extraction approach from support vector machines for diagnosing hypertension among diabetics

机译:糖尿病患者高血压诊断载体机器的规则提取方法

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Diabetes mellitus is a major non-communicable disease ever rising as an epidemic and a public health crisis worldwide. One of the several life-threatening complications of diabetes is hypertension or high blood pressure which mostly remains undiagnosed and untreated until symptoms become severe. Diabetic complications can be greatly reduced or prevented by early detection of individuals at risk. In recent past, several machine learning classification algorithms have been widely applied for diagnosing diabetes but very few studies have been conducted for detecting hypertension among diabetic subjects. Specifically, existing rule-based models fail to produce comprehensible rule sets. To resolve this limitation, this paper endeavours to develop a hybrid approach for extracting rules from support vector machines. A feature selection mechanism is introduced for selecting significantly associated features from the dataset. XGBoost has been utilized to convert SVM black box model into an apprehensible decision-making tool. A new dataset has been obtained from Pt. JNM, Medical College, Raipur, India comprising of 300 diabetic subjects with 108 hypertensives and 192 normotensives. In addition, five public diabetes-related datasets have been taken for generalization of the results. Experiments reveal that the proposed model outperforms ten other benchmark classifiers. Friedman rank and post hoc Bonferroni-Dunn tests demonstrate the significance of the proposed method over others. (C) 2019 Elsevier Ltd. All rights reserved.
机译:糖尿病是一个主要的非传染性疾病,作为全世界疫情和公共卫生危机。糖尿病的几种危及生命并发症之一是高血压或高血压,大多数仍未诊断并未治疗,直至症状严重。通过在风险风险的个体的早期检测中可以大大减少或预防糖尿病并发症。最近,几种机器学习分类算法已被广泛应用于诊断糖尿病,但是已经对糖尿病受试者检测高血压进行了很少的研究。具体地,现有的基于规则的模型无法生成可辨别的规则集。为了解决这一限制,本文努力开发一种用于从支持向量机中提取规则的混合方法。引入特征选择机制,用于从数据集中选择显着相关的功能。 XGBoost已被利用将SVM黑匣子模型转换为可伸展的决策工具。已从PT获取新数据集。 JNM,医学院,Raipur,印度包含300名糖尿病受试者,具有108个高血压和192个常压。此外,已经采取了五个公共糖尿病相关的数据集以概括结果。实验表明,所提出的模型优于其他十种基准分类器。弗里德曼排名和后HOC Bonferroni-Dunn试验表明了所提出的方法对他人的重要性。 (c)2019 Elsevier Ltd.保留所有权利。

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