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Intelligent data analysis to interpret major risk factors for diabetic patients with and without ischemic stroke in a small population

机译:智能数据分析可解释一小部分糖尿病患者是否患有缺血性卒中的主要危险因素

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摘要

This study proposes an intelligent data analysis approach to investigate and interpret the distinctive factors of diabetes mellitus patients with and without ischemic (non-embolic type) stroke in a small population. The database consists of a total of 16 features collected from 44 diabetic patients. Features include age, gender, duration of diabetes, cholesterol, high density lipoprotein, triglyceride levels, neuropathy, nephropathy, retinopathy, peripheral vascular disease, myocardial infarction rate, glucose level, medication and blood pressure. Metric and non-metric features are distinguished. First, the mean and covariance of the data are estimated and the correlated components are observed. Second, major components are extracted by principal component analysis. Finally, as common examples of local and global classification approach, a k-nearest neighbor and a high-degree polynomial classifier such as multilayer perceptron are employed for classification with all the components and major components case. Macrovascular changes emerged as the principal distinctive factors of ischemic-stroke in diabetes mellitus. Microvascular changes were generally ineffective discriminators. Recommendations were made according to the rules of evidence-based medicine. Briefly, this case study, based on a small population, supports theories of stroke in diabetes mellitus patients and also concludes that the use of intelligent data analysis improves personalized preventive intervention.
机译:这项研究提出了一种智能的数据分析方法,以调查和解释在少数人群中有无缺血性(非栓塞性)中风的糖尿病患者的独特因素。该数据库包括从44位糖尿病患者中收集的总共16个特征。特征包括年龄,性别,糖尿病持续时间,胆固醇,高密度脂蛋白,甘油三酸酯水平,神经病,肾病,视网膜病,周围血管疾病,心肌梗塞率,葡萄糖水平,药物和血压。区分公制和非公制功能。首先,估计数据的均值和协方差,并观察相关分量。其次,通过主成分分析提取主要成分。最后,作为局部和全局分类方法的常见示例,采用k最近邻和高阶多项式分类器(例如多层感知器)对所有成分和主要成分进行分类。大血管的变化是糖尿病缺血性卒中的主要特征。微血管变化通常是无效的鉴别因素。根据循证医学的规则提出了建议。简而言之,该案例研究基于少数人群,支持糖尿病患者的中风理论,并得出结论,使用智能数据分析可改善个性化的预防性干预。

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