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Principal Component Analysis of Categorized Polytomous Variable-Based Classification of Diabetes and Other Chronic Diseases

机译:基于多变量变量的糖尿病和其他慢性病分类的主成分分析

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摘要

A chronic disease diabetes mellitus is assuming pestilence proportion worldwide. Therefore prevalence is important in all aspects. Researchers have introduced various methods, but still, the improvement is a need for classification techniques. This paper considers data mining approach and principal component analysis (PCA) techniques, on a single platform to approaches on the polytomous variable-based classification of diabetes mellitus and some selected chronic diseases. The PCA result shows eigenvalues, and the total variance is explained for the principal components (PCs) solution. Total of twelve attributes was analyzed with the intention to precise the pattern of the correlation with minimum factors as possible. Usually, factors with large eigenvalues retained. The first five components have their eigenvalues large enough to be retained. Their variances are 18.9%, 14.0%, 13.6%, 10.3%, and 8.6%, respectively. That explains ~65.3% of the total variance. We further applied K-means clustering with the aid of the first two PCs. As well, correlation results between diabetes mellitus and selected diseases; it has revealed that diabetes patients are more likely to have kidney and hypertension. Therefore, the study validates the proposed polytomous method for classification techniques. Such a study is important in better assessment on low socio-economic status zone regions around the globe.
机译:慢性疾病糖尿病在世界范围内呈瘟疫比例。因此,患病率在所有方面都很重要。研究人员已经介绍了各种方法,但是仍然需要对分类技术进行改进。本文在单一平台上考虑数据挖掘方法和主成分分析(PCA)技术,以基于多变量变量的糖尿病和某些慢性病分类方法。 PCA结果显示了特征值,并解释了主成分(PC)解决方案的总方差。分析了总共十二种属性,目的是用最小的因素精确地建立关联的模式。通常,保留具有较大特征值的因子。前五个分量的特征值足以保留。它们的方差分别为18.9%,14.0%,13.6%,10.3%和8.6%。这就解释了〜65.3%的总方差。我们借助前两台PC进一步应用了K-means聚类。同样,糖尿病与某些疾病之间也存在相关性。它表明,糖尿病患者更容易患有肾脏和高血压。因此,本研究验证了所提出的多分类方法用于分类技术。这项研究对于更好地评估全球低社会经济地位地区非常重要。

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