基于糖消费控制能力的泰国老年人分类

P. Temdee, ChuanHui He, Marzia Hoque Tania
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摘要

当今世界老年人口中,泰国老年人的数量正在迅速增加,如何保持他们的健康是一个值得关注的问题。心血管疾病是泰国的严重疾病,其死亡率高于癌症,老年人患心血管疾病的可能性更高。因此,心血管疾病的危险因素应该得到解决。肥胖是心血管疾病的危险因素之一,严重影响泰国老年人的健康;过量的糖摄入是导致超重和肥胖的一种方式。泰国人的食糖摄入量远远高于标准食糖摄入量,这也可能导致许多其他疾病。因此,本文针对有控制血糖潜力的老年人群体,提出了一种分类方法,以防止其糖过度消费。本文探索机器学习算法,为老年数据寻找合适的分类方法。采用人工神经元网络和k近邻对老年群体进行分类。糖化血红蛋白(HbA1c)和空腹血糖(FPG)是评估血糖的无创测量方法,基于这两种测量方法,将121例老年人的242份数据分为可控组和不可控组。结果表明,与k近邻的准确率相比,人工神经元网络更适合于数据集,准确率为70.59%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Thai Elderly People Based on Control Ability of Sugar Consumption
Nowadays, the number of Thai elders is rapidly increasing among world elderly population, how to keep their health is a major concern. Cardiovascular Diseases (CVDs) which are severe diseases for Thai have higher mortality than cancers, and elderly people have a higher possibility to predispose CVDs. Hence, the risk factors for CVDs should be addressed. Obesity, as one of the risk factors of CVDs, seriously affects Thai elders’ wellbeing; excessive sugar consumption is a way leading to overweight and obesity. The amount of consumed sugar by Thai is much higher than the standard sugar consumption, and it also could cause many other diseases. Therefore, this paper proposes a classification method for the elderly group who have the potential to control their blood sugar in order to prevent them from sugar overconsumption. This paper explored machine learning algorithms to find an appropriate classification method for elderly data. Artificial neuron network and K-nearest neighbors are applied for classifying elderly groups. Glycated hemoglobin (HbA1c) and fasting plasma glucose (FPG) are the noninvasive measurements of evaluating blood sugar, based on the two measurements, the 242 data from 121 elderly people are divided into two groups which are controllable group and uncontrollable group. The result indicates that the artificial neuron network is more suitable for the dataset with 70.59% accuracy as compared to the accuracy of K-nearest neighbors.
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