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Hierarchical and Partitional Cluster Analysis of Glucose and Insulin Data from the Oral Glucose Tolerance Test

机译:口服葡萄糖耐量试验中葡萄糖和胰岛素数据的分层和分区聚类分析

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Abstract The body's ability to regulate glucose homeostasis is commonly assessed through the oral glucose tolerance test (OGTT). Several variations of OGTT exists, but the most used in clinical practice is the 2-sample 2-hour OGTT, in which glucose is measured in fasting and two hours after a glucose load. In the 5-sample 2-hour OGTT, glucose is measured in fasting and every 30 minutes after a glucose load, during two hours. In these tests, besides glucose, insulin level can also be measured from the blood samples, increasing thus the number of variables to analyze and perform a better metabolic assessment. In this paper, a cluster analysis is carried using the levels of glucose and insulin from the 2-sample 2-hour OGTT and from the 5-sample 2-hour OGTT, from subjects with metabolic syndrome and professional marathon runners. Different configurations of k-means and agglomerative hierarchical clustering were used to perform the clustering of data and analyze the relationships between clusters with the study groups. Results show that the k-means clustering algorithm performs better than the agglomerative hierarchical clustering, and, with the Manhattan distance measure, k-means perfectly groups subjects using the ten variables from the 5-sample 2-hour OGTT.
机译:摘要通常通过口服葡萄糖耐量试验(OGTT)评估人体调节葡萄糖稳态的能力。存在OGTT的几种变体,但在临床实践中最常用的是2样本2小时OGTT,其中在空腹时和葡萄糖负荷后两个小时测量葡萄糖。在5个样本的2小时OGTT中,在空腹时以及葡萄糖加载后每30分钟(两小时)内测量一次葡萄糖。在这些测试中,除了葡萄糖外,还可以从血样中测量胰岛素水平,从而增加了要分析和进行更好的代谢评估的变量数量。在本文中,使用代谢综合征和专业马拉松运动员的2个样本2小时OGTT和5个样本2小时OGTT中的葡萄糖和胰岛素水平进行了聚类分析。使用不同的k均值配置和聚集层次聚类来执行数据聚类,并分析聚类与研究组之间的关系。结果表明,k-means聚类算法的性能优于凝聚式层次聚类,并且使用曼哈顿距离度量,k-means使用来自5个样本的2小时OGTT的十个变量对受试者进行了完美分组。

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