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Classification of postprandial glycemic patterns in type 1 diabetes subjects under closed-loop control: an in silico study*

机译:闭环控制下1型糖尿病患者餐后血糖模式分类:计算机研究 *

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In this contribution we explore some alternatives in order to obtain filtered and low dimension CGM data to provide well processed CGM data to AP systems. The presented approach explores the possible association of certain patient behaviors with certain glucose patterns. We compare the classical clustering algorithms (K-means, and fuzzy C-means), which has shown some limitations for CGM data processing, with a new clustering algorithm (K-means ellipsoid algorithm) more suited to CGM data. We test this new algorithm in a variety of complex scenarios including variabilty in the amount of ingested carbohydrates, absorption time and intrapatient parameters. The new algorithm overcomes the perceived problems and is able to discriminate between normoglycaemic, moderate and severe hyperglycaemic post-prandial behaviour, even with similar amounts of carbohydrates contained in a meal.
机译:在此贡献中,我们探索了一些替代方法,以便获得经过过滤的低维CGM数据,以向AP系统提供经过良好处理的CGM数据。提出的方法探讨了某些患者行为与某些葡萄糖模式的可能关联。我们将经典聚类算法(K均值和模糊C均值)与CGM数据进行了比较,后者将CGM数据处理显示出一些局限性,并将新的聚类算法(K-均值椭球算法)与CGM数据进行了比较。我们在各种复杂的场景中测试了这种新算法,包括摄入碳水化合物的数量,吸收时间和患者内参数的可变性。新算法克服了人们所感知的问题,并且即使餐中所含碳水化合物的量相似,也能够区分正常血糖,中度血糖和严重的高血糖餐后行为。

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