Impact of the glycaemic sampling method in diabetes data mining

Diogo Machado, V. S. Costa, Pedro Brandão
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引用次数: 1

Abstract

Finger-pricking is the traditional procedure for glycaemia monitoring. It is an invasive method where the person with diabetes is required to prick their finger. In recent years, continuous-glucose monitoring (CGM), a new and more convenient method of glycaemia monitoring, has become prevalent. CGM provides continuous access to glycaemic values without the need of finger-pricking. Data mining can be used to understand glycaemic values, and to ideally warn users of abnormal situations. CGM provides significantly more data than finger-pricking. Thus, the amount and value of CGM data ultimately questions the role of finger-pricking for glycaemic studies. In this work we use the OhioTlDM data set in order to study the importance of finger-prick-based data. We use Random Forest as a classification method, a robust method that tends to obtain quality results. Our results indicate that, although more demanding and scarcer, finger-prick-based glycaemic values have a significant role on diabetes management and on data mining.
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血糖采样方法在糖尿病数据挖掘中的影响
针刺手指是监测血糖的传统方法。这是一种侵入性的方法,糖尿病患者需要扎破手指。近年来,连续血糖监测(CGM)作为一种新的、更方便的血糖监测方法得到了广泛的应用。CGM提供连续的血糖值,而不需要刺破手指。数据挖掘可用于了解血糖值,并在理想情况下警告用户异常情况。CGM提供的数据明显多于手指穿刺。因此,CGM数据的数量和价值最终质疑了手指穿刺在血糖研究中的作用。在这项工作中,我们使用俄亥俄数据集来研究基于手指刺痛的数据的重要性。我们使用随机森林作为一种分类方法,一种倾向于获得高质量结果的鲁棒方法。我们的研究结果表明,尽管更苛刻和稀缺,但基于手指刺的血糖值在糖尿病管理和数据挖掘中具有重要作用。
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