使用混合人工智能技术预测糖尿病患者的血糖水平

Jan John Liszka-Hackzell
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引用次数: 33

摘要

糖尿病患者管理中的一个问题是在不确切知道患者血糖浓度如何反应的情况下平衡胰岛素的剂量。能够预测血糖水平将简化管理。本文描述了一种结合主成分法和神经网络的混合人工智能技术来预测血糖水平的尝试。使用这种方法,不需要考虑复杂的模型或算法。从这个相当简单的模型中得到的结果显示,在预测的前15天,观测值与预测值之间的相关系数为0.76。通过使用该技术,所有影响该患者血糖水平的因素都被考虑在内,因为它们被整合在这段时间内收集的数据中。必须强调的是,本方法产生的是个体模型,在有限的时间内对该特定患者有效。然而,该方法本身具有普遍的有效性,因为血糖随时间的变化在任何糖尿病患者中都具有相似的特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Blood Glucose Levels in Diabetic Patients Using a Hybrid AI Technique

One of the problems in the management of the diabetic patient is to balance the dose of insulin without exactly knowing how the patient's blood glucose concentration will respond. Being able to predict the blood glucose level would simplify the management. This paper describes an attempt to predict blood glucose levels using a hybrid AI technique combining the principal component method and neural networks. With this approach, no complicated models or algorithms need be considered. The results obtained from this fairly simple model show a correlation coefficient of 0.76 between the observed and the predicted values during the first 15 days of prediction. By using this technique, all the factors affecting this patient's blood glucose level are considered, since they are integrated in the data collected during this time period. It must be emphasized that the present method results in an individual model, valid for that particular patient under a limited period of time. However, the method itself has general validity, since the blood glucose variations over time have similar properties in any diabetic patient.

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