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Development of a Neural Network for Prediction of Glucose Concentration in Type 1 Diabetes Patients

机译:用于预测1型糖尿病患者葡萄糖浓度的神经网络的开发

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摘要

BackgroundA major difficulty in the management of diabetes is the optimization of insulin therapies to avoid occurrences of hypoglycemia and hyperglycemia. Many factors impact glucose fluctuations in diabetes patients, such as insulin dosage, nutritional intake, daily activities and lifestyle (e.g., sleep-wake cycles and exercise), and emotional states (e.g., stress). The overall effect of these factors has not been fully quantified to determine the impact on subsequent glycemic trends. Recent advances in diabetes technology such as continuous glucose monitoring (CGM) provides significant sources of data, such that quantification may be possible. Depending on the CGM technology utilized, the sampling frequency ranges from 1–5 min. In this study, an intensive electronic diary documenting the factors previously described was created. This diary was utilized by 18 patients with insulin-dependent diabetes mellitus in conjunction with CGM. Utilizing this dataset, various neural network models were constructed to predict glucose in these diabetes patients while varying the predictive window from 50-180 min. The predictive capability of each neural network within the fully trained dataset was analyzed as well as the predictive capabilities of the neural networks on unseen data.
机译:背景技术糖尿病管理中的主要困难是优化胰岛素疗法,以避免发生低血糖和高血糖症。许多因素会影响糖尿病患者的葡萄糖波动,例如胰岛素剂量,营养摄入,日常活动和生活方式(例如,睡眠-唤醒周期和运动)以及情绪状态(例如,压力)。这些因素的总体影响尚未完全量化,以确定对后续血糖趋势的影响。糖尿病技术的最新进展,例如连续葡萄糖监测(CGM)提供了重要的数据来源,因此可能进行量化。根据所使用的CGM技术,采样频率范围为1-5分钟。在这项研究中,创建了一个密集的电子日记,记录了先前描述的因素。 18例胰岛素依赖型糖尿病患者与CGM一起使用了该日记。利用该数据集,构建了各种神经网络模型来预测这些糖尿病患者的血糖,同时在50-180分钟内改变预测窗口。分析了训练有素的数据集中每个神经网络的预测能力,以及在看不见的数据上神经网络的预测能力。

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