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Accuracy of devices for self-monitoring of blood glucose: A stochastic error model

机译:血糖自我监测设备的准确性:随机误差模型

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Self-monitoring of blood glucose (SMBG) devices are portable systems that allow measuring glucose concentration in a small drop of blood obtained via finger-prick. SMBG measurements are key in type 1 diabetes (T1D) management, e.g. for tuning insulin dosing. A reliable model of SMBG accuracy would be important in several applications, e.g. in in silico design and optimization of insulin therapy. In the literature, the most used model to describe SMBG error is the Gaussian distribution, which however is simplistic to properly account for the observed variability. Here, a methodology to derive a stochastic model of SMBG accuracy is presented. The method consists in dividing the glucose range into zones in which absolute/relative error presents constant standard deviation (SD) and, then, fitting by maximum-likelihood a skew-normal distribution model to absolute/relative error distribution in each zone. The method was tested on a database of SMBG measurements collected by the One Touch Ultra 2 (Lifescan Inc., Milpitas, CA). In particular, two zones were identified: zone 1 (BG≤75 mg/dl) with constant-SD absolute error and zone 2 (BG>75mg/dl) with constant-SD relative error. Mean and SD of the identified skew-normal distributions are, respectively, 2.03 and 6.51 in zone 1, 4.78% and 10.09% in zone 2. Visual predictive check validation showed that the derived two-zone model accurately reproduces SMBG measurement error distribution, performing significantly better than the single-zone Gaussian model used previously in the literature. This stochastic model allows a more realistic SMBG scenario for in silico design and optimization of T1D insulin therapy.
机译:血糖自我监测(SMBG)设备是便携式系统,可以测量通过手指刺入获得的一小滴血液中的葡萄糖浓度。 SMBG测量是1型糖尿病(T1D)管理中的关键,例如用于调整胰岛素剂量。一个可靠的SMBG精度模型在多种应用中很重要,例如在计算机上设计和优化胰岛素治疗。在文献中,用于描述SMBG误差的最常用模型是高斯分布,但是为了适当考虑观察到的变异性,这种模型很简单。在这里,提出了一种方法来推导SMBG精度的随机模型。该方法包括将葡萄糖范围划分为绝对/相对误差呈现恒定标准偏差(SD)的区域,然后通过最大似然将偏正态分布模型拟合为每个区域中的绝对/相对误差分布。该方法在OneTouch Ultra 2(Lifescan Inc.,Milpitas,CA)收集的SMBG测量数据库上进行了测试。特别地,鉴定出两个区域:具有恒定SD绝对误差的区域1(BG≤75mg/ dl)和具有恒定SD相对误差的区域2(BG> 75mg / dl)。所识别的偏正态分布的均值和SD在区域1中分别为2.03和6.51,在区域2中为4.78%和10.09%。视觉预测检查验证表明,导出的两区域模型可以准确地再现SMBG测量误差分布,明显优于先前文献中使用的单区高斯模型。这种随机模型为计算机设计和T1D胰岛素治疗的优化提供了更现实的SMBG方案。

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