Department of Information Engineering, University of Padova, Via G. Gradenigo 6/B, 35131 Padova, Italy.
Department of Information Engineering, University of Padova, Via G. Gradenigo 6/B, 35131 Padova, Italy.
Comput Methods Programs Biomed. 2023 Oct;240:107700. doi: 10.1016/j.cmpb.2023.107700. Epub 2023 Jun 28.
Continuous glucose monitoring (CGM) sensors measure interstitial glucose concentration every 1-5 min for days or weeks. New CGM-based diabetes therapies are often tested in in silico clinical trials (ISCTs) using diabetes simulators. Accurate models of CGM sensor inaccuracies and failures could help improve the realism of ISCTs. However, the modeling of CGM failures has not yet been fully addressed in the literature. This work aims to develop a mathematical model of CGM gaps, i.e., occasional portions of missing data generated by temporary sensor errors (e.g., excessive noise or artifacts).
Two datasets containing CGM traces collected in 167 adults and 205 children, respectively, using the Dexcom G6 sensor (Dexcom Inc., San Diego, CA) were used. Four Markov models, of increasing complexity, were designed to describe three main characteristics: number of gaps for each sensor, gap distribution in the monitoring days, and gap duration. Each model was identified on a portion of each dataset (training set). The remaining portion of each dataset (real test set) was used to evaluate model performance through a Monte Carlo simulation approach. Each model was used to generate 100 simulated test sets with the same size as the real test set. The distributions of gap characteristics on the simulated test sets were compared with those observed on the real test set, using the two-sample Kolmogorov-Smirnov test and the Jensen-Shannon divergence.
A six-state Markov model, having two states to describe normal sensor operation and four states to describe gap occurrence, achieved the best results. For this model, the Kolmogorov-Smirnov test found no significant differences between the distribution of simulated and real gap characteristics. Moreover, this model obtained significantly lower Jensen-Shannon divergence values than the other models.
A Markov model describing CGM gaps was developed and validated on two real datasets. The model describes well the number of gaps for each sensor, the gap distribution over monitoring days, and the gap durations. Such a model can be integrated into existing diabetes simulators to realistically simulate CGM gaps in ISCTs and thus enable the development of more effective and robust diabetes management strategies.
连续血糖监测(CGM)传感器每 1-5 分钟测量一次间质葡萄糖浓度,持续数天或数周。新型基于 CGM 的糖尿病疗法通常在使用糖尿病模拟器的计算机模拟临床试验(ISCT)中进行测试。准确的 CGM 传感器误差和故障模型可以帮助提高 ISCT 的现实性。然而,CGM 故障的建模在文献中尚未得到充分解决。本工作旨在开发 CGM 间隙的数学模型,即由临时传感器错误(例如,过度噪声或伪影)产生的偶尔数据缺失部分。
使用 Dexcom G6 传感器(Dexcom Inc.,圣地亚哥,CA)分别收集了 167 名成年人和 205 名儿童的 CGM 轨迹,使用了两个数据集。设计了四个具有递增复杂性的马尔可夫模型来描述三个主要特征:每个传感器的间隙数量、监测天数中的间隙分布和间隙持续时间。每个模型都在每个数据集的一部分(训练集)上进行了识别。每个数据集的其余部分(实际测试集)用于通过蒙特卡罗模拟方法评估模型性能。使用每个模型生成 100 个与真实测试集大小相同的模拟测试集。使用双样本 Kolmogorov-Smirnov 检验和 Jensen-Shannon 散度比较模拟测试集中的间隙特征分布与真实测试集中的观察结果。
具有两个状态来描述正常传感器操作和四个状态来描述间隙发生的六状态马尔可夫模型取得了最佳结果。对于该模型,Kolmogorov-Smirnov 检验未发现模拟和真实间隙特征分布之间存在显著差异。此外,该模型获得的 Jensen-Shannon 散度值明显低于其他模型。
在两个真实数据集上开发并验证了一种描述 CGM 间隙的马尔可夫模型。该模型很好地描述了每个传感器的间隙数量、监测天数中的间隙分布和间隙持续时间。这种模型可以集成到现有的糖尿病模拟器中,以在 ISCT 中真实地模拟 CGM 间隙,从而能够开发更有效和稳健的糖尿病管理策略。