Marling Cynthia R, Struble Nigel W, Bunescu Razvan C, Shubrook Jay H, Schwartz Frank L
School of Electrical Engineering and Computer Science, Russ College of Engineering and Technology, Ohio University, Athens, OH 45701, USA.
J Diabetes Sci Technol. 2013 Jul 1;7(4):871-9. doi: 10.1177/193229681300700409.
Glycemic variability (GV) is an important component of overall glycemic control for patients with diabetes mellitus. Physicians are able to recognize excessive GV from continuous glucose monitoring (CGM) plots; however, there is currently no universally agreed upon GV metric. The objective of this study was to develop a consensus perceived glycemic variability (CPGV) metric that could be routinely applied to CGM data to assess diabetes mellitus control.
Twelve physicians actively managing patients with type 1 diabetes mellitus rated a total of 250 24 h CGM plots as exhibiting low, borderline, high, or extremely high GV. Ratings were averaged to obtain a consensus and then input into two machine learning algorithms: multilayer perceptrons (MPs) and support vector machines for regression (SVR). In silica experiments were run using each algorithm with different combinations of 12 descriptive input features. Ten-fold cross validation was used to evaluate the performance of each model.
The SVR models approximated the physician consensus ratings of unseen CGM plots better than the MP models. When judged by the root mean square error, the best SVR model performed comparably to individual physicians at matching consensus ratings. When applied to 262 different CGM plots as a screen for excessive GV, this model had accuracy, sensitivity, and specificity of 90.1%, 97.0%, and 74.1%, respectively. It significantly outperformed mean amplitude of glycemic excursion, standard deviation, distance traveled, and excursion frequency.
This new CPGV metric could be used as a routine measure of overall glucose control to supplement glycosylated hemoglobin in clinical practice.
血糖变异性(GV)是糖尿病患者总体血糖控制的重要组成部分。医生能够从连续血糖监测(CGM)图中识别出过度的GV;然而,目前尚无普遍认可的GV指标。本研究的目的是开发一种共识感知血糖变异性(CPGV)指标,该指标可常规应用于CGM数据以评估糖尿病控制情况。
12名积极管理1型糖尿病患者的医生对总共250份24小时CGM图进行评分,评定其GV为低、临界、高或极高。将评分平均以获得共识,然后输入两种机器学习算法:多层感知器(MP)和支持向量机回归(SVR)。在虚拟实验中,使用每种算法结合12个描述性输入特征的不同组合进行运算。采用十折交叉验证来评估每个模型的性能。
SVR模型比MP模型能更好地逼近医生对未见过的CGM图的共识评分。以均方根误差判断,最佳SVR模型在匹配共识评分方面与个体医生的表现相当。当将该模型应用于262份不同的CGM图以筛查过度GV时,其准确度、灵敏度和特异度分别为90.1%、97.0%和74.1%。它显著优于血糖波动平均幅度、标准差、血糖波动范围和波动频率。
这种新的CPGV指标可作为总体血糖控制的常规测量方法,在临床实践中补充糖化血红蛋白。