论文标题
糖强度:使用分布数据分析的新表示葡萄糖曲线
Glucodensities: a new representation of glucose profiles using distributional data analysis
论文作者
论文摘要
生物传感器数据具有改善疾病控制和检测的潜在能力。但是,在自由生活条件下对这些数据的分析对于当前的统计技术是不可行的。为了应对这一挑战,我们引入了生物传感器数据的新功能表示形式,称为葡萄糖密度,以及基于它们之间距离的数据分析框架。新的数据分析程序通过具有连续的葡萄糖监测(CGM)数据的糖尿病中的应用来说明。在该领域,我们在最先进的分析方法方面显示出明显的改进。 In particular, our findings demonstrate that i) the glucodensity possesses an extraordinary clinical sensitivity to capture the typical biomarkers used in the standard clinical practice in diabetes, ii) previous biomarkers cannot accurately predict glucodensity, so that the latter is a richer source of information, and iii) the glucodensity is a natural generalization of the time in range metric, this being the gold standard in the handling of CGM data.此外,新方法克服了范围指标的许多时间缺点,并为评估葡萄糖代谢提供了更深入的见解。
Biosensor data has the potential ability to improve disease control and detection. However, the analysis of these data under free-living conditions is not feasible with current statistical techniques. To address this challenge, we introduce a new functional representation of biosensor data, termed the glucodensity, together with a data analysis framework based on distances between them. The new data analysis procedure is illustrated through an application in diabetes with continuous-time glucose monitoring (CGM) data. In this domain, we show marked improvement with respect to state of the art analysis methods. In particular, our findings demonstrate that i) the glucodensity possesses an extraordinary clinical sensitivity to capture the typical biomarkers used in the standard clinical practice in diabetes, ii) previous biomarkers cannot accurately predict glucodensity, so that the latter is a richer source of information, and iii) the glucodensity is a natural generalization of the time in range metric, this being the gold standard in the handling of CGM data. Furthermore, the new method overcomes many of the drawbacks of time in range metrics, and provides deeper insight into assessing glucose metabolism.