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使用专业连续血糖监测数据对回顾性低血糖检测算法的评估

Evaluation of an Algorithm for Retrospective Hypoglycemia Detection Using Professional Continuous Glucose Monitoring Data.

作者信息

Jensen Morten Hasselstrøm, Mahmoudi Zeinab, Christensen Toke Folke, Tarnow Lise, Seto Edmund, Johansen Mette Dencker, Hejlesen Ole Kristian

机构信息

Aalborg University, Aalborg, Denmark University of California, Berkeley, Berkeley, CA, USA

Aalborg University, Aalborg, Denmark.

出版信息

J Diabetes Sci Technol. 2014 Jan;8(1):117-122. doi: 10.1177/1932296813511744. Epub 2014 Jan 1.

Abstract

BACKGROUND

People with type 1 diabetes (T1D) are unable to produce insulin and thus rely on exogenous supply to lower their blood glucose. Studies have shown that intensive insulin therapy reduces the risk of late-diabetic complications by lowering average blood glucose. However, the therapy leads to increased incidence of hypoglycemia. Although inaccurate, professional continuous glucose monitoring (PCGM) can be used to identify hypoglycemic events, which can be useful for adjusting glucose-regulating factors. New pattern classification approaches based on identifying hypoglycemic events through retrospective analysis of PCGM data have shown promising results. The aim of this study was to evaluate a new pattern classification approach by comparing the performance with a newly developed PCGM calibration algorithm.

METHODS

Ten male subjects with T1D were recruited and monitored with PCGM and self-monitoring blood glucose during insulin-induced hypoglycemia. A total of 19 hypoglycemic events occurred during the sessions.

RESULTS

The pattern classification algorithm detected 19/19 hypoglycemic events with 1 false positive, while the PCGM with the new calibration algorithm detected 17/19 events with 2 false positives.

CONCLUSIONS

We can conclude that even after the introduction of new calibration algorithms, the pattern classification approach is still a valuable addition for improving retrospective hypoglycemia detection using PCGM.

摘要

背景

1型糖尿病(T1D)患者无法自行分泌胰岛素,因此依赖外源供应来降低血糖。研究表明,强化胰岛素治疗通过降低平均血糖水平,可降低糖尿病晚期并发症的风险。然而,这种治疗方法会导致低血糖发生率增加。尽管不够准确,但专业的连续血糖监测(PCGM)可用于识别低血糖事件,这对于调整血糖调节因素很有帮助。通过对PCGM数据进行回顾性分析来识别低血糖事件的新模式分类方法已显示出有前景的结果。本研究的目的是通过与新开发的PCGM校准算法比较性能,来评估一种新的模式分类方法。

方法

招募了10名患有T1D的男性受试者,并在胰岛素诱导的低血糖期间用PCGM和自我血糖监测进行监测。在这些时段共发生了19次低血糖事件。

结果

模式分类算法检测到了19次低血糖事件中的19次,有1例假阳性,而采用新校准算法的PCGM检测到了19次中的17次,有2例假阳性。

结论

我们可以得出结论,即使引入了新校准算法,模式分类方法对于使用PCGM改善回顾性低血糖检测仍是一项有价值的补充。

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