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Statistical Tools to Analyze Continuous Glucose Monitor Data

机译:统计工具分析连续血糖监测仪数据

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摘要

Continuous glucose monitors (CGMs) generate data streams that are both complex and voluminous. The analyses of these data require an understanding of the physical, biochemical, and mathematical properties involved in this technology. This article describes several methods that are pertinent to the analysis of CGM data, taking into account the specifics of the continuous monitoring data streams. These methods include: (1) evaluating the numerical and clinical accuracy of CGM. We distinguish two types of accuracy metrics—numerical and clinical—each having two subtypes measuring point and trend accuracy. The addition of trend accuracy, e.g., the ability of CGM to reflect the rate and direction of blood glucose (BG) change, is unique to CGM as these new devices are capable of capturing BG not only episodically, but also as a process in time. (2) Statistical approaches for interpreting CGM data. The importance of recognizing that the basic unit for most analyses is the glucose trace of an individual, i.e., a time-stamped series of glycemic data for each person, is stressed. We discuss the use of risk assessment, as well as graphical representation of the data of a person via glucose and risk traces and Poincaré plots, and at a group level via Control Variability-Grid Analysis. In summary, a review of methods specific to the analysis of CGM data series is presented, together with some new techniques. These methods should facilitate the extraction of information from, and the interpretation of, complex and voluminous CGM time series.
机译:连续葡萄糖监测仪(CGM)生成既复杂又庞大的数据流。这些数据的分析需要了解此技术涉及的物理,生化和数学特性。本文介绍了与CGM数据分析相关的几种方法,同时考虑了连续监视数据流的细节。这些方法包括:(1)评价CGM的数值和临床准确性。我们区分了两种类型的准确性指标:数字和临床,每种都有两个子类型来衡量点和趋势准确性。趋势准确性的增加,例如CGM反映血糖(BG)改变的速率和方向的能力,对于CGM而言是独特的,因为这些新设备不仅能够流行性地捕获BG,而且能够及时捕获BG。 。 (2)解释CGM数据的统计方法。强调了认识到大多数分析的基本单位是一个人的葡萄糖踪迹的重要性,即每个人的带有时间戳记的一系列血糖数据。我们讨论了风险评估的使用,以及通过葡萄糖和风险迹线和庞加莱图,以及通过控制变量网格分析在组级别上对人的数据的图形表示。总之,本文介绍了一些特定于CGM数据分析的方法,以及一些新技术。这些方法应有助于从复杂而庞大的CGM时间序列中提取信息并进行解释。

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