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Using Continuous Glucose Monitoring Data and Detrended Fluctuation Analysis to Determine Patient Condition

机译:使用连续血糖监测数据和去趋势波动分析确定患者状况

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摘要

Patients admitted to critical care often experience dysglycemia and high levels of insulin resistance, various intensive insulin therapy protocols and methods have attempted to safely normalize blood glucose (BG) levels. Continuous glucose monitoring (CGM) devices allow glycemic dynamics to be captured much more frequently (every 2-5 minutes) than traditional measures of blood glucose and have begun to be used in critical care patients and neonates to help monitor dysglycemia. In an attempt to obtain a better insight relating biomedical signals and patient status, some researchers have turned toward advanced time series analysis methods. In particular, Detrended Fluctuation Analysis (DFA) has been a topic of many recent studies in to glycemic dynamics. DFA investigates the “complexity” of a signal, how one point in time changes relative to its neighboring points, and DFA has been applied to signals like the inter-beat-interval of human heartbeat to differentiate healthy and pathological conditions. Analyzing the glucose metabolic system with such signal processing tools as DFA has been enabled by the emergence of high quality CGM devices. However, there are several inconsistencies within the published work applying DFA to CGM signals. Therefore, this article presents a review and a “how-to” tutorial of DFA, and in particular its application to CGM signals to ensure the methods used to determine complexity are used correctly and so that any relationship between complexity and patient outcome is robust.
机译:接受重症监护的患者经常会出现血糖升高和胰岛素抵抗的高水平,各种强化胰岛素治疗方案和方法已尝试安全地使血糖(BG)水平正常化。连续血糖监测(CGM)设备比传统的血糖测量方法可以更频繁地(每2-5分钟)捕获血糖动态,并且已开始用于重症监护患者和新生儿以帮助监测血糖。为了获得有关生物医学信号和患者状况的更好的见解,一些研究人员转向了先进的时间序列分析方法。尤其是,去趋势波动分析(DFA)一直是许多有关血糖动力学的最新研究的主题。 DFA研究信号的“复杂性”,一个时间点相对于其相邻点如何变化,并且DFA已应用于诸如人心跳的心跳间隔之间的信号,以区分健康状况和病理状况。高质量CGM设备的出现使得使用DFA等信号处理工具分析葡萄糖代谢系统成为可能。但是,在将DFA应用于CGM信号的已发表著作中存在一些不一致之处。因此,本文提供了DFA的回顾和“使用方法”教程,尤其是其在CGM信号中的应用,以确保正确使用确定复杂性的方法,从而使复杂性与患者预后之间的任何关系都牢固。

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