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首页> 外文期刊>PLoS One >Detrended Fluctuation Analysis in the prediction of type 2 diabetes mellitus in patients at risk: Model optimization and comparison with other metrics
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Detrended Fluctuation Analysis in the prediction of type 2 diabetes mellitus in patients at risk: Model optimization and comparison with other metrics

机译:风险患者2型糖尿病预测中的促进波动分析:模型优化与其他度量的比较

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摘要

Complexity analysis of glucose time series with Detrended Fluctuation Analysis (DFA) has been proved to be useful for the prediction of type 2 diabetes mellitus (T2DM) development. We propose a modified DFA algorithm, review some of its characteristics and compare it with other metrics derived from continuous glucose monitorization in this setting. Several issues of the DFA algorithm were evaluated: (1) Time windowing: the best predictive value was obtained including all time-windows from 15 minutes to 24 hours. (2) Influence of circadian rhythms: for 48-hour glucometries, DFA alpha scaling exponent was calculated on 24-hour sliding segments (1-hour gap, 23-hour overlap), with a median coefficient of variation of 3.2%, which suggests that analysing time series of at least 24-hour length avoids the influence of circadian rhythms. (3) Influence of pretreatment of the time series through integration: DFA without integration was more sensitive to the introduction of white noise and it showed significant predictive power to forecast the development of T2DM, while the pretreated time series did not. (4) Robustness of an interpolation algorithm for missing values: The modified DFA algorithm evaluates the percentage of missing values in a time series. Establishing a 2% error threshold, we estimated the number and length of missing segments that could be admitted to consider a time series as suitable for DFA analysis. For comparison with other metrics, a Principal Component Analysis was performed and the results neatly tease out four different components. The first vector carries information concerned with variability, the second represents mainly DFA alpha exponent, while the third and fourth vectors carry essentially information related to the two “pre-diabetic behaviours” (impaired fasting glucose and impaired glucose tolerance). The scaling exponent obtained with the modified DFA algorithm proposed has significant predictive power for the development of T2DM in a high-risk population compared with other variability metrics or with the standard DFA algorithm.
机译:已经证明,葡萄糖时间序列(DFA)的复杂性分析已被证明是有用于预测2型糖尿病(T2DM)发育的预测。我们提出了一种修改的DFA算法,审查其一些特征,并将其与此设置中连续血糖监测化的其他度量进行比较。评估了DFA算法的几个问题:(1)时间窗口:获得最佳预测值,包括从15分钟到24小时的所有时间窗口。 (2)昼夜节律的影响:对于48小时的葡萄芯,在24小时滑动段(1小时间隙,23小时重叠)上计算DFA alpha缩放指数,中值系数为3.2%,表明分析时间序列至少为24小时长度避免了昼夜节律的影响。 (3)通过整合的时间序列预处理的影响:DFA对白噪声的引入更敏感,并且显示出预测T2DM的发展的显着预测力量,而预处理的时间序列则没有。 (4)缺失值的插值算法的鲁棒性:修改的DFA算法在时间序列中评估缺失值的百分比。建立2%的错误阈值,我们估计缺失段的数量和长度可以承认考虑适合DFA分析的时间序列。为了与其他度量进行比较,进行了主要成分分析,结果整齐地梳理出四种不同的组分。第一载体携带有关可变性的信息,第二个代表主要代表DFAα指数,而第三和第四向量携带与两种“糖尿病术行为”(禁止葡萄糖和葡萄糖耐量受损的受损)相关信息。用修改的DFA算法获得的缩放指数提出了与其他可变度量或标准DFA算法相比的高风险群体中T2DM的显着预测力。

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