Albers D J, Elhadad Noémie, Tabak E, Perotte A, Hripcsak George
Department of Biomedical Informatics, Columbia University, New York, New York, United States of America.
Department of Mathematics, Courant Institute of the Mathematical Sciences, New York, New York, United States of America.
PLoS One. 2014 Jun 16;9(6):e96443. doi: 10.1371/journal.pone.0096443. eCollection 2014.
Using glucose time series data from a well measured population drawn from an electronic health record (EHR) repository, the variation in predictability of glucose values quantified by the time-delayed mutual information (TDMI) was explained using a mechanistic endocrine model and manual and automated review of written patient records. The results suggest that predictability of glucose varies with health state where the relationship (e.g., linear or inverse) depends on the source of the acuity. It was found that on a fine scale in parameter variation, the less insulin required to process glucose, a condition that correlates with good health, the more predictable glucose values were. Nevertheless, the most powerful effect on predictability in the EHR subpopulation was the presence or absence of variation in health state, specifically, in- and out-of-control glucose versus in-control glucose. Both of these results are clinically and scientifically relevant because the magnitude of glucose is the most commonly used indicator of health as opposed to glucose dynamics, thus providing for a connection between a mechanistic endocrine model and direct insight to human health via clinically collected data.
利用从电子健康记录(EHR)存储库中精心挑选的人群的葡萄糖时间序列数据,通过机械内分泌模型以及对患者书面记录的人工和自动审查,解释了由延迟互信息(TDMI)量化的葡萄糖值可预测性的变化。结果表明,葡萄糖的可预测性随健康状态而变化,其关系(例如,线性或反比)取决于急性程度的来源。研究发现,在参数变化的精细尺度上,处理葡萄糖所需的胰岛素越少(这一情况与健康状况良好相关),葡萄糖值的可预测性就越高。然而,对EHR亚组中可预测性影响最大的是健康状态是否存在变化,具体而言,是血糖失控与血糖受控的情况。这两个结果在临床和科学上都具有相关性,因为与葡萄糖动态相比,血糖水平是最常用的健康指标,从而在机械内分泌模型与通过临床收集的数据对人类健康的直接洞察之间建立了联系。