Mingyan Yu, Zhenke Wu, Margaret Hicken, Michael R Elliott
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引用次数: 0
摘要
密集型纵向生物标志物数据在科学研究中越来越常见,这些研究寻求从时间粒度上了解行为和生理因素在相关结果中的作用。密集型纵向生物标志物数据(如从可穿戴设备中获取的数据)通常以较高的频率获取,每个人在几分钟、几小时或几天内可获得几百到几千个观测值。纵向研究的主要重点往往是将生物标记物轨迹的均值与结果联系起来,而方差则被视为干扰参数,尽管它们也可能对结果具有参考价值。在本文中,我们提出了一种贝叶斯分层模型,用于对横截面结果和密集的纵向生物标记物进行联合建模。为了对生物标志物的变异性进行建模并处理高强度数据,我们开发了主体级立方 B 样条,并允许跨个体共享残差变异性和随机效应变异性的信息。然后提取不同水平的变异性,并将其纳入结果子模型,用于推断和预测目的。我们通过一项关于社会压力研究中赫兹级心率信息的生物监测应用,展示了所提模型的实用性。
A Bayesian Approach to Modeling Variance of Intensive Longitudinal Biomarker Data as a Predictor of Health Outcomes.
Intensive longitudinal biomarker data are increasingly common in scientific studies that seek temporally granular understanding of the role of behavioral and physiological factors in relation to outcomes of interest. Intensive longitudinal biomarker data, such as those obtained from wearable devices, are often obtained at a high frequency typically resulting in several hundred to thousand observations per individual measured over minutes, hours, or days. Often in longitudinal studies, the primary focus is on relating the means of biomarker trajectories to an outcome, and the variances are treated as nuisance parameters, although they may also be informative for the outcomes. In this paper, we propose a Bayesian hierarchical model to jointly model a cross-sectional outcome and the intensive longitudinal biomarkers. To model the variability of biomarkers and deal with the high intensity of data, we develop subject-level cubic B-splines and allow the sharing of information across individuals for both the residual variability and the random effects variability. Then different levels of variability are extracted and incorporated into an outcome submodel for inferential and predictive purposes. We demonstrate the utility of the proposed model via an application involving bio-monitoring of hertz-level heart rate information from a study on social stress.
期刊介绍:
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