在以学校为基础的体重状况研究中评估基于设备的能量消耗测量的建模方法。

IF 1.3 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Gilson D Honvoh, Roger S Zoh, Anand Gupta, Mark E Benden, Carmen D Tekwe
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引用次数: 0

摘要

背景:肥胖已成为儿童健康的重要威胁,其生理和心理影响一直延续到成年期。有限的体力活动和久坐行为与肥胖风险增加有关。由于儿童每天在学校的时间约为6小时,研究人员越来越多地使用可穿戴设备来研究学龄期儿童的在校体育活动和能量消耗(EE)模式如何影响肥胖,这些设备可以频繁收集数据并生成复杂的高维数据。虽然临床医生通常将儿童肥胖定义为年龄和性别调整的体重指数(BMI)值处于高百分位数,但使用传统的线性回归模型分析了基于学校的体育活动干预与BMI之间的关系,这些模型旨在评估干预对平均BMI儿童的影响,限制了对超重或肥胖儿童干预效果的了解。方法:我们调查了基于可穿戴设备的情感表达测量与年龄和性别调整的BMI值之间的关系,这些数据来自一项基于学校的集群随机研究。我们将情感表达水平作为一个标量值变量和一个连续的、高维的、功能性的预测变量来表达和分析。我们使用线性混合效应模型(LMEM)、分位数混合效应模型(QMEM)、功能混合效应模型(FMEM)和功能分位数混合效应模型(FQMEM)四个模型来研究在校日情感表达(SDEE)与BMI之间的关系。LMEM和QMEM包括SDEE作为汇总度量,而FMEM和FQMEM允许将SDEE建模为高维协变量。FMEM和FQMEM允许评估一天中进行体育活动的时间的影响,这是使用LMEM或QMEM无法做到的。FMEM评估收集的SDEE数据对平均BMI的影响频率,而FQMEM评估对BMI分位数水平的影响。结果:经干预、年龄、种族和性别调整后,LMEM和QMEM检测到总体平均SDEE对log (BMI) (BMI的自然对数)有统计学显著影响。FMEM和FQMEM仅在短时间间隔内提供了SDEE与log (BMI)之间具有统计学显著相关性的证据。作为一个男孩或被分配到一张立式办公桌的BMI指数比作为一个女孩或被分配到一张传统办公桌的BMI指数要低。在我们的模型中,年龄不是统计上显著的协变量,在分位数模型中,白人学生的log (BMI)显著低于非白人学生,但这种显著影响仅在BMI的第10和第50分位数水平上观察到。功能回归模型允许对情感表达模式对年龄和性别调整后的BMI的影响进行额外解释,而分位数回归模型则允许在整个BMI分布中评估情感表达模式的影响。结论:当需要评估设备监测的SDEE模式如何影响所有体型的儿童时,推荐使用FQMEM,因为该模型是稳健的,能够评估整个BMI分布的干预效果。然而,样本量必须足够大,才能充分确定整个BMI分布(包括尾部)的协变量效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling approaches for assessing device-based measures of energy expenditure in school-based studies of body weight status.

Background: Obesity has become an important threat to children's health, with physical and psychological impacts that extend into adulthood. Limited physical activity and sedentary behavior are associated with increased obesity risk. Because children spend approximately 6 h each day in school, researchers increasingly study how obesity is influenced by school-day physical activity and energy expenditure (EE) patterns among school-aged children by using wearable devices that collect data at frequent intervals and generate complex, high-dimensional data. Although clinicians typically define obesity in children as having an age-and sex-adjusted body mass index (BMI) value in the high percentiles, the relationships between school-based physical activity interventions and BMI are analyzed using traditional linear regression models, which are designed to assess the effects of interventions among children with average BMI, limiting insight regarding the effects of interventions among children categorized as overweight or obese.

Methods: We investigate the association between wearable device-based EE measures and age-and sex-adjusted BMI values in data from a cluster-randomized, school-based study. We express and analyze EE levels as both a scalar-valued variable and as a continuous, high-dimensional, functional predictor variable. We investigate the relationship between school-day EE (SDEE) and BMI using four models: a linear mixed-effects model (LMEM), a quantile mixed-effects model (QMEM), a functional mixed-effects model (FMEM), and a functional quantile mixed-effects model (FQMEM). The LMEM and QMEM include SDEE as a summary measure, whereas the FMEM and FQMEM allow for the modeling of SDEE as a high-dimensional covariate. The FMEM and FQMEM allow the influence of the time of day at which physical activity is performed to be assessed, which is not possible using the LMEM or the QMEM. The FMEM assesses how frequently collected SDEE data influences mean BMI, whereas the FQMEM assesses the effects on quantile levels of BMI.

Results: The LMEM and QMEM detected a statistically significant effect of overall mean SDEE on log (BMI) (the natural logarithm of BMI) after adjusting for intervention, age, race, and sex. The FMEM and FQMEM provided evidence for statistically significant associations between SDEE and log (BMI) for only a short time interval. Being a boy or being assigned a stand-biased desk is associated with a lower log (BMI) than being a girl or being assigned a traditional desk. Across our models, age was not a statistically significant covariate, and white students had significantly lower log (BMI) than non-white students in quantile models, but this significant effect was observed for only the 10th and 50th quantile levels of BMI. The functional regression models allow for additional interpretations of the influence of EE patterns on age-and sex-adjusted BMI, whereas the quantile regression models enable the influence of EE patterns to be assessed across the entire BMI distribution.

Conclusion: The FQMEM is recommended when interest lies in assessing how device-monitored SDEE patterns affect children of all body types, as this model is robust and able to assess intervention effects across the full BMI distribution. However, the sample size must be sufficiently large to adequately power determinations of covariate effects across the entire BMI distribution, including the tails.

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来源期刊
Frontiers in Applied Mathematics and Statistics
Frontiers in Applied Mathematics and Statistics Mathematics-Statistics and Probability
CiteScore
1.90
自引率
7.10%
发文量
117
审稿时长
14 weeks
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