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Validation of wearable monitors for assessing sedentary behavior.可穿戴监测器评估久坐行为的验证。
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Differences in blood pressure and vascular responses associated with ambient fine particulate matter exposures measured at the personal versus community level.在个人和社区层面测量的环境细颗粒物暴露与血压和血管反应的差异。
Occup Environ Med. 2011 Mar;68(3):224-30. doi: 10.1136/oem.2009.053991. Epub 2010 Oct 8.
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A comprehensive evaluation of commonly used accelerometer energy expenditure and MET prediction equations.常用加速度计能量消耗和代谢当量预测方程的综合评估。
Eur J Appl Physiol. 2011 Feb;111(2):187-201. doi: 10.1007/s00421-010-1639-8. Epub 2010 Sep 15.
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Estimating error in using residential outdoor PM2.5 concentrations as proxies for personal exposures: a meta-analysis.使用住宅室外 PM2.5 浓度作为个人暴露的代理估计误差:一项荟萃分析。
Environ Health Perspect. 2010 May;118(5):673-8. doi: 10.1289/ehp.0901158. Epub 2010 Jan 14.
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Development of statistical regression models for ventilation estimation.用于通气估计的统计回归模型的开发。
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Respiratory effects of exposure to diesel traffic in persons with asthma.哮喘患者暴露于柴油尾气中的呼吸影响。
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在个人水平暴露评估期间通过车载加速度计预测成人肺通气量和佩戴依从性

Predicting Adult Pulmonary Ventilation Volume and Wearing Compliance by On-Board Accelerometry During Personal Level Exposure Assessments.

作者信息

Rodes C E, Chillrud S N, Haskell W L, Intille S S, Albinali F, Rosenberger M

机构信息

RTI International.

出版信息

Atmos Environ (1994). 2012 Sep;57:126-137. doi: 10.1016/j.atmosenv.2012.03.057.

DOI:10.1016/j.atmosenv.2012.03.057
PMID:24065872
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3779692/
Abstract

BACKGROUND

Metabolic functions typically increase with human activity, but optimal methods to characterize activity levels for real-time predictions of ventilation volume (l/min) during exposure assessments have not been available. Could tiny, triaxial accelerometers be incorporated into personal level monitors to define periods of acceptable wearing compliance, and allow the exposures (μg/m) to be extended to potential doses in μg/min/kg of body weight?

OBJECTIVES

In a pilot effort, we tested: 1) whether appropriately-processed accelerometer data could be utilized to predict compliance and in linear regressions to predict ventilation volumes in real time as an on-board component of personal level exposure sensor systems, and 2) whether locating the exposure monitors on the chest in the breathing zone, provided comparable accelerometric data to other locations more typically utilized (waist, thigh, wrist, etc.).

METHODS

Prototype exposure monitors from RTI International and Columbia University were worn on the chest by a pilot cohort of adults while conducting an array of scripted activities (all <10 METS), spanning common recumbent, sedentary, and ambulatory activity categories. Referee Wocket accelerometers that were placed at various body locations allowed comparison with the chest-located exposure sensor accelerometers. An Oxycon Mobile mask was used to measure oral-nasal ventilation volumes in-situ. For the subset of participants with complete data (n= 22), linear regressions were constructed (processed accelerometric variable versus ventilation rate) for each participant and exposure monitor type, and Pearson correlations computed to compare across scenarios.

RESULTS

Triaxial accelerometer data were demonstrated to be adequately sensitive indicators for predicting exposure monitor wearing compliance. Strong linear correlations (R values from 0.77 to 0.99) were observed for all participants for both exposure sensor accelerometer variables against ventilation volume for recumbent, sedentary, and ambulatory activities with MET values ~<6. The RTI monitors mean R value of 0.91 was slightly higher than the Columbia monitors mean of 0.86 due to utilizing a 20 Hz data rate instead of a slower 1 Hz rate. A nominal mean regression slope was computed for the RTI system across participants and showed a modest RSD of +/-36.6%. Comparison of the correlation values of the exposure monitors with the Wocket accelerometers at various body locations showed statistically identical regressions for all sensors at alternate hip, ankle, upper arm, thigh, and pocket locations, but not for the Wocket accelerometer located at the dominant-side wrist location (R=0.57; p=0.016).

CONCLUSIONS

Even with a modest number of adult volunteers, he consistency and linearity of regression slopes for all subjects were very good with excellent within-person Pearson correlations for the accelerometer versus ventilation volume data. Computing accelerometric standard deviations allowed good sensitivity for compliance assessments even for sedentary activities. These pilot findings supported the hypothesis that a common linear regression is likely to be usable for a wider range of adults to predict ventilation volumes from accelerometry data over a range of low to moderate energy level activities. The predicted volumes would then allow real-time estimates of potential dose, enabling more robust panel studies. The poorer correlation in predicting ventilation rate for an accelerometer located on the wrist suggested that this location should not be considered for predictions of ventilation volume.

摘要

背景

代谢功能通常会随着人类活动而增强,但在暴露评估期间,用于实时预测通气量(升/分钟)的活动水平特征化的最佳方法尚不存在。能否将微型三轴加速度计集成到个人水平监测器中,以定义可接受的佩戴依从性时间段,并将暴露量(微克/立方米)扩展到以微克/分钟/千克体重为单位的潜在剂量?

目的

在一项初步研究中,我们测试了:1)经过适当处理的加速度计数据是否可用于预测依从性,并在线性回归中实时预测通气量,作为个人水平暴露传感器系统的机载组件;2)将暴露监测器放置在呼吸区域的胸部,是否能提供与其他更常用位置(腰部、大腿、手腕等)相当的加速度计数据。

方法

来自RTI国际公司和哥伦比亚大学的原型暴露监测器由一组成年受试者佩戴在胸部,同时进行一系列预设活动(均<10代谢当量),涵盖常见的卧位、久坐和步行活动类别。放置在身体不同位置的裁判Wocket加速度计可与位于胸部的暴露传感器加速度计进行比较。使用Oxycon Mobile面罩现场测量口鼻通气量。对于具有完整数据的受试者子集(n = 22),针对每个受试者和暴露监测器类型构建线性回归(处理后的加速度计变量与通气率),并计算Pearson相关性以比较不同场景。

结果

三轴加速度计数据被证明是预测暴露监测器佩戴依从性的充分敏感指标。对于所有受试者,在代谢当量值~<6的卧位、久坐和步行活动中,暴露传感器加速度计变量与通气量之间均观察到强线性相关性(R值从0.77到0.99)。由于使用20 Hz的数据速率而非较慢的1 Hz速率,RTI监测器的平均R值0.91略高于哥伦比亚监测器的平均值0.86。计算了RTI系统在所有受试者中的名义平均回归斜率,显示出适度的±36.6%的相对标准偏差。将暴露监测器与不同身体位置的Wocket加速度计的相关性值进行比较,结果表明在交替的臀部、脚踝、上臂、大腿和口袋位置的所有传感器的回归在统计学上是相同的,但位于优势侧手腕位置的Wocket加速度计除外(R = 0.57;p = 0.016)。

结论

即使只有少量成年志愿者,所有受试者的回归斜率的一致性和线性都非常好,加速度计与通气量数据的个体内Pearson相关性也非常出色。计算加速度计标准差即使对于久坐活动也能提供良好的依从性评估敏感性。这些初步研究结果支持了这样的假设,即一个通用的线性回归可能适用于更广泛的成年人,以根据加速度计数据在一系列低至中等能量水平的活动中预测通气量。预测的通气量随后可用于实时估计潜在剂量,从而实现更强大的群组研究。手腕处加速度计预测通气率的相关性较差,这表明该位置不适合用于预测通气量。