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Identification of Bicycling Periods Using the MicroPEM Personal Exposure Monitor

机译:使用MicroPEM个人暴露监测仪确定骑车周期

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摘要

Exposure assessment studies are the primary means for understanding links between exposure to chemical and physical agents and adverse health effects. Recently, researchers have proposed using wearable monitors during exposure assessment studies to obtain higher fidelity readings of exposures actually experienced by subjects. However, limited research has been conducted to link a wearer’s actions to periods of exposure, a necessary step for estimating inhaled dosage. To aid researchers in these settings, we developed a machine learning model for identifying periods of bicycling activity using passively collected data from the RTI MicroPEM wearable exposure monitor, a lightweight device capable of continuously sampling both air pollution levels and accelerometry parameters. Our best performing model identifies biking activity with a mean leave-one-session-out (LOSO) cross-validation F1 score of 0.832 (unweighted) and 0.979 (weighted). Accelerometer derived features contributed greatly to the model performance, as well as temporal smoothing of the predicted activities. Additionally, we found competitive activity recognition can occur with even relatively low sampling rates, suggesting suitability for exposure assessment studies where continuous data collection for long periods (without recharge) are needed to capture realistic daily routines and exposures.
机译:暴露评估研究是了解化学和物理制剂暴露与不良健康影响之间联系的主要方法。最近,研究人员建议在暴露评估研究期间使用可穿戴显示器,以获得受试者实际经历的暴露的更高保真度读数。但是,已进行了有限的研究,将穿戴者的行为与暴露时间联系起来,这是估算吸入剂量的必要步骤。为了帮助研究人员在这些环境中工作,我们开发了一种机器学习模型,该模型使用RTI MicroPEM可穿戴式暴露监测器(一种能够连续采样空气污染水平和加速度计参数的轻型设备)的被动收集数据来识别骑车活动的时间段。我们表现​​最好的模型可识别出的骑行活动平均单次离开锻炼(LOSO)交叉验证F1得分为0.832(未加权)和0.979(加权)。加速度计派生的功能极大地促进了模型性能以及预测活动的时间平滑。此外,我们发现即使在相对较低的采样率下也可以进行竞争性活动识别,这表明适合进行暴露评估研究,在该研究中,需要长时间(不充电)连续收集数据以捕获现实的日常活动和暴露。

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