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Identifying causal relationships in time-series data from a pair of wearable sensors

机译:从一对可穿戴传感器识别时间序列数据中的因果关系

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According to the Lancet report on global burden of disease published in October 2020, air pollution is amongst the five highest risk factors for global health, reducing life expectancy on average by 20 months. This paper describes a data-driven method for establishing causal relationships between two time-series data streams derived from wearable sensors: personal exposure to airborne particulate matter (PM) of aerodynamic sizes less than 2.5 $mu mathrm{m}(ext{PM}_{2.5})$ gathered from the Airspeck monitor, and continuous respiratory rate (breaths/minute) measured by the wireless Respeck monitor worn as a plaster on the chest. Results are presented for a cohort of asthmatic adolescents using the PCMCI method on the short-term causal relationship between $ext{PM}_{2.5}$ exposure and respiratory rate for time lags in the first 60 minutes at minute-level intervals, and for time lags between 2 to 8 hours at 10-minute time intervals. For the first time a personalised exposure-response relationship between $ext{PM}_{2.5}$ exposure and respiratory rate has been demonstrated for short-term effects in asthmatic adolescents during their every day lives.
机译:根据柳叶柳树2020年10月出版的全球疾病负担的报道,空气污染是全球健康的五个最高风险因素之一,平均降低预期寿命20个月。本文介绍了一种数据驱动方法,用于建立从可穿戴传感器衍生的两个时间序列数据流之间的因果关系:个人暴露于空气动力学尺寸小于2.5的空气动力学尺寸 $ mu mathrm {m }( text {pm} _ {2.5})$ 从AirPeck监测器中收集,并通过胸部佩戴的无线恢复监视器测量的连续呼吸速率(呼吸/分钟)。使用PCMCI方法在短期因果关系中举办了哮喘的青少年队列的结果 $ text {pm} _ {2.5} $ 暴露和呼吸速率在分钟间隔的前60分钟内滞后于前60分钟,并且在10分钟的时间间隔内延迟2至8小时。第一次是个性化曝光 - 响应关系 $ text {pm} _ {2.5} $ 在每天生命期间,已经证明了暴露和呼吸率在哮喘的青少年中进行短期影响。

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