School of Business and Management, Royal Holloway, University of London, Egham, United Kingdom.
School of Computing, National University of Singapore, Singapore, Singapore.
JMIR Mhealth Uhealth. 2024 Sep 10;12:e55207. doi: 10.2196/55207.
Physical exercise and exposure to air pollution have counteracting effects on individuals' health outcomes. Knowledge on individuals' real-time exercise behavior response to different pollution information sources remains inadequate.
This study aims to examine the extent to which individuals avoid polluted air during exercise activities in response to different air pollution information sources.
We used data on individuals' exercise behaviors captured by wearable and mobile devices in 83 Chinese cities over a 2-year time span. In our data set, 35.99% (5896/16,379) of individuals were female and 64% (10,483/16,379) were male, and their ages predominantly ranged from 18 to 50 years. We further augmented the exercise behavior data with air pollution information that included city-hourly level measures of the Air Quality Index and particulate matter 2.5 concentration (in µg/m), and weather data that include city-hourly level measures of air temperature (ºC), dew point (ºC), wind speed (m/s), and wind direction (degrees). We used a linear panel fixed effect model to estimate individuals' exercise-aversion behaviors (ie, running exercise distance at individual-hour, city-hour, or city-day levels) and conducted robustness checks using the endogenous treatment effect model and regression discontinuity method. We examined if alternative air pollution information sources could moderate (ie, substitute or complement) the role of mainstream air pollution indicators.
Our results show that individuals exhibit a reduction of running exercise behaviors by about 0.50 km (or 7.5%; P<.001) during instances of moderate to severe air pollution, and there is no evidence of reduced distances in instances of light air pollution. Furthermore, individuals' exercise-aversion behaviors in response to mainstream air pollution information are heightened by different alternative information sources, such as social connections and social media user-generated content about air pollution.
Our results highlight the complementary role of different alternative information sources of air pollution in inducing individuals' aversion behaviors and the importance of using different information channels to increase public awareness beyond official air pollution alerts.
体育锻炼和接触空气污染对个人的健康结果有相互抵消的影响。人们对个人实时锻炼行为对不同污染信息源的反应知之甚少。
本研究旨在考察在不同空气污染信息源的作用下,个人在锻炼活动中避免污染空气的程度。
我们使用了 2 年来佩戴在身上和移动设备上采集到的个体运动行为数据,该数据集涵盖了 83 个中国城市。在我们的数据集中,35.99%(5896/16379)的个体为女性,64%(10483/16379)为男性,他们的年龄主要集中在 18 到 50 岁之间。我们进一步将运动行为数据与空气污染信息(包括城市每小时的空气质量指数和细颗粒物 2.5 浓度(µg/m))和天气数据(包括城市每小时的气温(°C)、露点(°C)、风速(m/s)和风向(度))结合起来。我们使用线性面板固定效应模型来估计个体的运动回避行为(即个人小时、城市小时或城市日水平的跑步运动距离),并使用内源性处理效应模型和回归不连续性方法进行稳健性检验。我们考察了替代的空气污染信息源是否可以调节(即替代或补充)主流空气污染指标的作用。
我们的结果表明,在中度至重度空气污染期间,个体的跑步运动行为减少了约 0.50 公里(或 7.5%;P<.001),而在轻度空气污染期间,跑步距离没有减少。此外,个体对主流空气污染信息的回避行为会因社会联系和社交媒体用户生成的空气污染内容等不同替代信息源而加剧。
我们的结果强调了不同替代空气污染信息源在引起个体回避行为方面的互补作用,以及利用不同信息渠道提高公众意识的重要性,超越了官方空气污染警报。