Outdoor Secondhand Smoke Exposure in a Public Smoking Area: Formative Field Study Using Passive Wi-Fi Packet Sensing.

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Ryo Horiike, Kazuya Taira, Izumi Kondo, Motoyo Nawate, Harumi Bando
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引用次数: 0

Abstract

Background: Outdoor secondhand smoke (SHS) remains a public health concern, particularly around designated outdoor smoking areas where nonsmokers may pass through or remain nearby. Although prior studies have quantified outdoor SHS concentrations, fewer have examined how many people may be present within a plausible exposure setting. Estimating exposure opportunity level requires methods that are feasible, scalable, and minimally intrusive.

Objective: This study aimed to evaluate the feasibility of using passive Wi-Fi packet sensing, calibrated with brief onsite observation, to estimate the number of smokers and passersby within a plausible SHS exposure range at a public outdoor smoking area in Japan.

Methods: We conducted a formative field study at a designated outdoor smoking area of the Asia Pacific Trade Center in Osaka, Japan. A passive Wi-Fi packet sensor collected timestamps, anonymized device identifiers, organizationally unique identifiers, and received signal strength indicator values from October 13 to 29, 2023. The main analysis focused on October 28, 2023, a high football event day selected for direct calibration. Episodes were classified using empirically derived received signal strength indicator thresholds and class specific calibration ratios were applied to estimate day level counts.

Results: Of 128,313 anonymized detections recorded on October 28, 115,950 occurred during business hours. Among these, 11,068 identifiers were detected more than once, dwell time could be calculated for 1,817 identifiers, and 659 eligible presence episodes remained after preprocessing. During a 30 minutes validation window, smokers and passersby were counted manually within a 25 m radius. During the validation window, 6,230 signal records formed 104 stays, with a mean stay duration of 9.89 minutes (SD 7.89). During the validation window, direct observation recorded 14 smokers and 207 passersby within the 25 m radius. Applying the rule based classification and calibration ratios to business hours data yielded estimated day totals of 262 smokers and 3,907 passersby within the plausible SHS exposure range. Estimated smoker counts showed 2 peaks, around 12:00 and 16:00, whereas passerby volume peaked around midday. In an exploratory analysis, a random forest model using stay duration, mean received signal strength indicator, and received signal strength indicator variability achieved an accuracy of 0.95, sensitivity of 0.75, specificity of 0.97, and area under the receiver operating characteristic curve of 0.99.

Conclusions: This formative field study suggests that passive Wi-Fi packet sensing, combined with brief on site observation, can be used to estimate population level exposure opportunity around an outdoor smoking area. The method identified substantial numbers of potentially exposed passersby in a high footfall public setting. Although the findings are site specific and preliminary, they indicate that exposure count metrics may complement concentration based and survey based SHS research. Further studies incorporating repeated validation, direct pollutant monitoring, and multiple sites are needed to refine the method and strengthen its usefulness for tobacco control and public health decision making.

Clinicaltrial:

公共吸烟区的室外二手烟暴露:使用被动Wi-Fi分组传感的形成性现场研究。
背景:室外二手烟(SHS)仍然是一个公共卫生问题,特别是在非吸烟者可能经过或停留在附近的指定室外吸烟区附近。虽然先前的研究量化了室外SHS浓度,但很少有研究调查在一个可能的暴露环境中有多少人可能存在。估计暴露机会水平需要可行的、可扩展的、侵入性最小的方法。目的:本研究旨在评估使用无源Wi-Fi数据包传感的可行性,通过简短的现场观察进行校准,以估计日本公共室外吸烟区在合理的SHS暴露范围内的吸烟者和路人的数量。方法:我们在日本大阪亚太贸易中心指定的室外吸烟区进行了形成性的实地研究。无源Wi-Fi数据包传感器收集2023年10月13日至29日期间的时间戳、匿名设备标识符、组织唯一标识符和接收信号强度指标值。主要分析集中在2023年10月28日,这是一个高足球赛事日,选择直接校准。使用经验推导的接收信号强度指标阈值对事件进行分类,并使用类别特定校准比率来估计日水平计数。结果:在10月28日记录的128,313个匿名检测中,有115,950个发生在营业时间。其中,11,068个标识符被检测不止一次,1,817个标识符可计算停留时间,预处理后剩余659个符合条件的存在事件。在30分钟的验证窗口内,在半径25米内手动计数吸烟者和行人。在验证窗口内,6230条信号记录形成104次停留,平均停留时间为9.89分钟(SD 7.89)。在验证窗口内,直接观察到半径25 m范围内吸烟者14人,行人207人。将基于规则的分类和校准比率应用于营业时间数据,估计每天有262名吸烟者和3,907名行人处于合理的SHS暴露范围内。估计的吸烟者数量在12:00和16:00左右出现了两个峰值,而路人数量在中午左右达到峰值。在探索性分析中,使用停留时间、平均接收信号强度指标和接收信号强度指标变异性建立的随机森林模型准确率为0.95,灵敏度为0.75,特异性为0.97,接收者工作特征曲线下面积为0.99。结论:这一形成性的实地研究表明,被动Wi-Fi分组传感结合简短的现场观察,可用于估计室外吸烟区周围人群水平的暴露机会。该方法确定了大量在高人流量公共环境中潜在暴露的路人。虽然研究结果是针对特定地点和初步的,但它们表明暴露计数指标可以补充基于浓度和基于调查的SHS研究。需要进一步的研究,包括重复验证、直接污染物监测和多个站点,以完善该方法并加强其对烟草控制和公共卫生决策的有用性。临床试验:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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