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基于情境感知的手机应用程序(Q Sense)戒烟:一项混合方法研究。

A Context-Sensing Mobile Phone App (Q Sense) for Smoking Cessation: A Mixed-Methods Study.

机构信息

Behavioural Science Group, Department of Public Health and Primary Care, University of Cambridge, Cambridge, United Kingdom.

出版信息

JMIR Mhealth Uhealth. 2016 Sep 16;4(3):e106. doi: 10.2196/mhealth.5787.

Abstract

BACKGROUND

A major cause of lapse and relapse to smoking during a quit attempt is craving triggered by cues from a smoker's immediate environment. To help smokers address these cue-induced cravings when attempting to quit, we have developed a context-aware smoking cessation app, Q Sense, which uses a smoking episode-reporting system combined with location sensing and geofencing to tailor support content and trigger support delivery in real time.

OBJECTIVE

We sought to (1) assess smokers' compliance with reporting their smoking in real time and identify reasons for noncompliance, (2) assess the app's accuracy in identifying user-specific high-risk locations for smoking, (3) explore the feasibility and user perspective of geofence-triggered support, and (4) identify any technological issues or privacy concerns.

METHODS

An explanatory sequential mixed-methods design was used, where data collected by the app informed semistructured interviews. Participants were smokers who owned an Android mobile phone and were willing to set a quit date within one month (N=15). App data included smoking reports with context information and geolocation, end-of-day (EoD) surveys of smoking beliefs and behavior, support message ratings, and app interaction data. Interviews were undertaken and analyzed thematically (N=13). Quantitative and qualitative data were analyzed separately and findings presented sequentially.

RESULTS

Out of 15 participants, 3 (20%) discontinued use of the app prematurely. Pre-quit date, the mean number of smoking reports received was 37.8 (SD 21.2) per participant, or 2.0 (SD 2.2) per day per participant. EoD surveys indicated that participants underreported smoking on at least 56.2% of days. Geolocation was collected in 97.0% of smoking reports with a mean accuracy of 31.6 (SD 16.8) meters. A total of 5 out of 9 (56%) eligible participants received geofence-triggered support. Interaction data indicated that 50.0% (137/274) of geofence-triggered message notifications were tapped within 30 minutes of being generated, resulting in delivery of a support message, and 78.2% (158/202) of delivered messages were rated by participants. Qualitative findings identified multiple reasons for noncompliance in reporting smoking, most notably due to environmental constraints and forgetting. Participants verified the app's identification of their smoking locations, were largely positive about the value of geofence-triggered support, and had no privacy concerns about the data collected by the app.

CONCLUSIONS

User-initiated self-report is feasible for training a cessation app about an individual's smoking behavior, although underreporting is likely. Geofencing was a reliable and accurate method of identifying smoking locations, and geofence-triggered support was regarded positively by participants.

摘要

背景

在戒烟尝试中,导致复吸的一个主要原因是吸烟环境中的线索引发的渴望。为了帮助吸烟者在试图戒烟时应对这些线索引起的渴望,我们开发了一款情境感知戒烟应用程序 Q Sense,该应用程序使用吸烟事件报告系统结合位置感知和地理围栏技术,实时定制支持内容并触发支持传递。

目的

我们旨在(1)评估吸烟者实时报告吸烟情况的依从性,并确定不依从的原因,(2)评估应用程序识别用户特定吸烟高风险地点的准确性,(3)探索地理围栏触发支持的可行性和用户观点,以及(4)确定任何技术问题或隐私问题。

方法

采用解释性顺序混合方法设计,应用程序收集的数据为半结构化访谈提供信息。参与者是拥有 Android 手机并愿意在一个月内设定戒烟日期的吸烟者(N=15)。应用程序数据包括带有情境信息和地理位置的吸烟报告、每日结束(EoD)吸烟信念和行为调查、支持消息评分以及应用程序交互数据。进行了访谈并进行了主题分析(N=13)。分别分析定量和定性数据,并按顺序呈现发现。

结果

在 15 名参与者中,有 3 名(20%)提前过早停止使用该应用程序。在戒烟日期之前,每位参与者平均收到 37.8(SD 21.2)份吸烟报告,或每位参与者每天 2.0(SD 2.2)份。EoD 调查表明,参与者至少有 56.2%的天数漏报了吸烟情况。地理位置在 97.0%的吸烟报告中收集,平均准确率为 31.6(SD 16.8)米。总共有 9 名符合条件的参与者中的 5 名(56%)收到了地理围栏触发的支持。交互数据显示,地理围栏触发的消息通知中有 50.0%(137/274)在生成后 30 分钟内被点击,从而发送了支持消息,并且 78.2%(158/202)的已发送消息被参与者评分。定性研究结果确定了报告吸烟情况的不依从的多个原因,最主要的原因是环境限制和遗忘。参与者验证了应用程序对其吸烟地点的识别,对地理围栏触发的支持持积极态度,并且对应用程序收集的数据没有隐私担忧。

结论

用户发起的自我报告对于训练关于个人吸烟行为的戒烟应用程序是可行的,尽管漏报的可能性较大。地理围栏是识别吸烟地点的可靠且准确的方法,参与者对地理围栏触发的支持持积极态度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ed59/5045522/c0296663f4f9/mhealth_v4i3e106_fig1.jpg

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