2008
DOI: 10.2196/jmir.1002
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The Role of Engagement in a Tailored Web-Based Smoking Cessation Program: Randomized Controlled Trial

Abstract: Background Web-based programs for health promotion, disease prevention, and disease management often experience high rates of attrition. There are 3 questions which are particularly relevant to this issue. First, does engagement with program content predict long-term outcomes? Second, which users are most likely to drop out or disengage from the program? Third, do particular intervention strategies enhance engagement?Objective To determine: (1) whether engagement (defined by the number of Web sections opened) … Show more

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Cited by 249 publications
(286 citation statements)
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“…First, the evidence that usage is associated with intended outcomes is mixed, and largely correlational. [21][22][23] It is difficult to determine to what extent usage mediates behavioral and healthrelated outcomes, as this may be confounded by common factors such as higher motivation and selfregulation skills. Usage metrics also reveal little about offline engagement with intervention content, which is important in inter-ventions that require homework outside the context of the digital intervention.…”
Section: Conceptualizing Engagementmentioning
confidence: 99%
See 1 more Smart Citation
“…First, the evidence that usage is associated with intended outcomes is mixed, and largely correlational. [21][22][23] It is difficult to determine to what extent usage mediates behavioral and healthrelated outcomes, as this may be confounded by common factors such as higher motivation and selfregulation skills. Usage metrics also reveal little about offline engagement with intervention content, which is important in inter-ventions that require homework outside the context of the digital intervention.…”
Section: Conceptualizing Engagementmentioning
confidence: 99%
“…23 DBCIs have the potential to generate data sets sufficiently large to be able to reliably model and experimentally test 34 mediation of outcomes by engagement with particular intervention components and to statistically control for confounding moderator effects such as baseline motiva-tion levels. 22,26,35,36 Importantly, usage metrics can be collated with data on users' behavior collected by smartphone sensors, such as movement or location. 37 However, more studies are needed to establish what features or correlates of engagement sensor data can capture reliably, and new statistical approaches will be required to analyze these large and complex data sets.…”
Section: Conceptualizing Engagementmentioning
confidence: 99%
“…Self-reported smoking status is a commonly accepted outcome measure in Internet cessation trials, 12,[22][23][24][25][26][27] where biochemical verification of abstinence is not feasible and misreporting of abstinence is expected to be minimal given low demand characteristics.…”
Section: Primary Outcomementioning
confidence: 99%
“…Knowing these baseline characteristics might allow researchers and intervention designers to tailor e-health interventions to users' unique challenges, needs, and limitations. While studies have found that being a woman, being older, and having a higher education are generally consistent predictors of greater e-health intervention utilization [14][15][16][17], very little is known about the user characteristics that are associated with different patterns of use over time. To our knowledge, only one study has examined this question [12], and found that being female and having higher baseline motivation were associated with more consistent login trajectories.…”
Section: Introductionmentioning
confidence: 99%