2021
DOI: 10.2196/29758
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Using Methods From Computational Decision-making to Predict Nonadherence to Fitness Goals: Protocol for an Observational Study

Abstract: Background Can methods from computational models of decision-making be used to build a predictive model to identify individuals most likely to be nonadherent to personal fitness goals? Such a model may have significant value in the global battle against obesity. Despite growing awareness of the impact of physical inactivity on human health, sedentary behavior is increasingly linked to premature death in the developed world. The annual impact of sedentary behavior is significant, causing an estimate… Show more

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Cited by 2 publications
(2 citation statements)
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“…Despite the modest sample size, anticipated relationships between aspects of impulsivity and self-care were detected. Indeed, researchers have suggested that computationally modelled discounting parameters are critical to understanding unhealthy behavior [37] and others are actively studying covert motivational preferences in other domains, such as among healthy adults pursuing fitness goals [53]. As these findings are preliminary, we suggest caution in inferring clinical implications, yet it is tempting to speculate.…”
Section: Discussionmentioning
confidence: 77%
“…Despite the modest sample size, anticipated relationships between aspects of impulsivity and self-care were detected. Indeed, researchers have suggested that computationally modelled discounting parameters are critical to understanding unhealthy behavior [37] and others are actively studying covert motivational preferences in other domains, such as among healthy adults pursuing fitness goals [53]. As these findings are preliminary, we suggest caution in inferring clinical implications, yet it is tempting to speculate.…”
Section: Discussionmentioning
confidence: 77%
“…The use of EMA in tinnitus studies has increased with the development of mobile apps and the growing availability of smartphones [39][40][41]. We have developed a mobile app, AthenaCX [42], that can automatically send notifications to the participants at several time points during the day requesting that they complete a state questionnaire asking about their current tinnitus symptom levels.…”
Section: Take Tinnitus Severity Fluctuation Into Accountmentioning
confidence: 99%