2013
DOI: 10.2196/jmir.2870
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Electronic Word of Mouth on Twitter About Physical Activity in the United States: Exploratory Infodemiology Study

Abstract: BackgroundTwitter is a widely used social medium. However, its application in promoting health behaviors is understudied.ObjectiveIn order to provide insights into designing health marketing interventions to promote physical activity on Twitter, this exploratory infodemiology study applied both social cognitive theory and the path model of online word of mouth to examine the distribution of different electronic word of mouth (eWOM) characteristics among personal tweets about physical activity in the United Sta… Show more

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Cited by 45 publications
(32 citation statements)
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“…We created a list of physical activities using published lists of physical activity terms gathered from physical activity questionnaires, compendia of physical activities, and popularly available fitness programs [61,62]. Our physical activity list had 376 different activities that incorporate gym-related exercise (eg, treadmill, weight lifting), sports (eg, baseball), recreation (eg, hiking, scuba diving) and household chores (eg, gardening).…”
Section: Methodsmentioning
confidence: 99%
“…We created a list of physical activities using published lists of physical activity terms gathered from physical activity questionnaires, compendia of physical activities, and popularly available fitness programs [61,62]. Our physical activity list had 376 different activities that incorporate gym-related exercise (eg, treadmill, weight lifting), sports (eg, baseball), recreation (eg, hiking, scuba diving) and household chores (eg, gardening).…”
Section: Methodsmentioning
confidence: 99%
“…The real‐time nature of this methodology means the results are fast while having a significant effect on the health policy. As people use the Internet and social media as information and news (McCully, Don & Updegraff, ; The Pew Internet Project's Research, ), these platforms can be seen as a new source of health data for public health surveillance (Eysenbach, ; Heaivilin, Gerbert, Page & Gibbs, ; Myslín, Zhu, Chapman & Conway, ; Somaiya, ), tracking health behaviours, attitudes (Cole‐Lewis et al., ; Collier, Son & Nguyen, ; Kim et al., ; Sanders‐Jackson, Brown & Prochaska, ; Zhang et al., ) and measuring the psychological traits of the community (Chan, Lopez & Sarkar, ; Eichstaedt et al., ).…”
Section: Introductionmentioning
confidence: 99%
“…73 Zhang and colleagues manually coded a random assortment of 30,000 tweets about physical activity, finding that most were neutral in sentiment and only 9.0% offered social support. 66 …”
Section: Discussionmentioning
confidence: 99%
“…66,67 Our physical activity list has 258 different activities that incorporate gym-related exercise (e.g., treadmill, weight lifting), sports (e.g., baseball), recreation (e.g., hiking, scuba diving) and household chores (e.g., gardening). Using Metabolic Equivalents (METs) associated with physical activities, we quantified the caloric expenditure of each physical activity mention, scaled for a duration of 30 minutes and for a 155 pound individual.…”
Section: Methodsmentioning
confidence: 99%