Jun Zhang1, David A Shoham, Eric Tesdahl, Sabina B Gesell. 1. Jun Zhang and David A. Shoham are with the Department of Public Health Sciences, Stritch School of Medicine, Loyola University, Chicago, IL. Eric Tesdahl is with the Department of Human and Organizational Development, Vanderbilt University, Nashville, TN. Sabina B. Gesell is with the Department of Social Sciences and Health Policy, and The Maya Angelou Center for Health Equity, Wake Forest School of Medicine, Winston-Salem, NC.
Abstract
OBJECTIVES: We studied simulated interventions that leveraged social networks to increase physical activity in children. METHODS: We studied a real-world social network of 81 children (average age = 7.96 years) who lived in low socioeconomic status neighborhoods, and attended public schools and 1 of 2 structured afterschool programs. The sample was ethnically diverse, and 44% were overweight or obese. We used social network analysis and agent-based modeling simulations to test whether implementing a network intervention would increase children's physical activity. We tested 3 intervention strategies. RESULTS: The intervention that targeted opinion leaders was effective in increasing the average level of physical activity across the entire network. However, the intervention that targeted the most sedentary children was the best at increasing their physical activity levels. CONCLUSIONS: Which network intervention to implement depends on whether the goal is to shift the entire distribution of physical activity or to influence those most adversely affected by low physical activity. Agent-based modeling could be an important complement to traditional project planning tools, analogous to sample size and power analyses, to help researchers design more effective interventions for increasing children's physical activity.
OBJECTIVES: We studied simulated interventions that leveraged social networks to increase physical activity in children. METHODS: We studied a real-world social network of 81 children (average age = 7.96 years) who lived in low socioeconomic status neighborhoods, and attended public schools and 1 of 2 structured afterschool programs. The sample was ethnically diverse, and 44% were overweight or obese. We used social network analysis and agent-based modeling simulations to test whether implementing a network intervention would increase children's physical activity. We tested 3 intervention strategies. RESULTS: The intervention that targeted opinion leaders was effective in increasing the average level of physical activity across the entire network. However, the intervention that targeted the most sedentary children was the best at increasing their physical activity levels. CONCLUSIONS: Which network intervention to implement depends on whether the goal is to shift the entire distribution of physical activity or to influence those most adversely affected by low physical activity. Agent-based modeling could be an important complement to traditional project planning tools, analogous to sample size and power analyses, to help researchers design more effective interventions for increasing children's physical activity.
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