Literature DB >> 30465021

Network analysis of the NetHealth data: exploring co-evolution of individuals' social network positions and physical activities.

Shikang Liu1, David Hachen2, Omar Lizardo2, Christian Poellabauer1, Aaron Striegel1, Tijana Milenković1,3,4.   

Abstract

Understanding the relationship between individuals' social networks and health could help devise public health interventions for reducing incidence of unhealthy behaviors or increasing prevalence of healthy ones. In this context, we explore the co-evolution of individuals' social network positions and physical activities. We are able to do so because the NetHealth study at the University of Notre Dame has generated both high-resolution longitudinal social network (e.g., SMS) data and high-resolution longitudinal health-related behavioral (e.g., Fitbit physical activity) data. We examine trait differences between (i) users whose social network positions (i.e., centralities) change over time versus those whose centralities remain stable, (ii) users whose Fitbit physical activities change over time versus those whose physical activities remain stable, and (iii) users whose centralities and their physical activities co-evolve, i.e., correlate with each other over time. We find that centralities of a majority of all nodes change with time. These users do not show any trait difference compared to time-stable users. However, if out of all users whose centralities change with time we focus on those whose physical activities also change with time, then the resulting users are more likely to be introverted than time-stable users. Moreover, users whose centralities and physical activities both change with time and whose evolving centralities are significantly correlated (i.e., co-evolve) with evolving physical activities are more likely to be introverted as well as anxious compared to those users who are time-stable and do not have a co-evolution relationship. Our network analysis framework reveals several links between individuals' social network structure, health-related behaviors, and the other (e.g., personality) traits. In the future, our study could lead to development of a predictive model of social network structure from behavioral/trait information and vice versa.

Entities:  

Keywords:  Dynamic networks; Health; Node centrality; Physical activity; Social networks

Year:  2018        PMID: 30465021      PMCID: PMC6223883          DOI: 10.1007/s41109-018-0103-2

Source DB:  PubMed          Journal:  Appl Netw Sci        ISSN: 2364-8228


  30 in total

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Review 7.  Social Network Assessments and Interventions for Health Behavior Change: A Critical Review.

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8.  Dynamic spread of happiness in a large social network: longitudinal analysis over 20 years in the Framingham Heart Study.

Authors:  James H Fowler; Nicholas A Christakis
Journal:  BMJ       Date:  2008-12-04

9.  Optimized null model for protein structure networks.

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10.  Social network properties and self-rated health in later life: comparisons from the Korean social life, health, and aging project and the national social life, health and aging project.

Authors:  Yoosik Youm; Edward O Laumann; Kenneth F Ferraro; Linda J Waite; Hyeon Chang Kim; Yeong-Ran Park; Sang Hui Chu; Won-Tak Joo; Jin A Lee
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2.  Network-based protein structural classification.

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3.  The power of dynamic social networks to predict individuals' mental health.

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