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Estimates of Social Contact in a Middle School Based on Self-Report and Wireless Sensor Data

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  • Molly Leecaster
  • Damon J A Toth
  • Warren B P Pettey
  • Jeanette J Rainey
  • Hongjiang Gao
  • Amra Uzicanin
  • Matthew Samore

Abstract

Estimates of contact among children, used for infectious disease transmission models and understanding social patterns, historically rely on self-report logs. Recently, wireless sensor technology has enabled objective measurement of proximal contact and comparison of data from the two methods. These are mostly small-scale studies, and knowledge gaps remain in understanding contact and mixing patterns and also in the advantages and disadvantages of data collection methods. We collected contact data from a middle school, with 7th and 8th grades, for one day using self-report contact logs and wireless sensors. The data were linked for students with unique initials, gender, and grade within the school. This paper presents the results of a comparison of two approaches to characterize school contact networks, wireless proximity sensors and self-report logs. Accounting for incomplete capture and lack of participation, we estimate that “sensor-detectable”, proximal contacts longer than 20 seconds during lunch and class-time occurred at 2 fold higher frequency than “self-reportable” talk/touch contacts. Overall, 55% of estimated talk-touch contacts were also sensor-detectable whereas only 15% of estimated sensor-detectable contacts were also talk-touch. Contacts detected by sensors and also in self-report logs had longer mean duration than contacts detected only by sensors (6.3 vs 2.4 minutes). During both lunch and class-time, sensor-detectable contacts demonstrated substantially less gender and grade assortativity than talk-touch contacts. Hallway contacts, which were ascertainable only by proximity sensors, were characterized by extremely high degree and short duration. We conclude that the use of wireless sensors and self-report logs provide complementary insight on in-school mixing patterns and contact frequency.

Suggested Citation

  • Molly Leecaster & Damon J A Toth & Warren B P Pettey & Jeanette J Rainey & Hongjiang Gao & Amra Uzicanin & Matthew Samore, 2016. "Estimates of Social Contact in a Middle School Based on Self-Report and Wireless Sensor Data," PLOS ONE, Public Library of Science, vol. 11(4), pages 1-21, April.
  • Handle: RePEc:plo:pone00:0153690
    DOI: 10.1371/journal.pone.0153690
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    References listed on IDEAS

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    1. Julie Fournet & Alain Barrat, 2014. "Contact Patterns among High School Students," PLOS ONE, Public Library of Science, vol. 9(9), pages 1-17, September.
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