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Confidentiality considerations for use of social-spatial data on the social determinants of health: Sexual and reproductive health case study

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  • Haley, Danielle F.
  • Matthews, Stephen A.
  • Cooper, Hannah L.F.
  • Haardörfer, Regine
  • Adimora, Adaora A.
  • Wingood, Gina M.
  • Kramer, Michael R.

Abstract

Understanding whether and how the places where people live, work, and play are associated with health behaviors and health is essential to understanding the social determinants of health. However, social-spatial data which link a person and their attributes to a geographic location (e.g., home address) create potential confidentiality risks. Despite the growing body of literature describing approaches to protect individual confidentiality when utilizing social-spatial data, peer-reviewed manuscripts displaying identifiable individual point data or quasi-identifiers (attributes associated with the individual or disease that narrow identification) in maps persist, suggesting that knowledge has not been effectively translated into public health research practices. Using sexual and reproductive health as a case study, we explore the extent to which maps appearing in recent peer-reviewed publications risk participant confidentiality. Our scoping review of sexual and reproductive health literature published and indexed in PubMed between January 1, 2013 and September 1, 2015 identified 45 manuscripts displaying participant data in maps as points or small-population geographic units, spanning 26 journals and representing studies conducted in 20 countries. Notably, 56% (13/23) of publications presenting point data on maps either did not describe approaches used to mask data or masked data inadequately. Furthermore, 18% (4/22) of publications displaying data using small-population geographic units included at least two quasi-identifiers. These findings highlight the need for heightened education for researchers, reviewers, and editorial teams. We aim to provide readers with a primer on key confidentiality considerations when utilizing linked social-spatial data for visualizing results. Given the widespread availability of place-based data and the ease of creating maps, it is critically important to raise awareness on when social-spatial data constitute protected health information, best practices for masking geographic identifiers, and methods of balancing disclosure risk and scientific utility. We conclude with recommendations to support the preservation of confidentiality when disseminating results.

Suggested Citation

  • Haley, Danielle F. & Matthews, Stephen A. & Cooper, Hannah L.F. & Haardörfer, Regine & Adimora, Adaora A. & Wingood, Gina M. & Kramer, Michael R., 2016. "Confidentiality considerations for use of social-spatial data on the social determinants of health: Sexual and reproductive health case study," Social Science & Medicine, Elsevier, vol. 166(C), pages 49-56.
  • Handle: RePEc:eee:socmed:v:166:y:2016:i:c:p:49-56
    DOI: 10.1016/j.socscimed.2016.08.009
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    2. Breslin, Samantha & Shareck, Martine & Fuller, Daniel, 2019. "Research ethics for mobile sensing device use by vulnerable populations," Social Science & Medicine, Elsevier, vol. 232(C), pages 50-57.

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