Health Advertising on Facebook: Privacy & Policy Considerations
- URL: http://arxiv.org/abs/2201.07263v3
- Date: Tue, 1 Feb 2022 20:51:48 GMT
- Title: Health Advertising on Facebook: Privacy & Policy Considerations
- Authors: Andrea Downing, Eric Perakslis
- Abstract summary: Cross site tracking is used to extract health information from users without permission.
We examine how browsing data can be exchanged between digital medicine companies and Facebook for advertising and lead generation purposes.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this study we analyzed content and marketing tactics of digital medicine
companies to evaluate various types of cross site tracking middleware used to
extract health information from users without permission. More specifically we
examine how browsing data can be exchanged between digital medicine companies
and Facebook for advertising and lead generation purposes. The analysis was
focused on a small ecosystem of companies offering services to patients within
the cancer community that frequently engage on social media. Some companies in
our content analysis may fit the legal definition of a personal health record
vendor covered by the Federal Trade Commission, others are HIPAA covered
entities. The findings of our analysis raise policy questions about what
constitutes a breach under the Federal trade Commission's Health Breach
Notification Rule. Several examples demonstrate serious problems with
inconsistent privacy practices and reveal how digital medicine dark patterns
may elicit unauthorized data from patients and companies serving ads. Further
we discuss how these common marketing practices enable surveillance and
targeting of medical ads to vulnerable patient populations, which may not be
apparent to the companies targeting ads.
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