Parents of children who undergo clinical genetic testing have significant informational and emotional support needs at different stages of the testing process. We analyzed parent views about use of both the internet and social media to help meet these needs. We interviewed 20 parents of children who underwent clinical genetic testing and analyzed transcripts to identify themes related to internet and social media use. Parents described using the internet to search for information at three stages of the genetic testing process: before testing, pending results return, and after results return. Each stage corresponded to different information vacuums and needs. Parents also described using condition-specific Facebook groups to learn more about their child's condition and to find support networks of families with similar experiences in ways that were challenging using non-social media approaches. Both the internet and social media play important roles in meeting informational and support needs in pediatric genetic testing, especially for rare conditions. Providers should consider engaging parents at different stages of the testing process about their use of the internet and social media, and consider directing them to vetted sites and groups as part of shared decision making and to improve satisfaction and outcomes.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6591503PMC
http://dx.doi.org/10.1007/s12687-018-0400-6DOI Listing

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