We developed a Project ECHO® module to offer prenatal providers training on engaging in shared decision-making about hepatitis C virus (HCV) treatment during pregnancy. In this pilot program, the ECHO module addressing HCV during pregnancy and the potential benefits of treatment was associated with increases in self-efficacy scores among participants.

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http://dx.doi.org/10.1093/jpids/piae092DOI Listing

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