Interest in and Support for Alternative Models of Medication Abortion Provision Among Patients Seeking Abortion in the United States

Women's Health Issues(2024)

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摘要
Introduction Medication abortion is safe and effective, but restrictions still limit patients from accessing this method. Alternative models of medication abortion provision, namely advance provision, over-the-counter (OTC), and online, could help improve access to care for some, although there is limited evidence about abortion patients’ interest in these models. Methods Between 2017 and 2019, we administered a cross-sectional survey to abortion patients at 45 clinics across 15 U.S. states to explore their interest in and support for advance provision, OTC, and online abortion access. We assessed relationships between sociodemographic characteristics and interest in and support for each model using bivariate logistic regressions and present perceived advantages and disadvantages of each model, as described by a subset of participants. Results Among 1,965 people enrolled, 1,759 (90%) initiated the survey. Interest in and support for advance provision was highest (72% and 82%, respectively), followed by OTC (63% and 72%) and online access (57% and 70%). In bivariate analyses, non-Hispanic Black and Asian/Pacific Islander respondents expressed lower interest and support for the online model and Alaska Native/Native American respondents expressed higher interest in an OTC model, as compared with white respondents. Among 439 participants naming advantages and disadvantages of each model, the most common advantages included convenience and having the abortion earlier. The most common disadvantages were not seeing a provider first and possibly taking pills incorrectly. Conclusions Although most abortion patients expressed interest in and support for alternative models of medication abortion provision, variation in support across race/ethnicity highlights a need to ensure that abortion care service models meet the needs and preferences of all patients, particularly people from historically underserved populations.
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