Getting the word out: Methods of learning about research and motivations for participation in a study focusing on a reproductive-aged Latina/x population

JOURNAL OF CLINICAL AND TRANSLATIONAL SCIENCE(2022)

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摘要
Background: Although one of the fastest-growing populations in the USA, Latinx individuals remain underrepresented in research. In this study, we aimed to identify how Latina/Latinx participants of the Environment, Leiomyomas, Latinas, and Adiposity Study (ELLAS) learned about the research study and what motivated them to participate. Materials and Methods: Using a standardized survey tool, bilingual staff interviewed participants and asked them, 1) how they heard about ELLAS and 2) to identify and rank their top three reasons for participating in ELLAS. Results: "Word of mouth" through a friend or relative was the most common method of learning about ELLAS (49.0%), followed by a "community outreach event" (29.3%). The three most common reasons for participating in ELLAS were "to learn more about women's health" (83.3%), "to receive a free health assessment" (79.4%), and "to contribute to scientific knowledge" (59.5%). Correlation between demographic and socioeconomic characteristics and participant responses indicated that there are different reasons for participation based on these factors. Conclusions: Community engagement and word of mouth are vital to the successful recruitment of Latina/Latinx participants to research studies. Latinx participants are most motivated to participate by health benefits and health education, as well as altruistic aspects of research studies. Therefore, establishing mutually beneficial relationships within Latinx communities and appealing to motivations for research participation with close attention to the demographics of participants can both expand and allow for targeted recruitment efforts for this underrepresented group in research studies.
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关键词
Community engagement, Latinx, diverse study populations, reproductive health, study recruitment and retention
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