HPV self-sampling among women in the United States: preferences for implementation

Cancer Causes & Control(2024)

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摘要
Purpose With the inclusion of primary HPV testing in 2018 U.S. Preventive Services Taskforce guidelines, at-home HPV self-sampling may provide a future option for cervical cancer screening, especially among hard-to-reach populations in the U.S. This study evaluated the association of implementation preferences with the willingness of at-home HPV self-sampling. Methods We conducted a cross-sectional study in 2018 among U.S. women ages 30–65 years, without a hysterectomy ( n = 812). The outcome was willingness to have at-home HPV self-sampling (yes/no). Primary predictor variables (i.e., information source, methods of payment, methods of sending or receiving self-sampling kits) measured self-sampling implementation preferences. Adjusted logistic regression identified associations with willingness to have at-home HPV self-sampling. Results Participants who preferred receiving information from healthcare providers (OR = 2.64; 95% CI 1.54,4.52) or from media or other sources (OR = 2.30; 95% CI 1.51,3.48) had higher HPV self-sampling willingness than participants who did not prefer those sources. Participants who did not want to pay for self-sampling (OR = 0.21; 95% CI 0.14,0.32) or did not know if they would pay for self-sampling (OR = 0.35; 95% CI 0.22,0.54) had lower odds of HPV self-sampling willingness compared to participants willing to pay. Participants who did not know which method they preferred for receiving a self-sampling kit (OR = 0.15, 95% CI 0.07,0.31) or preferred delivering the sample to the lab themselves (OR = 0.59; 95% CI 0.36,0.96) had lower odds for self-sampling willingness compared to participants who preferred the mail. Conclusion Understanding the preferences of women regarding the implementation of HPV self-sampling can improve uptake in cervical cancer screening, especially among hard-to-reach populations.
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关键词
HPV,Self-sampling,Women,Implementation,Cervical cancer
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