Women's Understandings and Misunderstandings of Breast Density and Related Concepts: A Mixed Methods Study

JOURNAL OF WOMENS HEALTH(2022)

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摘要
Background: Most U.S. states require written notification of breast density after mammograms, yet effects of notifications on knowledge are mixed. Little is known about potential misunderstandings.Methods: We used a sequential mixed-methods study design to assess women's knowledge about breast density, after receiving a notification. We conducted a telephone survey among a racially/ethnically and health-literacy level diverse sample (N = 754) and qualitative interviews with 61 survey respondents.Results: In survey results, 58% of women correctly indicated that breast density is not related to touch, with higher accuracy among non-Hispanic White women and those with greater health literacy. Next, 87% of women recognized that breast density is identified visually via mammogram, with no significant differences in responses by race/ethnicity or health literacy. Most (81%) women recognized that a relationship exists between breast tissue types and density; Non-Hispanic White women were less likely to respond correctly. Only 47% of women correctly indicated that having dense breasts increases one's risk of breast cancer; women with low health literacy were more often correct. Qualitative results revealed additional dimensions of understanding: Some women incorrectly reported that density could be felt, or dense breasts were lumpier, thicker, or more compacted; others identified "dense" tissue as fatty. Interpretations of risk included that breast density was an early form of breast cancer.Conclusion: We found areas of consistent knowledge and identified misperceptions surrounding breast density across race/ethnicity and health literacy levels. Further education to address disparities and correct misunderstandings is essential to promote better knowledge, to foster informed decisions.
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关键词
dense breast notifications, breast density, mammography, patient health beliefs
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