Breast Arterial Calcifications on Mammography: A Review of the Literature.

IF 2 Q3 ONCOLOGY
Joanna Rossi, Leslie Cho, Mary S Newell, Luz A Venta, Guy H Montgomery, Stamatia V Destounis, Linda Moy, Rachel F Brem, Chirag Parghi, Laurie R Margolies
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引用次数: 0

Abstract

Identifying systemic disease with medical imaging studies may improve population health outcomes. Although the pathogenesis of peripheral arterial calcification and coronary artery calcification differ, breast arterial calcification (BAC) on mammography is associated with cardiovascular disease (CVD), a leading cause of death in women. While professional society guidelines on the reporting or management of BAC have not yet been established, and assessment and quantification methods are not yet standardized, the value of reporting BAC is being considered internationally as a possible indicator of subclinical CVD. Furthermore, artificial intelligence (AI) models are being developed to identify and quantify BAC on mammography, as well as to predict the risk of CVD. This review outlines studies evaluating the association of BAC and CVD, introduces the role of preventative cardiology in clinical management, discusses reasons to consider reporting BAC, acknowledges current knowledge gaps and barriers to assessing and reporting calcifications, and provides examples of how AI can be utilized to measure BAC and contribute to cardiovascular risk assessment. Ultimately, reporting BAC on mammography might facilitate earlier mitigation of cardiovascular risk factors in asymptomatic women.

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CiteScore
3.40
自引率
20.00%
发文量
81
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