2024
DOI: 10.3389/fradi.2023.1326831
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Empowering breast cancer diagnosis and radiology practice: advances in artificial intelligence for contrast-enhanced mammography

Ketki K. Kinkar,
Brandon K. K. Fields,
Mary W. Yamashita
et al.

Abstract: Artificial intelligence (AI) applications in breast imaging span a wide range of tasks including decision support, risk assessment, patient management, quality assessment, treatment response assessment and image enhancement. However, their integration into the clinical workflow has been slow due to the lack of a consensus on data quality, benchmarked robust implementation, and consensus-based guidelines to ensure standardization and generalization. Contrast-enhanced mammography (CEM) has improved sensitivity a… Show more

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Cited by 2 publications
(1 citation statement)
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“…The potential role of AI in the interpretation of contrast-enhanced mammography examinations was recently pointed out in a commentary by Zhang et al [95]. As mentioned in a 2024 review article by Kinkar et al [96], several studies demonstrated good performance from automatic segmentation and classification models for contrast-enhanced mammograms.…”
Section: Contrast-enhanced Mammographymentioning
confidence: 97%
“…The potential role of AI in the interpretation of contrast-enhanced mammography examinations was recently pointed out in a commentary by Zhang et al [95]. As mentioned in a 2024 review article by Kinkar et al [96], several studies demonstrated good performance from automatic segmentation and classification models for contrast-enhanced mammograms.…”
Section: Contrast-enhanced Mammographymentioning
confidence: 97%