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Radio-opaque artefacts in digital mammography: automatic detection and analysis of downstream effects

IEEE International Symposium on Biomedical Imaging (ISBI), 2024
Main:4 Pages
6 Figures
Bibliography:1 Pages
3 Tables
Abstract

This study investigates the effects of radio-opaque artefacts, such as skin markers, breast implants, and pacemakers, on mammography classification models. After manually annotating 22,012 mammograms from the publicly available EMBED dataset, a robust multi-label artefact detector was developed to identify five distinct artefact types (circular and triangular skin markers, breast implants, support devices and spot compression structures). Subsequent experiments on two clinically relevant tasks - breast density assessment and cancer screening - revealed that these artefacts can significantly affect model performance, alter classification thresholds, and distort output distributions. These findings underscore the importance of accurate automatic artefact detection for developing reliable and robust classification models in digital mammography. To facilitate future research our annotations, code, and model predictions are made publicly available.

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