2024
DOI: 10.1117/1.jmi.11.4.044506
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Capability and reliability of deep learning models to make density predictions on low-dose mammograms

Steven Squires,
Alistair Mackenzie,
Dafydd Gareth Evans
et al.

Abstract: Breast density is associated with the risk of developing cancer and can be automatically estimated using deep learning models from digital mammograms. Our aim is to evaluate the capacity and reliability of such models to predict density from low-dose mammograms taken to enable risk estimates for younger women.Approach: We trained deep learning models on standard-dose and simulated low-dose mammograms. The models were then tested on a mammography dataset with paired standard-and low-dose images. The effect of d… Show more

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