A multi-reconstruction study of breast density estimation using Deep Learning
Vikash Gupta, Mutlu Demirer, Robert W. Maxwell, Richard D. White,, Barbaros Selnur Erdal

TL;DR
This paper explores multi-modality deep learning approaches for breast density estimation, demonstrating improved accuracy over single-modality models by leveraging diverse mammogram data types.
Contribution
It introduces a multi-reconstruction deep learning method that combines multiple mammogram modalities, enhancing breast density classification accuracy.
Findings
Multi-modality training outperforms single-modality models.
Deep learning improves breast density estimation accuracy.
Using all modalities increases dataset diversity and model robustness.
Abstract
Breast density estimation is one of the key tasks in recognizing individuals predisposed to breast cancer. It is often challenging because of low contrast and fluctuations in mammograms' fatty tissue background. Most of the time, the breast density is estimated manually where a radiologist assigns one of the four density categories decided by the Breast Imaging and Reporting Data Systems (BI-RADS). There have been efforts in the direction of automating a breast density classification pipeline. Breast density estimation is one of the key tasks performed during a screening exam. Dense breasts are more susceptible to breast cancer. The density estimation is challenging because of low contrast and fluctuations in mammograms' fatty tissue background. Traditional mammograms are being replaced by tomosynthesis and its other low radiation dose variants (for example Hologic' Intelligent 2D and…
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Taxonomy
TopicsDigital Radiography and Breast Imaging · AI in cancer detection · Radiomics and Machine Learning in Medical Imaging
