Optimization of mammography with respect to anatomical noise
Erik Fredenberg, Bjorn Svensson, Mats Danielsson, Barbara Lazzari,, Bjorn Cederstrom

TL;DR
This study optimizes mammography by incorporating anatomical noise into the detection model, revealing that traditional methods may not be optimal and that dose can be reduced without losing diagnostic accuracy.
Contribution
It introduces a new spectral mammography system and an observer-model optimization that accounts for anatomical noise, improving understanding of optimal imaging parameters.
Findings
Anatomical noise dominates at low frequencies for larger tumors.
Optimal x-ray energy is higher than traditional estimates suggest.
Dose can be reduced significantly without losing tumor detectability.
Abstract
Beam quality optimization in mammography traditionally considers detection of a target obscured by quantum noise on a homogenous background. It can be argued that this scheme does not correspond well to the clinical imaging task because real mammographic images contain a complex superposition of anatomical structures, resulting in anatomical noise that may dominate over quantum noise. Using a newly developed spectral mammography system, we measured the correlation and magnitude of the anatomical noise in a set of mammograms. The results from these measurements were used as input to an observer-model optimization that included quantum noise as well as anatomical noise. We found that, within this framework, the detectability of tumors and microcalcifications behaved very differently with respect to beam quality and dose. The results for small microcalcifications were similar to what…
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