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Task-based assessment of digital mammography microcalcification detection with deep learning denoising algorithmss using in silico and physical phantom studies.

Authors :
Makeev A
Glick SJ
Source :
Journal of medical imaging (Bellingham, Wash.) [J Med Imaging (Bellingham)] 2023 Sep; Vol. 10 (5), pp. 053502. Date of Electronic Publication: 2023 Oct 06.
Publication Year :
2023

Abstract

Purpose: Recent research suggests that image quality degradation with reduced radiation exposure in mammography can be mitigated by postprocessing mammograms with denoising algorithms based on convolutional neural networks. Breast microcalcifications, along with extended soft-tissue lesions, are the primary breast cancer biomarkers in a clinical x-ray examination, with the former being more sensitive to quantum noise. We test one such publicly available denoising method to observe if an improvement in detection of small microcalcifications can be achieved when deep learning-based denoising is applied to half-dose phantom scans.<br />Approach: An existing denoiser model (that was previously trained on clinical data) was applied to mammograms of an anthropomorphic physical phantom with hydroxyapatite microcalcifications. In addition, another model trained and tested using all synthetic (Monte Carlo) data was applied to a similar digital compressed breast phantom. Human reader studies were conducted to assess and compare image quality in a set of binary signal detection 4-AFC experiments, with proportion of correct responses used as a performance metric.<br />Results: In both physical phantom/clinical system and simulation studies, we saw no apparent improvement in small microcalcification signal detection in denoised half-dose mammograms. However, in a Monte Carlo study, we observed a noticeable jump in 4-AFC scores, when readers analyzed denoised half-dose images processed by the neural network trained on a dataset composed of 50% signal-present (SP) and 50% signal-absent regions of interest (ROIs).<br />Conclusions: Our findings conjecture that deep-learning denoising algorithms may benefit from enriching training datasets with SP ROIs, at least in cases with clusters of 5 to 10 microcalcifications, each of size ≲ 240    μ m .<br /> (Published by SPIE.)

Details

Language :
English
ISSN :
2329-4302
Volume :
10
Issue :
5
Database :
MEDLINE
Journal :
Journal of medical imaging (Bellingham, Wash.)
Publication Type :
Academic Journal
Accession number :
37808969
Full Text :
https://doi.org/10.1117/1.JMI.10.5.053502