13 May 2021 Exploring CNN potential in discriminating benign and malignant calcifications in conventional and dual-energy FFDM: simulations and experimental observations
Andrey V. Makeev, Gabriela Rodal, Bahaa Ghammraoui, Andreu Badal, Stephen J. Glick
Author Affiliations +
Abstract

Purpose: Deep convolutional neural networks (CNN) have demonstrated impressive success in various image classification tasks. We investigated the use of CNNs to distinguish between benign and malignant microcalcifications, using either conventional or dual-energy mammography x-ray images. The two kinds of calcifications, known as type-I (calcium oxalate crystals) and type-II (calcium phosphate aggregations), have different attenuation properties in the mammographic energy range. However, variations in microcalcification shape, size, and density as well as compressed breast thickness and breast tissue background make this a challenging discrimination task for the human visual system.

Approach: Simulations (conventional and dual-energy mammography) and phantom experiments (conventional mammography only) were conducted using the range of breast thicknesses and randomly shaped microcalcifications. The off-the-shelf Resnet-18 CNN was trained on the regions of interest with calcification clusters of the two kinds.

Results: Both Monte Carlo simulations and experimental phantom data suggest that deep neural networks can be trained to separate the two classes of calcifications with high accuracy, using dual-energy mammograms.

Conclusions: Our work shows the encouraging results of using the CNNs for non-invasive testing for type-I and type-II microcalcifications and may stimulate further research in this area with expanding presence of the novel breast imaging modalities like dual-energy mammography or systems using photon-counting detectors.

© 2021 Society of Photo-Optical Instrumentation Engineers (SPIE) 2329-4302/2021/$28.00 © 2021 SPIE
Andrey V. Makeev, Gabriela Rodal, Bahaa Ghammraoui, Andreu Badal, and Stephen J. Glick "Exploring CNN potential in discriminating benign and malignant calcifications in conventional and dual-energy FFDM: simulations and experimental observations," Journal of Medical Imaging 8(3), 033501 (13 May 2021). https://doi.org/10.1117/1.JMI.8.3.033501
Received: 15 April 2020; Accepted: 19 April 2021; Published: 13 May 2021
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KEYWORDS
Breast

Mammography

X-rays

Monte Carlo methods

Tissues

Neural networks

Tumor growth modeling

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