» Articles » PMID: 29159811

A Deep Learning Method for Classifying Mammographic Breast Density Categories

Overview
Journal Med Phys
Specialty Biophysics
Date 2017 Nov 22
PMID 29159811
Citations 70
Authors
Affiliations
Soon will be listed here.
Abstract

Purpose: Mammographic breast density is an established risk marker for breast cancer and is visually assessed by radiologists in routine mammogram image reading, using four qualitative Breast Imaging and Reporting Data System (BI-RADS) breast density categories. It is particularly difficult for radiologists to consistently distinguish the two most common and most variably assigned BI-RADS categories, i.e., "scattered density" and "heterogeneously dense". The aim of this work was to investigate a deep learning-based breast density classifier to consistently distinguish these two categories, aiming at providing a potential computerized tool to assist radiologists in assigning a BI-RADS category in current clinical workflow.

Methods: In this study, we constructed a convolutional neural network (CNN)-based model coupled with a large (i.e., 22,000 images) digital mammogram imaging dataset to evaluate the classification performance between the two aforementioned breast density categories. All images were collected from a cohort of 1,427 women who underwent standard digital mammography screening from 2005 to 2016 at our institution. The truths of the density categories were based on standard clinical assessment made by board-certified breast imaging radiologists. Effects of direct training from scratch solely using digital mammogram images and transfer learning of a pretrained model on a large nonmedical imaging dataset were evaluated for the specific task of breast density classification. In order to measure the classification performance, the CNN classifier was also tested on a refined version of the mammogram image dataset by removing some potentially inaccurately labeled images. Receiver operating characteristic (ROC) curves and the area under the curve (AUC) were used to measure the accuracy of the classifier.

Results: The AUC was 0.9421 when the CNN-model was trained from scratch on our own mammogram images, and the accuracy increased gradually along with an increased size of training samples. Using the pretrained model followed by a fine-tuning process with as few as 500 mammogram images led to an AUC of 0.9265. After removing the potentially inaccurately labeled images, AUC was increased to 0.9882 and 0.9857 for without and with the pretrained model, respectively, both significantly higher (P < 0.001) than when using the full imaging dataset.

Conclusions: Our study demonstrated high classification accuracies between two difficult to distinguish breast density categories that are routinely assessed by radiologists. We anticipate that our approach will help enhance current clinical assessment of breast density and better support consistent density notification to patients in breast cancer screening.

Citing Articles

A Deep Learning Approach for the Classification of Fibroglandular Breast Density in Histology Images of Human Breast Tissue.

Heydarlou H, Hodson L, Dorraki M, Hickey T, Tilley W, Smith E Cancers (Basel). 2025; 17(3).

PMID: 39941816 PMC: 11816254. DOI: 10.3390/cancers17030449.


Sentinel Lymph Node Biopsy in Breast Cancer Using Different Types of Tracers According to Molecular Subtypes and Breast Density-A Randomized Clinical Study.

Faur I, Dobrescu A, Clim I, Pasca P, Prodan-Barbulescu C, Tarta C Diagnostics (Basel). 2024; 14(21).

PMID: 39518406 PMC: 11545725. DOI: 10.3390/diagnostics14212439.


ACL-DUNet: A tumor segmentation method based on multiple attention and densely connected breast ultrasound images.

Zhang H, Liang H, Wenjia G, Jing M, Gang S, Hongbing M PLoS One. 2024; 19(11):e0307916.

PMID: 39485757 PMC: 11530038. DOI: 10.1371/journal.pone.0307916.


Concordant and discordant breast density patterns by different approaches for assessing breast density and breast cancer risk.

Cho Y, Park E, Chang Y, Kwon M, Kim E, Kim M Breast Cancer Res Treat. 2024; 210(1):105-114.

PMID: 39482557 DOI: 10.1007/s10549-024-07541-1.


Assessment of the Breast Density Prevalence in Swiss Women with a Deep Convolutional Neural Network: A Cross-Sectional Study.

Kaiser A, Zanolin-Purin D, Chuck N, Enaux J, Wruk D Diagnostics (Basel). 2024; 14(19).

PMID: 39410616 PMC: 11476330. DOI: 10.3390/diagnostics14192212.


References
1.
Kallenberg M, Petersen K, Nielsen M, Ng A, Diao P, Igel C . Unsupervised Deep Learning Applied to Breast Density Segmentation and Mammographic Risk Scoring. IEEE Trans Med Imaging. 2016; 35(5):1322-1331. DOI: 10.1109/TMI.2016.2532122. View

2.
Farabet C, Couprie C, Najman L, LeCun Y . Learning hierarchical features for scene labeling. IEEE Trans Pattern Anal Mach Intell. 2013; 35(8):1915-29. DOI: 10.1109/TPAMI.2012.231. View

3.
Maskarinec G, Pagano I, Lurie G, Kolonel L . A longitudinal investigation of mammographic density: the multiethnic cohort. Cancer Epidemiol Biomarkers Prev. 2006; 15(4):732-9. DOI: 10.1158/1055-9965.EPI-05-0798. View

4.
Keller B, Nathan D, Wang Y, Zheng Y, Gee J, Conant E . Estimation of breast percent density in raw and processed full field digital mammography images via adaptive fuzzy c-means clustering and support vector machine segmentation. Med Phys. 2012; 39(8):4903-17. PMC: 3416877. DOI: 10.1118/1.4736530. View

5.
Youk J, Gweon H, Son E, Kim J . Automated Volumetric Breast Density Measurements in the Era of the BI-RADS Fifth Edition: A Comparison With Visual Assessment. AJR Am J Roentgenol. 2016; 206(5):1056-62. DOI: 10.2214/AJR.15.15472. View