TY - JOUR
T1 - Classification of Breast Masses Using a Computer-Aided Diagnosis Scheme of Contrast Enhanced Digital Mammograms
AU - Danala, Gopichandh
AU - Patel, Bhavika
AU - Aghaei, Faranak
AU - Heidari, Morteza
AU - Li, Jing
AU - Wu, Teresa
AU - Zheng, Bin
N1 - Funding Information:
This work is supported in part by Grant R01 CA197150 from the National Cancer Institute, National Institutes of Health, USA.
Publisher Copyright:
© 2018, Biomedical Engineering Society.
PY - 2018/9/15
Y1 - 2018/9/15
N2 - Contrast-enhanced digital mammography (CEDM) is a promising imaging modality in breast cancer diagnosis. This study aims to investigate how to optimally develop a computer-aided diagnosis (CAD) scheme of CEDM images to classify breast masses. A CEDM dataset of 111 patients was assembled, which includes 33 benign and 78 malignant cases. Each CEDM includes two types of images namely, low energy (LE) and dual-energy subtracted (DES) images. A CAD scheme was applied to segment mass regions depicting on LE and DES images separately. Optimal segmentation results generated from DES images were also mapped to LE images or vice versa. After computing image features, multilayer perceptron based machine learning classifiers that integrate with a correlation-based feature subset evaluator and leave-one-case-out cross-validation method were built to classify mass regions. When applying CAD to DES and LE images with original segmentation, areas under ROC curves (AUC) were 0.759 ± 0.053 and 0.753 ± 0.047, respectively. After mapping the mass regions optimally segmented on DES images to LE images, AUC significantly increased to 0.848 ± 0.038 (p < 0.01). Study demonstrated that DES images eliminated overlapping effect of dense breast tissue, which helps improve mass segmentation accuracy. The study demonstrated that applying a novel approach to optimally map mass region segmented from DES images to LE images enabled CAD to yield significantly improved performance.
AB - Contrast-enhanced digital mammography (CEDM) is a promising imaging modality in breast cancer diagnosis. This study aims to investigate how to optimally develop a computer-aided diagnosis (CAD) scheme of CEDM images to classify breast masses. A CEDM dataset of 111 patients was assembled, which includes 33 benign and 78 malignant cases. Each CEDM includes two types of images namely, low energy (LE) and dual-energy subtracted (DES) images. A CAD scheme was applied to segment mass regions depicting on LE and DES images separately. Optimal segmentation results generated from DES images were also mapped to LE images or vice versa. After computing image features, multilayer perceptron based machine learning classifiers that integrate with a correlation-based feature subset evaluator and leave-one-case-out cross-validation method were built to classify mass regions. When applying CAD to DES and LE images with original segmentation, areas under ROC curves (AUC) were 0.759 ± 0.053 and 0.753 ± 0.047, respectively. After mapping the mass regions optimally segmented on DES images to LE images, AUC significantly increased to 0.848 ± 0.038 (p < 0.01). Study demonstrated that DES images eliminated overlapping effect of dense breast tissue, which helps improve mass segmentation accuracy. The study demonstrated that applying a novel approach to optimally map mass region segmented from DES images to LE images enabled CAD to yield significantly improved performance.
KW - Breast cancer diagnosis
KW - Classification of breast masses
KW - Computer-aided diagnosis (CAD)
KW - Contrast-enhanced digital mammography (CEDM)
KW - Performance comparison
KW - Segmentation of breast mass regions
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U2 - 10.1007/s10439-018-2044-4
DO - 10.1007/s10439-018-2044-4
M3 - Article
C2 - 29748869
AN - SCOPUS:85046754828
SN - 0090-6964
VL - 46
SP - 1419
EP - 1431
JO - Annals of Biomedical Engineering
JF - Annals of Biomedical Engineering
IS - 9
ER -