Author/Authors :
Lai, Xiaobo Zhejiang Chinese Medical University - Hangzhou, China , Yang, Weiji Zhejiang Chinese Medical University - Hangzhou, China , Li, Ruipeng Hangzhou Third People’s Hospital - Hangzhou, China
Abstract :
To improve the automatic segmentation accuracy of breast masses in digital breast tomosynthesis (DBT) images, we propose a
DBT mass automatic segmentation algorithm by using a U-Net architecture. Firstly, to suppress the background tissue noise and
enhance the contrast of the mass candidate regions, after the top-hat transform of DBT images, a constraint matrix is constructed
and multiplied with the DBT image. Secondly, an efficient U-Net neural network is built and image patches are extracted before
data augmentation to establish the training dataset to train the U-Net model. and then the presegmentation of the DBT tumors is
implemented, which initially classifies per pixel into two different types of labels. Finally, all regions smaller than 50 voxels
considered as false positives are removed, and the median filter smoothes the mass boundaries to obtain the final segmentation
results. The proposed method can effectively improve the performance in the automatic segmentation of the masses in DBT
images. Using the detection Accuracy (Acc), Sensitivity (Sen), Specificity (Spe), and area under the curve (AUC) as evaluation
indexes, the Acc, Sen, Spe, and AUC for DBT mass segmentation in the entire experimental dataset is 0.871, 0.869, 0.882, and
0.859, respectively. Our proposed U-Net-based DBT mass automatic segmentation system obtains promising results, which is
superior to some classical architectures, and may be expected to have clinical application prospects.
Keywords :
DBT , U-Net , Automatic , 3D