Author/Authors :
Cai, Hongmin School of Computer Science and Engineering - South China University of Technology - Guangzhou, China , Huang, Qinjian School of Computer Science and Engineering - South China University of Technology - Guangzhou, China , Rong, Wentao School of Computer Science and Engineering - South China University of Technology - Guangzhou, China , Song, Yan School of Computer Science and Engineering - South China University of Technology - Guangzhou, China , Li, Jiao Sun Yat-sen University Cancer Center - State Key Laboratory of Oncology in South China - Collaborative Innovation Center for Cancer Medicine - Guangzhou - Guangdong, China , Wang, Jinhua Shenzhen Hospital of Southern Medical University - Shenzhen - Guangdong, China , Chen, Jiazhou School of Computer Science and Engineering - South China University of Technology - Guangzhou, China , Li, Li Sun Yat-sen University Cancer Center - State Key Laboratory of Oncology in South China - Collaborative Innovation Center for Cancer Medicine - Guangzhou - Guangdong, China
Abstract :
Mammography is successfully used as an effective screening tool for cancer diagnosis. A calcification cluster on mammography is a primary sign of cancer. Early researches have proved the diagnostic value of the calcification, yet their
performance is highly dependent on handcrafted image descriptors. Characterizing the calcification mammography in an
automatic and robust way remains a challenge. In this paper, the calcification was characterized by descriptors obtained
from deep learning and handcrafted descriptors. We compared the performances of different image feature sets on digital
mammograms. (e feature sets included the deep features alone, the handcrafted features, their combination, and
the filtered deep features. Experimental results have demonstrated that the deep features outperform handcrafted features,
but the handcrafted features can provide complementary information for deep features. We achieved a classification
precision of 89.32% and sensitivity of 86.89% using the filtered deep features, which is the best performance among all the
feature sets.
Keywords :
Microcalcification , Deep , Mammograms , MCs