Generative Adversarial Networks Based Pathological Images Classification of Poorly Differentiated Cervical Cancer
LI Chen1, ZHANG Jia-wei1, ZHANG Hao1, WANG Qian2,3
1. College of Medicine and Biological Information Engineering, Northeastern University, Shenyang 110169, China; 2. Liaoning Cancer Hospital & Institute, Shenyang 110042, China; 3.Cancer Hospital of China Medical University, Shenyang 110042, China.
LI Chen, ZHANG Jia-wei, ZHANG Hao, WANG Qian. Generative Adversarial Networks Based Pathological Images Classification of Poorly Differentiated Cervical Cancer[J]. Journal of Northeastern University Natural Science, 2020, 41(7): 1054-1061.
[1]Arbyn M,Castellsague X,De Sanjose S,et al.Worldwide burden of cervical cancer in 2008[J].Annlas of Oncology,2011,22(12):2675-2686. [2]卞美璐,刘树范.子宫颈疾病的诊治[M].北京:科学技术文献出版社,2001.(Bian Mei-lu,Liu Shu-fan.Diagnosis and treatment of cervical diseases[M].Beijing:Scientific and Technical Literature Publishing House,2001.) [3]Sukumar P,Gnanamurthy R K.Computer aided detection of cervical cancer using pap smear images based on adaptive neuro fuzzy inference system classifier[J].Journal of Medical Imaging & Health Informatics,2016,6(2):312-319. [4]Loh B C S,Then P H H.Deep learning for cardiac computer-aided diagnosis:benefits,issues & solutions[J].Mhealth,2017,3(10):45. [5]李连捷,宋金英.食管癌计算机辅助诊断中医学图像的量化与数据处理[J].河北医科大学学报,1996(1):23-25.(Li Lian-jie,Song Jin-ying.Quantification and data processing of medical images in the process of computer aided diagnosis for esophageal cancer[J].Journal of Hebei Medical University,1996(1):23-25.)