[1] |
MASCARA M, CONSTANTINOU C. Global perceptions of women on breast cancer and barriers to screening [J]. Current Oncology Reports, 2021, 23(7): 1-9.
|
[2] |
ZHOU X T, SHEN S J, SUN Q. Current situation and progress of breast cancer screening in China [J].Chinese Journal of the Frontiers of Medical Science(Electronic Version), 2020, 12(3): 6-11 (in Chinese).
|
[3] |
TIAN J X, LIU G C, GU S S, et al. Deep learning in medical image analysis and its challenges [J]. Acta Automatica Sinica, 2018, 44(3): 401-424 (in Chinese).
|
[4] |
ZHANG L, ZHANG Y. Big data analysis by infinite deep neural networks [J]. Journal of Computer Re-search and Development, 2016, 53(1): 68-79 (in Chinese).
|
[5] |
SAXENA S, SHUKLA S, GYANCHANDANI M.Pretrained convolutional neural networks as feature extractors for diagnosis of breast cancer using histopathology [J]. International Journal of Imaging Systems and Technology, 2020, 30(3): 577-591.
|
[6] |
PAR VIN F, MEHEDI HASAN M A. A comparative study of different types of convolutional neural net-works for breast cancer histopathological image classification [C]//2020 IEEE Region 10 Symposium (TEN-SYMP). Dhaka: IEEE, 2020: 945-948.
|
[7] |
LING Y, SUN Z Q. Recognition algorithm of breast pathological images based on convolutional neural net-work [J]. Journal of Jiangsu University (Natural Science Edition), 2019, 40(5): 573-578 (in Chinese).
|
[8] |
Y U L T , X I A Y Q , Y A N Y S , e t a l . B r e a s t c a n c e rpathological image classification based on a convolutional neural network [J]. Journal of Harbin Engineering University, 2021, 42(4): 567-573 (in Chinese).
|
[9] |
SPANHOL F A, OLIVEIRA L S, PETITJEAN C, etal. A dataset for breast cancer histopathological im-age classification [J]. IEEE Transactions on Biomedical Engineering, 2016, 63(7): 1455-1462.
|
[10] |
SAINI M, SUSAN S B. Data augmentation of minority class with transfer learning for classification of imbalanced breast cancer dataset using inception-V3[M]//Pattern recognition and image analysis. Cham:Springer, 2019: 409-420.
|
[11] |
HUANG Y. Low illumination image enhance mentbased on bilateral filtering and improved CLAHE algorithm [D]. Xiangtan: Xiangtan University, 2019 (in Chinese).
|
[12] |
WANG Y Y, ZHOU Z G, LUO L K. Image enhancement algorithm based on sobel operator filtering [J].Computer Applications and Software, 2019, 36(12):184-188 (in Chinese).
|
[13] |
W ANG Y L. Study of algorithnm in image processing based on the bilateral filter [D]. Xi’an: Xidian University, 2010 (in Chinese).
|
[14] |
WANG Y, LEI B, ELAZAB A, et al. Breast cancer im-age classification via multi-network features and dual-network orthogonal low-rank learning [J]. IEEE Access, 2020, 8: 27779-27792.
|
[15] |
S H I N H C , R O T H H R , G A O M C , e t a l . D e e p c o n v o lutional neural networks for computer-aided detection:CNN architectures, dataset characteristics and trans-fer learning [J]. IEEE Transactions on Medical Imaging, 2016, 35(5): 1285-1298.
|
[16] |
ALKHALEEF AH M, MA S C, CHANG Y L, et al.Double-shot transfer learning for breast cancer classification from X-ray images [J]. Applied Sciences, 2020,10(11): 3999.
|
[17] |
SINGH R, AHMED T, KUMAR A, et al. Imbalanced breast cancer classification using transfer learning [J].IEEE/ACM Transactions on Computational Biologyand Bioinformatics, 2021, 18(1): 83-93.
|
[18] |
KUMAR A, KIM J, LYNDON D, et al. An ensemble of fine-tuned convolutional neural networks for medical image classification [J]. IEEE Journal of Biomedicaland Health Informatics, 2017, 21(1): 31-40.
|
[19] |
SIMONYAN K, ZISSERMAN A. Very deep convolutional networks for large-scale image recognition [EB/OL]. (2015-04-10). https://arxiv.org/abs/1409.1556.
|
[20] |
SZEGEDY C, V ANHOUCKE V, IOFFE S, et al. Re-thinking the inception architecture for computer vision[C]//2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Las Vegas, NV: IEEE,2016: 2818-2826.
|
[21] |
SZEGEDY C, IOFFE S, V ANHOUCKE V, et al.Inception-v4, inception-resnet and the impact of residual connections on learning [EB/OL]. (2016-08-23).https://arxiv.org/abs/1602.07261.
|
[22] |
HE K, ZHANG X, REN S, et al. Deep residual learning for image recognition [C]//2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).Las Vegas, NV: IEEE, 2016: 770-778.
|
[23] |
ZOU W K, LU H J, YE M C, et al. Breast cancer histopathological image classification using convolutional neural network [J]. Computer Engineering and Design, 2020, 41(6): 1749-1754 (in Chinese).
|
[24] |
GOUR M, JAIN S, SUNIL KUMAR T. Residual learning based CNN for breast cancer histopathological im-age classification [J]. International Journal of Imaging Systems and Technology, 2020, 30(3): 621-635.
|
[25] |
DENIZ E, S?ENG üR A, KADIRO ˇGLU Z, et al. Trans-fer learning based histopathologic image classification for breast cancer detection [J]. Health Information Science and Systems, 2018, 6(1): 1-7.
|
[26] |
SUN F Q, CONG C L, ZHANG K, et al. Benign and malignant diagnosis of breast cancer histopathological image based on multi-model neural network [J]. Journal of Chinese Computer Systems, 2020, 41(4): 732-735 (in Chinese).
|