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040 _aEG-GiCUC
_beng
_cEG-GiCUC
041 0 _aeng
049 _aDeposite
097 _aM.Sc
099 _aCai01.13.03.M.Sc.2021.Sh.T
100 0 _aShrief Sayed Ahmed Abdelazeez
245 1 2 _aA transfer-learning-based framework for multi-class classification of breast cancer using whole-slide images /
_cShrief Sayed Ahmed Abdelazeez Ahmed ; Supervised Mohamed Emad M. Rasmy , Muhammad Ahmed Monir Islam
246 1 5 _aاطار عمل قائم على نقل التعلم لتصنيف متعدد الفئات لسرطان الثدي باستخدام صور الشرائح الكاملة
260 _aCairo :
_bShrief Sayed Ahmed Abdelazeez Ahmed ,
_c2021
300 _a73 P. :
_bcharts , facsimiles ;
_c30cm
502 _aThesis (M.Sc.) - Cairo University - Faculty of Engineering - Department of Systems and Biomedical Engineering
520 _aBreast cancer has become one of the most common death causes worldwide, especially in females. The diagnosis of breast cancer with haemo toxylin and eosin (H&E) stained slides is essential but non-trivial, and pathologists often differ on the final decision. Computer-aid diagnosis using whole-slide images (WSIs) helps to reduce the cost and improve the accuracy of the diagnosis. A transfer learning framework for the classification of H&E-stained breast biopsy images is proposed .The imaged tissues are divided into four classes, normal, benign lesion, in-situ carcinoma, and invasive carcinoma. Feature extraction in the proposed framework is based on DenseNet-201pre-trained convolution neural network (CNN) model. Also, the final classification layers are appropriately modified. Training and testing of the classification framework was carried out on the Bre Ast Cancer Histology (BACH) WSI datasets of the International Conference on Image Analysis and Recognition (ICIAR) 2018 challenge. Image augmentation techniques were applied to increase the training data samples.The proposed framework achieved an average testing accuracy of about 95%
530 _aIssued also as CD
650 0 _aBreast cancer
653 _aMulti-class Classification
653 _aTransfer Learning
653 _aWhole-Slide Images
700 0 _aMohamed Emad M. Rasmy ,
_eSupervisor
700 0 _aMuhammad Ahmed Monir Islam ,
_eSupervisor
856 _uhttp://172.23.153.220/th.pdf
905 _aNazla
_eRevisor
905 _aShimaa
_eCataloger
942 _2ddc
_cTH
999 _c84437
_d84437