Ultrasound breast tumoral classification by a new adaptive pre-trained convolutive neural networks for computer-aided diagnosis

Author:

Reguieg Fatma ZohraORCID,Benblidia Nadjia

Publisher

Springer Science and Business Media LLC

Reference37 articles.

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2. Cheng HD, Shan J, Wen J, Guo Y, Zhang L (2010) Automated breast cancer detection and classification using ultrasound images: a survey. Pattern Recogn 43(1):299–317

3. Liu S, Wanga Y, Yang X, Lei B, Liu L, Li SX, Ni D, Wang T (2019) Deep learning in medical ultrasound analysis: a review. J Eng 5:261–275

4. Nayeem MA, Mannan Joadder Md. A, Shetu SA, Jamil FR, Helal A (2014) Feature selection for breast cancer detection from ultrasound images. International Conference on Informatics, Electronics and Vision, ICIEV

5. Mishra AK, Roy P, Bandyopadhyay S, Das SK (2021) Breast ultrasound tumour classification: a machine learning—radiomics based approach. J Expert Syst 38(4):1–12 (Willey)

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