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Progress on deep learning in digital pathology of breast cancer: a narrative review
Author(s) -
Jingjin Zhu,
Mei Liu,
Xiru Li
Publication year - 2022
Publication title -
gland surgery
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.643
H-Index - 22
eISSN - 2227-8575
pISSN - 2227-684X
DOI - 10.21037/gs-22-11
Subject(s) - medicine , breast cancer , digital pathology , grading (engineering) , medical diagnosis , medical physics , molecular pathology , pathology , narrative review , cancer , artificial intelligence , computer science , intensive care medicine , biochemistry , chemistry , civil engineering , engineering , gene
Pathology is the gold standard criteria for breast cancer diagnosis and has important guiding value in formulating the clinical treatment plan and predicting the prognosis. However, traditional microscopic examinations of tissue sections are time consuming and labor intensive, with unavoidable subjective variations. Deep learning (DL) can evaluate and extract the most important information from images with less need for human instruction, providing a promising approach to assist in the pathological diagnosis of breast cancer. To provide an informative and up-to-date summary on the topic of DL-based diagnostic systems for breast cancer pathology image analysis and discuss the advantages and challenges to the routine clinical application of digital pathology.

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