| Literature DB >> 34791536 |
Mustafa Yousif1,2, Paul J van Diest3, Arvydas Laurinavicius4, David Rimm5, Jeroen van der Laak6, Anant Madabhushi7,8, Stuart Schnitt9, Liron Pantanowitz10.
Abstract
The convergence of digital pathology and computer vision is increasingly enabling computers to perform tasks performed by humans. As a result, artificial intelligence (AI) is having an astoundingly positive effect on the field of pathology, including breast pathology. Research using machine learning and the development of algorithms that learn patterns from labeled digital data based on "deep learning" neural networks and feature-engineered approaches to analyze histology images have recently provided promising results. Thus far, image analysis and more complex AI-based tools have demonstrated excellent success performing tasks such as the quantification of breast biomarkers and Ki67, mitosis detection, lymph node metastasis recognition, tissue segmentation for diagnosing breast carcinoma, prognostication, computational assessment of tumor-infiltrating lymphocytes, and prediction of molecular expression as well as treatment response and benefit of therapy from routine H&E images. This review critically examines the literature regarding these applications of AI in the area of breast pathology.Entities:
Keywords: Artificial intelligence; Breast; Breast cancer; Computational pathology; Convolutional neural network; Deep learning; Handcrafted features; Machine learning; Quantitative image analysis
Mesh:
Year: 2021 PMID: 34791536 DOI: 10.1007/s00428-021-03213-3
Source DB: PubMed Journal: Virchows Arch ISSN: 0945-6317 Impact factor: 4.064