The recent advancements in breast cancer precision medicine have highlighted the urgency for the precise and reproducible characterization of clinically actionable biomarkers. Despite numerous standardization efforts, biomarker testing by conventional methodologies is challenged by several issues such as high inter-observer variabilities, the spatial heterogeneity of biomarkers expression, and technological heterogeneity. In this respect, artificial intelligence-based digital pathology approaches are being increasingly recognized as promising methods for biomarker testing and subsequently improved clinical management. Here, we provide an overview on the most recent advances for artificial intelligence-assisted biomarkers testing in breast cancer, with a particular focus on tumor-infiltrating lymphocytes, programmed death-ligand 1, phosphatidylinositol-3 kinase catalytic alpha, and estrogen receptor 1. Challenges and solutions for this integrative analysis in pathology laboratories are also provided.

Sajjadi, E., Frascarelli, C., Venetis, K., Bonizzi, G., Ivanova, M., Vago, G., et al. (2023). Computational pathology to improve biomarker testing in breast cancer: how close are we?. EUROPEAN JOURNAL OF CANCER PREVENTION, 32(5), 460-467 [10.1097/CEJ.0000000000000804].

Computational pathology to improve biomarker testing in breast cancer: how close are we?

Ivanova M.;
2023

Abstract

The recent advancements in breast cancer precision medicine have highlighted the urgency for the precise and reproducible characterization of clinically actionable biomarkers. Despite numerous standardization efforts, biomarker testing by conventional methodologies is challenged by several issues such as high inter-observer variabilities, the spatial heterogeneity of biomarkers expression, and technological heterogeneity. In this respect, artificial intelligence-based digital pathology approaches are being increasingly recognized as promising methods for biomarker testing and subsequently improved clinical management. Here, we provide an overview on the most recent advances for artificial intelligence-assisted biomarkers testing in breast cancer, with a particular focus on tumor-infiltrating lymphocytes, programmed death-ligand 1, phosphatidylinositol-3 kinase catalytic alpha, and estrogen receptor 1. Challenges and solutions for this integrative analysis in pathology laboratories are also provided.
Articolo in rivista - Review Essay
artificial intelligence; digital pathology; estrogen receptor 1; machine learning; phosphatidylinositol-3 kinase catalytic alpha; programmed death-ligand 1; tumor-infiltrating lymphocytes;
English
1-set-2023
2023
32
5
460
467
none
Sajjadi, E., Frascarelli, C., Venetis, K., Bonizzi, G., Ivanova, M., Vago, G., et al. (2023). Computational pathology to improve biomarker testing in breast cancer: how close are we?. EUROPEAN JOURNAL OF CANCER PREVENTION, 32(5), 460-467 [10.1097/CEJ.0000000000000804].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/527907
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