Digital pathology: accurate technique for quantitative assessment of histological features in metabolic‐associated fatty liver disease
Alimentary Pharmacology & Therapeutics2020Vol. 53(1), pp. 160–171
Citations Over TimeTop 10% of 2020 papers
David Martí‐Aguado, Alejandro Rodríguez, Claudia Mestre‐Alagarda, Mónica Bauza, Elena Valero‐Pérez, Clara Alfaro‐Cervelló, Salvador Benlloch, Judith Pérez‐Rojas, Antonio Ferrández, Pilar Alemany‐Monraval, Desamparados Escudero‐García, Cristina Montón, Victoria Aguilera, Ángel Alberich‐Bayarri, Miguel A. Serra, Luis Martí‐Bonmatí
Abstract
Digital pathology allows an automated, precise, objective and quantitative assessment of MAFLD histological features. Digital analysis measurements show good concordance with pathologists´ scores.
Related Papers
- → The use of digital pathology and image analysis in clinical trials(2019)102 cited
- → Histopathological Images Analysis and Predictive Modeling Implemented in Digital Pathology—Current Affairs and Perspectives(2023)56 cited
- → Image Analysis in Surgical Pathology(2016)8 cited
- → Special Issue on Digital Pathology, Tissue Image Analysis, Artificial Intelligence, and Machine Learning: Approximation of the Effect of Novel Technologies on Toxicologic Pathology(2021)8 cited
- → [Digital pathology in immuno-oncology-current opportunities and challenges : Overview of the analysis of immune cell infiltrates using whole slide imaging].(2018)7 cited