组织病理学
病理
乳头状癌
甲状腺癌
甲状腺
医学
生物
内科学
作者
Ingrid van Marion,Stefan Schulz,Christina Glasner,Jakob Nikolas Kather,Daniel Truhn,Markus Eckstein,Celine Mueller,Aurélie Fernandez,Simone Marquard,Marie Oliver-Metzig,Wilfried Roth,Matthias M. Gaida,Stephanie Strobl,Daniel‐Christoph Wagner,Arno Schad,Moritz Jesinghaus,Nils Hartmann,Thomas Johannes Musholt,Julia I. Staubitz,Sebastian Foersch
出处
期刊:Thyroid
[Mary Ann Liebert, Inc.]
日期:2025-07-01
卷期号:35 (7): 771-780
被引量:9
标识
DOI:10.1089/thy.2024.0691
摘要
Our study demonstrates that predicting genetic alterations in digitized histopathological slides using AI is feasible in patients with PTC. Our model showed high accuracy in predicting these changes, making it potentially suitable for pre-screening. Explainability approaches uncovered previously undescribed morphological patterns associated with certain genotypes. Providing pathologists with these AI-based features could improve their accuracy. Assuming further positive prospective validation, this discovery could contribute to a deeper understanding of PTC.
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