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oDigital pathology biomarkers for guiding radiotherapy-based treatment concepts in prostate cancer − a systematic review and expert consensus

Constantinos Zamboglou, William De Doncker*, Andreas Thomas Christoforou, Stefano Arcangeli, Alejandro Berlin, Pierre Blanchard, Glenn Bauman, Riccardo Campi, Elena Castro, Ananya Choudhury, Alan Dal Pra, Cédric Draulans, Neil Desai, Konstantinos Ferentinos, Giulio Francolini, Silke Gillessen, Anca Ligia Grosu, Juan Gómez Rivas, Tobias Hoelscher, George HrubyBarbara Alicja Jereczek-Fossa, Sophia Kamran, Veeru Kasivisvanathan, Amar U. Kishan, Valentinos Kounnis, Andrew Loblaw, Jarad Martin, Federico Mastroleo, Axel S. Merseburger, Marcin Miszczyk, Osama Mohamad, Piet Ost, Athanasios Papatsoris, Jan C. Peeken, Francesco Sanguedolce, Paul Sargos, Nina Schmidt-Hegemann, Tyler M. Seibert, Mohamed Shelan, Shankar Siva, Timo F.W. Soeterik, Daniel E. Spratt, Arnulf Stenzl, Iosif Strouthos, Philip Sutera, Stephane Supiot, Derya Tilki, Phuoc T. Tran, Alison C. Tree, Jonathan Tward, Yüksel Ürün, Neha Vapiwala, Mark R. Waddle, Eric Wegener, Thomas Zilli, Vedang Murthy, Alexander Henry Thieme, Simon Spohn

*Korrespondierende/r Autor/-in für diese Arbeit

Abstract

Current risk-stratification systems for prostate cancer (PCa) do not sufficiently reflect the disease heterogeneity, and digital pathology (DP) combined with artificial intelligence (AI) tools (DP-AI) may offer a solution to this challenge. The aim of this work is to summarize the role of DP-AI for PCa patients treated with radiotherapy (RT), and to point out future areas of research. We conducted (1) a systematic review on the evidence of DP-AI for patients treated with RT and (2) a survey of experts using a modified Delphi method, addressing the current role of DP-AI in clinical and research practice to identify relevant fields of future development. Eleven studies investigated DP-AI in PCa RT, with most using the multimodal AI (MMAI) classifier and four ongoing studies are currently prospectively testing the DP-AI performance. DP-AI showed strong prognostic and predictive performance for endpoints like distant metastasis free survival and overall survival, outperforming traditional risk models and assisting treatment decisions such as androgen deprivation therapy (ADT) duration. Fifty-one and 35 experts responded to round 1 and round 2 of the survey respectively. Questions with ≥75 % agreement were considered relevant and included in the qualitative analysis. Survey results confirmed growing adoption of DP scanners, although regional differences in re-imbursement mechanisms and availability persist, with experts endorsing DP-AI's potential across localized, postoperative, and metastatic settings, though further prospective validation is needed. DP-AI tools show strong prognostic and predictive potential in various PCa by guiding patient stratification and optimising ADT duration in primary RT. Prospective studies and validation in cohorts using modern diagnostic and treatment methods are needed before broad clinical adoption.

OriginalspracheEnglisch
Aufsatznummer111039
ZeitschriftRadiotherapy and Oncology
Jahrgang210
ISSN0167-8140
DOIs
PublikationsstatusVeröffentlicht - 09.2025

Fördermittel

This work is part of the Agora3.0 project (STRATEGIC INFRASTRUCTURES/1222) funded by the Cypriot research and Innovation Foundation as part of the EU framework of the Cohesion Policy Programme “THALIA 2021–2027”.

TrägerTrägernummer
Foundation for Biomedical Research and Innovation at Kobe

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    Dieser Output leistet einen Beitrag zu folgendem(n) Ziel(en) für nachhaltige Entwicklung

    1. SDG 3 – Gesundheit und Wohlergehen
      SDG 3 – Gesundheit und Wohlergehen

    DFG-Fachsystematik

    • 2.22-33 Nuklearmedizin, Strahlentherapie, Strahlenbiologie

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