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A joint ESTRO and AAPM guideline for development, clinical validation and reporting of artificial intelligence models in radiation therapy
71
Zitationen
18
Autoren
2024
Jahr
Abstract
BACKGROUND AND PURPOSE: Artificial Intelligence (AI) models in radiation therapy are being developed with increasing pace. Despite this, the radiation therapy community has not widely adopted these models in clinical practice. A cohesive guideline on how to develop, report and clinically validate AI algorithms might help bridge this gap. METHODS AND MATERIALS: A Delphi process with all co-authors was followed to determine which topics should be addressed in this comprehensive guideline. Separate sections of the guideline, including Statements, were written by subgroups of the authors and discussed with the whole group at several meetings. Statements were formulated and scored as highly recommended or recommended. RESULTS: The following topics were found most relevant: Decision making, image analysis, volume segmentation, treatment planning, patient specific quality assurance of treatment delivery, adaptive treatment, outcome prediction, training, validation and testing of AI model parameters, model availability for others to verify, model quality assurance/updates and upgrades, ethics. Key references were given together with an outlook on current hurdles and possibilities to overcome these. 19 Statements were formulated. CONCLUSION: A cohesive guideline has been written which addresses main topics regarding AI in radiation therapy. It will help to guide development, as well as transparent and consistent reporting and validation of new AI tools and facilitate adoption.
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Autoren
Institutionen
- Radboud University Nijmegen(NL)
- Catharina Ziekenhuis(NL)
- Eindhoven University of Technology(NL)
- Hôpital Européen Georges-Pompidou(FR)
- The University of Texas MD Anderson Cancer Center(US)
- Maastricht University Medical Centre(NL)
- Maastro Clinic(NL)
- University of California, San Francisco(US)
- University of Milan(IT)
- Istituti di Ricovero e Cura a Carattere Scientifico(IT)
- European Institute of Oncology(IT)
- Aarhus University(DK)
- Aarhus University Hospital(DK)
- German Cancer Research Center(DE)
- LMU Klinikum(DE)
- Deutschen Konsortium für Translationale Krebsforschung(DE)
- Ludwig-Maximilians-Universität München(DE)
- Universität Hamburg(DE)
- University Medical Center Hamburg-Eppendorf(DE)
- University of Michigan(US)
- University of Manchester(GB)
- Cancer Research UK Manchester Institute(GB)
- Portuguese Army(PT)
- Moffitt Cancer Center(US)
- University Health Network(CA)
- University of Toronto(CA)
- Princess Margaret Cancer Centre(CA)
- Università Cattolica del Sacro Cuore(IT)
- Agostino Gemelli University Polyclinic(IT)