Vienna, Austria

ESTRO 2023

Session Item

Saturday
May 13
08:45 - 10:00
Lehar 1-3
Full speed towards automatic radiotherapy - How to commission and implement these new tools
Charlotte Brouwer, The Netherlands;
Coen Hurkmans, The Netherlands
1130
Symposium
Physics
09:00 - 09:15
Deep learning for segmentation and treatment planning for breast cancer patients
Coen Hurkmans, The Netherlands
SP-0034

Abstract

Deep learning for segmentation and treatment planning for breast cancer patients
Authors:

Coen Hurkmans1

1Catharina Hospital Eindhoven, Radiation Oncology, Eindhoven, The Netherlands

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Abstract Text

In this presentation the practical clinical implementation of deep learning (DL) based segmentation and planning for breast cancer treatment planning will be discussed. It will include all steps that one would need to take to use DL in clinical practice: pre-clinical training, evaluation and testing when building your own model or testing of a commercial model.  Setting standards for comparisons with your own clinical data, both quantitatively and qualitatively, which includes e.g., DVH criteria, possible time gains, fraction of plans or segmentations that still need to be adjusted etc. Documentation for commissioning and the Medical Device Regulations, education and monitoring during clinical use. The changing roles of radiation oncologists, RTT and medical physicists will also be discussed.