Deep learning for autosegmentation for radiotherapy treatment planning: State-of-the-art and novel perspectives
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Published:2024-08-06
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ISSN:0179-7158
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Container-title:Strahlentherapie und Onkologie
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language:en
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Short-container-title:Strahlenther Onkol
Author:
Erdur Ayhan CanORCID, Rusche Daniel, Scholz Daniel, Kiechle Johannes, Fischer Stefan, Llorián-Salvador Óscar, Buchner Josef A., Nguyen Mai Q., Etzel Lucas, Weidner Jonas, Metz Marie-Christin, Wiestler Benedikt, Schnabel Julia, Rueckert Daniel, Combs Stephanie E., Peeken Jan C.
Abstract
AbstractThe rapid development of artificial intelligence (AI) has gained importance, with many tools already entering our daily lives. The medical field of radiation oncology is also subject to this development, with AI entering all steps of the patient journey. In this review article, we summarize contemporary AI techniques and explore the clinical applications of AI-based automated segmentation models in radiotherapy planning, focusing on delineation of organs at risk (OARs), the gross tumor volume (GTV), and the clinical target volume (CTV). Emphasizing the need for precise and individualized plans, we review various commercial and freeware segmentation tools and also state-of-the-art approaches. Through our own findings and based on the literature, we demonstrate improved efficiency and consistency as well as time savings in different clinical scenarios. Despite challenges in clinical implementation such as domain shifts, the potential benefits for personalized treatment planning are substantial. The integration of mathematical tumor growth models and AI-based tumor detection further enhances the possibilities for refining target volumes. As advancements continue, the prospect of one-stop-shop segmentation and radiotherapy planning represents an exciting frontier in radiotherapy, potentially enabling fast treatment with enhanced precision and individualization.
Funder
Technische Universität München
Publisher
Springer Science and Business Media LLC
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