Safety and efficiency of a fully automatic workflow for auto-segmentation in radiotherapy using three commercially available deep learning-based applications

Advancements in radiotherapy auto-segmentation necessitate reliable and efficient workflows. Therefore, a standardized fully automatic workflow was developed for three commercially available deep learning-based auto-segmentation applications and compared to a manual workflow for safety and efficienc...

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Veröffentlicht in:PHYSICS & IMAGING IN RADIATION ONCOLOGY 2024-07, Vol.31
Hauptverfasser: Cavus, Hasan, Bulens, Philippe, Tournel, Koen, Orlandini, Marc, Jankelevitch, Alexandra, Crijns, Wouter, Reniers, Brigitte
Format: Artikel
Sprache:eng
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Zusammenfassung:Advancements in radiotherapy auto-segmentation necessitate reliable and efficient workflows. Therefore, a standardized fully automatic workflow was developed for three commercially available deep learning-based auto-segmentation applications and compared to a manual workflow for safety and efficiency. The workflow underwent safety evaluation with failure mode and effects analysis. Notably, eight failure modes were reduced, including seven with severity factors ≥7, indicating the effect on patients, and two with Risk Priority Number value >125, which assesses relative risk level. Efficiency, measured by mouse clicks, showed zero clicks with the automatic workflow. This automation illustrated improvement in both safety and efficiency of workflow.
ISSN:2405-6316
2405-6316