Marschner S, Datarb M, Gaasch A, Xu Z, Grbic S, Chabin G, Geiger B, Rosenman J, Corradini S, Niyazi M, Heimann T, Möhler C, Vega F, Belka C, Thieke C (2022)
Publication Type: Journal article
Publication year: 2022
Book Volume: 17
Article Number: 129
Journal Issue: 1
DOI: 10.1186/s13014-022-02102-6
Background: We describe and evaluate a deep network algorithm which automatically contours organs at risk in the thorax and pelvis on computed tomography (CT) images for radiation treatment planning. Methods: The algorithm identifies the region of interest (ROI) automatically by detecting anatomical landmarks around the specific organs using a deep reinforcement learning technique. The segmentation is restricted to this ROI and performed by a deep image-to-image network (DI2IN) based on a convolutional encoder-decoder architecture combined with multi-level feature concatenation. The algorithm is commercially available in the medical products “syngo.via RT Image Suite VB50” and “AI-Rad Companion Organs RT VA20” (Siemens Healthineers). For evaluation, thoracic CT images of 237 patients and pelvic CT images of 102 patients were manually contoured following the Radiation Therapy Oncology Group (RTOG) guidelines and compared to the DI2IN results using metrics for volume, overlap and distance, e.g., Dice Similarity Coefficient (DSC) and Hausdorff Distance (HD
APA:
Marschner, S., Datarb, M., Gaasch, A., Xu, Z., Grbic, S., Chabin, G.,... Thieke, C. (2022). A deep image-to-image network organ segmentation algorithm for radiation treatment planning: principles and evaluation. Radiation Oncology, 17(1). https://doi.org/10.1186/s13014-022-02102-6
MLA:
Marschner, Sebastian, et al. "A deep image-to-image network organ segmentation algorithm for radiation treatment planning: principles and evaluation." Radiation Oncology 17.1 (2022).
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