RT-SRTS: Angle-agnostic real-time simultaneous 3D reconstruction and tumor segmentation from single X-ray projection

Radiotherapy is one of the primary treatment methods for tumors, but the organ movement caused by respiration limits its accuracy. Recently, 3D imaging from a single X-ray projection has received extensive attention as a promising approach to address this issue. However, current methods can only rec...

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Veröffentlicht in:Computers in biology and medicine 2024-05, Vol.173, p.108390-108390, Article 108390
Hauptverfasser: Zhu, Miao, Fu, Qiming, Liu, Bo, Zhang, Mengxi, Li, Bojian, Luo, Xiaoyan, Zhou, Fugen
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Sprache:eng
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Zusammenfassung:Radiotherapy is one of the primary treatment methods for tumors, but the organ movement caused by respiration limits its accuracy. Recently, 3D imaging from a single X-ray projection has received extensive attention as a promising approach to address this issue. However, current methods can only reconstruct 3D images without directly locating the tumor and are only validated for fixed-angle imaging, which fails to fully meet the requirements of motion control in radiotherapy. In this study, a novel imaging method RT-SRTS is proposed which integrates 3D imaging and tumor segmentation into one network based on multi-task learning (MTL) and achieves real-time simultaneous 3D reconstruction and tumor segmentation from a single X-ray projection at any angle. Furthermore, the attention enhanced calibrator (AEC) and uncertain-region elaboration (URE) modules have been proposed to aid feature extraction and improve segmentation accuracy. The proposed method was evaluated on fifteen patient cases and compared with three state-of-the-art methods. It not only delivers superior 3D reconstruction but also demonstrates commendable tumor segmentation results. Simultaneous reconstruction and segmentation can be completed in approximately 70 ms, significantly faster than the required time threshold for real-time tumor tracking. The efficacies of both AEC and URE have also been validated in ablation studies. The code of work is available at https://github.com/ZywooSimple/RT-SRTS. •Pioneering real-time 3D CT reconstruction and tumor segmentation for lung VMAT.•Introducing a dual-branch CNN model with multi-task learning loss.•Enhancing precision in 3D reconstruction and tumor segmentation with AEC and URE modules.•Outperforming three methods while achieving simultaneous tumor segmentation.
ISSN:0010-4825
1879-0534
DOI:10.1016/j.compbiomed.2024.108390