时间分离技术在动态灌注扫描重建时间分辨c臂CT体积中的肝脏分割

S. Chatterjee, Hana Haselji'c, R. Frysch, V. Kulvait, V. Semshchikov, B. Hensen, F. Wacker, Inga Brüsch, T. Werncke, O. Speck, A. Nürnberger, G. Rose
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引用次数: 0

摘要

灌注显像是肝脏肿瘤诊断和治疗规划的重要工具。时间分离技术(TST)已成功地用于模拟c臂锥束计算机断层扫描(CBCT)灌注数据。重建可以伴随着肝脏的分割-为了更好的可视化和生成全面的灌注图。最近引入的Turbolift学习在TST重建中表现良好,但尚未对TST重建中估计的时间分辨体积(TRV)进行探索。trv的分割可用于跟踪肝脏随时间的运动。本研究通过在trv上训练Turbolift学习的第三阶段的多尺度注意力UNet来探索这种可能性,并显示了Turbolift学习的鲁棒性,因为它甚至可以有效地与trv一起工作,导致Dice得分为0.864\pm 0.004$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Liver Segmentation in Time-resolved C-arm CT Volumes Reconstructed from Dynamic Perfusion Scans using Time Separation Technique
Perfusion imaging is a valuable tool for diagnosing and treatment planning for liver tumours. The time separation technique (TST) has been successfully used for modelling C-arm cone-beam computed tomography (CBCT) perfusion data. The reconstruction can be accompanied by the segmentation of the liver - for better visualisation and for generating comprehensive perfusion maps. Recently introduced Turbolift learning has been seen to perform well while working with TST reconstructions, but has not been explored for the time-resolved volumes (TRV) estimated out of TST reconstructions. The segmentation of the TRVs can be useful for tracking the movement of the liver over time. This research explores this possibility by training the multi-scale attention UNet of Turbolift learning at its third stage on the TRVs and shows the robustness of Turbolift learning since it can even work efficiently with the TRVs, resulting in a Dice score of $0.864\pm 0.004$.
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