Model-based reconstruction employing the time separation technique (TST) was found to improve dynamic perfusion imaging of the liver using C-arm cone-beam computed tomography (CBCT). To apply TST using prior knowledge extracted from CT perfusion data, the liver should be accurately segmented from the CT scans. Reconstructions of primary and model-based CBCT data need to be segmented for proper visualisation and interpretation of perfusion maps. This research proposes Turbolift learning, which trains a modified version of the multi-scale Attention UNet on different liver segmentation tasks serially, following the order of the trainings CT, CBCT, CBCT TST - making the previous trainings act as pre-training stages for the subsequent ones - addressing the problem of limited number of datasets for training. For the final task of liver segmentation from CBCT TST, the proposed method achieved an overall Dice scores of 0.874$\pm$0.031 and 0.905$\pm$0.007 in 6-fold and 4-fold cross-validation experiments, respectively - securing statistically significant improvements over the model, which was trained only for that task. Experiments revealed that Turbolift not only improves the overall performance of the model but also makes it robust against artefacts originating from the embolisation materials and truncation artefacts. Additionally, in-depth analyses confirmed the order of the segmentation tasks. This paper shows the potential of segmenting the liver from CT, CBCT, and CBCT TST, learning from the available limited training data, which can possibly be used in the future for the visualisation and evaluation of the perfusion maps for the treatment evaluation of liver diseases.
翻译:利用时间分离技术(TST)进行基于模型的重建发现,用C-arm conne-beam计算透析法(CBCT)改进肝脏的动态肝脏透析成像。利用从CT渗透数据中提取的先前知识应用TST,肝脏应准确地从CT扫描中分离出来。对初级和基于模型的CBCT数据的重建需要分割,以便正确视觉化和解释渗入图。这项研究建议Turbolift学习,在CCT、CBCT、CBCT、CBCT TST等培训的顺序下,对不同肝脏分离任务进行修改版的多级关注Uet。应用TST -- -- 使以前的培训成为以后的训练前阶段 -- -- 解决用于培训的数据集数量有限的问题。 关于肝脏分离的最后任务,CBBCTT、建议的方法在6倍和4倍的肝脏分离任务中,对多级注意UTCT的值 Unc 进行修改版的UNI Un