Non-contrast computed tomography (NCCT) is commonly acquired for lung cancer screening, assessment of general abdominal pain or suspected renal stones, trauma evaluation, and many other indications. However, the absence of contrast limits distinguishing organ in-between boundaries. In this paper, we propose a novel unsupervised approach that leverages pairwise contrast-enhanced CT (CECT) context to compute non-contrast segmentation without ground-truth label. Unlike generative adversarial approaches, we compute the pairwise morphological context with CECT to provide teacher guidance instead of generating fake anatomical context. Additionally, we further augment the intensity correlations in 'organ-specific' settings and increase the sensitivity to organ-aware boundary. We validate our approach on multi-organ segmentation with paired non-contrast & contrast-enhanced CT scans using five-fold cross-validation. Full external validations are performed on an independent non-contrast cohort for aorta segmentation. Compared with current abdominal organs segmentation state-of-the-art in fully supervised setting, our proposed pipeline achieves a significantly higher Dice by 3.98% (internal multi-organ annotated), and 8.00% (external aorta annotated) for abdominal organs segmentation. The code and pretrained models are publicly available at https://github.com/MASILab/ContrastMix.
翻译:常规肺癌筛查、一般腹痛或疑似肾结石评估、创伤评估和其他许多迹象通常都使用非 contrastrast 计算断层法(NCCT) 进行肺癌筛查、普通腹痛或疑似肾结石评估、创伤评估、以及许多其他迹象。然而,在边界之间没有对比性限制,因此没有对比性限制。在本文中,我们建议采用新的、不受监督的方法,在无地面分层标签的情况下,利用对比性增强的CT(CECT)来计算非 contratrastrat 分层。与基因对立的对抗方法不同,我们与CECT的配对式形态环境进行计算,以提供教师指导,而不是产生假的解剖环境。此外,我们进一步加强了“特定机体”环境中的强度相关性,提高了对器官觉界的敏感度。我们用配对非 contract- 增强的CT (CECT) 来使用五倍的交叉校正校正的内断层扫描。我们用一个独立的非 contrastrat- contrastrict 组进行全面验证。