Brain midline shift (MLS) is one of the most critical factors to be considered for clinical diagnosis and treatment decision-making for intracranial hemorrhage. Existing computational methods on MLS quantification not only require intensive labeling in millimeter-level measurement but also suffer from poor performance due to their dependence on specific landmarks or simplified anatomical assumptions. In this paper, we propose a novel semi-supervised framework to accurately measure the scale of MLS from head CT scans. We formulate the MLS measurement task as a deformation estimation problem and solve it using a few MLS slices with sparse labels. Meanwhile, with the help of diffusion models, we are able to use a great number of unlabeled MLS data and 2793 non-MLS cases for representation learning and regularization. The extracted representation reflects how the image is different from a non-MLS image and regularization serves an important role in the sparse-to-dense refinement of the deformation field. Our experiment on a real clinical brain hemorrhage dataset has achieved state-of-the-art performance and can generate interpretable deformation fields.
翻译:大脑中流变化(MLS)是临床诊断和治疗临床诊断和治疗诊断中出血方面考虑的最关键因素之一。关于MLS量化的现有计算方法不仅要求在毫米级测量中加密集标签,而且由于依赖特定标志或简化解剖假设,业绩不佳。在本文件中,我们提出了一个新的半监督框架,以准确测量脑部CT扫描中MLS的规模。我们将MLS测量任务设计成一个变形估计问题,使用少数标签的MLS切片解决这个问题。与此同时,在推广模型的帮助下,我们能够使用大量未贴标签的MLS数据和2793个非MLS案例进行代言学习和正规化。提取的表述反映了该图像与非MLS图像和正规化有何不同,在变形场的微小至感知的完善中发挥了重要作用。我们在真正的临床脑出血数据集上进行了实验,取得了最先进的性能,并能够产生可解释的变形领域。