Two key questions in cardiac image analysis are to assess the anatomy and motion of the heart from images; and to understand how they are associated with non-imaging clinical factors such as gender, age and diseases. While the first question can often be addressed by image segmentation and motion tracking algorithms, our capability to model and to answer the second question is still limited. In this work, we propose a novel conditional generative model to describe the 4D spatio-temporal anatomy of the heart and its interaction with non-imaging clinical factors. The clinical factors are integrated as the conditions of the generative modelling, which allows us to investigate how these factors influence the cardiac anatomy. We evaluate the model performance in mainly two tasks, anatomical sequence completion and sequence generation. The model achieves a high performance in anatomical sequence completion, comparable to or outperforming other state-of-the-art generative models. In terms of sequence generation, given clinical conditions, the model can generate realistic synthetic 4D sequential anatomies that share similar distributions with the real data.
翻译:心脏图像分析的两个关键问题是评估图像中的心脏的解剖和运动;了解它们如何与性别、年龄和疾病等非成形临床因素相关;第一个问题往往可以通过图像分解和运动跟踪算法来解决,但我们的模型和回答第二个问题的能力仍然有限。在这项工作中,我们提出了一个新的有条件的基因化模型,描述心脏的4D时空解剖及其与非成形临床因素的相互作用。临床因素作为基因建模的条件被整合在一起,从而使我们能够调查这些因素如何影响心脏解剖。我们评估模型的性能主要有两个任务,即解剖序列完成和序列生成。模型在解剖序列完成方面达到高性能,可以与其他最先进的基因化模型相近或超过性能。在序列生成方面,根据临床条件,模型可以产生符合现实的合成4D序列解剖,与真实数据相类似分布。