Inter-patient abdominal registration has various applications, from pharmakinematic studies to anatomy modeling. Yet, it remains a challenging application due to the morphological heterogeneity and variability of the human abdomen. Among the various registration methods proposed for this task, probabilistic displacement registration models estimate displacement distribution for a subset of points by comparing feature vectors of points from the two images. These probabilistic models are informative and robust while allowing large displacements by design. As the displacement distributions are typically estimated on a subset of points (which we refer to as driving points), due to computational requirements, we propose in this work to learn a driving points predictor. Compared to previously proposed methods, the driving points predictor is optimized in an end-to-end fashion to infer driving points tailored for a specific registration pipeline. We evaluate the impact of our contribution on two different datasets corresponding to different modalities. Specifically, we compared the performances of 6 different probabilistic displacement registration models when using a driving points predictor or one of 2 other standard driving points selection methods. The proposed method improved performances in 11 out of 12 experiments.
翻译:从药理学研究到解剖模型,住院间腹部登记有各种应用,从药理学研究到解剖模型。然而,由于人类腹部的形态异质和变异性,它仍然是一个具有挑战性的应用。在为这项任务提出的各种登记方法中,概率迁移登记模型通过比较两个图像中点的特性矢量来估计一组点的迁移分布。这些概率模型既信息丰富又可靠,同时允许设计导致大量迁移。由于计算要求,流离失所分布通常在一组点(我们称之为驾驶点)上估计,因此我们建议在本项工作中学习一个驾驶点预测器。与以前提议的方法相比,驱动点预测器以端对端的方式优化,以推算适合特定登记管道的驱动点。我们评估我们对两种不同模式不同数据集的贡献的影响。具体地说,我们比较了使用一个驱动点预测器或其他两个标准驾驶点选择方法之一时的6种不同概率迁移登记模型的性能。拟议方法改进了11个试验的性能。