Volumetric reconstruction of fetal brains from multiple stacks of MR slices, acquired in the presence of almost unpredictable and often severe subject motion, is a challenging task that is highly sensitive to the initialization of slice-to-volume transformations. We propose a novel slice-to-volume registration method using Transformers trained on synthetically transformed data, which model multiple stacks of MR slices as a sequence. With the attention mechanism, our model automatically detects the relevance between slices and predicts the transformation of one slice using information from other slices. We also estimate the underlying 3D volume to assist slice-to-volume registration and update the volume and transformations alternately to improve accuracy. Results on synthetic data show that our method achieves lower registration error and better reconstruction quality compared with existing state-of-the-art methods. Experiments with real-world MRI data are also performed to demonstrate the ability of the proposed model to improve the quality of 3D reconstruction under severe fetal motion.
翻译:在几乎无法预测而且往往严重的主题运动下,从多堆MR切片中获取的胎儿大脑的体积重建是一个具有挑战性的任务,对切片到体积转换的初始化具有高度敏感性。我们提议使用经过合成转化数据培训的变异器进行新的切片到体积登记方法,该变异器将多堆MR切片作为模型的序列。通过关注机制,我们的模型自动检测切片之间的关联性,并利用其他切片中的信息预测切片的变异。我们还估算了3D基本体积,以协助切片到体积的登记,并更新其体积和变异,以提高准确性。合成数据结果显示,我们的方法比现有最先进方法的登记错误要小,重建质量要更好。与现实世界的MRI数据进行实验,也展示了拟议模型在严重胎儿运动下提高3D重建质量的能力。