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An Optimized Registration Method Based on Distribution Similarity and DVF Smoothness for 3D PET and CT Images

机译:基于3D PET和CT图像的分布式相似性和DVF平滑度的优化注册方法

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A fusion image combining both anatomical and functional information obtained by registering medical images of two different modalities, Positron Emission Tomography (PET) and Computed Tomography (CT), is of great significance for medical image analysis and diagnosis. Medical image registration relies on similarity measure which is low between PET/CT image voxels and therefore PET/CT registration is a challenging task. To address this issue, this paper presents an unsupervised end-to-end method, DenseRegNet, for deformable 3D PET/CT image registration. The method consists of two stages: (1) predicting 3D displacement vector field (DVF); and (2) registering 3D image. In the 3D DVF prediction stage, a two-level similarity measure together with a deformation regularization is proposed as loss function to optimize network training.In the image registration stage, a resampler and a spatial transformer are utilized to obtain the registration results. In this paper, 663 pairs of Uptake Value (SUV) and Hounsfield Unit (Hu) patches of 106 patients, 227 pairs of SUV and Hu patches of 35 patients and 259 pairs of SUV and Hu patches of 35 patients are randomly selected as training, validation and test set, respectively. Normalized cross correlation (NCC), intersection over union (IoU) of liver bounding box and euclidean distance (ED) on landmark points are used to evaluate the registration results. Experiment results show that the proposed method, DenseRegNet, achieves the best results in terms of liver bounding box IoU and ED, and the second highest value of NCC. For a trained model, given a new pair of PET/CT images, the registration result can be obtained with only one forward calculation within 10 seconds. Through qualitative and quantitative analyses, we demonstrate that, compared with other deep learning registration models, the proposed DenseRegNet achieves improved results in the challenging deformable PET/CT registration task.
机译:结合通过注册两种不同方式,正电子发射断层扫描(PET)和计算机断层扫描(CT)的医学图像获得的解剖学和功能信息的融合图像对医学图像分析和诊断具有重要意义。医学图像登记依赖于PET / CT图像体素之间的相似性度量,因此PET / CT注册是一个具有挑战性的任务。为了解决这个问题,本文提出了一种无监督的端到端方法DenseRegNet,可用于可变形的3D PET / CT图像配准。该方法包括两个阶段:(1)预测3D位移矢量字段(DVF);和(2)注册3D图像。在3D DVF预测阶段,提出了一种与变形正则化的两级相似度测量作为优化网络训练的损耗功能。在图像登记阶段,使用重试器和空间变压器来获得注册结果。在本文中,663对摄取值(SUV)和Hounsfield单位(Hu)斑块106例,35名患者的227对患者和259对患者的SUV和Hu斑块35名患者的果酱是随机选择的培训,分别验证和测试集。肝边界盒和欧几里德距离(ED)的归一化交叉相关(NCC),联盟(IOU)的交叉点用于评估登记结果。实验结果表明,该方法DenseRegNet,达到肝边界盒IOO和ED的最佳结果,以及NCC的第二个最高值。对于培训的模型,给定新的PET / CT图像,可以在10秒内仅在一个正向计算中获得登记结果。通过定性和定量分析,我们证明,与其他深度学习登记模型相比,建议的DenseRegnet实现了挑战可变形PET / CT注册任务的改进导致结果。

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