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切片插补:各向异性 3D 医学图像分割的多个中间切片插值。

Slice imputation: Multiple intermediate slices interpolation for anisotropic 3D medical image segmentation.

机构信息

School of Computer Science and Engineering, South China University of Technology, Guangzhou, China.

School of Computer Science and Engineering, South China University of Technology, Guangzhou, China.

出版信息

Comput Biol Med. 2022 Aug;147:105667. doi: 10.1016/j.compbiomed.2022.105667. Epub 2022 May 31.

DOI:10.1016/j.compbiomed.2022.105667
PMID:35696751
Abstract

We introduce a novel frame-interpolation-based method for slice imputation to improve segmentation accuracy for anisotropic 3D medical images, in which the number of slices and their corresponding segmentation labels can be increased between two consecutive slices in anisotropic 3D medical volumes. Unlike previous inter-slice imputation methods, which only focus on the smoothness in the axial direction, this study aims to improve the smoothness of the interpolated 3D medical volumes in all three directions: axial, sagittal, and coronal. The proposed multitask inter-slice imputation method, in particular, incorporates a smoothness loss function to evaluate the smoothness of the interpolated 3D medical volumes in the through-plane direction (sagittal and coronal). It not only improves the resolution of the interpolated 3D medical volumes in the through-plane direction but also transforms them into isotropic representations, which leads to better segmentation performances. Experiments on whole tumor segmentation in the brain, liver tumor segmentation, and prostate segmentation indicate that our method outperforms the competing slice imputation methods on both computed tomography (1% Dice improvement for CT liver tumor segmentation) and magnetic resonance images volumes (over 2% Dice improvement for MRI prostate segmentation) in most cases.

摘要

我们介绍了一种基于帧插值的新方法,用于切片插补,以提高各向异性 3D 医学图像的分割准确性,在该方法中,可以在各向异性 3D 医学体数据的两个连续切片之间增加切片数量及其相应的分割标签。与以前仅关注轴向平滑度的切片插补方法不同,本研究旨在提高插补的 3D 医学体数据在所有三个方向(轴向、矢状和冠状)的平滑度。所提出的多任务切片插补方法,特别是,包含了一个平滑度损失函数,以评估插补的 3D 医学体数据在贯穿平面方向(矢状和冠状)上的平滑度。它不仅提高了插补的 3D 医学体数据在贯穿平面方向上的分辨率,而且将它们转换为各向同性表示,从而提高了分割性能。在脑部全肿瘤分割、肝脏肿瘤分割和前列腺分割实验中,我们的方法在大多数情况下都优于竞争的切片插补方法,在计算断层扫描(CT 肝脏肿瘤分割提高 1%的 Dice 得分)和磁共振成像(MRI 前列腺分割提高 2%以上的 Dice 得分)上都有更好的表现。

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