Multiscale unsupervised network for deformable image registration.

IF 1.7 3区 医学 Q3 INSTRUMENTS & INSTRUMENTATION
Yun Wang, Wanru Chang, Chongfei Huang, Dexing Kong
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引用次数: 0

Abstract

Background: Deformable image registration (DIR) plays an important part in many clinical tasks, and deep learning has made significant progress in DIR over the past few years.

Objective: To propose a fast multiscale unsupervised deformable image registration (referred to as FMIRNet) method for monomodal image registration.

Methods: We designed a multiscale fusion module to estimate the large displacement field by combining and refining the deformation fields of three scales. The spatial attention mechanism was employed in our fusion module to weight the displacement field pixel by pixel. Except mean square error (MSE), we additionally added structural similarity (ssim) measure during the training phase to enhance the structural consistency between the deformed images and the fixed images.

Results: Our registration method was evaluated on EchoNet, CHAOS and SLIVER, and had indeed performance improvement in terms of SSIM, NCC and NMI scores. Furthermore, we integrated the FMIRNet into the segmentation network (FCN, UNet) to boost the segmentation task on a dataset with few manual annotations in our joint leaning frameworks. The experimental results indicated that the joint segmentation methods had performance improvement in terms of Dice, HD and ASSD scores.

Conclusions: Our proposed FMIRNet is effective for large deformation estimation, and its registration capability is generalizable and robust in joint registration and segmentation frameworks to generate reliable labels for training segmentation tasks.

用于可变形图像配准的多尺度无监督网络
背景:可变形图像配准(DIR)在许多临床任务中发挥着重要作用:可变形图像配准(DIR)在许多临床任务中发挥着重要作用,过去几年深度学习在DIR领域取得了重大进展:提出一种用于单模态图像配准的快速多尺度无监督变形图像配准方法(简称 FMIRNet):方法:我们设计了一个多尺度融合模块,通过组合和细化三个尺度的变形场来估计大位移场。我们的融合模块采用了空间注意机制,逐像素对位移场进行加权。除了均方误差(MSE),我们还在训练阶段增加了结构相似度(ssim)测量,以增强变形图像与固定图像之间的结构一致性:结果:我们的配准方法在 EchoNet、CHAOS 和 SLIVER 上进行了评估,在 SSIM、NCC 和 NMI 分数方面的性能确实有所提高。此外,我们还将 FMIRNet 集成到了分割网络(FCN、UNet)中,以提高联合精益框架中人工标注较少的数据集的分割任务。实验结果表明,在 Dice、HD 和 ASSD 分数方面,联合分割方法的性能有所提高:我们提出的 FMIRNet 对大变形估计非常有效,其注册能力在联合注册和分割框架中具有通用性和鲁棒性,可为训练分割任务生成可靠的标签。
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来源期刊
CiteScore
4.90
自引率
23.30%
发文量
150
审稿时长
3 months
期刊介绍: Research areas within the scope of the journal include: Interaction of x-rays with matter: x-ray phenomena, biological effects of radiation, radiation safety and optical constants X-ray sources: x-rays from synchrotrons, x-ray lasers, plasmas, and other sources, conventional or unconventional Optical elements: grazing incidence optics, multilayer mirrors, zone plates, gratings, other diffraction optics Optical instruments: interferometers, spectrometers, microscopes, telescopes, microprobes
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