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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Image synthesis-based multi-modal image registration framework by using deep fully convolutional networks
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Image synthesis-based multi-modal image registration framework by using deep fully convolutional networks

机译:基于图像的基于图像的多模态图像登记框架通过使用深度完全卷积网络

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摘要

Multi-modal image registration has significant meanings in clinical diagnosis, treatment planning, and image-guided surgery. Since different modalities exhibit different characteristics, finding a fast and accurate correspondence between images of different modalities is still a challenge. In this paper, we propose an image synthesis-based multi-modal registration framework. Image synthesis is performed by a ten-layer fully convolutional network (FCN). The network is composed of 10 convolutional layers combined with batch normalization (BN) and rectified linear unit (ReLU), which can be trained to learn an end-to-end mapping from one modality to the other. After the cross-modality image synthesis, multi-modal registration can be transformed into mono-modal registration. The mono-modal registration can be solved by methods with lower computational complexity, such as sum of squared differences (SSD). We tested our method in T1-weighted vs T2-weighted, T1-weighted vs PD, and T2-weighted vs PD image registrations with BrainWeb phantom data and IXI real patients' data. The result shows that our framework can achieve higher registration accuracy than the state-of-the-art multi-modal image registration methods, such as local mutual information (LMI) and alpha-mutual information (alpha-MI). The average registration errors of our method in experiment with IXI real patients' data were 1.19, 2.23, and 1.57 compared to 1.53, 2.60, and 2.36 of LMI and 1.34, 2.39, and 1.76 of alpha-MI in T2-weighted vs PD, T1-weighted vs PD, and T1-weighted vs T2-weighted image registration, respectively. In this paper, we propose an image synthesis-based multi-modal image registration framework. A deep FCN model is developed to perform image synthesis for this framework, which can capture the complex nonlinear relationship between different modalities and discover complex structural representations automatically by a large number of trainable mapping and parameters and perform accurate image synthesis. The framework combined with the deep FCN model and mono-modal registration methods (SSD) can achieve fast and robust results in multi-modal medical image registration.
机译:多模态图像配准在临床诊断,治疗计划和图像引导手术中具有重要意义。由于不同的方式表现出不同的特征,因此在不同方式的图像之间找到快速准确的对应仍然是一个挑战。在本文中,我们提出了一种基于图像综合的多模态登记框架。图像合成由十层完全卷积网络(FCN)执行。该网络由10个卷积层组成,与批量归一化(BN)和整流的线性单元(Relu)组成,可以训练,以便从一个模态到另一个模型学习端到端映射。在跨型号图像合成之后,可以将多模态注册转换为单模态注册。可以通过较低的计算复杂度的方法解决单模态注册,例如平方差异(SSD)的总和。我们在T1加权VS T2加权,T1加权VS PD中测试了我们的方法,以及具有脑力幻像数据和IXI真实患者数据的T2加权VS PD图像注册。结果表明,我们的框架可以实现比最先进的多模态图像配准方法更高的登记精度,例如局部互信息(LMI)和α - 互信息(Alpha-MI)。在IXI真实患者数据的实验中,我们的方法的平均注册误差为1.19,2.23和1.57,而LMI的1.53,2.60和2.36,T2加权VS PD中的1.34,2.39和1.76, T1加权VS PD和T1加权VS T2加权图像配准。在本文中,我们提出了一种基于图像综合的多模态图像配准框架。开发了一个深fcn模型以对该框架进行图像合成,这可以通过大量的培训映射和参数自动捕获不同方式之间的复杂结构表示,并执行精确的图像合成。该框架与深FCN模型和单模态注册方法(SSD)相结合,可以在多模态医学图像配准中实现快速和强大的结果。

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