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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >STRAINet: Spatially Varying sTochastic Residual AdversarIal Networks for MRI Pelvic Organ Segmentation
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STRAINet: Spatially Varying sTochastic Residual AdversarIal Networks for MRI Pelvic Organ Segmentation

机译:STRAINet:用于MRI骨盆器官分割的空间变化的随机残差对抗网络

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摘要

Accurate segmentation of pelvic organs is important for prostate radiation therapy. Modern radiation therapy starts to use a magnetic resonance image (MRI) as an alternative to computed tomography image because of its superior soft tissue contrast and also free of risk from radiation exposure. However, segmentation of pelvic organs from MRI is a challenging problem due to inconsistent organ appearance across patients and also large intrapatient anatomical variations across treatment days. To address such challenges, we propose a novel deep network architecture, called "Spatially varying sTochastic Residual AdversarIal Network" (STRAINet), to delineate pelvic organs from MRI in an end-to-end fashion. Compared to the traditional fully convolutional networks (FCN), the proposed architecture has two main contributions: 1) inspired by the recent success of residual learning, we propose an evolutionary version of the residual unit, i.e., stochastic residual unit, and use it to the plain convolutional layers in the FCN. We further propose long-range stochastic residual connections to pass features from shallow layers to deep layers; and 2) we propose to integrate three previously proposed network strategies to form a new network for better medical image segmentation: a) we apply dilated convolution in the smallest resolution feature maps, so that we can gain a larger receptive field without overly losing spatial information; b) we propose a spatially varying convolutional layer that adapts convolutional filters to different regions of interest; and c) an adversarial network is proposed to further correct the segmented organ structures. Finally, STRAINet is used to iteratively refine the segmentation probability maps in an autocontext manner. Experimental results show that our STRAINet achieved the state-of-the-art segmentation accuracy. Further analysis also indicates that our proposed network components contribute most to the performance.
机译:盆腔器官的正确分割对于前列腺放射治疗很重要。现代放射治疗开始使用磁共振图像(MRI)作为计算机断层扫描图像的替代方法,因为它具有出色的软组织对比度,而且也没有辐射风险。然而,由于患者之间器官外观不一致以及治疗日间患者内部解剖结构变化较大,因此通过MRI对盆腔器官进行分割是一个具有挑战性的问题。为了解决这些挑战,我们提出了一种新颖的深度网络架构,称为“空间变化随机残差对抗网络”(STRAINet),以端到端的方式从MRI描绘骨盆器官。与传统的全卷积网络(FCN)相比,所提出的体系结构有两个主要贡献:1)受残差学习最近成功的启发,我们提出了残差单元(即随机残差单元)的进化版本,并将其用于FCN中的普通卷积层。我们进一步提出了远程随机残差连接,以将特征从浅层传递到深层。 2)我们建议整合先前提出的三种网络策略以形成一个新的网络,以更好地进行医学图像分割:a)我们在最小分辨率的特征图中应用了卷积卷积,以便我们可以获得更大的接收场而不会过度丢失空间信息; b)我们提出一个空间变化的卷积层,使卷积滤波器适应不同的关注区域; c)提出对抗网络,以进一步纠正分段的器官结构。最后,STRRAINet用于以自动上下文方式迭代地细化分割概率图。实验结果表明,我们的STRAINet达到了最新的分割精度。进一步的分析还表明,我们提出的网络组件对性能的贡献最大。

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