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Pancreas Segmentation in MRI Using Graph-Based Decision Fusion on Convolutional Neural Networks

机译:MRI在卷积神经网络上使用基于图的决策融合的MRI胰腺分段

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Deep neural networks have demonstrated very promising performance on accurate segmentation of challenging organs (e.g., pancreas) in abdominal CT and MRI scans. The current deep learning approaches conduct pancreas segmentation by processing sequences of 2D image slices independently through deep, dense per-pixel masking for each image, without explicitly enforcing spatial consistency constraint on segmentation of successive slices. We propose a new convolutional/recurrent neural network architecture to address the contextual learning and segmentation consistency problem. A deep convolutional sub-network is first designed and pre-trained from scratch. The output layer of this network module is then connected to recurrent layers and can be fine-tuned for contextual learning, in an end-to-end manner. Our recurrent sub-network is a type of Long short-term memory (LSTM) network that performs segmentation on an image by integrating its neighboring slice segmentation predictions, in the form of a dependent sequence processing. Additionally, a novel segmentation-direct loss function (named Jaccard Loss) is proposed and deep networks are trained to optimize Jaccard Index (JI) directly. Extensive experiments are conducted to validate our proposed deep models, on quantitative pancreas segmentation using both CT and MRI scans. Our method outperforms the state-of-the-art work on CT [11] and MRI pancreas segmentation [1], respectively.
机译:深度神经网络在腹部CT和MRI扫描中的挑战器官(例如胰腺)的准确细分表现出非常有前途的性能。目前深度学习方法通​​过为每个图像的每个图像独立地处理2D​​图像片的序列来进行血管分割,而不明确地在连续切片的分割上明确强制空间一致性约束。我们提出了一种新的卷积/经常性神经网络架构来解决上下文学习和分段一致性问题。首先从头开始设计和预先培训深度卷积子网。然后,该网络模块的输出层连接到复制层,并且可以以端到端的方式进行微调以进行上下文学习。我们的经常性子网是一种长短期存储器(LSTM)网络,其通过将其相邻的切片分割预测集成在依赖序列处理的形式中,在图像上执行分割。此外,提出了一种新的分段直接损失函数(命名JAccard丢失),并且培训深网络以直接优化Jaccard Index(Ji)。进行广泛的实验以验证我们提出的深层模型,使用CT和MRI扫描进行定量胰腺分段。我们的方法优于CT [11]和MRI胰腺分段[1]的最先进的工作。

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