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Organ detection in thorax abdomen CT using multi-label convolutional neural networks

机译:使用多标签卷积神经网络胸部腹部CT的器官检测

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A convolutional network architecture is presented to determine bounding boxes around six organs in thorax-abdomen CT scans. A single network for each orthogonal view determines the presence of lungs, kidneys, spleen and liver. We show that an architecture that takes additional slices before and after the slice of interest as an additional input outperforms an architecture that processes single slices. From the slice-based analysis, a bounding box around the structures of interest can be computed. The system uses 6 convolutional, 4 pooling and one fully connected layer and uses 333 scans for training and 110 for validation. The test set contains 110 scans. The average Dice score of the proposed method was 0.95 and 0.95 for the lungs, 0.59 and 0.58 for the kidneys, 0.83 for the liver and 0.63 for the spleen. This paper shows that automatic localization of organs using multi-label convolution neural networks is possible. This architecture can likely be used to identify other organs of interest as well.
机译:提出了一种卷积网络架构以确定胸部腹部CT扫描中六个器官周围的边界框。每个正交视图的单个网络决定了肺,肾,脾和肝脏的存在。我们表明,作为额外输入之前和之后,在额外输入之前和之后需要额外的切片的架构优于处理单个切片的架构。从基于切片的分析,可以计算围绕其兴趣结构的边界框。该系统使用6个卷积,4个池和一个完全连接的层,并使用333扫描进行训练和110进行验证。测试集包含110扫描。该方法的平均骰子得分为肺部为0.95和0.95,肾脏为0.59和0.58,肝脏0.83,脾脏0.63。本文显示了使用多标签卷积神经网络的器官自动定位。这种架构可能用于识别其他感兴趣的器官。

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