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Automatic Prostate Segmentation on MR Images with Deeply Supervised Network

机译:深度监督网络MR图像的自动前列腺细分

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Accurate and efficient segmentation of prostate image plays an important role in the diagnosis of prostate cancer. Since convolutional neural network demonstrates superior performance in computer vision applications, we present a multi-layer deeply supervised deconvolution network (DSDN) which completes end-to-end training to automatically segment magnetic resonance (MR) images. We put additional deeply supervised layers to supervise the performance of hidden layers. During training, the backpropagation process of gradient information in the additional deeply supervised layers accelerates the parameters update for hidden layers, which makes the trained model has strong capacity of features learning as well as passes the extracted features from shallow layers to higher layers effectively. A set of experiments using prostate magnetic resonance (MR) images is carried out to demonstrate that significant segmentation accuracy improvement has been achieved by our proposed method compared to other reported approaches.
机译:前列腺图像的准确和有效的细分在前列腺癌的诊断中起着重要作用。由于卷积神经网络在计算机视觉应用中展示了卓越的性能,因此我们介绍了一个多层深度监督的解卷路网络(DSDN),该卷积型Deconvolution网络(DSDN)完成了端到端训练,以自动分割磁共振(MR)图像。我们将额外的深度监督层监督隐藏层的性能。在培训期间,额外的深度监督层中梯度信息的渐变过程加速了隐藏层的参数更新,这使得训练的模型具有强大的特征学习能力,并且通过有效地将从浅层的提取特征传递给更高的层。进行了一组使用前列腺磁共振(MR)图像的实验,以证明通过我们提出的方法与其他报告的方法相比实现了显着的分割精度改善。

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