用于胰腺分割的分层 3D 特征学习

Federica Proietto Salanitri, Giovanni Bellitto, Ismail Irmakci, Simone Palazzo, Ulas Bagci, Concetto Spampinato
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摘要

我们提出了一种新型三维全卷积深度网络,用于从核磁共振成像和 CT 扫描中自动分割胰腺。更具体地说,所提议的模型由一个三维编码器组成,该编码器可学习提取不同尺度的体积特征;然后,在编码器层次结构的不同点提取的特征被发送到多个三维解码器,这些解码器可单独预测中间分割图。最后,将所有分割图组合起来,得到一个独特的详细分割掩膜。我们在 CT 和 MRI 成像数据上测试了我们的模型:公开的美国国立卫生研究院胰腺 CT 数据集(由 82 个对比增强 CT 组成)和私人 MRI 数据集(由 40 个 MRI 扫描组成)。实验结果表明,我们的模型在胰腺 CT 分割方面的表现优于现有方法,平均 Dice 得分为 88%,在极具挑战性的 MRI 数据集(平均 Dice 得分为 77%)上也取得了可喜的分割性能。额外的对照实验表明,所取得的性能归功于我们的三维全卷积深度网络与分层表示解码的结合,从而证实了我们的架构设计。
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Hierarchical 3D Feature Learning for Pancreas Segmentation.

We propose a novel 3D fully convolutional deep network for automated pancreas segmentation from both MRI and CT scans. More specifically, the proposed model consists of a 3D encoder that learns to extract volume features at different scales; features taken at different points of the encoder hierarchy are then sent to multiple 3D decoders that individually predict intermediate segmentation maps. Finally, all segmentation maps are combined to obtain a unique detailed segmentation mask. We test our model on both CT and MRI imaging data: the publicly available NIH Pancreas-CT dataset (consisting of 82 contrast-enhanced CTs) and a private MRI dataset (consisting of 40 MRI scans). Experimental results show that our model outperforms existing methods on CT pancreas segmentation, obtaining an average Dice score of about 88%, and yields promising segmentation performance on a very challenging MRI data set (average Dice score is about 77%). Additional control experiments demonstrate that the achieved performance is due to the combination of our 3D fully-convolutional deep network and the hierarchical representation decoding, thus substantiating our architectural design.

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