2017
DOI: 10.48550/arxiv.1702.05970
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Automatic Liver and Tumor Segmentation of CT and MRI Volumes using Cascaded Fully Convolutional Neural Networks

Abstract: Automatic segmentation of the liver and hepatic lesions is an important step towards deriving quantitative biomarkers for accurate clinical diagnosis and computer-aided decision support systems. This paper presents a method to automatically segment liver and lesions in CT and MRI abdomen images using cascaded fully convolutional neural networks (CFCNs) enabling the segmentation of large-scale medical trials and quantitative image analyses. We train and cascade two FCNs for the combined segmentation of the live… Show more

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Cited by 68 publications
(101 citation statements)
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“…So far, to the best of the authors' knowledge, there are hardly any published works focusing on deep learningbased hepatic lesion segmentation in MR imaging, except the work of Christ et al [7], which included MRI data in their otherwise CT-based study. The authors utilized an Unetstyle fully convolutional cascaded neural network with a 3D Conditional Random Field (CRF) for the segmentation of the liver and subsequently using the resulting liver mask as an input for the following lesion segmentation.…”
Section: A Mri-based Evaluationmentioning
confidence: 99%
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“…So far, to the best of the authors' knowledge, there are hardly any published works focusing on deep learningbased hepatic lesion segmentation in MR imaging, except the work of Christ et al [7], which included MRI data in their otherwise CT-based study. The authors utilized an Unetstyle fully convolutional cascaded neural network with a 3D Conditional Random Field (CRF) for the segmentation of the liver and subsequently using the resulting liver mask as an input for the following lesion segmentation.…”
Section: A Mri-based Evaluationmentioning
confidence: 99%
“…Compared to our proposed SWTR-Unet, both segmentations of liver and lesions yielded inferior results of approximately 11%. Furthermore, Christ et al [7] separated both segmentation task, which results in a dependency on the quality of the preceding liver segmentation step with potential implications with respect to the segmentation accuracy of near-surface tumours in particular. Overall, it could be concluded, that the solely convolutional-based architecture style has its limitations regarding the huge shape, size and location variety, which may not be adequately captured due to the focus of merely local information and features, respectively.…”
Section: A Mri-based Evaluationmentioning
confidence: 99%
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“…In terms of the segmentation under supervised setting, among the current SOTA methods, the most popular framework is the fully convolutional network (FCN) [35] based encoder-decoder architecture with the representative model like U-Net [45]. So far, to make the conventional encoder-decoder architecture more effective and robust, researchers have made great efforts in the following three directions: 1) developing novel structures, including the 3D structure, recurrent neural network (RNN) based model and cascaded framework [39] [7] [4] [48] [12] [62], 2) designing novel network blocks, including attention mechanism, dense connection, inception or multi-scale fusion [8] [65] [11] [57] [41], and 3) utilizing sophisticated loss functions [58] [10] [26] [61], significantly improving segmentation accuracy.…”
Section: A Medical Image Segmentationmentioning
confidence: 99%