Deep convolutional networks for pancreas segmentation in CT imaging
Holger R. Roth, Amal Farag, Le Lu, Evrim B. Turkbey, and Ronald M., Summers

TL;DR
This paper introduces a fully automated deep learning approach using convolutional networks for pancreas segmentation in CT images, addressing high anatomical variability with hierarchical classification and superpixel analysis.
Contribution
It presents a novel hierarchical superpixel-based deep learning method for pancreas segmentation, achieving promising accuracy on CT datasets.
Findings
Achieved average Dice score of 68% on test data.
Outperformed several state-of-the-art pancreas segmentation methods.
Demonstrated effectiveness of deep ConvNets with hierarchical classification.
Abstract
Automatic organ segmentation is an important prerequisite for many computer-aided diagnosis systems. The high anatomical variability of organs in the abdomen, such as the pancreas, prevents many segmentation methods from achieving high accuracies when compared to other segmentation of organs like the liver, heart or kidneys. Recently, the availability of large annotated training sets and the accessibility of affordable parallel computing resources via GPUs have made it feasible for "deep learning" methods such as convolutional networks (ConvNets) to succeed in image classification tasks. These methods have the advantage that used classification features are trained directly from the imaging data. We present a fully-automated bottom-up method for pancreas segmentation in computed tomography (CT) images of the abdomen. The method is based on hierarchical coarse-to-fine classification of…
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