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Semi-Supervised and Active Learning for Automatic Segmentation of Crohn’s Disease

Dwarikanath Mahapatra1, Peter J. Schüffler1, Jeroen A.W. Tielbeek2, Franciscus M. Vos2, 3, and Joachim M. Buhmann1

1Department of Computer Science, ETH Zurich, Switzerland
dwarikanath.mahapatra@inf.ethz.ch

2Department of Radiology, Academic Medical Center, The Netherlands

3Quantitative Imaging Group, Delft University of Technology, The Netherlands

Abstract. Our proposed method combines semi supervised learning (SSL) and active learning (AL) for automatic detection and segmentation of Crohn’s disease (CD) from abdominal magnetic resonance (MR) images. Random forest (RF) classifiers are used due to fast SSL classification and capacity to interpret learned knowledge. Query samples for AL are selected by a novel information density weighted approach using context information, semantic knowledge and labeling uncertainty. Experimental results show that our proposed method combines the advantages of SSL and AL, and with fewer samples achieves higher classification and segmentation accuracy over fully supervised methods.

LNCS 8150, p. 214 ff.

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