Authors
Darko Zikic, Ben Glocker, Ender Konukoglu, Antonio Criminisi, Cagatay Demiralp, Jamie Shotton, Owen M Thomas, Tilak Das, Raj Jena, Stephen J Price
Publication date
2012
Conference
Medical Image Computing and Computer-Assisted Intervention–MICCAI 2012: 15th International Conference, Nice, France, October 1-5, 2012, Proceedings, Part III 15
Pages
369-376
Publisher
Springer Berlin Heidelberg
Description
We present a method for automatic segmentation of high-grade gliomas and their subregions from multi-channel MR images. Besides segmenting the gross tumor, we also differentiate between active cells, necrotic core, and edema. Our discriminative approach is based on decision forests using context-aware spatial features, and integrates a generative model of tissue appearance, by using the probabilities obtained by tissue-specific Gaussian mixture models as additional input for the forest. Our method classifies the individual tissue types simultaneously, which has the potential to simplify the classification task. The approach is computationally efficient and of low model complexity. The validation is performed on a labeled database of 40 multi-channel MR images, including DTI. We assess the effects of using DTI, and varying the amount of training data. Our segmentation results are highly accurate, and …
Total citations
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Scholar articles
D Zikic, B Glocker, E Konukoglu, A Criminisi… - Medical Image Computing and Computer-Assisted …, 2012