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Multi atlas–based segmentation with data driven refinement
Art der Publikation: Artikel in einem Konferenzbericht
Zitat:
Buchtitel: Biomedical and Health Informatics (BHI), 2014 IEEE-EMBS International Conference on
Jahr: 2014
Seiten: 605-608
Verlag: IEEE
Ort: Valencia, Spain
DOI: 10.1109/BHI.2014.6864437
Abriss: Anatomical structure segmentation is the basis for further image analysis processes. Although there are many available segmentation methods there is still the need to improve the accuracy and speed of them to be used in a clinical environment. The VISCERAL project organizes a benchmark to compare approaches for organ segmentation in big data. A fully-automatic segmentation method using the VISCERAL data set is proposed in this paper. It incorporates both the local contrast of the image using an intensity feature as well as atlas probabilistic information to compute the definite labelling of the structure of interest. The usefulness of the new intensity feature is evaluated using contrast-enhanced CT images of the trunk. An overall average increase is computed in the overlap of the segmentations with an improvement of up to 33% for several anatomical structures when compared to only using an atlas based segmentation method. Qualitative results are also shown for MR images supporting the inclusion of this contrast feature in atlas-based segmentation methods for several modalities.
Nutzerfelder: International Conference on Biomedical and Health Informatics Translating key health challenges with advances in biomedical informatics Valencia (Spain), 1 - 4 June 2014
Schlagworte: big data, biological organs, biomedical MRI, computerised tomography, data mining, feature extraction
Autoren Jimenez del Toro, Oscar
Müller, Henning
Hinzugefügt von: []
Gesamtbewertung: 0
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  • BHI2014_Oscar.pdf
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