Publication | Closed Access
Lymph node segmentation on CT images by a shape model guided deformable surface methodh
27
Citations
8
References
2008
Year
Deformable Surface MethodhEngineeringDigital PathologyManual CorrectionShape AnalysisSegmentation ResultsBiomedical EngineeringImage AnalysisBiostatisticsComputational GeometryRadiologyGeometric ModelingMedical ImagingCt ImagesImage GuidanceMedical Image ComputingNew AlgorithmComputer VisionNatural SciencesBiomedical ImagingComputer-aided DiagnosisShape ModelMedical Image AnalysisImage Segmentation
With many tumor entities, quantitative assessment of lymph node growth over time is important to make therapy choices or to evaluate new therapies. The clinical standard is to document diameters on transversal slices, which is not the best measure for a volume. We present a new algorithm to segment (metastatic) lymph nodes and evaluate the algorithm with 29 lymph nodes in clinical CT images. The algorithm is based on a deformable surface search, which uses statistical shape models to restrict free deformation. To model lymph nodes, we construct an ellipsoid shape model, which strives for a surface with strong gradients and user-defined gray values. The algorithm is integrated into an application, which also allows interactive correction of the segmentation results. The evaluation shows that the algorithm gives good results in the majority of cases and is comparable to time-consuming manual segmentation. The median volume error was 10.1% of the reference volume before and 6.1% after manual correction. Integrated into an application, it is possible to perform lymph node volumetry for a whole patient within the 10 to 15 minutes time limit imposed by clinical routine.
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