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Automated Cephalometric Landmark Identification Using Shape and Local Appearance Models.

, , , and . ICPR, page 2464-2467. IEEE Computer Society, (2010)

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Web-based access to a multimedia medical record., , , , , , and . CARS, volume 1230 of International Congress Series, page 1269-1270. Elsevier, (2001)Recognition of the coronary blood vessels on angiograms using hierarchical model-based iconic search., , , and . CVPR, page 576-581. IEEE, (1989)meshSIFT: Local surface features for 3D face recognition under expression variations and partial data., , , and . Comput. Vis. Image Underst., 117 (2): 158-169 (2013)Isometric deformation invariant 3D shape recognition., , , and . Pattern Recognit., 45 (7): 2817-2831 (2012)An information theoretic approach for non-rigid image registration using voxel class probabilities., , , and . Medical Image Anal., 10 (3): 413-431 (2006)SLAC: Statistical total lesion metabolic activity computation by fuzzy unsupervised learning of PET images., , , , , , , and . Mach. Vis. Appl., 24 (7): 1341-1358 (2013)Fuzzy Multi-class Statistical Modeling for Efficient Total Lesion Metabolic Activity Estimation from Realistic PET Images., , , , , , , and . MICCAI (1), volume 7510 of Lecture Notes in Computer Science, page 107-114. Springer, (2012)A textural feature based tumor therapy response prediction model for longitudinal evaluation with PET imaging., , , , , , , and . ISBI, page 1048-1051. IEEE, (2012)Theoretical analysis and experimental validation of volume bias of soft Dice optimized segmentation maps in the context of inherent uncertainty., , , and . Medical Image Anal., (2021)Explainable-by-design Semi-Supervised Representation Learning for COVID-19 Diagnosis from CT Imaging., , , , , , , , , and 30 other author(s). CoRR, (2020)