Author/Authors :
Khalifa, Fahmi Bioengineering Department - University of Louisville - Louisville, USA , Soliman, Ahmed Bioengineering Department - University of Louisville - Louisville, USA , Elmaghraby, Adel Computer Science Department - University of Louisville - Louisville, USA , Gimel’farb, Georgy Department of Computer Science - University of Auckland - Auckland, New Zealand , El-Baz, Ayman Bioengineering Department - University of Louisville - Louisville, USA
Abstract :
Kidney segmentation is an essential step in developing any noninvasive computer-assisted diagnostic system for renal function
assessment. This paper introduces an automated framework for 3D kidney segmentation from dynamic computed tomography
(CT) images that integrates discriminative features from the current and prior CT appearances into a random forest classification
approach. To account for CT images’ inhomogeneities, we employ discriminate features that are extracted from a higher-order
spatial model and an adaptive shape model in addition to the first-order CT appearance. To model the interactions between CT
data voxels, we employed a higher-order spatial model, which adds the triple and quad clique families to the traditional pairwise
clique family.The kidney shape prior model is built using a set of training CT data and is updated during segmentation using not only
region labels but also voxels’ appearances in neighboring spatial voxel locations. Our framework performance has been evaluated on
in vivo dynamic CT data collected from 20 subjects and comprises multiple 3D scans acquired before and after contrast medium
administration. Quantitative evaluation between manually and automatically segmented kidney contours using Dice similarity,
percentage volume differences, and 95th-percentile bidirectional Hausdorff distances confirms the high accuracy of our approach.
Keywords :
Spatial-Appearance , Abdominal , CT , Segmentation