2012
DOI: 10.1007/978-3-642-33454-2_9
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Automatic Detection and Segmentation of Kidneys in 3D CT Images Using Random Forests

Abstract: Abstract. Kidney segmentation in 3D CT images allows extracting useful information for nephrologists. For practical use in clinical routine, such an algorithm should be fast, automatic and robust to contrast-agent enhancement and fields of view. By combining and refining state-of-theart techniques (random forests and template deformation), we demonstrate the possibility of building an algorithm that meets these requirements. Kidneys are localized with random forests following a coarseto-fine strategy. Their in… Show more

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Cited by 123 publications
(107 citation statements)
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References 16 publications
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“…It has been successfully applied to various organ localization and segmentation tasks in different imaging modalities. [56][57][58][59] Finally, for each detected lymph node, with the segmentation of anatomic structures, its station is automatically determined according to the IASLC reference.…”
Section: Discussionmentioning
confidence: 99%
“…It has been successfully applied to various organ localization and segmentation tasks in different imaging modalities. [56][57][58][59] Finally, for each detected lymph node, with the segmentation of anatomic structures, its station is automatically determined according to the IASLC reference.…”
Section: Discussionmentioning
confidence: 99%
“…In the context of tumor segmentation, methods relying on random decision forest such as [7,10] usually focus on one single image and therefore involve single-phase visual features θ(v ). During training, each tree takes the training voxel set S as input and optimizes its own internal nodes ({τ low , τ up ,θ(v )}) via information gain maximization [9] to obtain the most discriminative binary tests with respect to S .…”
Section: Traditional Approach: Single-phase Voxel-wise Random Forestmentioning
confidence: 99%
“…2.1), voxels are acting without inter-dependencies which may result in a lack of spatial consistency regarding classification results. Features are sometimes explicitly related to spatial context [7,10] but spatial extent remains limited. A-posteriori regularization techniques such as conditional random field (CRF) [11] would more accurately introduce spatial constraints but it strongly increases computational complexity.…”
Section: Traditional Approach: Single-phase Voxel-wise Random Forestmentioning
confidence: 99%
“…The organs in the images are detected by manually cropping along the contours [22], placing the landmarks on the contour [23] and marking the bounding boxes around the kidney [24]. Automatic detection of kidney in CT slices using random forest has been used in [25] for reconstructing the 3D structure of kidney. A two-stage detection algorithm is employed for automatic detection of lymph nodes in CT data; Haar features with the Adaboost cascade classifier are used in the first stage, and in the second stage, self-assigning features with the Adaboost cascade classifier are used [26].…”
Section: Automatic Kidney Detectionmentioning
confidence: 99%