2008
DOI: 10.1109/tmi.2008.918330
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Automatic Model-Based Segmentation of the Heart in CT Images

Abstract: Automatic image processing methods are a prerequisite to efficiently analyze the large amount of image data produced by computed tomography (CT) scanners during cardiac exams. This paper introduces a model-based approach for the fully automatic segmentation of the whole heart (four chambers, myocardium, and great vessels) from 3-D CT images. Model adaptation is done by progressively increasing the degrees-of-freedom of the allowed deformations. This improves convergence as well as segmentation accuracy. The he… Show more

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Cited by 337 publications
(271 citation statements)
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References 33 publications
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“…Then, during the segmentation, competitive contours with equal weights ( = 0.5) were used. The fixed threshold ( ℎ) was computed as the average value between the mean intensity on the selected region (window of size equal to 3 × 3 × 3 mm 3 ) and the expected intensity of the atrial/aortic walls (50 HU, (Ecabert et al, 2008)). The stop criteria of the BEAS-threshold method relies on the difference between mesh positions in two consecutive iterations and it finishes when small differences are found.…”
Section: Implementation Detailsmentioning
confidence: 99%
“…Then, during the segmentation, competitive contours with equal weights ( = 0.5) were used. The fixed threshold ( ℎ) was computed as the average value between the mean intensity on the selected region (window of size equal to 3 × 3 × 3 mm 3 ) and the expected intensity of the atrial/aortic walls (50 HU, (Ecabert et al, 2008)). The stop criteria of the BEAS-threshold method relies on the difference between mesh positions in two consecutive iterations and it finishes when small differences are found.…”
Section: Implementation Detailsmentioning
confidence: 99%
“…Based on the atlas, the cardiac shape or function of a popula- Rougon et al (2004) Tagged MR 11 healthy Statistical motion model Suinesiaputra et al (2009) 2D cine MR 44 healthy Statistical contour model Fonseca et al (2011) 2D cine MR 2864 healthy, 470 patients Statistical shape model Duchateau et al (2011) 2D US 21 healthy Statistical motion model Duchateau et al (2012) 2D Ecabert et al (2008) CT 13 patients Statistical shape model Zhuang et al (2010) Whole-heart MR 10 healthy - Hoogendoorn et al (2013) CT 138 patients Statistical shape model tion can be analysed and compared in a common space. The statistical shape model is the most commonly used tool for shape analysis.…”
Section: Related Workmentioning
confidence: 99%
“…The main advantage of our tracking method is that it is a template/model-based tracking of the AVP in fluoroscopic sequences, to overcome the limitations of edge detection image-based methods [24]. Searching two feature points (i.e.…”
Section: Discussionmentioning
confidence: 99%