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SPASM: a 3D-ASM for segmentation of sparse and arbitrarily oriented cardiac MRI data.
Med Image Anal. 2006 Apr; 10(2):286-303.MI

Abstract

A new technique (SPASM) based on a 3D-ASM is presented for automatic segmentation of cardiac MRI image data sets consisting of multiple planes with arbitrary orientations, and with large undersampled regions. Model landmark positions are updated in a two-stage iterative process. First, landmark positions close to intersections with images are updated. Second, the update information is propagated to the regions without image information, such that new locations for the whole set of the model landmarks are obtained. Feature point detection is performed by a fuzzy inference system, based on fuzzy C-means clustering. Model parameters were optimized on a computer cluster and the computational load distributed by grid computing. SPASM was applied to image data sets with an increasing sparsity (from 2 to 11 slices) comprising images with different orientations and stemming from different MRI acquisition protocols. Segmentation outcomes and calculated volumes were compared to manual segmentation on a dense short-axis data configuration in a 3D manner. For all data configurations, (sub-)pixel accuracy was achieved. Performance differences between data configurations were significantly different (p<0.05) for SA data sets with less than 6 slices, but not clinically relevant (volume differences<4 ml). Comparison to results from other 3D model-based methods showed that SPASM performs comparable to or better than these other methods, but SPASM uses considerably less image data. Sensitivity to initial model placement proved to be limited within a range of position perturbations of approximately 20 mm in all directions.

Authors+Show Affiliations

Division of Image Processing, Department of Radiology, Leiden University Medical Center, Albinusdreef 2, PO Box 9600, 2300 RC, Leiden, The Netherlands. h.c.v.assen@tue.nlNo affiliation info availableNo affiliation info availableNo affiliation info availableNo affiliation info availableNo affiliation info availableNo affiliation info available

Pub Type(s)

Comparative Study
Evaluation Study
Journal Article
Validation Study

Language

eng

PubMed ID

16439182

Citation

van Assen, Hans C., et al. "SPASM: a 3D-ASM for Segmentation of Sparse and Arbitrarily Oriented Cardiac MRI Data." Medical Image Analysis, vol. 10, no. 2, 2006, pp. 286-303.
van Assen HC, Danilouchkine MG, Frangi AF, et al. SPASM: a 3D-ASM for segmentation of sparse and arbitrarily oriented cardiac MRI data. Med Image Anal. 2006;10(2):286-303.
van Assen, H. C., Danilouchkine, M. G., Frangi, A. F., Ordás, S., Westenberg, J. J., Reiber, J. H., & Lelieveldt, B. P. (2006). SPASM: a 3D-ASM for segmentation of sparse and arbitrarily oriented cardiac MRI data. Medical Image Analysis, 10(2), 286-303.
van Assen HC, et al. SPASM: a 3D-ASM for Segmentation of Sparse and Arbitrarily Oriented Cardiac MRI Data. Med Image Anal. 2006;10(2):286-303. PubMed PMID: 16439182.
* Article titles in AMA citation format should be in sentence-case
TY - JOUR T1 - SPASM: a 3D-ASM for segmentation of sparse and arbitrarily oriented cardiac MRI data. AU - van Assen,Hans C, AU - Danilouchkine,Mikhail G, AU - Frangi,Alejandro F, AU - Ordás,Sebastián, AU - Westenberg,Jos J M, AU - Reiber,Johan H C, AU - Lelieveldt,Boudewijn P F, Y1 - 2006/01/24/ PY - 2005/03/30/received PY - 2005/11/29/revised PY - 2005/12/07/accepted PY - 2006/1/28/pubmed PY - 2006/6/13/medline PY - 2006/1/28/entrez SP - 286 EP - 303 JF - Medical image analysis JO - Med Image Anal VL - 10 IS - 2 N2 - A new technique (SPASM) based on a 3D-ASM is presented for automatic segmentation of cardiac MRI image data sets consisting of multiple planes with arbitrary orientations, and with large undersampled regions. Model landmark positions are updated in a two-stage iterative process. First, landmark positions close to intersections with images are updated. Second, the update information is propagated to the regions without image information, such that new locations for the whole set of the model landmarks are obtained. Feature point detection is performed by a fuzzy inference system, based on fuzzy C-means clustering. Model parameters were optimized on a computer cluster and the computational load distributed by grid computing. SPASM was applied to image data sets with an increasing sparsity (from 2 to 11 slices) comprising images with different orientations and stemming from different MRI acquisition protocols. Segmentation outcomes and calculated volumes were compared to manual segmentation on a dense short-axis data configuration in a 3D manner. For all data configurations, (sub-)pixel accuracy was achieved. Performance differences between data configurations were significantly different (p<0.05) for SA data sets with less than 6 slices, but not clinically relevant (volume differences<4 ml). Comparison to results from other 3D model-based methods showed that SPASM performs comparable to or better than these other methods, but SPASM uses considerably less image data. Sensitivity to initial model placement proved to be limited within a range of position perturbations of approximately 20 mm in all directions. SN - 1361-8415 UR - https://www.unboundmedicine.com/medline/citation/16439182/SPASM:_a_3D_ASM_for_segmentation_of_sparse_and_arbitrarily_oriented_cardiac_MRI_data_ DB - PRIME DP - Unbound Medicine ER -