Segmentation of kidneys using a new active shape model generation technique based on non-rigid image registration

Spiegel M, Hahn D, Daum V, Wasza J, Hornegger J (2009)


Publication Type: Journal article, Original article

Publication year: 2009

Journal

Original Authors: Spiegel M., Hahn D., Daum V., Wasza J., Hornegger J.

Publisher: Elsevier

Book Volume: 33

Pages Range: 29-39

Journal Issue: 1

DOI: 10.1016/j.compmedimag.2008.10.002

Abstract

Active shape models (ASMs) are widely used for applications in the field of image segmentation. Building an ASM requires to determine point correspondences for input training data, which usually results in a set of landmarks distributed according to the statistical variations. State-of-the-art methods solve this problem by minimizing the description length of all landmarks using a parametric mapping of the target shape (e.g. a sphere). In case of models composed of multiple sub-parts or highly non-convex shapes, these techniques feature substantial drawbacks. This article proposes a novel technique for solving the crucial correspondence problem using non-rigid image registration. Unlike existing approaches the new method yields more detailed ASMs and does not require explicit or parametric formulations of the problem. Compared to other methods, the already built ASM can be updated with additional prior knowledge in a very efficient manner. For this work, a training set of 3-D kidney pairs has been manually segmented from 41 CT images of different patients and forms the basis for a clinical evaluation. The novel registration based approach is compared to an already established algorithm that uses a minimum description length (MDL) formulation. The presented results indicate that the use of non-rigid image registration to solve the point correspondence problem leads to improved ASMs and more accurate segmentation results. The sensitivity could be increased by approximately 10%. Experiments to analyze the dependency on the user initialization also show a higher sensitivity of 5-15%. The mean squared error of the segmentation results and the ground truth manually classified data could also be reduced by 20-34% with respect to varying numbers of training samples. © 2008 Elsevier Ltd. All rights reserved.

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How to cite

APA:

Spiegel, M., Hahn, D., Daum, V., Wasza, J., & Hornegger, J. (2009). Segmentation of kidneys using a new active shape model generation technique based on non-rigid image registration. Computerized Medical Imaging and Graphics, 33(1), 29-39. https://dx.doi.org/10.1016/j.compmedimag.2008.10.002

MLA:

Spiegel, Martin, et al. "Segmentation of kidneys using a new active shape model generation technique based on non-rigid image registration." Computerized Medical Imaging and Graphics 33.1 (2009): 29-39.

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