Design of a Synthetic Database for the Validation of Non-linear Registration and Segmentation of MR Brain Images

Konstantin Ens, Fabian Wenzel, Stewart Young, Jan Modersitzki, Bernd Fischer

Abstract

ge registration and segmentation are two important tasks in medical image analysis. However, the validation of algorithms for non-linear registration in particular often poses significant challenges:1, 2 Anatomical labeling based on scans for the validation of segmentation algorithms is often not available, and is tedious to obtain. One possibility to obtain suitable ground truth is to use anatomically labelled atlas images. Such atlas images are, however, generally limited to single subjects, and the displacement field of the registration between the template and an arbitrary data set is unknown. Therefore, the precise registration error cannot be determined, and approximations of a performance measure like the consistency error must be adapted. Thus, validation requires that some form of ground truth is available. In this work, an approach to generate a synthetic ground truth database for the validation of image registration and segmentation is proposed. Its application is illustrated using the example of the validation of a registration procedure, using 50 magnetic resonance images from different patients and two atlases. Three different non-linear image registration methods were tested to obtain a synthetic validation database consisting of 50 anatomically labelled brain scans.
Original languageEnglish
Title of host publicationProceedings of the SPIE 2009, Medical Imaging
EditorsJ.P.W. Pluim, B.M. Dawant
Number of pages9
Volume7259
PublisherSPIE
Publication date27.03.2009
Article number725933
ISBN (Print)978-081947510-7
DOIs
Publication statusPublished - 27.03.2009
EventMedical Imaging 2009 - Image Processing - Lake Buena Vista, United States
Duration: 07.02.200912.02.2009
Conference number: 78741

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