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Automatic segmentation of whole-body bone scintigrams as a preprocessing step for computer assisted diagnostics

Luka Šajn and Matjaž Kukar and Igor Kononenko and Metka Milčinski Automatic segmentation of whole-body bone scintigrams as a preprocessing step for computer assisted diagnostics. In: Artificial intelligence in medicine / 10th Conference on Artificial Intelligence in Medicine, AIME 2005. Springer, pp. 361-372. ISBN 3-540-27831-1

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    Abstract

    Bone scintigraphy or whole-body bone scan is one of the most common diagnostic procedures in nuclear medicine used in the last 25 years. Pathological conditions, technically poor quality images and artifacts necessitate that algorithms use su±cient background knowledge of anatomy and spatial relations of bones in order to work satisfactorily. We present a robust knowledge based methodology for detecting reference points of the main skeletal regions that simultaneously processes anterior and posterior whole-body bone scintigrams. Expert knowledge is represented as a set of parameterized rules which are used to support standard image processing algorithms. Our study includes 467 consecutive, non-selected scintigrams, which is to our knowledge the largest number of images ever used in such studies. Automatic analysis of whole-body bone scans using our knowledge based segmentation algorithm gives more accurate and reliable results than previous studies. Obtained reference points are used for automatic segmentation of the skeleton, which is used for automatic (machine learning) or manual (expert physicians) diagnostics. Preliminary experiments show that an expert system based on machine learning closely mimics the results of expert physicians.

    Item Type: Book Section
    Keywords: segmentation, image processing, scintigraphy
    Institution: University of Ljubljana
    Department: Faculty of Computer and Information Science
    Divisions: Faculty of Computer and Information Science > Computer Vision Laboratory
    Item ID: 1030
    Date Deposited: 17 Sep 2010 11:01
    Last Modified: 13 Aug 2011 00:36
    URI: http://eprints.fri.uni-lj.si/id/eprint/1030

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