Computerized segmentation of whole-body bone scintigrams and its use in automated diagnostics.

Comput Methods Programs Biomed

University of Ljubljana, Faculty of Computer and Information Science, Trzaska 25, SI-1001 Ljubljana, Slovenia.

Published: October 2005

AI Article Synopsis

  • Bone scintigraphy is a widely used nuclear medicine technique for diagnosing bone-related conditions, but image clarity can be affected by pathological issues and artefacts, requiring advanced algorithms.
  • A new methodology focuses on identifying reference points in skeletal regions from whole-body scans by employing a set of parameterized rules that enhance standard image-processing techniques.
  • The study demonstrates that the automatic segmentation algorithm used in analyzing 467 scans yields more accurate results than past methodologies, and early tests indicate that a machine learning-based expert system can effectively replicate the diagnostic accuracy of human experts.

Article 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 image resolution and artefacts necessitate that algorithms use sufficient background knowledge of anatomy and spatial relations of bones in order to work satisfactorily. A robust knowledge based methodology for detecting reference points of the main skeletal regions that is simultaneously applied on anterior and posterior whole-body bone scintigrams is presented. 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 segmentation algorithm gives more accurate and reliable results than previous studies. Obtained reference points are used for automatic segmentation of the skeleton, which is applied to 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.

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Source
http://dx.doi.org/10.1016/j.cmpb.2005.06.001DOI Listing

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