3.8 Article

Comparison of Different Approaches for Measuring Tibial Cartilage Thickness

期刊

出版社

WALTER DE GRUYTER GMBH
DOI: 10.1515/jib-2017-0015

关键词

Cartilage strain; Cone-beam C-arm CT; Weight-bearing; Local thickness; Potential field lines

资金

  1. Research Training Group Heterogeneous Image Systems - German Research Foundation (DFG)
  2. NIH [5R01AR065248-03]
  3. NIH Shared Instrument Grant [S10 RR026714]
  4. German Research Foundation (DFG) within the framework of the Heisenberg professorship programmme [ES 434/8-1]

向作者/读者索取更多资源

Osteoarthritis is a degenerative disease affecting bones and cartilage especially in the human knee. In this context, cartilage thickness is an indicator for knee cartilage health. Thickness measurements are performed on medical images acquired in-vivo. Currently, there is no standard method agreed upon that defines a distance measure in articular cartilage. In this work, we present a comparison of different methods commonly used in literature. These methods are based on nearest neighbors, surface normal vectors, local thickness and potential field lines. All approaches were applied to manual segmentations of tibia and lateral and medial tibial cartilage performed by experienced raters. The underlying data were contrast agent-enhanced cone-beam C-arm CT reconstructions of one healthy subject's knee. The subject was scanned three times, once in supine position and two times in a standing weight-bearing position. A comparison of the resulting thickness maps shows similar distributions and high correlation coefficients between the approaches above 0.90. The nearest neighbor method results on average in the lowest cartilage thickness values, while the local thickness approach assigns the highest values. We showed that the different methods agree in their thickness distribution. The results will be used for a future evaluation of cartilage change under weight-bearing conditions.

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