Medical Image Analysis
Volume 14, Issue 3 , Pages 265-275, June 2010

Optimisation of orthopaedic implant design using statistical shape space analysis based on level sets

  • Nina Kozic

      Affiliations

    • Institute for Surgical Technology and Biomechanics, Bern, Switzerland
    • Corresponding Author InformationCorresponding author at: Institute for Surgical Technology and Biomechanics, Stauffacherstrasse 78, 3014 Bern, Switzerland. Tel.: +41 31 631 59 50; fax: +41 31 631 59 60.
  • ,
  • Stefan Weber

      Affiliations

    • Institute for Surgical Technology and Biomechanics, Bern, Switzerland
  • ,
  • Philippe Büchler

      Affiliations

    • Institute for Surgical Technology and Biomechanics, Bern, Switzerland
  • ,
  • Christian Lutz

      Affiliations

    • Stryker Trauma GmbH, Kiel, Germany
  • ,
  • Nils Reimers

      Affiliations

    • Stryker Trauma GmbH, Kiel, Germany
  • ,
  • Miguel Á. González Ballester

      Affiliations

    • Alma IT Systems, Barcelona, Spain
  • ,
  • Mauricio Reyes

      Affiliations

    • Institute for Surgical Technology and Biomechanics, Bern, Switzerland

Received 24 March 2009; received in revised form 22 February 2010; accepted 24 February 2010. published online 15 March 2010.

Abstract 

Statistical shape analysis techniques have shown to be efficient tools to build population specific models of anatomical variability. Their use is commonplace as prior models for segmentation, in which case the instance from the shape model that best fits the image data is sought. In certain cases, however, it is not just the most likely instance that must be searched, but rather the whole set of shape instances that meet certain criterion. In this paper we develop a method for the assessment of specific anatomical/morphological criteria across the shape variability found in a population. The method is based on a level set segmentation approach, and used on the parametric space of the statistical shape model of the target population, solved via a multi-level narrow-band approach for computational efficiency. Based on this technique, we develop a framework for evidence-based orthopaedic implant design. To date, implants are commonly designed and validated by evaluating implant bone fitting on a limited set of cadaver bones, which not necessarily span the whole variability in the population. Based on our framework, we can virtually fit a proposed implant design to samples drawn from the statistical model, and assess which range of the population is suitable for the implant. The method highlights which patterns of bone variability are more important for implant fitting, allowing and easing implant design improvements, as to fit a maximum of the target population. Results are presented for the optimisation of implant design of proximal human tibia, used for internal fracture fixation.

Keywords: Statistical shape models, Image registration, Principal component analysis, Level sets, Orthopaedics, Implant design

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PII: S1361-8415(10)00023-X

doi:10.1016/j.media.2010.02.008

Medical Image Analysis
Volume 14, Issue 3 , Pages 265-275, June 2010