22 February 2020 Deformable multisurface segmentation of the spine for orthopedic surgery planning and simulation
Rabia Haq, Jérôme Schmid, Roderick Borgie, Joshua Cates, Michel A. Audette
Author Affiliations +
Abstract

Purpose: We describe a shape-aware multisurface simplex deformable model for the segmentation of healthy as well as pathological lumbar spine in medical image data.

Approach: This model provides an accurate and robust segmentation scheme for the identification of intervertebral disc pathologies to enable the minimally supervised planning and patient-specific simulation of spine surgery, in a manner that combines multisurface and shape statistics-based variants of the deformable simplex model. Statistical shape variation within the dataset has been captured by application of principal component analysis and incorporated during the segmentation process to refine results. In the case where shape statistics hinder detection of the pathological region, user assistance is allowed to disable the prior shape influence during deformation.

Results: Results demonstrate validation against user-assisted expert segmentation, showing excellent boundary agreement and prevention of spatial overlap between neighboring surfaces. This section also plots the characteristics of the statistical shape model, such as compactness, generalizability and specificity, as a function of the number of modes used to represent the family of shapes. Final results demonstrate a proof-of-concept deformation application based on the open-source surgery simulation Simulation Open Framework Architecture toolkit.

Conclusions: To summarize, we present a deformable multisurface model that embeds a shape statistics force, with applications to surgery planning and simulation.

© 2020 Society of Photo-Optical Instrumentation Engineers (SPIE) 2329-4302/2020/$28.00 © 2020 SPIE
Rabia Haq, Jérôme Schmid, Roderick Borgie, Joshua Cates, and Michel A. Audette "Deformable multisurface segmentation of the spine for orthopedic surgery planning and simulation," Journal of Medical Imaging 7(1), 015002 (22 February 2020). https://doi.org/10.1117/1.JMI.7.1.015002
Received: 17 December 2018; Accepted: 3 February 2020; Published: 22 February 2020
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CITATIONS
Cited by 3 scholarly publications.
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KEYWORDS
Image segmentation

Spine

Surgery

Image processing

3D modeling

Statistical modeling

Data modeling

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