Abstract: Deep Geometric Supervision Improves Spatial Generalization in Orthopedic Surgery Planning

Kordon F, Maier A, Swartman B, Privalov M, El Barbari JS, Kunze H (2023)


Publication Type: Conference contribution

Publication year: 2023

Journal

Publisher: Springer Science and Business Media Deutschland GmbH

Pages Range: 244-

Conference Proceedings Title: Informatik aktuell

Event location: Braunschweig, DEU

ISBN: 9783658416560

DOI: 10.1007/978-3-658-41657-7_52

Abstract

Careful planning of the individual surgical steps is an indispensable tool for the orthopedic surgeon, elevating the procedure’s safety and ensuring high levels of surgical precision [1]. A surgical plan for routine interventions like ligament reconstruction describes several salient landmarks on a 2D X-ray image and relates them in a geometric construction. Previous attempts to automate this planning type typically separate automatic feature localization with a learning algorithm and geometric post-processing. The separation allows us to mimic the manual step-wise workflow and enables granular control over each planning step. However, this approach comes with the drawbacks of optimizing a proxy criterion different from the actual planning target, limiting generalization to complex image impressions and the positioning accuracy that can be achieved. We address this problem by translating the geometric steps to a continuously differentiable function, enabling end-to-end gradient flow. Combining this additional objective function with the original proxy formulation improves target positioning while preserving the geometric relation of the underlying anatomical structures. We name this concept Deep Geometric Supervision. The developed method is evaluated for graft fixation site identification in medial patellofemoral ligament (MPFL) reconstruction surgery on (1) 221 diagnostic and (2) 89 intra-operative knee radiographs. Using the companion objective reduces the median Euclidean Distance error for MPFL insertion site localization from (1) 2.29mm to 1.58 mm and (2) 8.70 px to 3.44 px, respectively. Furthermore, we empirically show that our method improves spatial generalization for strongly truncated images where only a small part of the relevant anatomy is visible.

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How to cite

APA:

Kordon, F., Maier, A., Swartman, B., Privalov, M., El Barbari, J.S., & Kunze, H. (2023). Abstract: Deep Geometric Supervision Improves Spatial Generalization in Orthopedic Surgery Planning. In Thomas M. Deserno, Heinz Handels, Andreas Maier, Klaus Maier-Hein, Christoph Palm, Thomas Tolxdorff (Eds.), Informatik aktuell (pp. 244-). Braunschweig, DEU: Springer Science and Business Media Deutschland GmbH.

MLA:

Kordon, Florian, et al. "Abstract: Deep Geometric Supervision Improves Spatial Generalization in Orthopedic Surgery Planning." Proceedings of the Bildverarbeitung für die Medizin Workshop, BVM 2023, Braunschweig, DEU Ed. Thomas M. Deserno, Heinz Handels, Andreas Maier, Klaus Maier-Hein, Christoph Palm, Thomas Tolxdorff, Springer Science and Business Media Deutschland GmbH, 2023. 244-.

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