Computer Assisted Surgery (Dec 2023)

An automated optimization pipeline for clinical-grade computer-assisted planning of high tibial osteotomies under consideration of weight-bearing

  • Tabitha Roth,
  • Bastian Sigrist,
  • Matthias Wieczorek,
  • Nathanael Schilling,
  • Sandro Hodel,
  • Jonas Walker,
  • Mario Somm,
  • Wolfgang Wein,
  • Reto Sutter,
  • Lazaros Vlachopoulos,
  • Jess G. Snedeker,
  • Sandro F. Fucentese,
  • Philipp Fürnstahl,
  • Fabio Carrillo

DOI
https://doi.org/10.1080/24699322.2023.2211728
Journal volume & issue
Vol. 28, no. 1

Abstract

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Abstract3D preoperative planning for high tibial osteotomies (HTO) has increasingly replaced 2D planning but is complex, time-consuming and therefore expensive. Several interdependent clinical objectives and constraints have to be considered, which often requires multiple rounds of revisions between surgeons and biomedical engineers. We therefore developed an automated preoperative planning pipeline, which takes imaging data as an input to generate a ready-to-use, patient-specific planning solution. Deep-learning based segmentation and landmark localization was used to enable the fully automated 3D lower limb deformity assessment. A 2D-3D registration algorithm allowed the transformation of the 3D bone models into the weight-bearing state. Finally, an optimization framework was implemented to generate ready-to use preoperative plannings in a fully automated fashion, using a genetic algorithm to solve the multi-objective optimization (MOO) problem based on several clinical requirements and constraints. The entire pipeline was evaluated on a large clinical dataset of 53 patient cases who previously underwent a medial opening-wedge HTO. The pipeline was used to automatically generate preoperative solutions for these patients. Five experts blindly compared the automatically generated solutions to the previously generated manual plannings. The overall mean rating for the algorithm-generated solutions was better than for the manual solutions. In 90% of all comparisons, they were considered to be equally good or better than the manual solution. The combined use of deep learning approaches, registration methods and MOO can reliably produce ready-to-use preoperative solutions that significantly reduce human workload and related health costs.

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