Automatic CNN-based 3D/2D non-rigid registration platform for fast 3D femur reconstruction and clinical 3D measurements from Bi-planar radiographs

  • Nahid Babazadeh Khameneh
  • , Thierry Cresson
  • , Frédéric Lavoie
  • , Jacques de Guise
  • , Carlos Vázquez

Résultats de recherche: Contribution à un journalArticle publié dans une revue, révisé par les pairsRevue par des pairs

Résumé

Purpose: This paper presents an automatic 3D/2D non-rigid registration method for fast 3D reconstruction and clinical measurements of the femur. Approach: The proposed CNN cascade-based 3D/2D registration platform comprises three major steps to fit a generic 3D femur model into 2D bi-planar EOS® radiographs: 1) Pose estimation (CNNPose)- a combination of Principal Component Analysis (PCA) and CNN-based 3D/2D similarity registration; 2) 3D shape deformation (CNNShape)- a CNN-based 3D displacement estimation of handles followed by Moving Least Square (MLS) shape deformation to extend an as-rigid-as-possible deformation to the entire bone, 3) 3D scale deformation (CNNScale)- a CNN-based 3D scale ratio estimation of handles followed by MLS-based model rescaling. Results: The accuracy of the method is evaluated in comparison to, first, a clinically proved semi-automatic method on 15 patients, and second, Computerized Tomography CT scans of five new patients. In the first validation, the mean ± standard deviation (STD) of the Root Mean Square of point-to-surface distance (RMS-P2S) error is 0.88± 0.29 mm. For the second validation, the mean± STD of RMS-P2S error is 2.70± 0.39 mm. Four clinical measurements of the reconstructed 3D femurs are computed and compared with the first validation set. For each clinical measurement, the Mean Absolute Errors (MAE) is below 1 mm or 1°. Conclusions: The presented automatic CNN cascade-based framework efficiently registers the generic 3D femur models into bi-planar radiographs. The CNN-based 3D handles displacement and scale estimation eliminates manual-annotations and user-interventions for MLS deformation while maintaining accuracy and speed. This system is applicable for other bones such as the tibia.

langue originaleAnglais
Numéro d'article110676
journalComputers in Biology and Medicine
Volume196
Les DOIs
étatPublié - sept. 2025

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