Deep learning for cranioplasty in clinical practice: Going from synthetic to real patient data.

Journal: Computers in biology and medicine
Published Date:

Abstract

Correct virtual reconstruction of a defective skull is a prerequisite for successful cranioplasty and its automatization has the potential for accelerating and standardizing the clinical workflow. This work provides a deep learning-based method for the reconstruction of a skull shape and cranial implant design on clinical data of patients indicated for cranioplasty. The method is based on a cascade of multi-branch volumetric CNNs that enables simultaneous training on two different types of cranioplasty ground-truth data: the skull patch, which represents the exact shape of the missing part of the original skull, and which can be easily created artificially from healthy skulls, and expert-designed cranial implant shapes that are much harder to acquire. The proposed method reaches an average surface distance of the reconstructed skull patches of 0.67 mm on a clinical test set of 75 defective skulls. It also achieves a 12% reduction of a newly proposed defect border Gaussian curvature error metric, compared to a baseline model trained on synthetic data only. Additionally, it produces directly 3D printable cranial implant shapes with a Dice coefficient 0.88 and a surface error of 0.65 mm. The outputs of the proposed skull reconstruction method reach good quality and can be considered for use in semi- or fully automatic clinical cranial implant design workflows.

Authors

  • Oldřich Kodym
    Department of Computer Graphics and Multimedia, Brno University of Technology, Božetěchova 2, 612 66 Brno, Czech Republic. Electronic address: ikodym@fit.vutbr.cz.
  • Michal Španěl
    Department of Computer Graphics and Multimedia, Brno University of Technology, Božetěchova 2, 612 66 Brno, Czech Republic.
  • Adam Herout
    Department of Computer Graphics and Multimedia, Brno University of Technology, Božetěchova 2, 612 66 Brno, Czech Republic.