Literature DB >> 34340106

Automatic skull defect restoration and cranial implant generation for cranioplasty.

Jianning Li1, Gord von Campe2, Antonio Pepe3, Christina Gsaxner3, Enpeng Wang4, Xiaojun Chen4, Ulrike Zefferer5, Martin Tödtling5, Marcell Krall5, Hannes Deutschmann6, Ute Schäfer7, Dieter Schmalstieg8, Jan Egger9.   

Abstract

A fast and fully automatic design of 3D printed patient-specific cranial implants is highly desired in cranioplasty - the process to restore a defect on the skull. We formulate skull defect restoration as a 3D volumetric shape completion task, where a partial skull volume is completed automatically. The difference between the completed skull and the partial skull is the restored defect; in other words, the implant that can be used in cranioplasty. To fulfill the task of volumetric shape completion, a fully data-driven approach is proposed. Supervised skull shape learning is performed on a database containing 167 high-resolution healthy skulls. In these skulls, synthetic defects are injected to create training and evaluation data pairs. We propose a patch-based training scheme tailored for dealing with high-resolution and spatially sparse data, which overcomes the disadvantages of conventional patch-based training methods in high-resolution volumetric shape completion tasks. In particular, the conventional patch-based training is applied to images of high resolution and proves to be effective in tasks such as segmentation. However, we demonstrate the limitations of conventional patch-based training for shape completion tasks, where the overall shape distribution of the target has to be learnt, since it cannot be captured efficiently by a sub-volume cropped from the target. Additionally, the standard dense implementation of a convolutional neural network tends to perform poorly on sparse data, such as the skull, which has a low voxel occupancy rate. Our proposed training scheme encourages a convolutional neural network to learn from the high-resolution and spatially sparse data. In our study, we show that our deep learning models, trained on healthy skulls with synthetic defects, can be transferred directly to craniotomy skulls with real defects of greater irregularity, and the results show promise for clinical use. Project page: https://github.com/Jianningli/MIA.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Cranial implant design; Cranioplasty; Craniotomy; Deep learning; Shape completion

Mesh:

Year:  2021        PMID: 34340106     DOI: 10.1016/j.media.2021.102171

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  1 in total

1.  MUG500+: Database of 500 high-resolution healthy human skulls and 29 craniotomy skulls and implants.

Authors:  Jianning Li; Marcell Krall; Florian Trummer; Afaque Rafique Memon; Antonio Pepe; Christina Gsaxner; Yuan Jin; Xiaojun Chen; Hannes Deutschmann; Ulrike Zefferer; Ute Schäfer; Gord von Campe; Jan Egger
Journal:  Data Brief       Date:  2021-11-04
  1 in total

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