Sparse convolutional neural network for high-resolution skull shape completion and shape super-resolution.


Journal

Scientific reports
ISSN: 2045-2322
Titre abrégé: Sci Rep
Pays: England
ID NLM: 101563288

Informations de publication

Date de publication:
19 Nov 2023
Historique:
received: 12 04 2023
accepted: 14 11 2023
medline: 27 11 2023
pubmed: 20 11 2023
entrez: 20 11 2023
Statut: epublish

Résumé

Traditional convolutional neural network (CNN) methods rely on dense tensors, which makes them suboptimal for spatially sparse data. In this paper, we propose a CNN model based on sparse tensors for efficient processing of high-resolution shapes represented as binary voxel occupancy grids. In contrast to a dense CNN that takes the entire voxel grid as input, a sparse CNN processes only on the non-empty voxels, thus reducing the memory and computation overhead caused by the sparse input data. We evaluate our method on two clinically relevant skull reconstruction tasks: (1) given a defective skull, reconstruct the complete skull (i.e., skull shape completion), and (2) given a coarse skull, reconstruct a high-resolution skull with fine geometric details (shape super-resolution). Our method outperforms its dense CNN-based counterparts in the skull reconstruction task quantitatively and qualitatively, while requiring substantially less memory for training and inference. We observed that, on the 3D skull data, the overall memory consumption of the sparse CNN grows approximately linearly during inference with respect to the image resolutions. During training, the memory usage remains clearly below increases in image resolution-an [Formula: see text] increase in voxel number leads to less than [Formula: see text] increase in memory requirements. Our study demonstrates the effectiveness of using a sparse CNN for skull reconstruction tasks, and our findings can be applied to other spatially sparse problems. We prove this by additional experimental results on other sparse medical datasets, like the aorta and the heart. Project page at https://github.com/Jianningli/SparseCNN .

Identifiants

pubmed: 37981641
doi: 10.1038/s41598-023-47437-6
pii: 10.1038/s41598-023-47437-6
pmc: PMC10658170
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

20229

Subventions

Organisme : Austrian Science Fund
ID : KLI 1044

Informations de copyright

© 2023. The Author(s).

Références

IEEE Trans Med Imaging. 2021 Sep;40(9):2329-2342
pubmed: 33939608
Med Image Anal. 2021 Oct;73:102171
pubmed: 34340106
Comput Biol Med. 2021 Oct;137:104766
pubmed: 34425418
Med Image Anal. 2023 Aug;88:102865
pubmed: 37331241

Auteurs

Jianning Li (J)

Institute for AI in Medicine (IKIM), University Medicine Essen (AöR), Girardetstraße 2, 45131, Essen, Germany. Jianning.Li@uk-essen.de.

Christina Gsaxner (C)

Institute of computer graphics and vision, Graz University of Technology, Graz, Austria.

Antonio Pepe (A)

Institute of computer graphics and vision, Graz University of Technology, Graz, Austria.

Dieter Schmalstieg (D)

Institute of computer graphics and vision, Graz University of Technology, Graz, Austria.

Jens Kleesiek (J)

Institute for AI in Medicine (IKIM), University Medicine Essen (AöR), Girardetstraße 2, 45131, Essen, Germany.

Jan Egger (J)

Institute for AI in Medicine (IKIM), University Medicine Essen (AöR), Girardetstraße 2, 45131, Essen, Germany. Jan.Egger@uk-essen.de.
Institute of computer graphics and vision, Graz University of Technology, Graz, Austria. Jan.Egger@uk-essen.de.

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