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A statistical shape model for radiation-free assessment and classification of craniosynostosis

Authors :
Schaufelberger, Matthias
Kühle, Reinald Peter
Wachter, Andreas
Weichel, Frederic
Hagen, Niclas
Ringwald, Friedemann
Eisenmann, Urs
Hoffmann, Jürgen
Engel, Michael
Freudlsperger, Christian
Nahm, Werner
Publication Year :
2022

Abstract

The assessment of craniofacial deformities requires patient data which is sparsely available. Statistical shape models provide realistic and synthetic data enabling comparisons of existing methods on a common dataset. We build the first publicly available statistical 3D head model of craniosynostosis patients and the first model focusing on infants younger than 1.5 years. We further present a shape-model-based classification pipeline to distinguish between three different classes of craniosynostosis and a control group on photogrammetric surface scans. To the best of our knowledge, our study uses the largest dataset of craniosynostosis patients in a classification study for craniosynostosis and statistical shape modeling to date. We demonstrate that our shape model performs similar to other statistical shape models of the human head. Craniosynostosis-specific pathologies are represented in the first eigenmodes of the model. Regarding the automatic classification of craniosynostis, our classification approach yields an accuracy of 97.8%, comparable to other state-of-the-art methods using both computed tomography scans and stereophotogrammetry. Our publicly available, craniosynostosis-specific statistical shape model enables the assessment of craniosynostosis on realistic and synthetic data. We further present a state-of-the-art shape-model-based classification approach for a radiation-free diagnosis of craniosynostosis.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.03288
Document Type :
Working Paper