Título
A population-specific material model for sagittal craniosynostosis to predict surgical shape outcomesAutor-a
Autor-a (de otra institución)
Otras instituciones
Great Ormond Street Hospital for Children NHS Foundation TrustVersión
Version publicada
Derechos
© 2019 The Author(s)Acceso
Acceso abiertoVersión del editor
https://doi.org/10.1007/s10237-019-01229-yPublicado en
Biomechanics and Modeling in Mechanobiology 2019Editor
Springer NaturePalabras clave
Craniofacial surgery
Scaphocephaly
Spring cranioplasty
Finite element modelling ... [+]
Scaphocephaly
Spring cranioplasty
Finite element modelling ... [+]
Craniofacial surgery
Scaphocephaly
Spring cranioplasty
Finite element modelling
Design of experiments [-]
Scaphocephaly
Spring cranioplasty
Finite element modelling
Design of experiments [-]
Resumen
Sagittal craniosynostosis consists of premature fusion (ossification) of the sagittal suture during infancy, resulting in head deformity and brain growth restriction. Spring-assisted cranioplasty (SAC ... [+]
Sagittal craniosynostosis consists of premature fusion (ossification) of the sagittal suture during infancy, resulting in head deformity and brain growth restriction. Spring-assisted cranioplasty (SAC) entails skull incisions to free the fused suture and insertion of two springs (metallic distractors) to promote cranial reshaping. Although safe and effective, SAC outcomes remain uncertain. We aimed hereby to obtain and validate a skull material model for SAC outcome prediction. Computed
tomography data relative to 18 patients were processed to simulate surgical cuts and spring location. A rescaling model for age matching was created using retrospective data and validated. Design of experiments was used to assess the effect of different material property parameters on the model output. Subsequent material optimization—using retrospective clinical spring measurements—was performed for nine patients. A population-derived material model was obtained and applied to the whole population. Results showed that bone Young’s modulus and relaxation modulus had the largest effect on the model predictions: the use of the population-derived material model had a negligible effect on improving the prediction of on-table opening while significantly improved the prediction of spring kinematics at follow-up. The model was validated using on-table 3D scans for nine patients: the predicted head shape approximated within 2 mm the 3D scan model in 80% of the surface points, in 8 out of 9 patients. The accuracy and reliability of the developed computational model of SAC were increased using population data: this tool is now ready for prospective clinical application. [-]
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