Print Email Facebook Twitter Image registration for atlas-based analysis of brain regions in children with craniosynostosis Title Image registration for atlas-based analysis of brain regions in children with craniosynostosis Author Wijnbergen, Diede (TU Delft Mechanical, Maritime and Materials Engineering) Contributor Harlaar, J. (mentor) Bron, Esther E. (mentor) Mathijssen, Irene (mentor) Degree granting institution Delft University of Technology Programme Technical Medicine Date 2021-07-26 Abstract To optimize treatment in patients with craniosynostosis, betterunderstanding of the disease process is essential, for example usingbrain MRI analysis to study brain volume, brain perfusion, andbrain micro-architecture. However, such analyses require image registration,which is challenging because of disease-related brain deformations.Therefore, the aim of this project is to optimize image registration forchildren with syndromic craniosynostosis, aged 0 to 6 years old. We comparedconventional and deep learning registration methods in a quantitativeevaluation using synthetic data (i.e. deformed atlases) and in aqualitative experiment using registration of atlas scans to craniosynostosisscans. In addition to comparing registration methods, we evaluate theinuence of using both T1-weighted and T2-weighted scans and using aninfant or adult atlas. Our qualitative results showed that head shape wasregistered well by both the conventional and the deep learning registrationmethod, while the deep learning method performed better regardingregistration of the ventricles. Quantitatively, our results showed thatwhite matter structures were registered well (Dice: 0.70-0.81). However,regarding registration of the cortical brain regions, both methods resultedin a sub-optimal accuracy (Dice: 0.45-0.63). In general, the approachesof using T2-weighted infant atlases or T1-weighted adult atlases outperformedthe alternative approaches. In conclusion, we obtained the bestregistration result using the deep learning approach, probably as priorspatial information is incorporated in the training process. In addition,we showed that infant atlases based on T2-weighted scans lead to thebest results in registration of infant scans. Subject Image RegistrationCraniosynostosisDeep Learning To reference this document use: http://resolver.tudelft.nl/uuid:00b40c36-9122-475e-be54-314e03d9b1e5 Part of collection Student theses Document type master thesis Rights © 2021 Diede Wijnbergen Files PDF TM30004_Thesis_Final_Report.pdf 19.35 MB Close viewer /islandora/object/uuid:00b40c36-9122-475e-be54-314e03d9b1e5/datastream/OBJ/view