| Literature DB >> 29896582 |
Xiao Yang1, Xu Han1, Eunbyung Park1, Stephen Aylward2, Roland Kwitt3, Marc Niethammer1,4.
Abstract
This paper proposes an approach to improve atlas-to-image registration accuracy with large pathologies. Instead of directly registering an atlas to a pathological image, the method learns a mapping from the pathological image to a quasi-normal image, for which more accurate registration is possible. Specifically, the method uses a deep variational convolutional encoder-decoder network to learn the mapping. Furthermore, the method estimates local mapping uncertainty through network inference statistics and uses those estimates to down-weight the image registration similarity measure in areas of high uncertainty. The performance of the method is quantified using synthetic brain tumor images and images from the brain tumor segmentation challenge (BRATS 2015).Entities:
Year: 2016 PMID: 29896582 PMCID: PMC5994389 DOI: 10.1007/978-3-319-46630-9_10
Source DB: PubMed Journal: Simul Synth Med Imaging