A Challenging Issue: Detection of White Matter Hyperintensities in Neonatal Brain MRI
From LRDE
- Authors
- Baptiste Morel, Yongchao Xu, Alessio Virzi, Thierry Géraud, Catherine Adamsbaum, Isabelle Bloch
- Where
- 38th Annual International Conference of the IEEE Engineering in Medicine and Biology Society
- Place
- Orlando, Florida, USA
- Type
- inproceedings
- Keywords
- Image
- Date
- 2016-05-20
Abstract
The progress of magnetic resonance imaging (MRI) allows for a precise exploration of the brain of premature infants at term equivalent age. The so-called DEHSI (diffuse excessive high signal intensity) of the white matter of premature brains remains a challenging issue in terms of definition, and thus of interpretation. We propose a semi-automatic detection and quantification method of white matter hyperintensities in MRI relying on morphological operators and max-tree representations, which constitutes a powerful tool to help radiologists to improve their interpretation. Results show better reproducibility and robustness than interactive segmentation.
Documents
Bibtex (lrde.bib)
@InProceedings{ morel.16.embc, author = {Baptiste Morel and Yongchao Xu and Alessio Virzi and Thierry G\'eraud and Catherine Adamsbaum and Isabelle Bloch}, title = {A Challenging Issue: Detection of White Matter Hyperintensities in Neonatal Brain {MRI}}, booktitle = {38th Annual International Conference of the IEEE Engineering in Medicine and Biology Society}, year = {2016}, month = aug, address = {Orlando, Florida, USA}, abstract = {The progress of magnetic resonance imaging (MRI) allows for a precise exploration of the brain of premature infants at term equivalent age. The so-called DEHSI (diffuse excessive high signal intensity) of the white matter of premature brains remains a challenging issue in terms of definition, and thus of interpretation. We propose a semi-automatic detection and quantification method of white matter hyperintensities in MRI relying on morphological operators and max-tree representations, which constitutes a powerful tool to help radiologists to improve their interpretation. Results show better reproducibility and robustness than interactive segmentation.}, note = {To appear} }