Please use this identifier to cite or link to this item: https://hdl.handle.net/1822/52815

TitleBrain extraction in partial volumes T2*@7T by using a quasi-anatomic segmentation with bias field correction
Author(s)Valente, João
Vieira, Pedro Miguel
Couto, Carlos
Lima, C. S.
KeywordsBrain extraction
Partial brain scanning
High resolution MRI
Multiple sclerosis
Issue dateFeb-2018
PublisherElsevier
JournalJournal of Neuroscience Methods
Abstract(s)Background Poor brain extraction in Magnetic Resonance Imaging (MRI) has negative consequences in several types of brain post-extraction such as tissue segmentation and related statistical measures or pattern recognition algorithms. Current state of the art algorithms for brain extraction work on weighted T1 and T2, being not adequate for non-whole brain images such as the case of T2*FLASH@7T partial volumes. New method This paper proposes two new methods that work directly in T2*FLASH@7T partial volumes. The first is an improvement of the semi-automatic threshold-with-morphology approach adapted to incomplete volumes. The second method uses an improved version of a current implementation of the fuzzy c-means algorithm with bias correction for brain segmentation. Results Under high inhomogeneity conditions the performance of the first method degrades, requiring user intervention which is unacceptable. The second method performed well for all volumes, being entirely automatic. Comparison with existing methods State of the art algorithms for brain extraction are mainly semi-automatic, requiring a correct initialization by the user and knowledge of the software. These methods can't deal with partial volumes and/or need information from atlas which is not available in T2*FLASH@7T. Also, combined volumes suffer from manipulations such as re-sampling which deteriorates significantly voxel intensity structures making segmentation tasks difficult. The proposed method can overcome all these difficulties, reaching good results for brain extraction using only T2*FLASH@7T volumes. Conclusions The development of this work will lead to an improvement of automatic brain lesions segmentation in T2*FLASH@7T volumes, becoming more important when lesions such as cortical Multiple-Sclerosis need to be detected.
TypeArticle
URIhttps://hdl.handle.net/1822/52815
DOI10.1016/j.jneumeth.2017.12.006
ISSN0165-0270
e-ISSN1872-678X
Peer-Reviewedyes
AccessRestricted access (UMinho)
Appears in Collections:DEI - Artigos em revistas internacionais

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