Volume transition analysis: A new approach to resolve reclassification of brain tissue in repeated MRI scans

Teuber A, Tenberge J, Kugel H, Deppe M, Berger K, Wersching H

Research article (journal) | Peer reviewed

Abstract

Background: Variability in brain tissue volumes derived from magnetic resonance images is attributable to various sources. In quantitative comparisons it is therefore crucial to distinguish between biologically and methodically conditioned variance and to take spatial accordance into account. New method: We introduce volume transition analysis as a method that not only provides details on numerical and spatial accordance of tissue volumes in repeated scans but also on voxel shifts between tissue types. Based on brain tissue probability maps, mono- and bidirectional voxel shifts can be examined by explicitly separating volume transitions into source and target. We apply the approach to a set of subject data from repeated intra-scanner (one week and 30month interval) as well as inter-scanner measurements. Results: In all measurement scenarios, we found similar inter-class transitions of 9.9-15.9% of intracranial volume. The percentage of monodirectional net volume transition however increases from 0.3% in short term intra-scanner to 1.6% in long term intra-scanner and 9.3% in inter-scanner comparisons. Comparison with existing methods: Unlike most routinely used variability measures volume transition analysis is able to monitor reclassifications and thus to quantify not only balanced flows but also the amount of monodirectional net flows between tissue classes. The approach is independent from group analysis and can thus be applied in as few as two images. Conclusions: The proposed method is an easily applicable tool that is useful in discovering intra-individual brain changes and assists in separating biological from technical variance in structural brain measures.

Details about the publication

JournalJournal of Neuroscience Methods (J Neurosci Methods)
Volume243
Issuenull
Page range78-83
StatusPublished
Release year2015
Language in which the publication is writtenEnglish
DOI10.1016/j.jneumeth.2015.01.028
Link to the full texthttp://www.scopus.com/inward/record.url?partnerID=HzOxMe3b&scp=84924274563&origin=inward
KeywordsBrain volume; Image segmentation; MRI; Reliability

Authors from the University of Münster

Berger, Klaus
Institute of Epidemiology and Social Medicine
Deppe, Michael
Department for Neurology
Minnerup, Heike
Institute of Epidemiology and Social Medicine
Tenberge, Jan-Gerd
Department for Neurology
Teuber, Anja
Institute of Epidemiology and Social Medicine