Title
Directional volume growing for the extraction of white matter tracts from diffusion tensor data
Abstract
Diffusion tensor imaging measures diffusion of water in tissue. Within structured tissue, such as neural fiber tracts of the human brain, anisotropic diffusion is observed since the cell membranes of the long cylindric nerves restrict diffusion. Diffusion tensor imaging thus provides information about neural fiber tracts within the human brain which is of major interest for neurosurgery. However, the visualization is a challenging task due to noise and limited resolution of the data. A common visualization strategy of white matter is fiber tracking which utilizes techniques known from flow visualization. The resulting streamlines provide a good impression of the spatial relation of fibers and anatomy. Therefore, they are a valuable supplement for neurosurgical planning. As a drawback. fibers may diverge from the exact path due to numerical inaccuracies during streamline propagation even if higher order integration is used. To overcome this problem, a novel strategy for directional volume growing is presented which enables the extraction of separate tract systems and thus allows to compare and estimate the quality of fiber tracking algorithms. Furthermore, the presented approach is suited to get a more precise representation of the volume encompassing white matter tracts. Thereby, the entire volume potentially containing fibers is provided in contrast to fiber tracking which only shows a more restricted representation of the actual volume of interest. This is of major importance in brain tumor cases where white matter tracts are in the close vicinity of brain tumors. Overall, the presented strategy contributes to make surgical planning safer and more reliable.
Year
DOI
Venue
2005
10.1117/12.594621
PROCEEDINGS OF THE SOCIETY OF PHOTO-OPTICAL INSTRUMENTATION ENGINEERS (SPIE)
Keywords
Field
DocType
diffusion tensor imaging,volume growing,fiber tracts
Spatial relation,Anisotropic diffusion,Computer vision,Surgical planning,Diffusion MRI,White matter,Fiber,Visualization,Computer science,Artificial intelligence,Flow visualization
Conference
Volume
ISSN
Citations 
5744
0277-786X
4
PageRank 
References 
Authors
0.69
7
5
Name
Order
Citations
PageRank
Dorit Merhof118955.02
Peter Hastreiter231044.28
Christopher Nimsky346642.20
Rudolf Fahlbusch47911.14
G. Greiner5111.22