Automatic brain segmentation in Time-of-Flight MRA images.

Standard

Automatic brain segmentation in Time-of-Flight MRA images. / Forkert, Nils Daniel; Säring, D; Fiehler, Jens; Illies, T; Möller, D; Handels, Heinz.

In: METHOD INFORM MED, Vol. 48, No. 5, 5, 2009, p. 399-407.

Research output: SCORING: Contribution to journalSCORING: Journal articleResearchpeer-review

Harvard

Forkert, ND, Säring, D, Fiehler, J, Illies, T, Möller, D & Handels, H 2009, 'Automatic brain segmentation in Time-of-Flight MRA images.', METHOD INFORM MED, vol. 48, no. 5, 5, pp. 399-407. <http://www.ncbi.nlm.nih.gov/pubmed/19696951?dopt=Citation>

APA

Forkert, N. D., Säring, D., Fiehler, J., Illies, T., Möller, D., & Handels, H. (2009). Automatic brain segmentation in Time-of-Flight MRA images. METHOD INFORM MED, 48(5), 399-407. [5]. http://www.ncbi.nlm.nih.gov/pubmed/19696951?dopt=Citation

Vancouver

Forkert ND, Säring D, Fiehler J, Illies T, Möller D, Handels H. Automatic brain segmentation in Time-of-Flight MRA images. METHOD INFORM MED. 2009;48(5):399-407. 5.

Bibtex

@article{04b423e8601c4ce198ef4d844a6aba86,
title = "Automatic brain segmentation in Time-of-Flight MRA images.",
abstract = "OBJECTIVES: Cerebral vascular malformations might, caused by ruptures, lead to strokes. The rupture risk depends to a great extent on the individual anatomy of the vasculature. The 3D Time-of-Flight (TOF) MRA technique is one of the most commonly used non-invasive imaging techniques to obtain knowledge about the individual vascular anatomy. Unfortunately TOF images exhibit drawbacks for segmentation and direct volume visualization of the vasculature. To overcome these drawbacks an initial segmentation of the brain tissue is required. METHODS: After preprocessing of the data is applied the low-intensity tissues surrounding the brain are segmented using region growing. In a following step this segmentation is used to extract supporting points at the border of the brain for a graph-based contour extraction. Finally a consistency check is performed to identify local outliers which are corrected using non-linear registration. RESULTS: A quantitative validation of the method proposed was performed on 18 clinical datasets based on manual segmentations. A mean Dice coefficient of 0.989 was achieved while in average 99.56% of all vessel voxels were included by the brain segmentation. A comparison to the results yielded by three commonly used tools for brain segmentation revealed that the method described achieves better results, using TOF images as input, which are within the inter-observer variability. CONCLUSION: The method suggested allows a robust and automatic segmentation of brain tissue in TOF images. It is especially helpful to improve the automatic segmentation or direct volume rendering of the cerebral vascular system.",
author = "Forkert, {Nils Daniel} and D S{\"a}ring and Jens Fiehler and T Illies and D M{\"o}ller and Heinz Handels",
year = "2009",
language = "Deutsch",
volume = "48",
pages = "399--407",
journal = "METHOD INFORM MED",
issn = "0026-1270",
publisher = "Schattauer",
number = "5",

}

RIS

TY - JOUR

T1 - Automatic brain segmentation in Time-of-Flight MRA images.

AU - Forkert, Nils Daniel

AU - Säring, D

AU - Fiehler, Jens

AU - Illies, T

AU - Möller, D

AU - Handels, Heinz

PY - 2009

Y1 - 2009

N2 - OBJECTIVES: Cerebral vascular malformations might, caused by ruptures, lead to strokes. The rupture risk depends to a great extent on the individual anatomy of the vasculature. The 3D Time-of-Flight (TOF) MRA technique is one of the most commonly used non-invasive imaging techniques to obtain knowledge about the individual vascular anatomy. Unfortunately TOF images exhibit drawbacks for segmentation and direct volume visualization of the vasculature. To overcome these drawbacks an initial segmentation of the brain tissue is required. METHODS: After preprocessing of the data is applied the low-intensity tissues surrounding the brain are segmented using region growing. In a following step this segmentation is used to extract supporting points at the border of the brain for a graph-based contour extraction. Finally a consistency check is performed to identify local outliers which are corrected using non-linear registration. RESULTS: A quantitative validation of the method proposed was performed on 18 clinical datasets based on manual segmentations. A mean Dice coefficient of 0.989 was achieved while in average 99.56% of all vessel voxels were included by the brain segmentation. A comparison to the results yielded by three commonly used tools for brain segmentation revealed that the method described achieves better results, using TOF images as input, which are within the inter-observer variability. CONCLUSION: The method suggested allows a robust and automatic segmentation of brain tissue in TOF images. It is especially helpful to improve the automatic segmentation or direct volume rendering of the cerebral vascular system.

AB - OBJECTIVES: Cerebral vascular malformations might, caused by ruptures, lead to strokes. The rupture risk depends to a great extent on the individual anatomy of the vasculature. The 3D Time-of-Flight (TOF) MRA technique is one of the most commonly used non-invasive imaging techniques to obtain knowledge about the individual vascular anatomy. Unfortunately TOF images exhibit drawbacks for segmentation and direct volume visualization of the vasculature. To overcome these drawbacks an initial segmentation of the brain tissue is required. METHODS: After preprocessing of the data is applied the low-intensity tissues surrounding the brain are segmented using region growing. In a following step this segmentation is used to extract supporting points at the border of the brain for a graph-based contour extraction. Finally a consistency check is performed to identify local outliers which are corrected using non-linear registration. RESULTS: A quantitative validation of the method proposed was performed on 18 clinical datasets based on manual segmentations. A mean Dice coefficient of 0.989 was achieved while in average 99.56% of all vessel voxels were included by the brain segmentation. A comparison to the results yielded by three commonly used tools for brain segmentation revealed that the method described achieves better results, using TOF images as input, which are within the inter-observer variability. CONCLUSION: The method suggested allows a robust and automatic segmentation of brain tissue in TOF images. It is especially helpful to improve the automatic segmentation or direct volume rendering of the cerebral vascular system.

M3 - SCORING: Zeitschriftenaufsatz

VL - 48

SP - 399

EP - 407

JO - METHOD INFORM MED

JF - METHOD INFORM MED

SN - 0026-1270

IS - 5

M1 - 5

ER -