-
Je něco špatně v tomto záznamu ?
Semi-automated segmentation of pre-operative low grade gliomas in magnetic resonance imaging
Z. Akkus, J. Sedlar, L. Coufalova, P. Korfiatis, TL. Kline, JD. Warner, J. Agrawal, BJ. Erickson,
Jazyk angličtina Země Anglie, Velká Británie
Typ dokumentu časopisecké články, Research Support, N.I.H., Extramural, práce podpořená grantem
NLK
BioMedCentral
od 2000-06-01
BioMedCentral Open Access
od 2014
Directory of Open Access Journals
od 2014
Free Medical Journals
od 2004 do Před 2 roky
PubMed Central
od 2000
Europe PubMed Central
od 2000
ProQuest Central
od 2015-01-01
Open Access Digital Library
od 2000-01-01
Open Access Digital Library
od 2014-01-01
Medline Complete (EBSCOhost)
od 2008-01-02
Health & Medicine (ProQuest)
od 2015-01-01
Health Management Database (ProQuest)
od 2015-01-01
ROAD: Directory of Open Access Scholarly Resources
od 2000
Springer Nature OA/Free Journals
od 2000-06-01
- MeSH
- algoritmy MeSH
- gliom patologie chirurgie MeSH
- lidé MeSH
- magnetická rezonanční tomografie * metody MeSH
- nádory mozku patologie chirurgie MeSH
- počítačové zpracování obrazu * MeSH
- senzitivita a specificita MeSH
- Check Tag
- lidé MeSH
- Publikační typ
- časopisecké články MeSH
- práce podpořená grantem MeSH
- Research Support, N.I.H., Extramural MeSH
BACKGROUND: Segmentation of pre-operative low-grade gliomas (LGGs) from magnetic resonance imaging is a crucial step for studying imaging biomarkers. However, segmentation of LGGs is particularly challenging because they rarely enhance after gadolinium administration. Like other gliomas, they have irregular tumor shape, heterogeneous composition, ill-defined tumor boundaries, and limited number of image types. To overcome these challenges we propose a semi-automated segmentation method that relies only on T2-weighted (T2W) and optionally post-contrast T1-weighted (T1W) images. METHODS: First, the user draws a region-of-interest (ROI) that completely encloses the tumor and some normal tissue. Second, a normal brain atlas and post-contrast T1W images are registered to T2W images. Third, the posterior probability of each pixel/voxel belonging to normal and abnormal tissues is calculated based on information derived from the atlas and ROI. Finally, geodesic active contours use the probability map of the tumor to shrink the ROI until optimal tumor boundaries are found. This method was validated against the true segmentation (TS) of 30 LGG patients for both 2D (1 slice) and 3D. The TS was obtained from manual segmentations of three experts using the Simultaneous Truth and Performance Level Estimation (STAPLE) software. Dice and Jaccard indices and other descriptive statistics were computed for the proposed method, as well as the experts' segmentation versus the TS. We also tested the method with the BraTS datasets, which supply expert segmentations. RESULTS AND DISCUSSION: For 2D segmentation vs. TS, the mean Dice index was 0.90 ± 0.06 (standard deviation), sensitivity was 0.92, and specificity was 0.99. For 3D segmentation vs. TS, the mean Dice index was 0.89 ± 0.06, sensitivity was 0.91, and specificity was 0.99. The automated results are comparable with the experts' manual segmentation results. CONCLUSIONS: We present an accurate, robust, efficient, and reproducible segmentation method for pre-operative LGGs.
Citace poskytuje Crossref.org
- 000
- 00000naa a2200000 a 4500
- 001
- bmc16010005
- 003
- CZ-PrNML
- 005
- 20160412123621.0
- 007
- ta
- 008
- 160408s2015 enk f 000 0|eng||
- 009
- AR
- 024 7_
- $a 10.1186/s40644-015-0047-z $2 doi
- 024 7_
- $a 10.1186/s40644-015-0047-z $2 doi
- 035 __
- $a (PubMed)26268363
- 040 __
- $a ABA008 $b cze $d ABA008 $e AACR2
- 041 0_
- $a eng
- 044 __
- $a enk
- 100 1_
- $a Akkus, Zeynettin $u Department of Radiology, Mayo Clinic, 200 First St. SW, Rochester, MN, 55905, USA. akkus.zeynettin@mayo.edu. $7 gn_A_00003005
- 245 10
- $a Semi-automated segmentation of pre-operative low grade gliomas in magnetic resonance imaging / $c Z. Akkus, J. Sedlar, L. Coufalova, P. Korfiatis, TL. Kline, JD. Warner, J. Agrawal, BJ. Erickson,
- 520 9_
- $a BACKGROUND: Segmentation of pre-operative low-grade gliomas (LGGs) from magnetic resonance imaging is a crucial step for studying imaging biomarkers. However, segmentation of LGGs is particularly challenging because they rarely enhance after gadolinium administration. Like other gliomas, they have irregular tumor shape, heterogeneous composition, ill-defined tumor boundaries, and limited number of image types. To overcome these challenges we propose a semi-automated segmentation method that relies only on T2-weighted (T2W) and optionally post-contrast T1-weighted (T1W) images. METHODS: First, the user draws a region-of-interest (ROI) that completely encloses the tumor and some normal tissue. Second, a normal brain atlas and post-contrast T1W images are registered to T2W images. Third, the posterior probability of each pixel/voxel belonging to normal and abnormal tissues is calculated based on information derived from the atlas and ROI. Finally, geodesic active contours use the probability map of the tumor to shrink the ROI until optimal tumor boundaries are found. This method was validated against the true segmentation (TS) of 30 LGG patients for both 2D (1 slice) and 3D. The TS was obtained from manual segmentations of three experts using the Simultaneous Truth and Performance Level Estimation (STAPLE) software. Dice and Jaccard indices and other descriptive statistics were computed for the proposed method, as well as the experts' segmentation versus the TS. We also tested the method with the BraTS datasets, which supply expert segmentations. RESULTS AND DISCUSSION: For 2D segmentation vs. TS, the mean Dice index was 0.90 ± 0.06 (standard deviation), sensitivity was 0.92, and specificity was 0.99. For 3D segmentation vs. TS, the mean Dice index was 0.89 ± 0.06, sensitivity was 0.91, and specificity was 0.99. The automated results are comparable with the experts' manual segmentation results. CONCLUSIONS: We present an accurate, robust, efficient, and reproducible segmentation method for pre-operative LGGs.
- 650 _2
- $a algoritmy $7 D000465
- 650 _2
- $a nádory mozku $x patologie $x chirurgie $7 D001932
- 650 _2
- $a gliom $x patologie $x chirurgie $7 D005910
- 650 _2
- $a lidé $7 D006801
- 650 12
- $a počítačové zpracování obrazu $7 D007091
- 650 12
- $a magnetická rezonanční tomografie $x metody $7 D008279
- 650 _2
- $a senzitivita a specificita $7 D012680
- 655 _2
- $a časopisecké články $7 D016428
- 655 _2
- $a Research Support, N.I.H., Extramural $7 D052061
- 655 _2
- $a práce podpořená grantem $7 D013485
- 700 1_
- $a Sedlar, Jiri $u Department of Radiology, Mayo Clinic, 200 First St. SW, Rochester, MN, 55905, USA. Sedlar.Jiri@mayo.edu.
- 700 1_
- $a Coufalova, Lucie $u Department of Radiology, Mayo Clinic, 200 First St. SW, Rochester, MN, 55905, USA. Coufalova.Lucie@mayo.edu. International Clinical Research Center, St. Anne's University Hospital Brno, Brno, Czech Republic. Coufalova.Lucie@mayo.edu. Neurosurgical Department of 1st Faculty of Medicine of Charles University, Military University Hospital, Prague, Czech Republic. Coufalova.Lucie@mayo.edu.
- 700 1_
- $a Korfiatis, Panagiotis $u Department of Radiology, Mayo Clinic, 200 First St. SW, Rochester, MN, 55905, USA. Korfiatis.Panagiotis@mayo.edu.
- 700 1_
- $a Kline, Timothy L $u Department of Radiology, Mayo Clinic, 200 First St. SW, Rochester, MN, 55905, USA. Kline.Timothy@mayo.edu.
- 700 1_
- $a Warner, Joshua D $u Department of Radiology, Mayo Clinic, 200 First St. SW, Rochester, MN, 55905, USA. Warner.Joshua@mayo.edu.
- 700 1_
- $a Agrawal, Jay $u Department of Radiology, Mayo Clinic, 200 First St. SW, Rochester, MN, 55905, USA. Agrawal.Jay@mayo.edu. $7 gn_A_00002261
- 700 1_
- $a Erickson, Bradley J $u Department of Radiology, Mayo Clinic, 200 First St. SW, Rochester, MN, 55905, USA. bje@mayo.edu.
- 773 0_
- $w MED00173162 $t Cancer imaging the official publication of the International Cancer Imaging Society $x 1470-7330 $g Roč. 15, č. - (2015), s. 12
- 856 41
- $u https://pubmed.ncbi.nlm.nih.gov/26268363 $y Pubmed
- 910 __
- $a ABA008 $b sig $c sign $y a $z 0
- 990 __
- $a 20160408 $b ABA008
- 991 __
- $a 20160412123704 $b ABA008
- 999 __
- $a ok $b bmc $g 1113434 $s 934373
- BAS __
- $a 3
- BAS __
- $a PreBMC
- BMC __
- $a 2015 $b 15 $c - $d 12 $e 20150814 $i 1470-7330 $m Cancer imaging $n Cancer Imaging $x MED00173162
- LZP __
- $a Pubmed-20160408