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- Title
Comparison of Glioblastomas and Brain Metastases using Dynamic Contrast-Enhanced Perfusion MRI.
- Authors
Jung, Brian C.; Arevalo‐Perez, Julio; Lyo, John K.; Holodny, Andrei I.; Karimi, Sasan; Young, Robert J.; Peck, Kyung K.
- Abstract
<bold>Purpose: </bold>To compare glioblastoma and brain metastases using T1-weighted dynamic contrast-enhanced (DCE)-MRI perfusion technique. <bold>Methods: </bold>26 patients with glioblastoma and 32 patients with metastatic brain lesions with no treatment who underwent DCE-MRI were, retrospectively, analyzed. DCE perfusion parameters K(trans) and Vp were calculated for the whole tumor. Signal intensity time curves were quantified by calculating the area under the curve (AUC) and the logarithmic slope of the washout phase to explore the heterogeneous tumor characteristics. <bold>Results: </bold>Glioblastoma did not differ from all brain metastases in K(trans) (P = .34) or Vp (P = .47). Glioblastoma and melanoma metastases differed from hypovascular metastases in AUC and log slope of the washout phase of the signal intensity time curve (P < .05); however, glioblastoma and melanoma metastases did not differ from each other (AUC: P = .78, Log slope: P = .77). Glioblastoma and melanoma metastases differed from hypovascular metastases in the ratio of Voxelneg /Voxelpos (P< .03); however, they did not differ from each other. Glioblastoma and melanoma metastases differed from each other in Voxelneg_threshold at higher negative log slope threshold. <bold>Conclusion: </bold>DCE-MRI showed that it has a potential to differentiate glioblastomas, melanoma metastases and hypovascular brain tumors. Logarithmic slope of the washout phase and AUC of the signal intensity time curve were shown to be the best discriminator between hypervascular and hypovascular neoplasms.
- Subjects
GLIOBLASTOMA multiforme; BRAIN metastasis; MAGNETIC resonance imaging; PERFUSION; LOGARITHMIC functions
- Publication
Journal of Neuroimaging, 2016, Vol 26, Issue 2, p240
- ISSN
1051-2284
- Publication type
journal article
- DOI
10.1111/jon.12281