Back to Search Start Over

Diagnostic Value of Fractal Analysis for the Differentiation of Brain Tumors Using 3-Tesla Magnetic Resonance Susceptibility-Weighted Imaging.

Authors :
Di Ieva A
Le Reste PJ
Carsin-Nicol B
Ferre JC
Cusimano MD
Source :
Neurosurgery [Neurosurgery] 2016 Dec; Vol. 79 (6), pp. 839-846.
Publication Year :
2016

Abstract

Background: Susceptibility-weighted imaging (SWI) of brain tumors provides information about neoplastic vasculature and intratumoral micro- and macrobleedings. Low- and high-grade gliomas can be distinguished by SWI due to their different vascular characteristics. Fractal analysis allows for quantification of these radiological differences by a computer-based morphological assessment of SWI patterns.<br />Objective: To show the feasibility of SWI analysis on 3-T magnetic resonance imaging to distinguish different kinds of brain tumors.<br />Methods: Seventy-eight patients affected by brain tumors of different histopathology (low- and high-grade gliomas, metastases, meningiomas, lymphomas) were included. All patients underwent preoperative 3-T magnetic resonance imaging including SWI, on which the lesions were contoured. The images underwent automated computation, extracting 2 quantitative parameters: the volume fraction of SWI signals within the tumors (signal ratio) and the morphological self-similar features (fractal dimension [FD]). The results were then correlated with each histopathological type of tumor.<br />Results: Signal ratio and FD were able to differentiate low-grade gliomas from grade III and IV gliomas, metastases, and meningiomas (P < .05). FD was statistically different between lymphomas and high-grade gliomas (P < .05). A receiver-operating characteristic analysis showed that the optimal cutoff value for differentiating low- from high-grade gliomas was 1.75 for FD (sensitivity, 81%; specificity, 89%) and 0.03 for signal ratio (sensitivity, 80%; specificity, 86%).<br />Conclusion: FD of SWI on 3-T magnetic resonance imaging is a novel image biomarker for glioma grading and brain tumor characterization. Computational models offer promising results that may improve diagnosis and open perspectives in the radiological assessment of brain tumors.<br />Abbreviations: FD, fractal dimensionSR, signal ratioSWI, susceptibility-weighted imaging.

Details

Language :
English
ISSN :
1524-4040
Volume :
79
Issue :
6
Database :
MEDLINE
Journal :
Neurosurgery
Publication Type :
Academic Journal
Accession number :
27332779
Full Text :
https://doi.org/10.1227/NEU.0000000000001308