4.7 Article

Radiomic analysis of magnetic resonance fingerprinting in adult brain tumors

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SPRINGER
DOI: 10.1007/s00259-020-05037-w

关键词

Magnetic resonance fingerprinting; Radiomics; Texture analysis; Glioblastoma; Lower grade glioma; Metastasis; Survival analysis

资金

  1. National Institutes of Health [1R01BB017219, 1R01EB016728]
  2. Clinical and Translational Science Collaborative (CTSC) of Cleveland - National Institutes of Health (NIH), National Center for Advancing Translational Science (NCATS), Clinical and Translational Science Award (CTSA) grant [UL1TR002548]
  3. NIH [CA217956]
  4. Center of Excellence for Translational NeuroOncology
  5. Gerald R. Kaufman Fund for Glioma Research at University Hospitals of Cleveland
  6. Kimble Family Foundation
  7. Ferry Family Foundation at University Hospitals of Cleveland
  8. Peter D Cristal Chair

向作者/读者索取更多资源

This radiomics study investigates the potential of texture analysis on MRF maps to distinguish intra-axial adult brain tumors and predict survival in glioblastoma patients. By analyzing texture features on T1 and T2 maps, the study found that certain features can differentiate different tumor types and predict outcomes in glioblastoma patients.
Purpose This is a radiomics study investigating the ability of texture analysis of MRF maps to improve differentiation between intra-axial adult brain tumors and to predict survival in the glioblastoma cohort. Methods Magnetic resonance fingerprinting (MRF) acquisition was performed on 31 patients across 3 groups: 17 glioblastomas, 6 low-grade gliomas, and 8 metastases. Using regions of interest for the solid tumor and peritumoral white matter on T1 and T2 maps, second-order texture features were calculated from gray-level co-occurrence matrices and gray-level run length matrices. Selected features were compared across the three tumor groups using Wilcoxon rank-sum test. Receiver operating characteristic curve analysis was performed for each feature. Kaplan-Meier method was used for survival analysis with log rank tests. Results Low-grade gliomas and glioblastomas had significantly higher run percentage, run entropy, and information measure of correlation 1 on T1 than metastases (p < 0.017). The best separation of all three tumor types was seen utilizing inverse difference normalized and homogeneity values for peritumoral white matter in both T1 and T2 maps (p < 0.017). In solid tumor T2 maps, lower values in entropy and higher values of maximum probability and high-gray run emphasis were associated with longer survival in glioblastoma patients (p < 0.05). Several texture features were associated with longer survival in glioblastoma patients on peritumoral white matter T1 maps (p < 0.05). Conclusion Texture analysis of MRF-derived maps can improve our ability to differentiate common adult brain tumors by characterizing tumor heterogeneity, and may have a role in predicting outcomes in patients with glioblastoma.

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