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Research ArticleADULT BRAIN
Open Access

Estimating Local Cellular Density in Glioma Using MR Imaging Data

E.D.H. Gates, J.S. Weinberg, S.S. Prabhu, J.S. Lin, J. Hamilton, J.D. Hazle, G.N. Fuller, V. Baladandayuthapani, D.T. Fuentes and D. Schellingerhout
American Journal of Neuroradiology November 2020, DOI: https://doi.org/10.3174/ajnr.A6884
E.D.H. Gates
aFrom the Department of Imaging Physics (E.D.H.G., J.S.L., J.D.H., D.T.F.)
fThe University of Texas MD Anderson Cancer Center UTHealth Graduate School of Biomedical Sciences (E.D.H.G.), Houston, Texas
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J.S. Weinberg
bNeurosurgery (J.S.W., S.S.P.)
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S.S. Prabhu
bNeurosurgery (J.S.W., S.S.P.)
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J.S. Lin
aFrom the Department of Imaging Physics (E.D.H.G., J.S.L., J.D.H., D.T.F.)
gBaylor College of Medicine (J.S.L.), Houston, Texas
hDepartment of Bioengineering (J.S.L.), Rice University, Houston, Texas
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J. Hamilton
cNeuroradiology (J.H., D.S.)
iRadiology Partners (J.H.), Houston, Texas
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J.D. Hazle
aFrom the Department of Imaging Physics (E.D.H.G., J.S.L., J.D.H., D.T.F.)
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G.N. Fuller
dPathology (G.N.F.), University of Texas MD Anderson Cancer Center, Houston, Texas
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V. Baladandayuthapani
jDepartment of Computational Medicine and Bioinformatics (V.B.), University of Michigan School of Public Health, Ann Arbor, Michigan
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D.T. Fuentes
aFrom the Department of Imaging Physics (E.D.H.G., J.S.L., J.D.H., D.T.F.)
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D. Schellingerhout
cNeuroradiology (J.H., D.S.)
eCancer Systems Imaging (D.S.), University of Texas MD Anderson Cancer Center, Houston, Texas
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Abstract

BACKGROUND AND PURPOSE: Increased cellular density is a hallmark of gliomas, both in the bulk of the tumor and in areas of tumor infiltration into surrounding brain. Altered cellular density causes altered imaging findings, but the degree to which cellular density can be quantitatively estimated from imaging is unknown. The purpose of this study was to discover the best MR imaging and processing techniques to make quantitative and spatially specific estimates of cellular density.

MATERIALS AND METHODS: We collected stereotactic biopsies in a prospective imaging clinical trial targeting untreated patients with gliomas at our institution undergoing their first resection. The data included preoperative MR imaging with conventional anatomic, diffusion, perfusion, and permeability sequences and quantitative histopathology on biopsy samples. We then used multiple machine learning methodologies to estimate cellular density using local intensity information from the MR images and quantitative cellular density measurements at the biopsy coordinates as the criterion standard.

RESULTS: The random forest methodology estimated cellular density with R2 = 0.59 between predicted and observed values using 4 input imaging sequences chosen from our full set of imaging data (T2, fractional anisotropy, CBF, and area under the curve from permeability imaging). Limiting input to conventional MR images (T1 pre- and postcontrast, T2, and FLAIR) yielded slightly degraded performance (R2 = 0.52). Outputs were also reported as graphic maps.

CONCLUSIONS: Cellular density can be estimated with moderate-to-strong correlations using MR imaging inputs. The random forest machine learning model provided the best estimates. These spatially specific estimates of cellular density will likely be useful in guiding both diagnosis and treatment.

ABBREVIATIONS:

AUC
area under the curve
CD
cellular density
DCE
dynamic contrast-enhanced
RF
random forest
T1C
T1 postcontrast

Footnotes

  • E.D.H. Gates is supported by a training fellowship from the Gulf Coast Consortia and the National Library of Medicine Training Program in Biomedical Informatics & Data Science (T15LM007093) and acknowledges support from the American Legion Auxiliary. Partial support for this study is provided by the Dunn Chair funds (to Dr Bill Murphy), the MD Anderson Cancer Center Internal Research Grant and Clinical Research Support mechanisms for physician-sponsored clinical trials, and the Greenspun neurosurgical research fund. Funding was also provided by the National Cancer Institute (P30 CA016672).

  • Disclosures: Veera Baladandayuthapani—UNRELATED: Employment: University of Michigan.

  • © 2021 by American Journal of Neuroradiology

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Estimating Local Cellular Density in Glioma Using MR Imaging Data
E.D.H. Gates, J.S. Weinberg, S.S. Prabhu, J.S. Lin, J. Hamilton, J.D. Hazle, G.N. Fuller, V. Baladandayuthapani, D.T. Fuentes, D. Schellingerhout
American Journal of Neuroradiology Nov 2020, DOI: 10.3174/ajnr.A6884

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Estimating Local Cellular Density in Glioma Using MR Imaging Data
E.D.H. Gates, J.S. Weinberg, S.S. Prabhu, J.S. Lin, J. Hamilton, J.D. Hazle, G.N. Fuller, V. Baladandayuthapani, D.T. Fuentes, D. Schellingerhout
American Journal of Neuroradiology Nov 2020, DOI: 10.3174/ajnr.A6884
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