Statistical multiscale mapping of IDH1, MGMT, and microvascular proliferation in human brain tumors from multiparametric MR and spatially-registered core biopsy
Jason G Parker, PhD, Emily E Diller, MS, Sha Cao, PhD, Jeremy T, Nelson, PhD, Kristen Yeom, MD, Chang Ho, MD, Robert Lober, MD, PhD

TL;DR
This study introduces a statistical multiscale mapping method using multiparametric MRI to non-invasively identify microscopic and molecular heterogeneity in human brain tumors, achieving high accuracy in predicting key tumor markers.
Contribution
The paper presents a novel statistical framework combining multiscale MRI data and advanced correction techniques to map tumor heterogeneity with high confidence.
Findings
All five MRI contrasts correlated with tumor outcomes (P<.001).
Benjamini-Hochberg correction identified significant maps for IDH1, MGMT, and microvascular proliferation.
Random field theory correction improved classification accuracy and sensitivity.
Abstract
We propose a statistical multiscale mapping approach to identify microscopic and molecular heterogeneity across a tumor microenvironment using multiparametric MR (mp-MR). Twenty-nine patients underwent pre-surgical mp-MR followed by MR-guided stereotactic core biopsy. The locations of the biopsy cores were identified in the pre-surgical images using stereotactic bitmaps acquired during surgery. Feature matrices mapped the multiparametric voxel values in the vicinity of the biopsy cores to the pathologic outcome variables for each patient and logistic regression tested the individual and collective predictive power of the MR contrasts. A non-parametric weighted k-nearest neighbor classifier evaluated the feature matrices in a leave-one-out cross validation design across patients. Resulting class membership probabilities were converted to chi-square statistics to develop full-brain…
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