Keywords: Tumors (Pre-Treatment), Tumor
Motivation: Noninvasive identification of malignant regions in glioma can help guide diagnosis and subsequent treatment planning.
Goal(s): This study aims to create models to predict and elucidate limitations in radiopathomic mapping of invasiveness in glioma using multiparametric physiologic and metabolic MRI.
Approach: A large, unique multiparametric MRI dataset with tissue is leveraged to compare various machine learning models of %ki-67 and cellularity (cells/mm2).
Results: : The best binary model achieved a CV-AUC =0.82 and CV-AUC = 0.75 for a binarized ki-67 and cellularity. Best ki-67 continuous predictions were in the 10-fold CV SVM and 4-fold ensemble model for continuous cellularity.
Impact: Multiparametric MRI can non-invasively predict histopathology. Including physiologic and/or metabolic MRI boosts histopathological predictions, however performance is also impacted by standardization of data quality.
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