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MRI Features May Predict Molecular Features of Glioblastoma in <i>Isocitrate Dehydrogenase</i> Wild-Type Lower-Grade Gliomas

Chae Jung Park, Kyunghwa Han, Hwiyoung Kim, Sung Soo Ahn, Dongmin Choi, Yae Won Park, Jong Hee Chang, Se Hoon Kim, Soonmee Cha, Seung‐Koo Lee

2021American Journal of Neuroradiology51 citationsDOIOpen Access PDF

Abstract

<h3>BACKGROUND AND PURPOSE:</h3> <i>Isocitrate dehydrogenase</i> (<i>IDH</i>) wild-type lower-grade gliomas (histologic grades II and III) with <i>epidermal growth factor receptor</i> (<i>EGFR</i>) amplification or <i>telomerase reverse transcriptase</i> (<i>TERT</i>) promoter mutation are reported to behave similar to glioblastoma. We aimed to evaluate whether MR imaging features could identify a subset of <i>IDH</i> wild-type lower-grade gliomas that carry molecular features of glioblastoma. <h3>MATERIALS AND METHODS:</h3> In this multi-institutional retrospective study, pathologically confirmed <i>IDH</i> wild-type lower-grade gliomas from 2 tertiary institutions and The Cancer Genome Atlas constituted the training set (institution 1 and The Cancer Genome Atlas, 64 patients) and the independent test set (institution 2, 57 patients). Preoperative MRIs were analyzed using the Visually AcceSAble Rembrandt Images and radiomics. The molecular glioblastoma status was determined on the basis of the presence of <i>EGFR</i> amplification and <i>TERT</i> promoter mutation. Molecular glioblastoma was present in 73.4% and 56.1% in the training and test sets, respectively. Models using clinical, Visually AcceSAble Rembrandt Images, and radiomic features were built to predict the molecular glioblastoma status in the training set; then they were validated in the test set. <h3>RESULTS:</h3> In the test set, a model using both Visually AcceSAble Rembrandt Images and radiomic features showed superior predictive performance (area under the curve = 0.854) than that with only clinical features or Visually AcceSAble Rembrandt Images (areas under the curve = 0.514 and 0.648, respectively; <i>P</i> &lt; . 001, both). When both Visually AcceSAble Rembrandt Images and radiomics were added to clinical features, the predictive performance significantly increased (areas under the curve = 0.514 versus 0.863, <i>P</i> &lt; .001). <h3>CONCLUSIONS:</h3> MR imaging features integrated with machine learning classifiers may predict a subset of <i>IDH</i> wild-type lower-grade gliomas that carry molecular features of glioblastoma.

Topics & Concepts

Isocitrate dehydrogenaseGlioblastomaMedicineRadiomicsGliomaIDH1PathologyNuclear medicineOncologyRadiologyCancer researchMutationBiologyGeneGeneticsEnzymeBiochemistryRadiomics and Machine Learning in Medical ImagingGlioma Diagnosis and TreatmentSarcoma Diagnosis and Treatment
MRI Features May Predict Molecular Features of Glioblastoma in <i>Isocitrate Dehydrogenase</i> Wild-Type Lower-Grade Gliomas | Litcius