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  • Radiomics of Pediatric Low-...
    Wagner, M W; Hainc, N; Khalvati, F; Namdar, K; Figueiredo, L; Sheng, M; Laughlin, S; Shroff, M M; Bouffet, E; Tabori, U; Hawkins, C; Yeom, K W; Ertl-Wagner, B B

    American journal of neuroradiology : AJNR, 04/2021, Letnik: 42, Številka: 4
    Journal Article

    ( ) status has important implications for prognosis and therapy of pediatric low-grade gliomas. Currently, status classification relies on biopsy. Our aim was to train and validate a radiomics approach to predict fusion and V600E mutation. In this bi-institutional retrospective study, FLAIR MR imaging datasets of 115 pediatric patients with low-grade gliomas from 2 children's hospitals acquired between January 2009 and January 2016 were included and analyzed. Radiomics features were extracted from tumor segmentations, and the predictive model was tested using independent training and testing datasets, with all available tumor types. The model was selected on the basis of a grid search on the number of trees, opting for the best split for a random forest. We used the area under the receiver operating characteristic curve to evaluate model performance. The training cohort consisted of 94 pediatric patients with low-grade gliomas (mean age, 9.4 years; 45 boys), and the external validation cohort comprised 21 pediatric patients with low-grade gliomas (mean age, 8.37 years; 12 boys). A 4-fold cross-validation scheme predicted status with an area under the curve of 0.75 (SD, 0.12) (95% confidence interval, 0.62-0.89) on the internal validation cohort. By means of the optimal hyperparameters determined by 4-fold cross-validation, the area under the curve for the external validation was 0.85. Age and tumor location were significant predictors of status ( values = .04 and <.001, respectively). Sex was not a significant predictor ( value = .96). Radiomics-based prediction of status in pediatric low-grade gliomas appears feasible in this bi-institutional exploratory study.