Litcius/Paper detail

Baseline radiomics features and <i>MYC</i> rearrangement status predict progression in aggressive B-cell lymphoma

Jakoba J. Eertink, Gerben J.C. Zwezerijnen, Sanne E. Wiegers, Simone Pieplenbosch, Martine E.D. Chamuleau, Pieternella J. Lugtenburg, Daphne de Jong, Bauke Ylstra, Matías Mendeville, Ulrich Dührsen, Christine Hanoun, Andreas Hüttmann, Julia Richter, Wolfgang Hiddemann, Yvonne W. S. Jauw, Otto S. Hoekstra, Henrica C. W. de Vet, Ronald Boellaard, Josée M. Zijlstra

2022Blood Advances20 citationsDOIOpen Access PDF

Abstract

We investigated whether the outcome prediction of patients with aggressive B-cell lymphoma can be improved by combining clinical, molecular genotype, and radiomics features. MYC, BCL2, and BCL6 rearrangements were assessed using fluorescence in situ hybridization. Seventeen radiomics features were extracted from the baseline positron emission tomography-computed tomography of 323 patients, which included maximum standardized uptake value (SUVmax), SUVpeak, SUVmean, metabolic tumor volume (MTV), total lesion glycolysis, and 12 dissemination features pertaining to distance, differences in uptake and volume between lesions, respectively. Logistic regression with backward feature selection was used to predict progression after 2 years. The predictive value of (1) International Prognostic Index (IPI); (2) IPI plus MYC; (3) IPI, MYC, and MTV; (4) radiomics; and (5) MYC plus radiomics models were tested using the cross-validated area under the curve (CV-AUC) and positive predictive values (PPVs). IPI yielded a CV-AUC of 0.65 ± 0.07 with a PPV of 29.6%. The IPI plus MYC model yielded a CV-AUC of 0.68 ± 0.08. IPI, MYC, and MTV yielded a CV-AUC of 0.74 ± 0.08. The highest model performance of the radiomics model was observed for MTV combined with the maximum distance between the largest lesion and another lesion, the maximum difference in SUVpeak between 2 lesions, and the sum of distances between all lesions, yielding an improved CV-AUC of 0.77 ± 0.07. The same radiomics features were retained when adding MYC (CV-AUC, 0.77 ± 0.07). PPV was highest for the MYC plus radiomics model (50.0%) and increased by 20% compared with the IPI (29.6%). Adding radiomics features improved model performance and PPV and can, therefore, aid in identifying poor prognosis patients.

Topics & Concepts

RadiomicsStandardized uptake valueMedicinePositron emission tomographyLymphomaNuclear medicineArea under the curveLogistic regressionLesionPredictive valueInternal medicineOncologyPathologyRadiologyLymphoma Diagnosis and TreatmentRadiomics and Machine Learning in Medical ImagingSarcoma Diagnosis and Treatment