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Enhanced Lymphoma Subtype Classification and Prognosis Using Machine Learning With 18F-Fdg Pet/Ct Radiomics: Beyond Suvmax Publisher



Hasanabadi S ; Aghamiri SMR ; Abin AA ; Vosoughi H ; Emami F ; Bakhshayesh Karam M ; Nejabat M ; Dorudinia A ; Arabi H ; Zaidi H
Authors

Source: Nuclear Medicine and Molecular Imaging Published:2026


Abstract

Background: This study explored a machine learning approach using 18F-FDG PET/CT as a non-invasive alternative to biopsy, incorporating tumor-to-liver ratio (TLR) PET radiomics, and performed survival analysis to improve lymphoma management. Methods: In this cohort study, baseline 18F-FDG PET/CT scans of newly diagnosed, histologically confirmed lymphoma patients were analyzed. Lesions were segmented using 3D Slicer, and radiomic features were extracted and normalized by tumor-to-liver ratios. Patient-level features were used to train three machine learning models (XGBoost, AdaBoost, Logistic Regression) using nested cross-validation with SMOTE for class balancing. A model based on SUVmax metrics served as baseline. Radiomic features were also evaluated for correlation with 3- and 5-year survival using the Mann-Whitney U test. Results: A total of 156 lymphoma patients were analyzed, with 2,076 lesions segmented and 200 radiomic features extracted. For subtype classification, AdaBoost achieved the highest AUC for Diffuse Large B-cell (DLBCL) (0.863, accuracy 0.742), while XGBoost performed best for High-Grade Non-Hodgkin lymphoma (NHL) (AUC 0.825, accuracy 0.735) and Nodular Sclerosis Hodgkin Lymphoma (NS-HL) (AUC 0.827, accuracy 0.832). Logistic regression showed the best results for Classical Hodgkin Lymphoma (C-HL) (AUC 0.849, accuracy 0.775). The SUVmax-based model (LR-SUV_MAX) consistently underperformed (AUCs: C-HL 0.630, High-Grade NHL 0.700, NS-HL 0.638, DLBCL 0.664), with all differences being statistically significant (p < 0.001). Radiomic and clinical features including SUV-GLSZM small area emphasis (p = 0.0019), age (p = 0.0002), and spleen involvement (p = 0.0014) were significantly associated with 3- and 5-year overall survival in 110 and 74 patients, respectively. Conclusion: Radiomic features combined with machine learning significantly improve lymphoma subtype classification over SUVmax alone and show potential for predicting patient survival. © The Author(s) 2026.