Stage-Specific Benchmarking of Deep Learning Models for Glioblastoma Follow-Up MRI
By: Wenhao Guo, Golrokh Mirzaei
Potential Business Impact:
Helps doctors spot fake tumor growth after treatment.
Differentiating true tumor progression (TP) from treatment-related pseudoprogression (PsP) in glioblastoma remains challenging, especially at early follow-up. We present the first stage-specific, cross-sectional benchmarking of deep learning models for follow-up MRI using the Burdenko GBM Progression cohort (n = 180). We analyze different post-RT scans independently to test whether architecture performance depends on time-point. Eleven representative DL families (CNNs, LSTMs, hybrids, transformers, and selective state-space models) were trained under a unified, QC-driven pipeline with patient-level cross-validation. Across both stages, accuracies were comparable (~0.70-0.74), but discrimination improved at the second follow-up, with F1 and AUC increasing for several models, indicating richer separability later in the care pathway. A Mamba+CNN hybrid consistently offered the best accuracy-efficiency trade-off, while transformer variants delivered competitive AUCs at substantially higher computational cost and lightweight CNNs were efficient but less reliable. Performance also showed sensitivity to batch size, underscoring the need for standardized training protocols. Notably, absolute discrimination remained modest overall, reflecting the intrinsic difficulty of TP vs. PsP and the dataset's size imbalance. These results establish a stage-aware benchmark and motivate future work incorporating longitudinal modeling, multi-sequence MRI, and larger multi-center cohorts.
Similar Papers
Improving Pre-trained Segmentation Models using Post-Processing
CV and Pattern Recognition
Improves brain tumor scans for better treatment.
Multi-Task Diffusion Approach For Prediction of Glioma Tumor Progression
CV and Pattern Recognition
Predicts brain tumor growth for better treatment.
PANDA-PLUS-Bench: A Clinical Benchmark for Evaluating Robustness of AI Foundation Models in Prostate Cancer Diagnosis
CV and Pattern Recognition
Tests AI to find real cancer, not fake clues.