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Interpretable Prostate Cancer Detection using a Small Cohort of MRI Images

About

Prostate cancer is a leading cause of mortality in men, yet interpretation of T2-weighted prostate MRI remains challenging due to subtle and heterogeneous lesions. We developed an interpretable framework for automatic cancer detection using a small dataset of 162 T2-weighted images (102 cancer, 60 normal), addressing data scarcity through transfer learning and augmentation. We performed a comprehensive comparison of Vision Transformers (ViT, Swin), CNNs (ResNet18), and classical methods (Logistic Regression, SVM, HOG+SVM). Transfer-learned ResNet18 achieved the best performance (90.9% accuracy, 95.2% sensitivity, AUC 0.905) with only 11M parameters, while Vision Transformers showed lower performance despite substantially higher complexity. Notably, HOG+SVM achieved comparable accuracy (AUC 0.917), highlighting the effectiveness of handcrafted features in small datasets. Unlike state-of-the-art approaches relying on biparametric MRI (T2+DWI) and large cohorts, our method achieves competitive performance using only T2-weighted images, reducing acquisition complexity and computational cost. In a reader study of 22 cases, five radiologists achieved a mean sensitivity of 67.5% (Fleiss Kappa = 0.524), compared to 95.2% for the AI model, suggesting potential for AI-assisted screening to reduce missed cancers and improve consistency. Code and data are publicly available.

Vahid Monfared, Mohammad Hadi Gharib, Ali Sabri, Maryam Shahali, Farid Rashidi, Amit Mehta, Reza Rawassizadeh• 2026

Related benchmarks

TaskDatasetResultRank
Prostate Cancer DetectionProstate MRI dataset
AUC91.7
4
Diagnostic ClassificationInternal Study Dataset Image-level
Sensitivity95.2
2
Prostate Cancer classificationPrimary prostate MRI dataset T2-weighted
Sensitivity95.2
2
Diagnostic ClassificationSchelb et al. study cohort--
1
Diagnostic ClassificationHamm study cohort--
1
Diagnostic ClassificationLee et al. study cohort--
1
Diagnostic ClassificationPI-CAI study cohort--
1
Prostate Cancer DetectionProstate MRI dataset 312 cases--
1
Prostate Cancer DetectionProstate MRI dataset (205 cases)--
1
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