Longitudinal Risk Prediction in Mammography with Privileged History Distillation
arXiv cs.LG / 3/18/2026
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Key Points
- The paper introduces Privileged History Distillation (PHD), a method that uses full longitudinal mammography history as privileged information during training and distills its prognostic value into a student model that only requires the current exam at inference.
- It employs horizon-specific teachers trained on complete histories to specialize in particular prediction horizons, enabling horizon-aware risk assessment when prior exams are unavailable at deployment.
- The approach is validated on the CSAW-CC dataset with multi-year cancer outcomes, showing improved time-dependent AUC over no-history baselines and comparable performance to full-history models.
- By addressing missing or irregular longitudinal history in real-world clinics, PHD enhances the practicality and robustness of longitudinal mammography risk prediction for deployment.
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