TL;DR
Can-SAVE is a scalable, low-cost AI system that uses survival analysis and electronic health records to improve population-wide cancer screening effectiveness.
Contribution
This work introduces Can-SAVE, a lightweight AI framework that leverages survival model outputs with gradient boosting for large-scale cancer risk assessment.
Findings
Can-SAVE achieves 4-10x higher detection rate at the same screening volume.
In a year-long pilot, it nearly doubled cancer detection rate (+91%).
The system can process 1 million patients in under three hours on standard hardware.
Abstract
Conventional medical cancer screening methods are costly, labor-intensive, and extremely difficult to scale. Although AI can improve cancer detection, most systems rely on complex or specialized medical data, making them impractical for large-scale screening. We introduce Can-SAVE, a lightweight AI system that ranks population-wide cancer risks solely based on medical history events. By integrating survival model outputs into a gradient-boosting framework, our approach detects subtle, long-term patient risk patterns - often well before clinical symptoms manifest. Can-SAVE was rigorously evaluated on a real-world dataset of 2.5 million adults spanning five Russian regions, marking the study as one of the largest and most comprehensive deployments of AI-driven cancer risk assessment. In a retrospective oncologist-supervised study over 1.9M patients, Can-SAVE achieves a 4-10x higher…
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