TheraAgent: Multi-Agent Framework with Self-Evolving Memory and Evidence-Calibrated Reasoning for PET Theranostics
arXiv cs.AI / 3/17/2026
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Key Points
- TheraAgent is presented as the first agentic framework for PET theranostics to support pre-therapy prediction in radioligand therapy for metastatic castration-resistant prostate cancer.
- It introduces three core innovations: Multi-Expert Feature Extraction with Confidence-Weighted Consensus, Self-Evolving Agentic Memory (SEA-Mem), and Evidence-Calibrated Reasoning grounded in curated theranostics knowledge from VISION/TheraP trial evidence.
- The framework was evaluated on 35 real patients and 400 synthetic cases, achieving 75.7% accuracy on real cases and 87.0% on synthetic cases, and it outperformed MDAgents and MedAgent-Pro by over 20%.
- Code will be released upon acceptance, signaling a move toward trustworthy AI-assisted decision support in PET theranostics.
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