TheraAgent: Multi-Agent Framework with Self-Evolving Memory and Evidence-Calibrated Reasoning for PET Theranostics
Zhihao Chen, Jiahui Wang, Yizhou Chen, Xiaozhong Ji, Xiaobin Hu, Jimin Hong, Wolfram Andreas Bosbach, Axel Rominger, Ali Afshar-Oromieh, Hongming Shan, Kuangyu Shi

TL;DR
TheraAgent is a novel multi-agent framework that leverages self-evolving memory and evidence-based reasoning to improve PET theranostic outcome prediction in prostate cancer, addressing data scarcity and heterogeneous information integration.
Contribution
It introduces a multi-expert feature extraction, self-evolving memory, and evidence-calibrated reasoning, pioneering an agentic approach for PET theranostics with improved accuracy and trustworthiness.
Findings
Achieved 75.7% accuracy on real patient data
Outperformed existing models by over 20%
Effectively integrated heterogeneous clinical data
Abstract
PET theranostics is transforming precision oncology, yet treatment response varies substantially; many patients receiving 177Lu-PSMA radioligand therapy (RLT) for metastatic castration-resistant prostate cancer (mCRPC) fail to respond, demanding reliable pre-therapy prediction. While LLM-based agents have shown remarkable potential in complex medical diagnosis, their application to PET theranostic outcome prediction remains unexplored, which faces three key challenges: (1) data and knowledge scarcity: RLT was only FDA-approved in 2022, yielding few training cases and insufficient domain knowledge in general LLMs; (2) heterogeneous information integration: robust prediction hinges on structured knowledge extraction from PET/CT, laboratory tests, and free-text clinical documentation; (3) evidence-grounded reasoning: clinical decisions must be anchored in trial evidence rather than LLM…
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Taxonomy
TopicsProstate Cancer Treatment and Research · Topic Modeling · Computational Drug Discovery Methods
