Section 01
[Introduction] ProMedical Framework: An Innovative Path for Hierarchical Fine-Grained Standard Alignment of Medical Large Models
This article introduces the ProMedical framework, which addresses the core challenges of limited coarse-grained preference signals and the entanglement of safety and capability in medical AI alignment. By constructing a fine-grained clinical standard dataset and an explicit standard injection paradigm, and training a multi-dimensional reward model to separate safety and capability, it achieves a 22.3% increase in accuracy and a 21.7% improvement in safety compliance on the Qwen3-8B base model.