A Human-Centric Pipeline for Aligning Large Language Models with Chinese Medical Ethics
By: Haoan Jin , Han Ying , Jiacheng Ji and more
Recent advances in large language models have enabled their application to a range of healthcare tasks. However, aligning LLMs with the nuanced demands of medical ethics, especially under complex real world scenarios, remains underexplored. In this work, we present MedES, a dynamic, scenario-centric benchmark specifically constructed from 260 authoritative Chinese medical, ethical, and legal sources to reflect the challenges in clinical decision-making. To facilitate model alignment, we introduce a guardian-in-the-loop framework that leverages a dedicated automated evaluator (trained on expert-labeled data and achieving over 97% accuracy within our domain) to generate targeted prompts and provide structured ethical feedback. Using this pipeline, we align a 7B-parameter LLM through supervised fine-tuning and domain-specific preference optimization. Experimental results, conducted entirely within the Chinese medical ethics context, demonstrate that our aligned model outperforms notably larger baselines on core ethical tasks, with observed improvements in both quality and composite evaluation metrics. Our work offers a practical and adaptable framework for aligning LLMs with medical ethics in the Chinese healthcare domain, and suggests that similar alignment pipelines may be instantiated in other legal and cultural environments through modular replacement of the underlying normative corpus.
Similar Papers
MedEthicEval: Evaluating Large Language Models Based on Chinese Medical Ethics
Computation and Language
Tests if AI understands medical right and wrong.
Benchmarking Ethical and Safety Risks of Healthcare LLMs in China-Toward Systemic Governance under Healthy China 2030
Computation and Language
Tests AI for safe patient care.
The Ethical Compass of the Machine: Evaluating Large Language Models for Decision Support in Construction Project Management
Artificial Intelligence
AI helps builders make safer, smarter choices.