--- language: - zh library_name: transformers pipeline_tag: text-generation tags: - medical - health - qwen3 - chat - dpo - sft --- # G-Health G-Health is a family of large language models for **medical and preventive health** use cases. Built on Qwen3, the models are aligned with large-scale medical dialogues and further adapted for **health checkup report interpretation**. ## Model family - **G-Health-14B-Base / G-Health-32B-Base**: medical-domain aligned models on top of Qwen3. - **G-Health-14B-instruct / G-Health-32B-instruct**: built on the corresponding Base models, then **fine-tuned specifically for health checkup reports** (more structured report-to-action outputs). ## Training (brief) ### Base models (medical-domain alignment) Starting from Qwen3, we apply two-stage alignment: - **SFT (Supervised Fine-Tuning)**: 2,817,556 dialogue samples - **DPO (Direct Preference Optimization)**: 1,643,350 preference samples This produces a medical-domain model with improved robustness and communication quality. ### Instruct models (health checkup specialization) On top of the Base models, we perform additional fine-tuning on **health checkup report** data to improve: - interpretation of lab values and imaging conclusions - cautious risk signaling under uncertainty - enhanced personalization awareness for tailoring explanations and recommendations to individual contexts ## Citation ```bibtex @article{lin2026clinically, title={Clinically grounded multi-agent artificial intelligence for preventive health management}, author={Lin, Hao and Zhang, Yang and Ye, Dongxin and He, Sicheng and Du, Zhaowu and Yu, Yang and Yu, Xiao and Ren, Liping and Dong, Nanqing and Hu, Fang and others}, year={2026} } ```