Maintenance Notice

Due to necessary scheduled maintenance, the JMIR Publications website will be unavailable from Wednesday, July 01, 2020 at 8:00 PM to 10:00 PM EST. We apologize in advance for any inconvenience this may cause you.

Who will be affected?

Accepted for/Published in: JMIR AI

Date Submitted: Oct 31, 2025
Date Accepted: Jun 12, 2026

The final, peer-reviewed published version of this preprint can be found here:

Performance Gaps and Optimization Strategies in Chinese Medical Large Language Models Based on MedBench: Evaluation Study

Jiang L, Chen J, Lu L, Peng X, Liu L, He J, Xu J

Performance Gaps and Optimization Strategies in Chinese Medical Large Language Models Based on MedBench: Evaluation Study

JMIR AI 2026;5:e86864

DOI: 10.2196/86864

PMID: 42456175

Performance Gaps and Optimization Strategies in Chinese Medical Large Language Models Based on MedBench: Benchmarking Study

  • Luyi Jiang; 
  • Jiayuan Chen; 
  • Lu Lu; 
  • Xinwei Peng; 
  • Lihao Liu; 
  • Junjun He; 
  • Jie Xu

ABSTRACT

Background:

The evaluation and improvement of medical Large Language Models (LLMs) are critical for their real-world deployment, particularly in ensuring accuracy, safety, and ethical alignment. However, existing frameworks are inadequate for dissecting domain-specific error patterns or addressing cross-modal challenges.

Objective:

To address the limitations of current evaluation methods, this study aims to develop and apply a granular error taxonomy to systematically identify critical weaknesses in leading medical LLMs. The ultimate goal is to establish an actionable roadmap for enhancing their clinical robustness, safety, and overall trustworthiness.

Methods:

This study introduces a granular error taxonomy developed through a systematic analysis of 10 top-performing models on MedBench (specifically: AntAngelMed, Citrus-2.0, INF-Med, WHU_Med, zhuomuniao-Med, TeleChat2, hunyuan-med, UNI-GPT, fusiontech-Med, and GPT-4). Incorrect responses were categorized into eight distinct types: Omissions, Hallucination, Format Mismatch, Causal Reasoning Deficiency, Contextual Inconsistency, Unanswered, Output Error, and Deficiency in Medical Language Generation. Based on these findings, we propose a tiered optimization strategy spanning four levels, from prompt engineering and knowledge-augmented retrieval to hybrid neuro-symbolic architectures and causal reasoning frameworks.

Results:

Based on a comprehensive error analysis of 42766 question responses generated by the top 10 models, the evaluation using the eight defined metrics revealed significant vulnerabilities in the leading models. Despite achieving a high accuracy of 0.86 in medical knowledge recall, analysis across the eight error categories identified Omissions as the most prevalent issue, exhibiting a staggering 96.3% omission rate in critical reasoning tasks. Furthermore, safety and ethics evaluations showed alarming inconsistency under option-shuffled conditions, with a low robustness score of 0.79. Our analysis uncovers systemic weaknesses in the models' ability to enforce knowledge boundaries and perform multi-step reasoning.

Conclusions:

This work establishes an actionable roadmap for developing more clinically robust LLMs. By providing error-driven insights, it redefines evaluation paradigms, ultimately advancing the safety and trustworthiness of AI in high-stakes medical environments and promoting its responsible application.


 Citation

Please cite as:

Jiang L, Chen J, Lu L, Peng X, Liu L, He J, Xu J

Performance Gaps and Optimization Strategies in Chinese Medical Large Language Models Based on MedBench: Evaluation Study

JMIR AI 2026;5:e86864

DOI: 10.2196/86864

PMID: 42456175

Download PDF


Request queued. Please wait while the file is being generated. It may take some time.

© The authors. All rights reserved. This is a privileged document currently under peer-review/community review (or an accepted/rejected manuscript). Authors have provided JMIR Publications with an exclusive license to publish this preprint on it's website for review and ahead-of-print citation purposes only. While the final peer-reviewed paper may be licensed under a cc-by license on publication, at this stage authors and publisher expressively prohibit redistribution of this draft paper other than for review purposes.