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Beyond the Leaderboard: Rethinking Medical Benchmarks for Large Language Models
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文章介绍了针对医疗领域大型语言模型基准的评估框架MedCheck,通过五个连续阶段对基准开发进行评估,并提出了46项医学定制标准,以解决现有基准在临床一致性、数据管理和安全性评估方面的不足。

arXiv:2508.04325v1 Announce Type: cross Abstract: Large language models (LLMs) show significant potential in healthcare, prompting numerous benchmarks to evaluate their capabilities. However, concerns persist regarding the reliability of these benchmarks, which often lack clinical fidelity, robust data management, and safety-oriented evaluation metrics. To address these shortcomings, we introduce MedCheck, the first lifecycle-oriented assessment framework specifically designed for medical benchmarks. Our framework deconstructs a benchmark's development into five continuous stages, from design to governance, and provides a comprehensive checklist of 46 medically-tailored criteria. Using MedCheck, we conducted an in-depth empirical evaluation of 53 medical LLM benchmarks. Our analysis uncovers widespread, systemic issues, including a profound disconnect from clinical practice, a crisis of data integrity due to unmitigated contamination risks, and a systematic neglect of safety-critical evaluation dimensions like model robustness and uncertainty awareness. Based on these findings, MedCheck serves as both a diagnostic tool for existing benchmarks and an actionable guideline to foster a more standardized, reliable, and transparent approach to evaluating AI in healthcare.

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MedCheck 医疗LLM基准 评估框架 临床一致性 数据管理
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