临床文本到SQL中的患者相似性队列推理 / Patient-Similarity Cohort Reasoning in Clinical Text-to-SQL
1️⃣ 一句话总结
这篇论文提出了一个名为CLINSQL的临床文本到SQL任务新基准,它要求AI模型能够结合患者相似性、时间窗口和多表信息来生成可执行的数据库查询,但现有模型的表现距离临床实际应用仍有较大差距。
Real-world clinical text-to-SQL requires reasoning over heterogeneous EHR tables, temporal windows, and patient-similarity cohorts to produce executable queries. We introduce CLINSQL, a benchmark of 633 expert-annotated tasks on MIMIC-IV v3.1 that demands multi-table joins, clinically meaningful filters, and executable SQL. Solving CLINSQL entails navigating schema metadata and clinical coding systems, handling long contexts, and composing multi-step queries beyond traditional text-to-SQL. We evaluate 22 proprietary and open-source models under Chain-of-Thought self-refinement and use rubric-based SQL analysis with execution checks that prioritize critical clinical requirements. Despite recent advances, performance remains far from clinical reliability: on the test set, GPT-5-mini attains 74.7% execution score, DeepSeek-R1 leads open-source at 69.2% and Gemini-2.5-Pro drops from 85.5% on Easy to 67.2% on Hard. Progress on CLINSQL marks tangible advances toward clinically reliable text-to-SQL for real-world EHR analytics.
临床文本到SQL中的患者相似性队列推理 / Patient-Similarity Cohort Reasoning in Clinical Text-to-SQL
这篇论文提出了一个名为CLINSQL的临床文本到SQL任务新基准,它要求AI模型能够结合患者相似性、时间窗口和多表信息来生成可执行的数据库查询,但现有模型的表现距离临床实际应用仍有较大差距。
源自 arXiv: 2601.09876