Lab-AI: Using Retrieval Augmentation to Enhance Language Models for Personalized Lab Test Interpretation in Clinical Medicine.

Xiaoyu Wang, Haoyong Ouyang, Balu Bhasuran, Xiao Luo, Karim Hanna, Mia Liza A Lustria, Zhe He
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Abstract

Accurate interpretation of lab results is crucial in clinical medicine, yet most patient portals use universal normal ranges, ignoring conditional factors like age and gender. This study introduces Lab-AI, an interactive system that offers personalized normal ranges using retrieval-augmented generation (RAG) from credible health sources. Lab-AI has two modules: factor retrieval and normal range retrieval. We tested these on 122 lab tests: 40 with conditional factors and 82 without. For tests with factors, normal ranges depend on patient-specific information. Our results show GPT-4-turbo with RAG achieved a 0.948 F1 score for factor retrieval and 0.995 accuracy for normal range retrieval. GPT-4-turbo with RAG outperformed the best non-RAG system by 33.5% in factor retrieval and showed 132% and 100% improvements in question-level and lab-level performance, respectively, for normal range retrieval. These findings highlight Lab-AI's potential to enhance patient understanding of lab results.

实验室人工智能:使用检索增强来增强临床医学个性化实验室测试解释的语言模型。
对实验室结果的准确解释在临床医学中至关重要,但大多数患者门户使用普遍的正常范围,忽略了年龄和性别等条件因素。本研究介绍了Lab-AI,这是一个交互式系统,使用来自可靠卫生来源的检索增强生成(RAG)提供个性化的正常范围。Lab-AI有两个模块:因子检索和正常范围检索。我们在122项实验室测试中对这些进行了测试:40项有条件因素,82项没有。对于带有因子的测试,正常范围取决于患者特定的信息。结果表明,GPT-4-turbo在因子检索方面的F1得分为0.948,在正常范围检索方面的准确率为0.995。使用RAG的GPT-4-turbo在因子检索方面的表现比最佳的非RAG系统高出33.5%,在正常范围检索方面,问题水平和实验室水平的性能分别提高了132%和100%。这些发现突出了lab - ai在增强患者对实验室结果理解方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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