计算机科学
叙述的
解析
自然语言处理
健康档案
人工智能
情报检索
数据科学
机器学习
医疗保健
语言学
哲学
经济
经济增长
作者
Justin Reese,Daniel Daniš,J. Harry Caufield,Tudor Groza,Elena Casiraghi,Giorgio Valentini,Chris Mungall,Peter N. Robinson
标识
DOI:10.1101/2023.07.13.23292613
摘要
Abstract Objective Large Language Models such as GPT-4 previously have been applied to differential diagnostic challenges based on published case reports. Published case reports have a sophisticated narrative style that is not readily available from typical electronic health records (EHR). Furthermore, even if such a narrative were available in EHRs, privacy requirements would preclude sending it outside the hospital firewall. We therefore tested a method for parsing clinical texts to extract ontology terms and programmatically generating prompts that by design are free of protected health information. Materials and Methods We investigated different methods to prepare prompts from 75 recently published case reports. We transformed the original narratives by extracting structured terms representing phenotypic abnormalities, comorbidities, treatments, and laboratory tests and creating prompts programmatically. Results Performance of all of these approaches was modest, with the correct diagnosis ranked first in only 5.3-17.6% of cases. The performance of the prompts created from structured data was substantially worse than that of the original narrative texts, even if additional information was added following manual review of term extraction. Moreover, different versions of GPT-4 demonstrated substantially different performance on this task. Discussion The sensitivity of the performance to the form of the prompt and the instability of results over two GPT-4 versions represent important current limitations to the use of GPT-4 to support diagnosis in real-life clinical settings. Conclusion Research is needed to identify the best methods for creating prompts from typically available clinical data to support differential diagnostics.
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