将 GPT-4 作为头部 CT 报告校对工具的可行性大规模验证。

IF 17.6 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Radiology Pub Date : 2025-01-01 DOI:10.1148/radiol.240701
Songsoo Kim, Donghyun Kim, Hyun Joo Shin, Seung Hyun Lee, Yeseul Kang, Sejin Jeong, Jaewoong Kim, Miran Han, Seong-Joon Lee, Joonho Kim, Jungyon Yum, Changho Han, Dukyong Yoon
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In experiment 1, among the 300 unaltered reports and 300 versions with applied errors, GPT-4 optimization was initially conducted with 200 reports. The remaining 400 were used for evaluation of error type detection, reasoning, and revision, as well as the analysis of reports with undetected errors. The performance was also compared with that of human readers. In experiment 2, the detection performance of GPT-4 was validated on 10 000 unaltered reports that were deemed error-free by physicians, and an analysis of false-positive results was conducted. A permutation test was conducted to assess differences in performance. Results GPT-4 demonstrated commendable performance in error detection (sensitivity, 84% for interpretive error and 89% for factual error), reasoning, and revision. 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引用次数: 0

摘要

放射科医生工作量的增加会导致他们的工作倦怠和报告错误。大型语言模型,如OpenAI的GPT-4,有望成为放射学的错误修正工具。目的通过确定GPT-4在不同错误类型的头部CT报告中的错误检测、推理和修正性能来测试其使用的可行性,并通过与人类读者的比较来验证其临床实用性。材料与方法从重症监护医学信息市场III公共数据集中回顾性提取10 300例头部CT报告。在实验1中,在300份未修改报告和300份应用错误的版本中,最初对200份报告进行了GPT-4优化。剩下的400个用于评估错误类型检测、推理和修订,以及分析未检测到错误的报告。还将其与人类读者的表现进行了比较。在实验2中,GPT-4的检测性能在医生认为无错误的10000份未经修改的报告上进行验证,并对假阳性结果进行分析。进行了排列测试来评估性能的差异。结果GPT-4在错误检测(对解释错误的敏感度为84%,对事实错误的敏感度为89%)、推理和修订方面表现出值得称赞的性能。与GPT-4相比,人类读者的事实错误检测灵敏度更低(0.33-0.69 vs 0.89;放射科医生4的P = 0.008,其他的P < 0.001),并且需要更长的时间来检查(82-121秒vs 16秒,P < 0.001)。在1万份报告中,GPT-4检测到96个错误,阳性预测值为0.05,但14%的假阳性反应可能是有益的。结论GPT-4能有效地发现放射学报告中的错误,找出原因并修正错误。虽然它在识别事实错误方面表现出色,但其优先考虑临床重要发现的能力有限。认识到它的优势和局限性,GPT-4可以作为一种可行的工具。©RSNA, 2025本文可获得补充材料。参见本期崔教授的社论。
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Large-Scale Validation of the Feasibility of GPT-4 as a Proofreading Tool for Head CT Reports.

Background The increasing workload of radiologists can lead to burnout and errors in radiology reports. Large language models, such as OpenAI's GPT-4, hold promise as error revision tools for radiology. Purpose To test the feasibility of GPT-4 use by determining its error detection, reasoning, and revision performance on head CT reports with varying error types and to validate its clinical utility by comparison with human readers. Materials and Methods A total of 10 300 head CT reports were retrospectively extracted from the Medical Information Mart for Intensive Care III public dataset. In experiment 1, among the 300 unaltered reports and 300 versions with applied errors, GPT-4 optimization was initially conducted with 200 reports. The remaining 400 were used for evaluation of error type detection, reasoning, and revision, as well as the analysis of reports with undetected errors. The performance was also compared with that of human readers. In experiment 2, the detection performance of GPT-4 was validated on 10 000 unaltered reports that were deemed error-free by physicians, and an analysis of false-positive results was conducted. A permutation test was conducted to assess differences in performance. Results GPT-4 demonstrated commendable performance in error detection (sensitivity, 84% for interpretive error and 89% for factual error), reasoning, and revision. Compared with GPT-4, human readers had worse factual error detection sensitivity (0.33-0.69 vs 0.89; P = .008 for radiologist 4, P < .001 for others) and took longer to review (82-121 seconds vs 16 seconds, P < .001). In 10 000 reports, GPT-4 detected 96 errors, with a low positive predictive value of 0.05, yet 14% of the false-positive responses were potentially beneficial. Conclusion GPT-4 effectively detects, reasons, and revises errors in radiology reports. While it shows excellent performance in identifying factual errors, its ability to prioritize clinically significant findings is limited. Recognizing its strengths and limitations, GPT-4 could serve as a feasible tool. © RSNA, 2025 Supplemental material is available for this article. See also the editorial by Choi in this issue.

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来源期刊
Radiology
Radiology 医学-核医学
CiteScore
35.20
自引率
3.00%
发文量
596
审稿时长
3.6 months
期刊介绍: Published regularly since 1923 by the Radiological Society of North America (RSNA), Radiology has long been recognized as the authoritative reference for the most current, clinically relevant and highest quality research in the field of radiology. Each month the journal publishes approximately 240 pages of peer-reviewed original research, authoritative reviews, well-balanced commentary on significant articles, and expert opinion on new techniques and technologies. Radiology publishes cutting edge and impactful imaging research articles in radiology and medical imaging in order to help improve human health.
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