Improving Automating Quality Control in Radiology: Leveraging Large Language Models to Extract Correlative Findings in Radiology and Operative Reports.

Niloufar Eghbali, Chad Klochko, Perra Razoky, Prateek Chintalapati, Efan Jawad, Zaid Mahdi, Joseph Craig, Mohammad M Ghassemi
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Abstract

Radiology Imaging plays a pivotal role in medical diagnostics, providing clinicians with insights into patient health and guiding the next steps in treatment. The true value of a radiological image lies in the accuracy of its accompanying report. To ensure the reliability of these reports, they are often cross-referenced with operative findings. The conventional method of manually comparing radiology and operative reports is labor-intensive and demands specialized knowledge. This study explores the potential of a Large Language Model (LLM) to simplify the radiology evaluation process by automatically extracting pertinent details from these reports, focusing especially on the shoulder's primary anatomical structures. A fine-tuned LLM identifies mentions of the supraspinatus tendon, infraspinatus tendon, subscapularis tendon, biceps tendon, and glenoid labrum in lengthy radiology and operative documents. Initial findings emphasize the model's capability to pinpoint relevant data, suggesting a transformative approach to the typical evaluation methods in radiology.

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改进放射学质量控制自动化:利用大型语言模型提取放射学和手术报告中的相关结果。
放射成像在医疗诊断中起着举足轻重的作用,它能让临床医生深入了解病人的健康状况,并指导下一步的治疗。放射影像的真正价值在于其随附报告的准确性。为确保这些报告的可靠性,通常需要与手术结果进行交叉对比。人工对比放射报告和手术报告的传统方法需要大量人力和专业知识。本研究探索了大语言模型(LLM)的潜力,通过自动提取这些报告中的相关细节,特别是肩部的主要解剖结构,来简化放射学评估过程。经过微调的 LLM 可以识别冗长的放射学和手术文件中提到的冈上肌腱、冈下肌腱、肩胛下肌腱、肱二头肌肌腱和盂唇。初步发现强调了该模型精确定位相关数据的能力,并建议对放射学中的典型评估方法进行改革。
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