The large language model called ChatGPT has drawn extensively attention because of its human-like expression and reasoning abilities. In this study, we investigate the feasibility of using ChatGPT in experiments on using ChatGPT to translate radiology reports into plain language for patients and healthcare providers so that they are educated for improved healthcare. Radiology reports from 62 low-dose chest CT lung cancer screening scans and 76 brain MRI metastases screening scans were collected in the first half of February for this study. According to the evaluation by radiologists, ChatGPT can successfully translate radiology reports into plain language with an average score of 4.27 in the five-point system with 0.08 places of information missing and 0.07 places of misinformation. In terms of the suggestions provided by ChatGPT, they are general relevant such as keeping following-up with doctors and closely monitoring any symptoms, and for about 37% of 138 cases in total ChatGPT offers specific suggestions based on findings in the report. ChatGPT also presents some randomness in its responses with occasionally over-simplified or neglected information, which can be mitigated using a more detailed prompt. Furthermore, ChatGPT results are compared with a newly released large model GPT-4, showing that GPT-4 can significantly improve the quality of translated reports. Our results show that it is feasible to utilize large language models in clinical education, and further efforts are needed to address limitations and maximize their potential.
翻译:翻译的摘要:
大型语言模型ChatGPT因其类人表达和推理能力而引起了广泛的关注。本研究调查了将ChatGPT用于将放射学报告翻译为患者和医疗保健提供者易懂语言的可行性,以提高医疗保健的质量。本研究采集了62例低剂量胸部CT肺癌筛查扫描和76例脑部MRI转移筛查扫描的放射学报告。根据放射科医师评估,ChatGPT可以成功地将放射学报告翻译为简明的语言,五分制平均得分为4.27,信息缺失0.08个位置,错误信息0.07个位置。就ChatGPT提供的建议而言,它们是一般相关的,如继续随医生进行随访,密切关注任何症状,并且对于共138个案例中的约37%,ChatGPT基于报告中的发现提供了具体的建议。ChatGPT的响应也呈现出一定的随机性,偶尔会过分简化或忽略一些信息,可以通过更详细的提示来减轻。此外,将ChatGPT的结果与新发布的大模型GPT-4进行比较,结果显示GPT-4可以显著改善翻译报告的质量。我们的结果表明可以利用大型语言模型进行临床教育,还需要进一步努力解决限制和最大化他们的潜力。