Var Susanna R, Maeser Nicole, Blake Jeffrey, Zahs Elise, Deep Nathan, Vasilakos Zoey, McKay Jennifer, Johnson Sether, Strell Phoebe, Chang Allison, Korthas Holly, Krishna Venkatramana, Narayanan Manojkumar, Arju Tuhinur, Natera-Rodriguez Dilmareth E, Roman Alex, Schulz Sam J, Shetty Anala, Vernekar Mayuresh, Waldron Madison A, Person Kennedy, Cheeran Maxim, Li Ling, Low Walter C
Department of Neurosurgery, University of Minnesota, Minneapolis, MN 55455, USA.
Stem Cell Institute, University of Minnesota, Minneapolis, MN 55455, USA.
J Clin Med. 2025 Aug 25;14(17):6011. doi: 10.3390/jcm14176011.
Coronavirus disease 2019 (COVID-19) in adults is well characterized and associated with multisystem dysfunction. A subset of patients develop post-acute sequelae of SARS-CoV-2 infection (PASC, or long COVID), marked by persistent and fluctuating organ system abnormalities. In children, distinct clinical and pathophysiological features of COVID-19 and long COVID are increasingly recognized, though knowledge remains limited relative to adults. The exponential expansion of the COVID-19 literature has made comprehensive appraisal by individual researchers increasingly unfeasible, highlighting the need for new approaches to evidence synthesis. Large language models (LLMs) such as the Generative Pre-trained Transformer (GPT) can process vast amounts of text, offering potential utility in this domain. Earlier versions of GPT, however, have been prone to generating fabricated references or misrepresentations of primary data. To evaluate the potential of more advanced models, we systematically applied GPT-4 to summarize studies on pediatric long COVID published between January 2022 and January 2025. Articles were identified in PubMed, and full-text PDFs were retrieved from publishers. GPT-4-generated summaries were cross-checked against the results sections of the original reports to ensure accuracy before incorporation into a structured review framework. This methodology demonstrates how LLMs may augment traditional literature review by improving efficiency and coverage in rapidly evolving fields, provided that outputs are subjected to rigorous human verification.
2019年冠状病毒病(COVID-19)在成人中的表现已得到充分描述,且与多系统功能障碍相关。一部分患者会出现严重急性呼吸综合征冠状病毒2感染的急性后遗症(PASC,即“长新冠”),其特征为持续且波动的器官系统异常。在儿童中,COVID-19和“长新冠”独特的临床和病理生理特征越来越受到认可,不过相对于成人而言,相关知识仍然有限。COVID-19文献呈指数级增长,单个研究人员进行全面评估越来越不可行,这凸显了采用新的证据综合方法的必要性。诸如生成式预训练变换器(GPT)这样的大语言模型(LLM)可以处理大量文本,在这一领域具有潜在用途。然而,早期版本的GPT容易生成虚假参考文献或对原始数据进行错误表述。为了评估更先进模型的潜力,我们系统地应用GPT-4来总结2022年1月至2025年1月期间发表的关于儿童“长新冠”的研究。在PubMed中识别文章,并从出版商处检索全文PDF。在将GPT-4生成的摘要纳入结构化综述框架之前,对照原始报告的结果部分进行交叉核对以确保准确性。该方法表明,只要对输出结果进行严格的人工验证,大语言模型如何通过提高快速发展领域的效率和覆盖面来增强传统文献综述。