Yin Shuhui, Huang Simu, Xue Peng, Xu Zhuoran, Lian Zi, Ye Chenfei, Ma Siyuan, Liu Mingxuan, Hu Yuanjia, Lu Peiyi, Li Chihua
Applied Linguistics & Technology, Department of English, Iowa State University, Ames, IA, USA.
Center for Data Science, Zhejiang University, Hangzhou, Zhejiang, China.
BMC Med. 2025 Feb 11;23(1):77. doi: 10.1186/s12916-025-03899-1.
Generative artificial intelligence (GAI) has developed rapidly and been increasingly used in scholarly publishing, so it is urgent to examine guidelines for its usage. This cross-sectional study aims to examine the coverage and type of recommendations of GAI usage guidelines among medical journals and how these factors relate to journal characteristics.
From the SCImago Journal Rank (SJR) list for medicine in 2022, we generated two groups of journals: top SJR ranked journals (N = 200) and random sample of non-top SJR ranked journals (N = 140). For each group, we examined the coverage of author and reviewer guidelines across four categories: no guidelines, external guidelines only, own guidelines only, and own and external guidelines. We then calculated the number of recommendations by counting the number of usage recommendations for author and reviewer guidelines separately. Regression models examined the relationship of journal characteristics with the coverage and type of recommendations of GAI usage guidelines.
A higher proportion of top SJR ranked journals provided author guidelines compared to the random sample of non-top SJR ranked journals (95.0% vs. 86.7%, P < 0.01). The two groups of journals had the same median of 5 on a scale of 0 to 7 for author guidelines and a median of 1 on a scale of 0 to 2 for reviewer guidelines. However, both groups had lower percentages of journals providing recommendations for data analysis and interpretation, with the random sample of non-top SJR ranked journals having a significantly lower percentage (32.5% vs. 16.7%, P < 0.05). A higher SJR score was positively associated with providing GAI usage guidelines for both authors (all P < 0.01) and reviewers (all P < 0.01) among the random sample of non-top SJR ranked journals.
Although most medical journals provided their own GAI usage guidelines or referenced external guidelines, some recommendations remained unspecified (e.g., whether AI can be used for data analysis and interpretation). Additionally, journals with lower SJR scores were less likely to provide guidelines, indicating a potential gap that warrants attention. Collaborative efforts are needed to develop specific recommendations that better guide authors and reviewers.
生成式人工智能(GAI)发展迅速,在学术出版中的应用日益广泛,因此迫切需要审视其使用指南。这项横断面研究旨在考察医学期刊中GAI使用指南的覆盖范围和建议类型,以及这些因素与期刊特征之间的关系。
从2022年的《期刊引用报告》(SCImago Journal Rank,SJR)医学排名列表中,我们生成了两组期刊:SJR排名靠前的期刊(N = 200)和SJR排名靠后的期刊随机样本(N = 140)。对于每组期刊,我们考察了作者指南和审稿人指南在四个类别中的覆盖情况:无指南、仅外部指南、仅自有指南以及自有和外部指南。然后,我们通过分别计算作者指南和审稿人指南的使用建议数量来计算建议的总数。回归模型考察了期刊特征与GAI使用指南的覆盖范围和建议类型之间的关系。
与SJR排名靠后的期刊随机样本相比,SJR排名靠前的期刊提供作者指南的比例更高(95.0%对86.7%,P < 0.01)。两组期刊在作者指南方面,0至7分制的中位数均为5;在审稿人指南方面,0至2分制的中位数均为1。然而,两组期刊中针对数据分析和解释提供建议的期刊比例都较低,SJR排名靠后的期刊随机样本的比例显著更低(32.5%对16.7%,P < 0.05)。在SJR排名靠后的期刊随机样本中,较高的SJR分数与为作者(所有P < 0.01)和审稿人(所有P < 0.01)提供GAI使用指南呈正相关。
尽管大多数医学期刊提供了自己的GAI使用指南或参考了外部指南,但一些建议仍未明确(例如,人工智能是否可用于数据分析和解释)。此外,SJR分数较低的期刊提供指南的可能性较小,这表明存在一个值得关注的潜在差距。需要共同努力制定更能指导作者和审稿人的具体建议。