Application of Generative AI to Enhance Obstetrics and Gynecology Research.

IF 1.5 4区 医学 Q3 OBSTETRICS & GYNECOLOGY
Tetsuya Kawakita, Melissa S Wong, Kelly S Gibson, Megha Gupta, Alexis C Gimovsky, Hind N Moussa, Heo J Hye
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引用次数: 0

Abstract

The rapid evolution of large-language models such as ChatGPT, Claude, and Gemini is reshaping the methodological landscape of obstetrics and gynecology (OBGYN) research. This narrative review provides a comprehensive account of generative AI capabilities, key use cases, and recommended safeguards for investigators. First, generative AI expedites hypothesis generation, enabling researchers to interrogate vast corpora and surface plausible, overlooked questions. Second, it streamlines systematic reviews by composing optimized search strings, screening titles and abstracts, and identifying full-text discrepancies. Third, AI assistants can draft reproducible analytic code, perform preliminary descriptive or inferential analyses, and create publication-ready tables and figures. Fourth, the models support scholarly writing by suggesting journal-specific headings, refining prose, harmonizing references, and translating technical content for multidisciplinary audiences. Fifth, they augment peer-review and editorial workflows by delivering evidence-focused critiques. In educational settings, these models can create adaptive curricula and interactive simulations for trainees, fostering digital literacy and evidence-based practice early in professional development among clinicians. Integration into clinical decision-support pipelines is also foreseeable, warranting proactive governance. Notwithstanding these opportunities, responsible use demands vigilant oversight. Large-language models occasionally fabricate citations or misinterpret domain-specific data ("hallucinations"), potentially propagating misinformation. Outputs are highly prompt-dependent, creating a reliance on informed prompt engineering that may disadvantage less technical clinicians. Moreover, uploading protected health information or copyrighted text raises privacy, security, and intellectual property concerns. We outline best-practice recommendations: maintain human verification of all AI-generated content; cross-validate references with primary databases; employ privacy-preserving, on-premises deployments for sensitive data; document prompts for reproducibility; and disclose AI involvement transparently. In summary, generative AI offers a powerful adjunct for OBGYN scientists by accelerating topic formulation, evidence synthesis, data analysis, manuscript preparation, and peer review. When coupled with rigorous oversight and ethical safeguards, these tools can enhance productivity without compromising scientific integrity. Future studies should quantify accuracy, bias, and downstream patient impact. · Generative AI supports various research stages in OBGYN, such as hypothesis generation, systematic review assistance, data analysis, and scientific writing, demonstrating its potential to streamline research workflows and improve research efficiency.. · Generative AI has notable limitations, including the risk of generating inaccurate references ("hallucinations") and the need for careful supervision.. · Effective usage requires skill in prompt engineering, posing a challenge for those without technical expertise.. · Utilizing generative AI in sensitive fields like OBGYN raises privacy, security, and ethical concerns..

应用生成式人工智能加强妇产科研究。
ChatGPT、Claude和Gemini等大型语言模型的快速发展正在重塑妇产科(OBGYN)研究的方法论景观。这篇叙述性综述提供了生成式人工智能能力、关键用例以及为调查人员推荐的保障措施的全面说明。首先,生成式人工智能加速了假设的生成,使研究人员能够询问大量的语料库,并提出看似合理的、被忽视的问题。其次,它通过组合优化的搜索字符串、筛选标题和摘要以及识别全文差异来简化系统审查。第三,人工智能助手可以起草可重复的分析代码,执行初步的描述性或推断性分析,并创建可供出版的表格和数字。第四,这些模型通过建议期刊特定的标题、精炼散文、协调参考文献和为多学科读者翻译技术内容来支持学术写作。第五,他们通过提供以证据为中心的批评,增加了同行评审和编辑工作流程。在教育环境中,这些模型可以为受训者创建适应性课程和交互式模拟,在临床医生专业发展的早期培养数字素养和循证实践。集成到临床决策支持管道也是可预见的,保证了主动治理。尽管有这些机会,但负责任的使用需要警惕的监督。大型语言模型偶尔会捏造引用或误解特定领域的数据(“幻觉”),潜在地传播错误信息。产出高度依赖于即时,造成对知情的即时工程的依赖,这可能不利于技术水平较低的临床医生。此外,上传受保护的健康信息或受版权保护的文本会引起隐私、安全和知识产权问题。我们概述了最佳实践建议:对所有人工智能生成的内容保持人工验证;与主数据库交叉验证引用;对敏感数据采用保护隐私的本地部署;文件提示再现性;并透明地披露人工智能的参与。总之,生成式人工智能通过加速主题制定、证据合成、数据分析、手稿准备和同行评审,为妇产科科学家提供了强大的辅助工具。当与严格的监督和道德保障相结合时,这些工具可以在不损害科学完整性的情况下提高生产力。未来的研究应量化准确性、偏倚和下游患者影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
American journal of perinatology
American journal of perinatology 医学-妇产科学
CiteScore
5.90
自引率
0.00%
发文量
302
审稿时长
4-8 weeks
期刊介绍: The American Journal of Perinatology is an international, peer-reviewed, and indexed journal publishing 14 issues a year dealing with original research and topical reviews. It is the definitive forum for specialists in obstetrics, neonatology, perinatology, and maternal/fetal medicine, with emphasis on bridging the different fields. The focus is primarily on clinical and translational research, clinical and technical advances in diagnosis, monitoring, and treatment as well as evidence-based reviews. Topics of interest include epidemiology, diagnosis, prevention, and management of maternal, fetal, and neonatal diseases. Manuscripts on new technology, NICU set-ups, and nursing topics are published to provide a broad survey of important issues in this field. All articles undergo rigorous peer review, with web-based submission, expedited turn-around, and availability of electronic publication. The American Journal of Perinatology is accompanied by AJP Reports - an Open Access journal for case reports in neonatology and maternal/fetal medicine.
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