Can Large Artificial Intelligence-Based Linguistic Models Help to Obtain Information About Burning Mouth Syndrome?

IF 2.9 3区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Oral diseases Pub Date : 2025-08-31 DOI:10.1111/odi.70078
Paula Benito López, Daniela Adamo, Vito Carlo Alberto Caponio, José González-Serrano, Alan Roger Dos Santos Silva, Miguel de Pedro Herráez, Rui Albuquerque, María Pía López Jornet, Vlaho Brailo, Arwa Farag, Márcio Diniz Freitas, Noburo Noma, Richeal Ni Riordain, Gonzalo Hernández, Rosa María López-Pintor
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引用次数: 0

Abstract

Objective: Burning Mouth Syndrome (BMS) is an idiopathic chronic orofacial pain disorder with diagnostic and therapeutic challenges. Inexperienced clinicians may desperately resort to online information. The objective of this study was to evaluate the usefulness, quality, and readability of responses generated by three artificial intelligence large language models (AI-LLMs)-ChatGPT-4, Gemini, and Microsoft Copilot-to frequent questions about BMS.

Materials and methods: Nine clinically relevant open-ended questions were identified through search-trend analysis and expert review. Standardized prompts were submitted, and responses were independently rated by 12 international experts using a 4-point usefulness scale. Quality was evaluated using the QAMAI tool. Readability was measured using Flesch-Kincaid Grade Level and Reading Ease scores. Statistical analyses included Kruskal-Wallis and Bonferroni correction.

Results: All AI-LLMs produced moderately useful responses, with no significant difference in global performance. Gemini achieved highest overall quality scores, particularly in relevance, completeness, and source provision. Copilot scored lower in usefulness and source provision. No significant differences were obtained among AI-LLMs. Average readability corresponded to 12th grade, with ChatGPT requiring the highest proficiency.

Conclusions: AI-LLMs show potential for generating reliable information on BMS, though variability in quality, readability, and source citation remains concerning. Continuous optimization is essential to ensure their clinical integration.

基于人工智能的大型语言模型能否帮助获取关于灼口综合征的信息?
目的:灼口综合征(BMS)是一种特发性慢性口腔面部疼痛疾病,诊断和治疗具有挑战性。缺乏经验的临床医生可能会绝望地求助于在线信息。本研究的目的是评估三种人工智能大型语言模型(AI-LLMs)——chatgpt -4、Gemini和Microsoft copilot——对有关BMS的常见问题所产生的回答的有用性、质量和可读性。材料与方法:通过检索趋势分析和专家评审,确定9个临床相关开放式问题。提交了标准化的提示,并由12位国际专家使用4分制有用性量表对回答进行独立评级。使用QAMAI工具评估质量。可读性采用Flesch-Kincaid Grade Level和Reading Ease评分进行测量。统计分析采用Kruskal-Wallis和Bonferroni校正。结果:所有ai - llm都产生了适度有用的反应,总体表现没有显著差异。Gemini获得了最高的总体质量分数,特别是在相关性、完整性和资源供应方面。副驾驶在实用性和资源供应方面得分较低。ai - llm之间无显著差异。平均可读性相当于12年级,ChatGPT要求最高的熟练程度。结论:人工智能法学硕士显示出产生BMS可靠信息的潜力,尽管质量、可读性和来源引用的可变性仍然值得关注。持续优化是确保临床整合的关键。
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来源期刊
Oral diseases
Oral diseases 医学-牙科与口腔外科
CiteScore
7.60
自引率
5.30%
发文量
325
审稿时长
4-8 weeks
期刊介绍: Oral Diseases is a multidisciplinary and international journal with a focus on head and neck disorders, edited by leaders in the field, Professor Giovanni Lodi (Editor-in-Chief, Milan, Italy), Professor Stefano Petti (Deputy Editor, Rome, Italy) and Associate Professor Gulshan Sunavala-Dossabhoy (Deputy Editor, Shreveport, LA, USA). The journal is pre-eminent in oral medicine. Oral Diseases specifically strives to link often-isolated areas of dentistry and medicine through broad-based scholarship that includes well-designed and controlled clinical research, analytical epidemiology, and the translation of basic science in pre-clinical studies. The journal typically publishes articles relevant to many related medical specialties including especially dermatology, gastroenterology, hematology, immunology, infectious diseases, neuropsychiatry, oncology and otolaryngology. The essential requirement is that all submitted research is hypothesis-driven, with significant positive and negative results both welcomed. Equal publication emphasis is placed on etiology, pathogenesis, diagnosis, prevention and treatment.
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