Yi Liu, Kexin Deng, Chengwu Zhang, Zhigen Yuan, Jianda Zhou, Can Liu
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The inclusion criteria gave priority to studies that explicitly incorporated artificial intelligence into surgical designs or outcomes. The contributions of countries, institutions, and authors were evaluated through centrality indicators.</p><p><strong>Result: </strong>Publications related to artificial intelligence have grown exponentially, with the USA, Germany, and Canada leading research output. Harvard and Stanford Universities dominate in terms of institutional contributions, but cross-institutional collaboration remains limited. The keyword cluster highlights the innovations of artificial intelligence in breast reconstruction, facial analysis, and automated grading systems. Burst terms such as \"deep learning,\" \"risk assessment,\" and \"attractiveness\" underscore AI's role in optimizing surgical outcomes, but they also expose biases against Western-centric beauty standards. 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Although AI shows the potential to enhance precision and efficiency, its clinical integration faces challenges, including ethical concerns and interdisciplinary complexity, which require a systematic analysis of research trends.</p><p><strong>Methods: </strong>The CiteSpace and VOSviewer software were used to conduct a quantitative analysis of 235 documents in the core collection of Web of Science from 2016 to 2024. Co-citation networks, keyword co-occurrence, burst detection, and cluster analysis were employed to map the research trajectories. The inclusion criteria gave priority to studies that explicitly incorporated artificial intelligence into surgical designs or outcomes. The contributions of countries, institutions, and authors were evaluated through centrality indicators.</p><p><strong>Result: </strong>Publications related to artificial intelligence have grown exponentially, with the USA, Germany, and Canada leading research output. 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引用次数: 0
摘要
背景:在深度学习、手术机器人和预测建模技术进步的推动下,人工智能(AI)与整形手术的融合迅速扩大。尽管人工智能显示出提高精度和效率的潜力,但其临床整合面临挑战,包括伦理问题和跨学科复杂性,这需要对研究趋势进行系统分析。方法:采用CiteSpace和VOSviewer软件对Web of Science 2016 - 2024年核心馆藏的235篇文献进行定量分析。利用共被引网络、关键词共现、突发检测和聚类分析绘制研究轨迹。纳入标准优先考虑明确将人工智能纳入手术设计或结果的研究。通过中心性指标评估国家、机构和作者的贡献。结果:与人工智能相关的出版物呈指数级增长,美国、德国和加拿大的研究产出领先。哈佛大学和斯坦福大学在机构贡献方面占主导地位,但跨机构合作仍然有限。关键词聚类突出了人工智能在乳房重建、面部分析和自动评分系统方面的创新。诸如“深度学习”、“风险评估”和“吸引力”等突发性术语强调了人工智能在优化手术结果方面的作用,但它们也暴露了对以西方为中心的审美标准的偏见。伦理问题、数据集多样性差距以及过度依赖人工智能驱动的决策已成为主要障碍。结论:人工智能在整形外科中的应用超越了基于工具的实用,进入了基于数据的外科工程。协作和数据集多样性方面的持续差距突出了全球跨学科努力解决技术和伦理挑战的必要性,同时推进人工智能的临床应用。未来的研究必须优先考虑透明度、包容性和协作创新,以实现人工智能的变革潜力,同时降低风险。证据等级iv:本刊要求作者为每篇文章指定一个证据等级。有关这些循证医学评级的完整描述,请参阅目录或在线作者说明www.springer.com/00266。
The Rise of Intelligent Plastic Surgery: A 10-Year Bibliometric Journey Through AI Applications, Challenges, and Transformative Potential.
Background: Driven by advancements in deep learning, surgical robots, and predictive modeling technologies, the integration of artificial intelligence (AI) and plastic surgery has expanded rapidly. Although AI shows the potential to enhance precision and efficiency, its clinical integration faces challenges, including ethical concerns and interdisciplinary complexity, which require a systematic analysis of research trends.
Methods: The CiteSpace and VOSviewer software were used to conduct a quantitative analysis of 235 documents in the core collection of Web of Science from 2016 to 2024. Co-citation networks, keyword co-occurrence, burst detection, and cluster analysis were employed to map the research trajectories. The inclusion criteria gave priority to studies that explicitly incorporated artificial intelligence into surgical designs or outcomes. The contributions of countries, institutions, and authors were evaluated through centrality indicators.
Result: Publications related to artificial intelligence have grown exponentially, with the USA, Germany, and Canada leading research output. Harvard and Stanford Universities dominate in terms of institutional contributions, but cross-institutional collaboration remains limited. The keyword cluster highlights the innovations of artificial intelligence in breast reconstruction, facial analysis, and automated grading systems. Burst terms such as "deep learning," "risk assessment," and "attractiveness" underscore AI's role in optimizing surgical outcomes, but they also expose biases against Western-centric beauty standards. Ethical concerns, dataset diversity gaps, and overreliance on AI-driven decisions have become key obstacles.
Conclusion: The integration of artificial intelligence in plastic surgery goes beyond the utility based on tools and into data-informed surgical engineering. The persistent gap in collaboration and dataset diversity highlights the need for global, interdisciplinary efforts to address technical and ethical challenges while advancing AI's clinical utility. Future research must prioritize transparency, inclusivity, and collaborative innovation to realize AI's transformative potential while mitigating risks.
Level of evidence iv: This journal requires that authors assign a level of evidence to each article. For a full description of these Evidence-Based Medicine ratings, please refer to the Table of Contents or the online Instructions to Authors www.springer.com/00266 .
期刊介绍:
Aesthetic Plastic Surgery is a publication of the International Society of Aesthetic Plastic Surgery and the official journal of the European Association of Societies of Aesthetic Plastic Surgery (EASAPS), Società Italiana di Chirurgia Plastica Ricostruttiva ed Estetica (SICPRE), Vereinigung der Deutschen Aesthetisch Plastischen Chirurgen (VDAPC), the Romanian Aesthetic Surgery Society (RASS), Asociación Española de Cirugía Estética Plástica (AECEP), La Sociedad Argentina de Cirugía Plástica, Estética y Reparadora (SACPER), the Rhinoplasty Society of Europe (RSE), the Iranian Society of Plastic and Aesthetic Surgeons (ISPAS), the Singapore Association of Plastic Surgeons (SAPS), the Australasian Society of Aesthetic Plastic Surgeons (ASAPS), the Egyptian Society of Plastic and Reconstructive Surgeons (ESPRS), and the Sociedad Chilena de Cirugía Plástica, Reconstructiva y Estética (SCCP).
Aesthetic Plastic Surgery provides a forum for original articles advancing the art of aesthetic plastic surgery. Many describe surgical craftsmanship; others deal with complications in surgical procedures and methods by which to treat or avoid them. Coverage includes "second thoughts" on established techniques, which might be abandoned, modified, or improved. Also included are case histories; improvements in surgical instruments, pharmaceuticals, and operating room equipment; and discussions of problems such as the role of psychosocial factors in the doctor-patient and the patient-public interrelationships.
Aesthetic Plastic Surgery is covered in Current Contents/Clinical Medicine, SciSearch, Research Alert, Index Medicus-Medline, and Excerpta Medica/Embase.