Michelutti Luca, Tel Alessandro, Zeppieri Marco, Ius Tamara, Agosti Edoardo, Sembronio Salvatore, Robiony Massimo
Clinic of Maxillofacial Surgery, Head-Neck and NeuroScience Department, University Hospital of Udine, p.le S. Maria della Misericordia 15, 33100 Udine, Italy.
Department of Ophthalmology, University Hospital of Udine, Piazzale S. Maria della Misericordia 15, 33100 Udine, Italy.
J Clin Med. 2024 Jun 18;13(12):3556. doi: 10.3390/jcm13123556.
Generative Adversarial Networks (GANs) are a class of artificial neural networks capable of generating content such as images, text, and sound. For several years already, artificial intelligence algorithms have shown promise as tools in the medical field, particularly in oncology. Generative Adversarial Networks (GANs) represent a new frontier of innovation, as they are revolutionizing artificial content generation, opening opportunities in artificial intelligence and deep learning. This systematic review aims to investigate what the stage of development of such technology is in the field of head and neck surgery, offering a general overview of the applications of such algorithms, how they work, and the potential limitations to be overcome in the future. The Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines were followed in conducting this study, and the PICOS framework was used to formulate the research question. The following databases were evaluated: MEDLINE, Embase, Cochrane Central Register of Controlled Trials (CENTRAL), Scopus, ClinicalTrials.gov, ScienceDirect, and CINAHL. Out of 700 studies, only 9 were included. Eight applications of GANs in the head and neck region were summarized, including the classification of craniosynostosis, recognition of the presence of chronic sinusitis, diagnosis of radicular cysts in panoramic X-rays, segmentation of craniomaxillofacial bones, reconstruction of bone defects, removal of metal artifacts from CT scans, prediction of the postoperative face, and improvement of the resolution of panoramic X-rays. Generative Adversarial Networks may represent a new evolutionary step in the study of pathology, oncological and otherwise, making the approach to the disease much more precise and personalized.
生成对抗网络(GANs)是一类能够生成图像、文本和声音等内容的人工神经网络。多年来,人工智能算法在医学领域,尤其是肿瘤学领域,已展现出作为工具的潜力。生成对抗网络代表了创新的新前沿,因为它们正在彻底改变人工内容生成,为人工智能和深度学习带来机遇。本系统评价旨在调查此类技术在头颈外科领域的发展阶段,概述此类算法的应用、工作方式以及未来需克服的潜在局限性。本研究遵循系统评价和Meta分析的首选报告项目(PRISMA)指南,并使用PICOS框架来制定研究问题。对以下数据库进行了评估:MEDLINE、Embase、Cochrane对照试验中央注册库(CENTRAL)、Scopus、ClinicalTrials.gov、ScienceDirect和CINAHL。在700项研究中,仅纳入了9项。总结了生成对抗网络在头颈部区域的八项应用,包括颅缝早闭的分类、慢性鼻窦炎存在的识别、全景X线片中根端囊肿的诊断、颅颌面骨的分割、骨缺损的重建、CT扫描中金属伪影的去除、术后面部预测以及全景X线片分辨率的提高。生成对抗网络可能代表了病理学研究(肿瘤学及其他领域)中的一个新的进化步骤,使疾病的诊断方法更加精确和个性化。