Pandey Ayushmaan, Kaur Jagdeep, Kaushal Darwin
Department of Computer Science and Engineering, Dr B R Ambedkar National Institute of Technology, G. T. Road, Jalandhar, Punjab 144008 India.
Department of Otorhinolaryngology and Head Neck Surgery, All India Institute of Medical Sciences, Vijaypur, Jammu, Jammu and Kashmir 180001 India.
Indian J Otolaryngol Head Neck Surg. 2024 Oct;76(5):4986-4996. doi: 10.1007/s12070-024-04885-4. Epub 2024 Jul 15.
This systematic literature review aims to study the role and impact of artificial intelligence (AI) in transforming Ear, Nose, and Throat (ENT) healthcare. It aims to compare and analyse literature that applied AI algorithms for ENT disease prediction and detection based on their effectiveness, methods, dataset, and performance. We have also discussed ENT specialists' challenges and AI's role in solving them. This review also discusses the challenges faced by AI researchers. This systematic review was completed using PRISMA guidelines. Data was extracted from several reputable digital databases, including PubMed, Medline, SpringerLink, Elsevier, Google Scholar, ScienceDirect, and IEEExplore. The search criteria included studies recently published between 2018 and 2024 related to the application of AI for ENT healthcare. After removing duplicate studies and quality assessments, we reviewed eligible articles and responded to the research questions. This review aims to provide a comprehensive overview of the current state of AI applications in ENT healthcare. Among the 3257 unique studies, 27 were selected as primary studies. About 62.5% of the included studies were effective in providing disease predictions. We found that Pretrained DL models are more in application than CNN algorithms when employed for ENT disease predictions. The accuracy of models ranged between 75 and 97%. We also observed the effectiveness of conversational AI models such as ChatGPT in the ENT discipline. The research in AI for ENT is advancing rapidly. Most of the models have achieved accuracy above 90%. However, the lack of good-quality data and data variability limits the overall ability of AI models to perform better for ENT disease prediction. Further research needs to be conducted while considering factors such as external validation and the issue of class imbalance.
本系统文献综述旨在研究人工智能(AI)在转变耳鼻喉科(ENT)医疗保健方面的作用和影响。其目的是根据文献的有效性、方法、数据集和性能,对应用人工智能算法进行耳鼻喉科疾病预测和检测的文献进行比较和分析。我们还讨论了耳鼻喉科专家面临的挑战以及人工智能在解决这些挑战方面的作用。本综述还讨论了人工智能研究人员面临的挑战。本系统综述是按照PRISMA指南完成的。数据从几个著名的数字数据库中提取,包括PubMed、Medline、SpringerLink、Elsevier、谷歌学术、ScienceDirect和IEEExplore。搜索标准包括2018年至2024年期间最近发表的与人工智能在耳鼻喉科医疗保健中的应用相关的研究。在去除重复研究和进行质量评估后,我们对符合条件的文章进行了综述,并回答了研究问题。本综述旨在全面概述人工智能在耳鼻喉科医疗保健中的应用现状。在3257项独特研究中,27项被选为主要研究。约62.5%的纳入研究在提供疾病预测方面是有效的。我们发现,在用于耳鼻喉科疾病预测时,预训练的深度学习模型比卷积神经网络算法应用得更多。模型的准确率在75%至97%之间。我们还观察到了ChatGPT等对话式人工智能模型在耳鼻喉科领域的有效性。人工智能在耳鼻喉科方面的研究正在迅速推进。大多数模型的准确率已超过90%。然而,缺乏高质量数据和数据可变性限制了人工智能模型在耳鼻喉科疾病预测方面表现得更好的整体能力。在考虑外部验证和类别不平衡问题等因素的同时,需要进行进一步的研究。