人工智能在声带麻痹诊断中的应用综述

IF 0.4 Q4 SURGERY
Divya Rao, Rohit Singh, K Devaraja, Sucheta Kolekar
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引用次数: 0

摘要

声带麻痹是一种由神经损伤引起的疾病,它会导致声带运动受损,影响说话、呼吸和吞咽。诊断这种情况是具有挑战性的,因为传统的方法是侵入性的。即使在需要专门的设备后,诊断往往不能自信地将其与类似的疾病区分开来。这导致治疗延误,影响患者的生活质量。人工智能可以在数据集上进行训练,以识别人类可能遗漏的数据模式,特别是在疾病发病率不常见的情况下。本文综述了近五年来人工智能在声带麻痹诊断中的应用研究。本文综述了所有旨在利用人工智能诊断单侧或双侧声带麻痹的研究论文。展示了数据集、性能和挑战,以及研究差距和有待改进的领域。人工智能模型已经显示出巨大的诊断潜力。人工智能应用于声学分析,成功地识别出与声带功能受损相关的细微声音变化,准确率很高。应用基于成像的方法提供了可靠和详细的声带运动评估。计算方法即使不能替代传统诊断工具,也提供了有希望的补充,使早期识别和个性化治疗成为可能。数据集多样性、模型偏差和对高质量数据的依赖一直是挑战。未来的研究应侧重于扩大可用的公共数据集,改进算法,并确保临床设置的可用性,以最大限度地提高这些技术对患者预后的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Review of Diagnostic Approaches to Vocal Fold Paralysis Using Artificial Intelligence.

Vocal fold paralysis, a condition caused by nerve damage, leads to impaired vocal fold movement, impacting speech, breathing, and swallowing. Diagnosing this condition is challenging as conventional methods are invasive. Even after requiring specialized equipment, the diagnosis often fails to confidently distinguish it from similar disorders. This results in treatment delay, affecting the patient's quality of life. Artificial intelligence can be trained on datasets to identify patterns in data that humans can miss, especially in cases where the disease incidence is not common. This narrative review consolidates recent research on the application of artificial intelligence on vocal fold paralysis diagnosis in the last five years. All research papers that have aimed to diagnose unilateral or bilateral vocal fold paralysis using artificial intelligence have been reviewed in this work. Datasets, performance, and challenges have been showcased, along with research gaps and areas for improvement. Artificial intelligence models have demonstrated significant diagnostic potential. Artificial intelligence applied to acoustic analysis successfully identified subtle voice changes linked to impaired vocal fold function with high accuracy. Application to imaging-based approaches offered reliable and detailed motion assessments of vocal folds. Computational approaches provide promising supplements if not alternatives to traditional diagnostic tools, enabling earlier identification and personalized treatment. Dataset diversity, model bias, and reliance on high-quality data are consistent challenges. Future research should focus on expanding the pool of available public datasets, refining algorithms, and ensuring usability in clinical settings to maximize the impact of these technologies on patient outcomes.

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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
226
审稿时长
6-12 weeks
期刊介绍: Indian Journal of Otolaryngology and Head & Neck Surgery was founded as Indian Journal of Otolaryngology in 1949 as a scientific Journal published by the Association of Otolaryngologists of India and was later rechristened as IJOHNS to incorporate the changes and progress. IJOHNS, undoubtedly one of the oldest Journals in India, is the official publication of the Association of Otolaryngologists of India and is about to publish it is 67th Volume in 2015. The Journal published quarterly accepts articles in general Oto-Rhino-Laryngology and various subspecialities such as Otology, Rhinology, Laryngology and Phonosurgery, Neurotology, Head and Neck Surgery etc. The Journal acts as a window to showcase and project the clinical and research work done by Otolaryngologists community in India and around the world. It is a continued source of useful clinical information with peer review by eminent Otolaryngologists of repute in their respective fields. The Journal accepts articles pertaining to clinical reports, Clinical studies, Research articles in basic and applied Otolaryngology, short Communications, Clinical records reporting unusual presentations or lesions and new surgical techniques. The journal acts as a catalyst and mirrors the Indian Otolaryngologist’s active interests and pursuits. The Journal also invites articles from senior and experienced authors on interesting topics in Otolaryngology and allied sciences from all over the world. The print version is distributed free to about 4000 members of Association of Otolaryngologists of India and the e-Journal shortly going to make its appearance on the Springer Board can be accessed by all the members. Association of Otolaryngologists of India and M/s Springer India group have come together to co-publish IJOHNS from January 2007 and this bondage is going to provide an impetus to the Journal in terms of international presence and global exposure.
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