Rayane Délcia da Silva, Suzanne Bettega Almeida, Flávio Magno Gonçalves, Bianca Simone Zeigelboim, José Stechman-Neto, Angela Graciela Deliga Schroder, Weslania Viviane Nascimento, Rosane Sampaio Santos, Cristiano Miranda de Araujo
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The databases consulted included EMBASE, Latin American and Caribbean Health Sciences Literature (LILACS), Livivo, PubMed/Medline, Scopus, Cochrane Library, Web of Science, and grey literature.</p><p><strong>Selection criteria: </strong>The acronym 'PCC' was used to consider the eligibility of studies for this review.</p><p><strong>Data analysis: </strong>After removing duplicates, 56 articles were initially selected. A subsequent update resulted in 205 articles, of which 61 were included after applying the selection criteria.</p><p><strong>Results: </strong>Videofluoroscopy of swallowing was used as the reference examination in most studies. Regarding the underlying diseases present in the patients who participated in the studies, there was a predominance of various neurological conditions. 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Identified research gaps require further investigations to solidify the clinical applicability and impact of these technologies.</p>","PeriodicalId":46547,"journal":{"name":"CoDAS","volume":"37 4","pages":"e20240305"},"PeriodicalIF":0.8000,"publicationDate":"2025-08-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12337716/pdf/","citationCount":"0","resultStr":"{\"title\":\"Artificial intelligence in the diagnosis and management of dysphagia: a scoping review.\",\"authors\":\"Rayane Délcia da Silva, Suzanne Bettega Almeida, Flávio Magno Gonçalves, Bianca Simone Zeigelboim, José Stechman-Neto, Angela Graciela Deliga Schroder, Weslania Viviane Nascimento, Rosane Sampaio Santos, Cristiano Miranda de Araujo\",\"doi\":\"10.1590/2317-1782/e20240305en\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Purpose: </strong>This scoping review aimed to map and synthesize evidence on technological advancements using Artificial Intelligence in the diagnosis and management of dysphagia. 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引用次数: 0
摘要
目的:本综述旨在绘制和综合人工智能在吞咽困难诊断和治疗中的技术进展的证据。我们遵循PRISMA的指导方针和乔安娜布里格斯研究所的指导方针,专注于吞咽困难的技术创新研究。研究策略:协议在Open Science Framework平台注册。参考的数据库包括EMBASE、拉丁美洲和加勒比健康科学文献(LILACS)、Livivo、PubMed/Medline、Scopus、Cochrane图书馆、Web of Science和灰色文献。选择标准:首字母缩略词“PCC”用于考虑本综述的研究资格。数据分析:剔除重复后,初步筛选出56篇。随后的更新产生了205篇文章,其中61篇在应用选择标准后被列入。结果:在大多数研究中,吞咽影像透视检查作为参考检查。关于参与研究的患者中存在的潜在疾病,主要是各种神经系统疾病。使用的算法在机器学习、深度学习和计算机视觉等类别中各不相同,其中深度学习的使用占主导地位。结论:人工智能在吞咽困难诊断和管理方面的技术进展已经被绘制出来,突出了深度学习在诸如视频透视检查等检查中的优势和适用性。研究结果表明,在提高诊断准确性和临床管理有效性方面具有重要潜力,特别是在神经系统患者中。已确定的研究差距需要进一步调查,以巩固这些技术的临床适用性和影响。
Artificial intelligence in the diagnosis and management of dysphagia: a scoping review.
Purpose: This scoping review aimed to map and synthesize evidence on technological advancements using Artificial Intelligence in the diagnosis and management of dysphagia. We followed the PRISMA guidelines and those of the Joanna Briggs Institute, focusing on research about technological innovations in dysphagia.
Research strategies: The protocol was registered on the Open Science Framework platform. The databases consulted included EMBASE, Latin American and Caribbean Health Sciences Literature (LILACS), Livivo, PubMed/Medline, Scopus, Cochrane Library, Web of Science, and grey literature.
Selection criteria: The acronym 'PCC' was used to consider the eligibility of studies for this review.
Data analysis: After removing duplicates, 56 articles were initially selected. A subsequent update resulted in 205 articles, of which 61 were included after applying the selection criteria.
Results: Videofluoroscopy of swallowing was used as the reference examination in most studies. Regarding the underlying diseases present in the patients who participated in the studies, there was a predominance of various neurological conditions. The algorithms used varied across the categories of Machine Learning, Deep Learning, and Computer Vision, with a predominance in the use of Deep Learning.
Conclusion: Technological advancements in artificial intelligence for the diagnosis and management of dysphagia have been mapped, highlighting the predominance and applicability of Deep Learning in examinations such as videofluoroscopy. The findings suggest significant potential to improve diagnostic accuracy and clinical management effectiveness, particularly in neurological patients. Identified research gaps require further investigations to solidify the clinical applicability and impact of these technologies.