Artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitis

BackgroundStandardised management of chronic sinusitis (CRS) is a challenging but vital area of research. Not only is accurate diagnosis and individualised treatment plans required, but post-treatment chronic disease management is also indispensable. With the development of artificial intelligence (...

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Main Authors: Yang-Yang Liu, Shao-Peng Jiang, Ying-Bin Wang
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-03-01
Series:Frontiers in Physiology
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Online Access:https://www.frontiersin.org/articles/10.3389/fphys.2025.1522090/full
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author Yang-Yang Liu
Shao-Peng Jiang
Ying-Bin Wang
author_facet Yang-Yang Liu
Shao-Peng Jiang
Ying-Bin Wang
author_sort Yang-Yang Liu
collection DOAJ
description BackgroundStandardised management of chronic sinusitis (CRS) is a challenging but vital area of research. Not only is accurate diagnosis and individualised treatment plans required, but post-treatment chronic disease management is also indispensable. With the development of artificial intelligence (AI), more “AI + medical” application models are emerging. Many AI-assisted systems have been applied to the diagnosis and treatment of CRS, providing valuable solutions for clinical practice.ObjectiveThis study summarises the research progress of various AI-assisted systems applied to the clinical diagnosis and treatment of CRS, focusing on their role in imaging and pathological diagnosis and prognostic prediction and treatment.MethodsWe used PubMed, Web of Science, and other Internet search engines with “artificial intelligence”、“machine learning” and “chronic sinusitis” as the keywords to conduct a literature search for studies from the last 7 years. We included literature eligible for AI application to CRS diagnosis and treatment in our study, excluded literature outside this scope, and categorized it according to its clinical application to CRS diagnosis, treatment, and prognosis prediction. We provide an overview and summary of current advances in AI to optimize the diagnosis and treatment of CRS, as well as difficulties and challenges in promoting standardization of clinical diagnosis and treatment in this area.ResultsThrough applications in CRS imaging and pathology diagnosis, personalised medicine and prognosis prediction, AI can significantly reduce turnaround times, lower diagnostic costs and accurately predict disease outcomes. However, a number of challenges remain. These include a lack of AI product standards, standardised data, difficulties in collaboration between different healthcare providers, and the non-interpretability of AI systems. There may also be data privacy issues involved. Therefore, more research and improvements are needed to realise the full potential of AI in the diagnosis and treatment of CRS.ConclusionOur findings inform the clinical diagnosis and treatment of CRS and the development of AI-assisted clinical diagnosis and treatment systems. We provide recommendations for AI to drive standardisation of CRS diagnosis and treatment.
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spelling doaj-art-0d132522a1a54a7faaa97f7d367dd8832025-08-20T02:52:42ZengFrontiers Media S.A.Frontiers in Physiology1664-042X2025-03-011610.3389/fphys.2025.15220901522090Artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitisYang-Yang LiuShao-Peng JiangYing-Bin WangBackgroundStandardised management of chronic sinusitis (CRS) is a challenging but vital area of research. Not only is accurate diagnosis and individualised treatment plans required, but post-treatment chronic disease management is also indispensable. With the development of artificial intelligence (AI), more “AI + medical” application models are emerging. Many AI-assisted systems have been applied to the diagnosis and treatment of CRS, providing valuable solutions for clinical practice.ObjectiveThis study summarises the research progress of various AI-assisted systems applied to the clinical diagnosis and treatment of CRS, focusing on their role in imaging and pathological diagnosis and prognostic prediction and treatment.MethodsWe used PubMed, Web of Science, and other Internet search engines with “artificial intelligence”、“machine learning” and “chronic sinusitis” as the keywords to conduct a literature search for studies from the last 7 years. We included literature eligible for AI application to CRS diagnosis and treatment in our study, excluded literature outside this scope, and categorized it according to its clinical application to CRS diagnosis, treatment, and prognosis prediction. We provide an overview and summary of current advances in AI to optimize the diagnosis and treatment of CRS, as well as difficulties and challenges in promoting standardization of clinical diagnosis and treatment in this area.ResultsThrough applications in CRS imaging and pathology diagnosis, personalised medicine and prognosis prediction, AI can significantly reduce turnaround times, lower diagnostic costs and accurately predict disease outcomes. However, a number of challenges remain. These include a lack of AI product standards, standardised data, difficulties in collaboration between different healthcare providers, and the non-interpretability of AI systems. There may also be data privacy issues involved. Therefore, more research and improvements are needed to realise the full potential of AI in the diagnosis and treatment of CRS.ConclusionOur findings inform the clinical diagnosis and treatment of CRS and the development of AI-assisted clinical diagnosis and treatment systems. We provide recommendations for AI to drive standardisation of CRS diagnosis and treatment.https://www.frontiersin.org/articles/10.3389/fphys.2025.1522090/fullartificial intelligencemachine learningdeep learningchronic sinusitisdiagnosistreatment
spellingShingle Yang-Yang Liu
Shao-Peng Jiang
Ying-Bin Wang
Artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitis
Frontiers in Physiology
artificial intelligence
machine learning
deep learning
chronic sinusitis
diagnosis
treatment
title Artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitis
title_full Artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitis
title_fullStr Artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitis
title_full_unstemmed Artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitis
title_short Artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitis
title_sort artificial intelligence optimizes the standardized diagnosis and treatment of chronic sinusitis
topic artificial intelligence
machine learning
deep learning
chronic sinusitis
diagnosis
treatment
url https://www.frontiersin.org/articles/10.3389/fphys.2025.1522090/full
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