номер публикации alr.70045

Machine Learning‐Enhanced Clinical Decision Support for Diagnosing Sinusitis With Nasal Endoscopy

Тип публикацииJournal Article
Дата публикации2025-10-15
scimago Q1
wos Q1
white level БС1
SJR1.412
CiteScore7.7
Impact factor6.8
ISSN20426976, 20426984
Краткое описание
ABSTRACT
Background

Sinusitis is a prevalent disease for which nasal endoscopy (NE) is an optimal diagnostic modality. However, NE accuracy is limited by inter‐operator variability in landmark identification and localization of mucus that is necessary for sinusitis diagnosis. We sought to develop a novel multi‐class machine learning (ML) framework that detects anatomical landmarks and structures for sinusitis assessment as supported by clinical best practices.

Methods

A total of 3513 NE images from 452 patients were manually annotated by four physicians for three classes: middle turbinate (MT), inferior turbinate (IT), and mucus. A YOLOv11‐nano model was trained for multi‐class detection and segmentation. We developed a rule‐based logic for middle meatus localization, implementing a clinical algorithm that applies anatomy Intersection over Union (IoU) and conditional logic for sinusitis diagnosis. The system was validated on 178 images from 50 patients with chronic rhinosinusitis without polyps (CRSsNP) with benchmarking of real‐time performance.

Results

The multi‐class detection and segmentation model achieved > 75% F1 score for detecting turbinates with mucus. The clinical algorithm achieved 75.0% sensitivity, 76.0% specificity, and 75.2% accuracy for sinusitis classification, with a F1 score of 81.8%, approaching the accuracy of a trained otolaryngologist. The framework achieved near real‐time performance at > 20fps on GPU device, demonstrating suitability for integration into live clinical workflows.

Conclusion

This novel ML‐driven diagnostic framework with a rule‐based clinical algorithm enhances decision‐making for diagnosing sinusitis with NE. By reducing inter‐operator variability, achieving performance comparable to otolaryngologists, and enabling real‐time processing for non‐specialists, this work holds potential for standardizing care and improving patient outcomes. Future research will focus on expanding to different sinusitis phenotypes and prospective real‐time implementation in clinical settings.

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Gyawali D. et al. Machine Learning‐Enhanced Clinical Decision Support for Diagnosing Sinusitis With Nasal Endoscopy // International Forum of Allergy and Rhinology. 2025. alr.70045
ГОСТ со всеми авторами (до 50) Скопировать
Gyawali D., Mundy T., Hosseini M., Bodaghi M., Fujiwara A., Bhatia S. S., Baker K., Bartolone E., Patel D., Chu H., Raju G., Bidwell J., MCCOUL E. Machine Learning‐Enhanced Clinical Decision Support for Diagnosing Sinusitis With Nasal Endoscopy // International Forum of Allergy and Rhinology. 2025. alr.70045
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TY - JOUR
DO - 10.1002/alr.70045
UR - https://onlinelibrary.wiley.com/doi/10.1002/alr.70045
TI - Machine Learning‐Enhanced Clinical Decision Support for Diagnosing Sinusitis With Nasal Endoscopy
T2 - International Forum of Allergy and Rhinology
AU - Gyawali, Dipesh
AU - Mundy, Thomas
AU - Hosseini, Majid
AU - Bodaghi, Morteza
AU - Fujiwara, Akio
AU - Bhatia, Sejal Shyam
AU - Baker, Kayla
AU - Bartolone, Elena
AU - Patel, Dhara
AU - Chu, Henry
AU - Raju, Gottumukkala
AU - Bidwell, Jonathan
AU - MCCOUL, E
PY - 2025
DA - 2025/10/15
PB - Wiley
SN - 2042-6976
SN - 2042-6984
ER -
BibTex
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@article{2025_Gyawali,
author = {Dipesh Gyawali and Thomas Mundy and Majid Hosseini and Morteza Bodaghi and Akio Fujiwara and Sejal Shyam Bhatia and Kayla Baker and Elena Bartolone and Dhara Patel and Henry Chu and Gottumukkala Raju and Jonathan Bidwell and E MCCOUL},
title = {Machine Learning‐Enhanced Clinical Decision Support for Diagnosing Sinusitis With Nasal Endoscopy},
journal = {International Forum of Allergy and Rhinology},
year = {2025},
publisher = {Wiley},
month = {oct},
url = {https://onlinelibrary.wiley.com/doi/10.1002/alr.70045},
pages = {alr.70045},
doi = {10.1002/alr.70045}
}
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