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An automated approach for real-time informative frames classification in laryngeal endoscopy using deep learning. | LitMetric

AI Article Synopsis

  • The paper explores the use of AI for automatic selection of important frames during laryngoscopy, enhancing data extraction, storage, and review processes.
  • Various deep learning models were trained on over 5,000 laryngoscopy images and tested in real-time settings, particularly focusing on performance using ResNet-50.
  • The model showed high precision and recall rates (95% precision and 97% recall), indicating its strong potential for use in clinical scenarios to assist otolaryngologists in improving diagnostic accuracy.

Article Abstract

Purpose: Informative image selection in laryngoscopy has the potential for improving automatic data extraction alone, for selective data storage and a faster review process, or in combination with other artificial intelligence (AI) detection or diagnosis models. This paper aims to demonstrate the feasibility of AI in providing automatic informative laryngoscopy frame selection also capable of working in real-time providing visual feedback to guide the otolaryngologist during the examination.

Methods: Several deep learning models were trained and tested on an internal dataset (n = 5147 images) and then tested on an external test set (n = 646 images) composed of both white light and narrow band images. Four videos were used to assess the real-time performance of the best-performing model.

Results: ResNet-50, pre-trained with the pretext strategy, reached a precision = 95% vs. 97%, recall = 97% vs, 89%, and the F1-score = 96% vs. 93% on the internal and external test set respectively (p = 0.062). The four testing videos are provided in the supplemental materials.

Conclusion: The deep learning model demonstrated excellent performance in identifying diagnostically relevant frames within laryngoscopic videos. With its solid accuracy and real-time capabilities, the system is promising for its development in a clinical setting, either autonomously for objective quality control or in conjunction with other algorithms within a comprehensive AI toolset aimed at enhancing tumor detection and diagnosis.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11266252PMC
http://dx.doi.org/10.1007/s00405-024-08676-zDOI Listing

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