1. A deep learning pipeline for automated classification of vocal fold polyps in flexible laryngoscopy.
- Author
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Yao, Peter, Witte, Dan, German, Alexander, Periyakoil, Preethi, Kim, Yeo Eun, Gimonet, Hortense, Sulica, Lucian, Born, Hayley, Elemento, Olivier, Barnes, Josue, and Rameau, Anaïs
- Subjects
VOCAL cords ,DEEP learning ,RECEIVER operating characteristic curves ,CONVOLUTIONAL neural networks ,POLYPS - Abstract
Purpose: To develop and validate a deep learning model for distinguishing healthy vocal folds (HVF) and vocal fold polyps (VFP) on laryngoscopy videos, while demonstrating the ability of a previously developed informative frame classifier in facilitating deep learning development. Methods: Following retrospective extraction of image frames from 52 HVF and 77 unilateral VFP videos, two researchers manually labeled each frame as informative or uninformative. A previously developed informative frame classifier was used to extract informative frames from the same video set. Both sets of videos were independently divided into training (60%), validation (20%), and test (20%) by patient. Machine-labeled frames were independently verified by two researchers to assess the precision of the informative frame classifier. Two models, pre-trained on ResNet18, were trained to classify frames as containing HVF or VFP. The accuracy of the polyp classifier trained on machine-labeled frames was compared to that of the classifier trained on human-labeled frames. The performance was measured by accuracy and area under the receiver operating characteristic curve (AUROC). Results: When evaluated on a hold-out test set, the polyp classifier trained on machine-labeled frames achieved an accuracy of 85% and AUROC of 0.84, whereas the classifier trained on human-labeled frames achieved an accuracy of 69% and AUROC of 0.66. Conclusion: An accurate deep learning classifier for vocal fold polyp identification was developed and validated with the assistance of a peer-reviewed informative frame classifier for dataset assembly. The classifier trained on machine-labeled frames demonstrates improved performance compared to the classifier trained on human-labeled frames. Level of evidence: 4. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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