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Rethinking glottal midline detection
Medicine and HealthScientific Reports

Rethinking glottal midline detection

A. M. Kist, J. Zilker, et al.

This study by Andreas M. Kist and colleagues offers a breakthrough in fully automatic glottal midline detection, enhancing vocal fold oscillation symmetry assessments. The researchers leverage deep learning to advance laryngeal endoscopy and have developed GlottisNet, a novel architecture that boosts clinical applicability with its simultaneous predictions.... show more
Abstract
A healthy voice is crucial for verbal communication and hence in daily as well as professional life. The basis for a healthy voice are the sound producing vocal folds in the larynx. A hallmark of healthy vocal fold oscillation is the symmetric motion of the left and right vocal fold. Clinically, videoendoscopy is applied to assess the symmetry of the oscillation and evaluated subjectively. High-speed videoendoscopy, an emerging method that allows quantification of the vocal fold oscillation, is more commonly employed in research due to the amount of data and the complex, semi-automatic analysis. In this study, we provide a comprehensive evaluation of methods that detect fully automatically the glottal midline. We used a biophysical model to simulate different vocal fold oscillations, extended the openly available BAGLS dataset using manual annotations, utilized both, simulations and annotated endoscopic images, to train deep neural networks at different stages of the analysis workflow, and compared these to established computer vision algorithms. We found that classical computer vision perform well on detecting the glottal midline in glottis segmentation data, but are outperformed by deep neural networks on this task. We further suggest GlottisNet, a multi-task neural architecture featuring the simultaneous prediction of both, the opening between the vocal folds and the symmetry axis, leading to a huge step forward towards clinical applicability of quantitative, deep learning-assisted laryngeal endoscopy, by fully automating segmentation and midline detection.
Publisher
Scientific Reports
Published On
Nov 26, 2020
Authors
Andreas M. Kist, Julian Zilker, Pablo Gómez, Anne Schützenberger, Michael Döllinger
Tags
glottal midline detectionvocal fold oscillationdeep learningGlottisNetlaryngeal endoscopycomputer visionbiophysical model
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