Machine learning based identification of relevant parameters for functional voice disorders derived from endoscopic high-speed recordings

Schlegel P, Kniesburges S, Dürr S, Schützenberger A, Döllinger M (2020)


Publication Type: Journal article

Publication year: 2020

Journal

Book Volume: 10

Article Number: 10517

Journal Issue: 1

DOI: 10.1038/s41598-020-66405-y

Abstract

In voice research and clinical assessment, many objective parameters are in use. However, there is no commonly used set of parameters that reflect certain voice disorders, such as functional dysphonia (FD); i.e. disorders with no visible anatomical changes. Hence, 358 high-speed videoendoscopy (HSV) recordings (159 normal females (NF), 101 FD females (FDF), 66 normal males (NM), 32 FD males (FDM)) were analyzed. We investigated 91 quantitative HSV parameters towards their significance. First, 25 highly correlated parameters were discarded. Second, further 54 parameters were discarded by using a LogitBoost decision stumps approach. This yielded a subset of 12 parameters sufficient to reflect functional dysphonia. These parameters separated groups NF vs. FDF and NM vs. FDM with fair accuracy of 0.745 or 0.768, respectively. Parameters solely computed from the changing glottal area waveform (1D-function called GAW) between the vocal folds were less important than parameters describing the oscillation characteristics along the vocal folds (2D-function called Phonovibrogram). Regularity of GAW phases and peak shape, harmonic structure and Phonovibrogram-based vocal fold open and closing angles were mainly important. This study showed the high degree of redundancy of HSV-voice-parameters but also affirms the need of multidimensional based assessment of clinical data.

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APA:

Schlegel, P., Kniesburges, S., Dürr, S., Schützenberger, A., & Döllinger, M. (2020). Machine learning based identification of relevant parameters for functional voice disorders derived from endoscopic high-speed recordings. Scientific Reports, 10(1). https://doi.org/10.1038/s41598-020-66405-y

MLA:

Schlegel, Patrick, et al. "Machine learning based identification of relevant parameters for functional voice disorders derived from endoscopic high-speed recordings." Scientific Reports 10.1 (2020).

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