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Automatic Classification of Excitation Location of Snoring Sounds

Overview
Specialties Neurology
Psychiatry
Date 2021 Feb 9
PMID 33560203
Citations 3
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Abstract

Study Objectives: For surgical treatment of patients with obstructive sleep apnea-hypopnea syndrome, it is crucial to locate accurately the obstructive sites in the upper airway; however, noninvasive methods for locating the obstructive sites have not been well explored. Snoring, as the cardinal symptom of obstructive sleep apnea-hypopnea syndrome, should contain information that reflects the state of the upper airway. Through the classification of snores produced at four different locations, this study aimed to test the hypothesis that snores generated by various obstructive sites differ.

Methods: We trained and tested our model on a public data set that comprised 219 participants. For each snore episode, an acoustic and a physiological feature were extracted and concatenated, forming a 59-dimensional fusion feature. A principal component analysis and a support machine vector were used for dimensional reduction and snore classification. The performance of the proposed model was evaluated using several metrics: sensitivity, precision, specificity, area under the receiver operating characteristic curve, and F1 score.

Results: The unweighted average values of sensitivity, precision, specificity, area under the curve, and F1 were 86.36%, 89.09%, 96.4%, 87.9%, and 87.63%, respectively. The model achieved 98.04%, 80.56%, 72.73%, and 94.12% sensitivity for types V (velum), O (oropharyngeal), T (tongue), and E (epiglottis) snores.

Conclusions: The characteristics of snores are related to the state of the upper airway. The machine-learning-based model can be used to locate the vibration sites in the upper airway.

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Predicting upper airway collapse sites found in drug-induced sleep endoscopy from clinical data and snoring sounds in patients with obstructive sleep apnea: a prospective clinical study.

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References
1.
Hessel N, Vries N . Increase of the apnoea-hypopnoea index after uvulopalatopharyngoplasty: analysis of failure. Clin Otolaryngol Allied Sci. 2004; 29(6):682-5. DOI: 10.1111/j.1365-2273.2004.00864.x. View

2.
Sawyer A, Gooneratne N, Marcus C, Ofer D, Richards K, Weaver T . A systematic review of CPAP adherence across age groups: clinical and empiric insights for developing CPAP adherence interventions. Sleep Med Rev. 2011; 15(6):343-56. PMC: 3202028. DOI: 10.1016/j.smrv.2011.01.003. View

3.
Riley R, POWELL N, Guilleminault C . Obstructive sleep apnea syndrome: a review of 306 consecutively treated surgical patients. Otolaryngol Head Neck Surg. 1993; 108(2):117-25. DOI: 10.1177/019459989310800203. View

4.
Hessel N, de Vries N . Results of uvulopalatopharyngoplasty after diagnostic workup with polysomnography and sleep endoscopy: a report of 136 snoring patients. Eur Arch Otorhinolaryngol. 2003; 260(2):91-5. DOI: 10.1007/s00405-002-0511-9. View

5.
Pincus S . Approximate entropy as a measure of system complexity. Proc Natl Acad Sci U S A. 1991; 88(6):2297-301. PMC: 51218. DOI: 10.1073/pnas.88.6.2297. View