Machine Learning for Automatic Detection of Velopharyngeal Dysfunction: A Preliminary Report

Author:

Lucas Claiborne1,Torres-Guzman Ricardo2,James Andrew J.2,Corlew Scott3,Stone Amy4,Powell Maria E.4,Golinko Michael25,Pontell Matthew E.25

Affiliation:

1. Department of General Surgery, Prisma Health Greenville, Greenville, SC

2. Department of Plastic Surgery, Vanderbilt University Medical Center, Nashville, TN

3. Blavatnik Institute of Global Health & Social Medicine, Program in Global Surgery and Social Change, Harvard Medical School, Boston Children’s Hospital, Boston, MA

4. Department of Otolaryngology—Head and Neck Surgery, Vanderbilt University Medical Center

5. Division of Pediatric Plastic Surgery, Monroe Carell Jr. Children’s Hospital, Nashville, TN

Abstract

Background: Even after palatoplasty, the incidence of velopharyngeal dysfunction (VPD) can reach 30%; however, these estimates arise from high-income countries (HICs) where speech-language pathologists (SLP) are part of standardized cleft teams. The VPD burden in low- and middle-income countries (LMICs) is unknown. This study aims to develop a machine-learning model that can detect the presence of VPD using audio samples alone. Methods: Case and control audio samples were obtained from institutional and publicly available sources. A machine-learning model was built using Python software. Results: The initial 110 audio samples used to test and train the model were retested after format conversion and file deidentification. Each sample was tested 5 times yielding a precision of 100%. Sensitivity was 92.73% (95% CI: 82.41%–97.98%) and specificity was 98.18% (95% CI: 90.28%–99.95%). One hundred thirteen prospective samples, which had not yet interacted with the model, were then tested. Precision was again 100% with a sensitivity of 88.89% (95% CI: 78.44%–95.41%) and a specificity of 66% (95% CI: 51.23%–78.79%). Discussion: VPD affects nearly 100% of patients with unrepaired overt soft palatal clefts and up to 30% of patients who have undergone palatoplasty. VPD can render patients unintelligible, thereby accruing significant psychosocial morbidity. The true burden of VPD in LMICs is unknown, and likely exceeds estimates from HICs. The ability to access a phone-based screening machine-learning model could expand access to diagnostic, and potentially therapeutic modalities for an innumerable amount of patients worldwide who suffer from VPD.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Reference18 articles.

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2. Buccal myomucosal flap repair for velopharyngeal dysfunction;Chiang;Plast Reconstr Surg,2023

3. The double-opposing buccal flap procedure for palatal lengthening;Mann;Plast Reconstr Surg,2011

4. Velopharyngeal surgery: a prospective randomized study of pharyngeal flaps and sphincter pharyngoplasties;Ysunza;Plast Reconstr Surg,2002

5. What’s new in cleft palate and velopharyngeal dysfunction management?;Naran;Plast Reconstr Surg,2017

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