Machine Learning Identification of Obstructive Sleep Apnea Severity through the Patient Clinical Features: A Retrospective Study
Antonino Maniaci,
Paolo Marco Riela,
Giannicola Iannella,
Jerome Rene Lechien,
Ignazio La Mantia,
Marco De Vincentiis,
Giovanni Cammaroto,
Christian Calvo-Henriquez,
Milena Di Luca,
Carlos Chiesa Estomba,
Alberto Maria Saibene,
Isabella Pollicina,
Giovanna Stilo,
Paola Di Mauro,
Angelo Cannavicci,
Rodolfo Lugo,
Giuseppe Magliulo,
Antonio Greco,
Annalisa Pace,
Giuseppe Meccariello,
Salvatore Cocuzza,
Claudio Vicini
Affiliations
Antonino Maniaci
Department of Medical and Surgical Sciences and Advanced Technologies “GF Ingrassia” ENT Section, University of Catania, 95123 Catania, Italy
Paolo Marco Riela
Department of Mathematics and Informatics, University of Catania, 95123 Catania, Italy
Giannicola Iannella
Sleep Surgery Study Group of the Young-Otolaryngologists of the International Federations of Oto-rhino-laryngological Societies (YO-IFOS), 75001 Paris, France
Jerome Rene Lechien
Sleep Surgery Study Group of the Young-Otolaryngologists of the International Federations of Oto-rhino-laryngological Societies (YO-IFOS), 75001 Paris, France
Ignazio La Mantia
Department of Medical and Surgical Sciences and Advanced Technologies “GF Ingrassia” ENT Section, University of Catania, 95123 Catania, Italy
Marco De Vincentiis
Otorhinolaryngology Department, Sapienza University of Rome, Policlinico Umberto I, Viale del Policlinico 151, 00010 Rome, Italy
Giovanni Cammaroto
Sleep Surgery Study Group of the Young-Otolaryngologists of the International Federations of Oto-rhino-laryngological Societies (YO-IFOS), 75001 Paris, France
Christian Calvo-Henriquez
Service of Otolaryngology, Rhinology Unit, Hospital Complex of Santiago de Compostela, 15701 Santiago de Compostela, Spain
Milena Di Luca
Department of Medical and Surgical Sciences and Advanced Technologies “GF Ingrassia” ENT Section, University of Catania, 95123 Catania, Italy
Carlos Chiesa Estomba
Department of Otorhinolaryngology-Head and Neck Surgery, Hospital Universitario Donostia, 20001 San Sebastian, Spain
Alberto Maria Saibene
Otolaryngology Unit Santi Paolo e Carlo, Hospital Department of Health Sciences, Università Degli Studi di Milano, 20021 Milan, Italy
Isabella Pollicina
Department of Medical and Surgical Sciences and Advanced Technologies “GF Ingrassia” ENT Section, University of Catania, 95123 Catania, Italy
Giovanna Stilo
Department of Medical and Surgical Sciences and Advanced Technologies “GF Ingrassia” ENT Section, University of Catania, 95123 Catania, Italy
Paola Di Mauro
Department of Medical and Surgical Sciences and Advanced Technologies “GF Ingrassia” ENT Section, University of Catania, 95123 Catania, Italy
Angelo Cannavicci
Department of Head-Neck Surgery, Otolaryngology, Head-Neck, and Oral Surgery Unit, Morgagni Pierantoni Hospital, 47121 Forlì, Italy
Rodolfo Lugo
Department of Otorhinolaryngology, Grupo Medico San Pedro, Monterrey 64660, Mexico
Giuseppe Magliulo
Otorhinolaryngology Department, Sapienza University of Rome, Policlinico Umberto I, Viale del Policlinico 151, 00010 Rome, Italy
Antonio Greco
Otorhinolaryngology Department, Sapienza University of Rome, Policlinico Umberto I, Viale del Policlinico 151, 00010 Rome, Italy
Annalisa Pace
Otorhinolaryngology Department, Sapienza University of Rome, Policlinico Umberto I, Viale del Policlinico 151, 00010 Rome, Italy
Giuseppe Meccariello
Department of Head-Neck Surgery, Otolaryngology, Head-Neck, and Oral Surgery Unit, Morgagni Pierantoni Hospital, 47121 Forlì, Italy
Salvatore Cocuzza
Department of Medical and Surgical Sciences and Advanced Technologies “GF Ingrassia” ENT Section, University of Catania, 95123 Catania, Italy
Claudio Vicini
Department of Head-Neck Surgery, Otolaryngology, Head-Neck, and Oral Surgery Unit, Morgagni Pierantoni Hospital, 47121 Forlì, Italy
Objectives: To evaluate the role of clinical scores assessing the risk of disease severity in patients with clinical suspicion of obstructive sleep apnea syndrome (OSA). The hypothesis was tested by applying artificial intelligence (AI) to demonstrate its effectiveness in distinguishing between mild–moderate OSA and severe OSA risk. Methods: A support vector machine model (SVM) was developed from the samples included in the analysis (N = 498), and they were split into 75% for training (N = 373) with the remaining for testing (N = 125). Two diagnostic thresholds were selected for OSA severity: mild to moderate (apnea–hypopnea index (AHI) ≥ 5 events/h and AHI < 30 events/h) and severe (AHI ≥ 30 events/h). The algorithms were trained and tested to predict OSA patient severity. Results: The sensitivity and specificity for the SVM model were 0.93 and 0.80 with an accuracy of 0.86; instead, the logistic regression full mode reported a value of 0.74 and 0.63, respectively, with an accuracy of 0.68. After backward stepwise elimination for features selection, the reduced logistic regression model demonstrated a sensitivity and specificity of 0.79 and 0.56, respectively, and an accuracy of 0.67. Conclusion: Artificial intelligence could be applied to patients with symptoms related to OSA to identify individuals with a severe OSA risk with clinical-based algorithms in the OSA framework.