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.

Machine learning identification of obstructive sleep apnea severity through the patient clinical features: a retrospective study / Maniaci, Antonino; Riela, Paolo Marco; Iannella, Giannicola; Lechien, Jerome Rene; La Mantia, Ignazio; De Vincentiis, Marco; Cammaroto, Giovanni; Calvo-Henriquez, Christian; Di Luca, Milena; Chiesa Estomba, Carlos; Saibene, Alberto Maria; Pollicina, Isabella; Stilo, Giovanna; Di Mauro, Paola; Cannavicci, Angelo; Lugo, Rodolfo; Magliulo, Giuseppe; Greco, Antonio; Pace, Annalisa; Meccariello, Giuseppe; Cocuzza, Salvatore; Vicini, Claudio. - In: LIFE. - ISSN 2075-1729. - 13:3(2023). [10.3390/life13030702]

Machine learning identification of obstructive sleep apnea severity through the patient clinical features: a retrospective study

Iannella, Giannicola
Secondo
;
De Vincentiis, Marco;Magliulo, Giuseppe;Greco, Antonio;Pace, Annalisa;
2023

Abstract

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.
2023
ESS; OSA severity; artificial intelligence; clinical OSA scores; machine learning; obstructive sleep apnea
01 Pubblicazione su rivista::01a Articolo in rivista
Machine learning identification of obstructive sleep apnea severity through the patient clinical features: a retrospective study / Maniaci, Antonino; Riela, Paolo Marco; Iannella, Giannicola; Lechien, Jerome Rene; La Mantia, Ignazio; De Vincentiis, Marco; Cammaroto, Giovanni; Calvo-Henriquez, Christian; Di Luca, Milena; Chiesa Estomba, Carlos; Saibene, Alberto Maria; Pollicina, Isabella; Stilo, Giovanna; Di Mauro, Paola; Cannavicci, Angelo; Lugo, Rodolfo; Magliulo, Giuseppe; Greco, Antonio; Pace, Annalisa; Meccariello, Giuseppe; Cocuzza, Salvatore; Vicini, Claudio. - In: LIFE. - ISSN 2075-1729. - 13:3(2023). [10.3390/life13030702]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1693673
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