Machine learning and geometric morphometrics to predict obstructive sleep apnea from 3D craniofacial scans

被引:23
作者
Monna, Fabrice [1 ]
Ben Messaoud, Raoua [2 ]
Navarro, Nicolas [3 ,4 ]
Baillieul, Sebastien [2 ,5 ]
Sanchez, Lionel [6 ]
Loiodice, Corinne [2 ,5 ]
Tamisier, Renaud [2 ,5 ]
Joyeux-Faure, Marie [2 ,5 ]
Pepin, Jean-Louis [2 ,5 ,7 ]
机构
[1] Univ Bourgogne Franche Comte, ARTEHIS, UMR 6298, CNRS, 6 Blvd Gabriel,Bat Gabriel, F-21000 Dijon, France
[2] Grenoble Alpes Univ, HP2 Lab, Inserm U1300, Grenoble, France
[3] Univ Bourgogne Franche Comte, Biogeosci UMR CNRS 6282, 6 Blvd Gabriel,Bat Gabriel, F-21000 Dijon, France
[4] PSL Univ, EPHE, 4-14 Rue Ferrus, F-75014 Paris, France
[5] Grenoble Alpes Univ Hosp, Thorax & Vessels Div, EFCR Lab, Grenoble, France
[6] ARCTIC, 18 Chemin Cadet, F-97411 St Paul, France
[7] CHU Grenoble, Lab EFCR, CS 10217, F-38043 Grenoble, France
关键词
Obstructive sleep apnea; Craniofacial scan; Machine learning; 3D geometric morphometrics; ANATOMIC RISK-FACTORS; BERLIN QUESTIONNAIRE; STOP-BANG; NOSAS SCORE; MORPHOLOGY; PHOTOGRAPHY; VALIDATION; PARADIGM; OBESITY; INDEX;
D O I
10.1016/j.sleep.2022.04.019
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background: Obstructive sleep apnea (OSA) remains massively underdiagnosed, due to limited access to polysomnography (PSG), the highly complex gold standard for diagnosis. Performance scores in predicting OSA are evaluated for machine learning (ML) analysis applied to 3D maxillofacial shapes. Methods: The 3D maxillofacial shapes were scanned on 280 Caucasian men with suspected OSA. All participants underwent single night in-home or in-laboratory sleep testing with PSG (Nox A1, Resmed, Australia), with concomitant 3D scanning (Sense v2, 3D systems corporation, USA). Anthropometric data, comorbidities, medication, BERLIN, and NoSAS questionnaires were also collected at baseline. The PSG recordings were manually scored at the reference sleep center. The 3D craniofacial scans were processed by geometric morphometrics, and 13 different supervised algorithms, varying from simple to more advanced, were trained and tested. Results for OSAS recognition by ML models were then compared with scores for specificity and sensitivity obtained using BERLIN and NoSAS questionnaires. Results: All valid scans (n = 267) were included in the analysis (patient mean age: 59 +/-; 9 years; BMI: 27 +/- 4 kg/m(2)). For PSG-derived AHI >= 15 events/h, the 56% specificity obtained for ML analysis of 3D craniofacial shapes was higher than for the questionnaires (Berlin: 50%; NoSAS: 40%). A sensitivity of 80% was obtained using ML analysis, compared to nearly 90% for NoSAS and 61% for the BERLIN questionnaire. The auROC score was further improved when 3D geometric morphometrics were combined with patient anthropometrics (auROC = 0.75). Conclusion: The combination of 3D geometric morphometrics with ML is proposed as a rapid, efficient, and inexpensive screening tool for OSA. (c) 2022 Elsevier B.V. All rights reserved.
引用
收藏
页码:76 / 83
页数:8
相关论文
共 63 条
[1]   geomorph: an r package for the collection and analysis of geometric morphometric shape data [J].
Adams, Dean C. ;
Otarola-Castillo, Erik .
METHODS IN ECOLOGY AND EVOLUTION, 2013, 4 (04) :393-399
[2]  
[Anonymous], 2014, Kernel methods and machine learning
[3]   Which Screening Questionnaire is Best for Predicting Obstructive Sleep Apnea in the Sleep Clinic Population Considering Age, Gender, and Comorbidities? [J].
Arslan, Burcu Oktay ;
Hosgor, Zeynep Zeren Ucar ;
Orman, Mehmet Nurullah .
TURKISH THORACIC JOURNAL, 2020, 21 (06) :383-389
[4]   Prediction of obstructive sleep apnea using facial landmarks [J].
Balaei, Asghar Tabatabaei ;
Sutherland, Kate ;
Cistulli, Peter ;
de Chazal, Philip .
PHYSIOLOGICAL MEASUREMENT, 2018, 39 (09)
[5]   Estimation of the global prevalence and burden of obstructive sleep apnoea: a literature-based analysis [J].
Benjafield, Adam V. ;
Ayas, Najib T. ;
Eastwood, Peter R. ;
Heinzer, Raphael ;
Ip, Mary S. M. ;
Morrell, Mary J. ;
Nunez, Carlos M. ;
Patel, Sanjay R. ;
Penzel, Thomas ;
Pepin, Jean-Louis D. ;
Peppard, Paul E. ;
Sinha, Sanjeev ;
Tufik, Sergio ;
Valentine, Kate ;
Malhotra, Atul .
LANCET RESPIRATORY MEDICINE, 2019, 7 (08) :687-698
[6]   Diagnostic accuracy of screening questionnaires for obstructive sleep apnoea in adults in different clinical cohorts: a systematic review and meta-analysis [J].
Bernhardt, Lizelle ;
Brady, Emer M. ;
Freeman, Suzanne C. ;
Polmann, Helena ;
Reus, Jessica Conti ;
Flores-Mir, Carlos ;
De Luca Canto, Graziela ;
Robertson, Noelle ;
Squire, Iain B. .
SLEEP AND BREATHING, 2022, 26 (03) :1053-1078
[7]   AASM Scoring Manual Updates for 2017 (Version 2.4) [J].
Berry, Richard B. ;
Brooks, Rita ;
Gamaldo, Charlene ;
Harding, Susan M. ;
Lloyd, Robin M. ;
Quan, Stuart F. ;
Troester, Matthew T. ;
Vaughn, Bradley V. .
JOURNAL OF CLINICAL SLEEP MEDICINE, 2017, 13 (05) :665-666
[8]   Rules for Scoring Respiratory Events in Sleep: Update of the 2007 AASM Manual for the Scoring of Sleep and Associated Events [J].
Berry, Richard B. ;
Budhiraja, Rohit ;
Gottlieb, Daniel J. ;
Gozal, David ;
Iber, Conrad ;
Kapur, Vishesh K. ;
Marcus, Carole L. ;
Mehra, Reena ;
Parthasarathy, Sairam ;
Quan, Stuart F. ;
Redline, Susan ;
Strohl, Kingman P. ;
Ward, Sally L. Davidson ;
Tangredi, Michelle M. .
JOURNAL OF CLINICAL SLEEP MEDICINE, 2012, 8 (05) :597-619
[9]  
Bishop C.M., 2006, Pattern Recognition and Machine Learning, P738, DOI DOI 10.1007/978-0-387-45528-0
[10]  
Botsch Mario, 2010, Polygon Mesh Processing