TY - JOUR
T1 - Reliability of machine learning to diagnose pediatric obstructive sleep apnea
T2 - Systematic review and meta-analysis
AU - Gutiérrez-Tobal, Gonzalo C.
AU - Álvarez, Daniel
AU - Kheirandish-Gozal, Leila
AU - del Campo, Félix
AU - Gozal, David
AU - Hornero, Roberto
N1 - Publisher Copyright:
© 2021 Wiley Periodicals LLC.
PY - 2022/8
Y1 - 2022/8
N2 - Background: Machine-learning approaches have enabled promising results in efforts to simplify the diagnosis of pediatric obstructive sleep apnea (OSA). A comprehensive review and analysis of such studies increase the confidence level of practitioners and healthcare providers in the implementation of these methodologies in clinical practice. Objective: To assess the reliability of machine-learning-based methods to detect pediatric OSA. Data Sources: Two researchers conducted an electronic search on the Web of Science and Scopus using term, and studies were reviewed along with their bibliographic references. Eligibility Criteria: Articles or reviews (Year 2000 onwards) that applied machine learning to detect pediatric OSA; reported data included information enabling derivation of true positive, false negative, true negative, and false positive cases; polysomnography served as diagnostic standard. Appraisal and Synthesis Methods: Pooled sensitivities and specificities were computed for three apnea-hypopnea index (AHI) thresholds: 1 event/hour (e/h), 5 e/h, and 10 e/h. Random-effect models were assumed. Summary receiver-operating characteristics (SROC) analyses were also conducted. Heterogeneity (I 2) was evaluated, and publication bias was corrected (trim and fill). Results: Nineteen studies were finally retained, involving 4767 different pediatric sleep studies. Machine learning improved diagnostic performance as OSA severity criteria increased reaching optimal values for AHI = 10 e/h (0.652 sensitivity; 0.931 specificity; and 0.940 area under the SROC curve). Publication bias correction had minor effect on summary statistics, but high heterogeneity was observed among the studies.
AB - Background: Machine-learning approaches have enabled promising results in efforts to simplify the diagnosis of pediatric obstructive sleep apnea (OSA). A comprehensive review and analysis of such studies increase the confidence level of practitioners and healthcare providers in the implementation of these methodologies in clinical practice. Objective: To assess the reliability of machine-learning-based methods to detect pediatric OSA. Data Sources: Two researchers conducted an electronic search on the Web of Science and Scopus using term, and studies were reviewed along with their bibliographic references. Eligibility Criteria: Articles or reviews (Year 2000 onwards) that applied machine learning to detect pediatric OSA; reported data included information enabling derivation of true positive, false negative, true negative, and false positive cases; polysomnography served as diagnostic standard. Appraisal and Synthesis Methods: Pooled sensitivities and specificities were computed for three apnea-hypopnea index (AHI) thresholds: 1 event/hour (e/h), 5 e/h, and 10 e/h. Random-effect models were assumed. Summary receiver-operating characteristics (SROC) analyses were also conducted. Heterogeneity (I 2) was evaluated, and publication bias was corrected (trim and fill). Results: Nineteen studies were finally retained, involving 4767 different pediatric sleep studies. Machine learning improved diagnostic performance as OSA severity criteria increased reaching optimal values for AHI = 10 e/h (0.652 sensitivity; 0.931 specificity; and 0.940 area under the SROC curve). Publication bias correction had minor effect on summary statistics, but high heterogeneity was observed among the studies.
KW - machine learning
KW - meta-analysis
KW - pediatrics
KW - review
KW - sleep apnea
UR - https://www.scopus.com/pages/publications/85105203356
U2 - 10.1002/ppul.25423
DO - 10.1002/ppul.25423
M3 - Article
C2 - 33856128
AN - SCOPUS:85105203356
SN - 8755-6863
VL - 57
SP - 1931
EP - 1943
JO - Pediatric Pulmonology
JF - Pediatric Pulmonology
IS - 8
ER -