Diagnostic Accuracy of Different Machine Learning Algorithms for Obstructive Sleep Apnea
Journal of Sleep Medicine
; : 128-137, 2020.
Article
de Ko
| WPRIM
| ID: wpr-900615
Bibliothèque responsable:
WPRO
ABSTRACT
Objectives@#The objective of this study was to develop models for predicting obstructive sleep apnea (OSA) based on easily obtainable clinical information of patients using various machine learning techniques. @*Methods@#We used a data set that included the records of 1,368 patients, in which 1,074 patients were male (78.5 %), and 294 patients were female (21.5 %). We randomly divided the data into a training set (1,000) and test set (368). Five machine learning methods, i.e., support vector machine model, lasso logit model, naïve bayes, discriminant analysis, and K-nearest neighbor (KNN), with a 10-cross fold technique were used with the proposed model to predict OSA. We evaluated the accuracy, sensitivity, specificity, and precision of each model for three thresholds [Apnea-Hypopnea Index (AHI)≥5, AHI≥15, and AHI≥30]. @*Results@#Among the machine learning techniques, KNN showed the best results compared to the other techniques. The accuracy, sensitivity, specificity, and precision of OSA prediction were 87.0%, 91.0%, 74.4%, and 91.9%, respectively, based on AHI≥5. When the threshold of OSA was AHI≥15 or AHI≥30, KNN provided lower accuracy (79.6% each) and precision (79.0% and 68.7%), which were still higher than those of the other techniques. @*Conclusions@#The model derived from the KNN technique exhibited the best performance based on its highest level of accuracy. We demonstrate that this model is a useful tool for predicting OSA.
Texte intégral:
1
Indice:
WPRIM
Type d'étude:
Diagnostic_studies
/
Prognostic_studies
langue:
Ko
Texte intégral:
Journal of Sleep Medicine
Année:
2020
Type:
Article