Can Statistical Machine Learning Algorithms Help for Classification of Obstructive Sleep Apnea Severity to Optimal Utilization of Polysomnography Resources?

被引:18
作者
Bozkurt, Selen [1 ]
Bostanci, Asli [2 ]
Turhan, Murat [2 ]
机构
[1] Akdeniz Univ, Dept Biostat & Med Informat, Antalya, Turkey
[2] Akdeniz Univ, Dept Otolaryngol Head & Neck Surg, Antalya, Turkey
关键词
Obstructive sleep apnea; machine learning; diagnostic accuracy; Bayesian networks; PHYSICAL-EXAMINATION; PREDICTION MODEL; EPIDEMIOLOGY;
D O I
10.3414/ME16-01-0084
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Objectives: The goal of this study is to evaluate the results of machine learning methods for the classification of OSA severity of patients with suspected sleep disorder breathing as normal, mild, moderate and severe based on non-polysomnographic variables: 1) clinical data, 2) symptoms and 3) physical examination. Methods: In order to produce classification models for OSA severity, five different machine learning methods (Bayesian network, Decision Tree, Random Forest, Neural Networks and Logistic Regression) were trained while relevant variables and their relationships were derived empirically from observed data. Each model was trained and evaluated using 10-fold cross-validation and to evaluate classification performances of all methods, true positive rate (TPR), false positive rate (FPR), Positive Predictive Value (PPV), F measure and Area Under Receiver Operating Characteristics curve (ROC-AUC) were used. Results: Results of 10-fold cross validated tests with different variable settings promisingly indicated that the OSA severity of suspected OSA patients can be classified, using non-polysomnographic features, with 0.71 true positive rate as the highest and, 0.15 false positive rate as the lowest, respectively. Moreover, the test results of different variables settings revealed that the accuracy of the classification models was significantly improved when physical examination variables were added to the model. Conclusions: Study results showed that machine learning methods can be used to estimate the probabilities of no, mild, moderate, and severe obstructive sleep apnea and such approaches may improve accurate initial OSA screening and help referring only the suspected moderate or severe OSA patients to sleep laboratories for the expensive tests.
引用
收藏
页码:308 / 318
页数:11
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