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Machine learning for image-based detection of patients with obstructive sleep apnea: an exploratory study

Authors :
Fernanda R. Almeida
Tatsuya Fukuda
Satoru Tsuiki
Yuichi Inoue
Yuki Sakamoto
Hideaki Nakayama
Hiroki Enno
Takuya Nagaoka
Source :
Sleep & Breathing = Schlaf & Atmung
Publication Year :
2021
Publisher :
Springer Science and Business Media LLC, 2021.

Abstract

Purpose In 2-dimensional lateral cephalometric radiographs, patients with severe obstructive sleep apnea (OSA) exhibit a more crowded oropharynx in comparison with non-OSA. We tested the hypothesis that machine learning, an application of artificial intelligence (AI), could be used to detect patients with severe OSA based on 2-dimensional images. Methods A deep convolutional neural network was developed (n = 1258; 90%) and tested (n = 131; 10%) using data from 1389 (100%) lateral cephalometric radiographs obtained from individuals diagnosed with severe OSA (n = 867; apnea hypopnea index > 30 events/h sleep) or non-OSA (n = 522; apnea hypopnea index Results The sensitivity/specificity was 0.87/0.82 for full image, 0.88/0.75 for main region, 0.71/0.63 for head only, and 0.54/0.80 for the manual analysis. The area under the receiver-operating characteristic curve was the highest for main region 0.92, for full image 0.89, for head only 0.70, and for manual cephalometric analysis 0.75. Conclusions A deep convolutional neural network identified individuals with severe OSA with high accuracy. Future research on this concept using AI and images can be further encouraged when discussing triage of OSA.

Details

ISSN :
15221709 and 15209512
Volume :
25
Database :
OpenAIRE
Journal :
Sleep and Breathing
Accession number :
edsair.doi.dedup.....f66bf12295bff071134bfbd80be05bbe