Predicting Obstructive Sleep Apnea Based on Computed Tomography Scans Using Deep Learning Models.

Journal: American journal of respiratory and critical care medicine
Published Date:

Abstract

The incidence of clinically undiagnosed obstructive sleep apnea (OSA) is high among the general population because of limited access to polysomnography. Computed tomography (CT) of craniofacial regions obtained for other purposes can be beneficial in predicting OSA and its severity. To predict OSA and its severity based on paranasal CT using a three-dimensional deep learning algorithm. One internal dataset ( = 798) and two external datasets ( = 135 and  = 85) were used in this study. In the internal dataset, 92 normal participants and 159 with mild, 201 with moderate, and 346 with severe OSA were enrolled to derive the deep learning model. A multimodal deep learning model was elicited from the connection between a three-dimensional convolutional neural network-based part treating unstructured data (CT images) and a multilayer perceptron-based part treating structured data (age, sex, and body mass index) to predict OSA and its severity. In a four-class classification for predicting the severity of OSA, the AirwayNet-MM-H model (multimodal model with airway-highlighting preprocessing algorithm) showed an average accuracy of 87.6% (95% confidence interval [CI], 86.8-88.6%) in the internal dataset and 84.0% (95% CI, 83.0-85.1%) and 86.3% (95% CI, 85.3-87.3%) in the two external datasets, respectively. In the two-class classification for predicting significant OSA (moderate to severe OSA), the area under the receiver operating characteristic curve, accuracy, sensitivity, specificity, and F1 score were 0.910 (95% CI, 0.899-0.922), 91.0% (95% CI, 90.1-91.9%), 89.9% (95% CI, 88.8-90.9%), 93.5% (95% CI, 92.7-94.3%), and 93.2% (95% CI, 92.5-93.9%), respectively, in the internal dataset. Furthermore, the diagnostic performance of the Airway Net-MM-H model outperformed that of the other six state-of-the-art deep learning models in terms of accuracy for both four- and two-class classifications and area under the receiver operating characteristic curve for two-class classification ( < 0.001). A novel deep learning model, including a multimodal deep learning model and an airway-highlighting preprocessing algorithm from CT images obtained for other purposes, can provide significantly precise outcomes for OSA diagnosis.

Authors

  • Jeong-Whun Kim
    Department of Otorhinolaryngology, Seoul National University Bundang Hospital, 82, Gumi-ro, Bundang-gu, Seongnam, Republic of Korea.
  • Kyungsu Lee
    Information and Communication Engineering, Daegu Gyeongbuk Institute of Science and Technology, Daegu 42988, Korea.
  • Hyun Jik Kim
    Department of Otorhinolaryngology, Seoul National University College of Medicine, Seoul National University Hospital, Seoul, Korea. hyunjerry@snu.ac.kr.
  • Hae Chan Park
    Department of Otorhinolaryngology-Head and Neck Surgery, Seoul National University Bundang Hospital, Gyeonggi, 13620, Republic of Korea.
  • Jae Youn Hwang
  • Seok-Won Park
    Department of Otorhinolaryngology-Head and Neck Surgery, Dongguk University Ilsan Hospital, 814 Siksa Dong, Goyang 410-773, Republic of Korea.
  • Hyoun-Joong Kong
    Department of Biomedical Engineering, Chungnam National University College of Medicine, Daejeon, Korea.
  • Jin Youp Kim
    Department of Otorhinolaryngology-Head and Neck Surgery, Ilsan Hospital, Dongguk University, Goyang, Gyeonggi, Korea.