TY - JOUR
T1 - Integrating domain knowledge with machine learning to detect obstructive sleep apnea
T2 - Snore as a significant bio-feature
AU - Hsu, Yu Ching
AU - Wang, Jung Der
AU - Huang, Po-Hsien
AU - Chien, Yu Wen
AU - Chiu, Ching Ju
AU - Lin, Cheng Yu
N1 - Funding Information:
This research was funded by grants from the Ministry of Science and Technology, Taiwan (project number MOST 109‐2314‐B‐675‐001, MOST 108‐2627‐M‐006‐001, MOST 106‐3011‐E‐006‐002, MOST 105‐3011‐E‐006‐002, MOST 104‐3011‐E‐006‐003), and National Cheng Kung University Hospital (grant number NCKUH‐10904006).
Publisher Copyright:
© 2021 European Sleep Research Society
PY - 2022/4
Y1 - 2022/4
N2 - Our study’s main purpose is to emphasise the significance of medical knowledge of pathophysiology before machine learning. We investigated whether combining domain knowledge with machine learning results might increase accuracy and minimise the number of bio-features used to detect obstructive sleep apnea (OSA). The present study analysed data on 36 self-reported symptoms and 24 clinical features obtained from 3,495 patients receiving polysomnography at a regional hospital and a medical centre. The area under the receiver operating characteristic (AUC) curve was used to evaluate patients with and without moderate or severe OSA using three prediction models on the basis of various estimation methods: the multiple logistic regression (MLR), support vector machine (SVM), and neural network (NN) methods. Odds ratios stratified by gender and age were also measured to account for clinicians’ common sense. We discovered that adding the self-reported snoring item improved the AUC by 0.01–0.10 and helped us to rapidly achieve the optimum level. The performance of four items (gender, age, body mass index [BMI], and snoring) was comparable with that of adding two or more items (neck and waist circumference) for predicting moderate to severe OSA (Apnea–Hypopnea Index ≥15 events/hr) in all three prediction models, demonstrating the medical knowledge value of pathophysiology. The four-item test sample AUCs were 0.83, 0.84, and 0.83 for MLR, SVM, and NN, respectively. Participants with regular snoring and a BMI of ≥25 kg/m2 had a greater chance of moderate to severe OSA according to the stratified adjusted odds ratios. Combining domain knowledge into machine learning could increase efficiency and enable primary care physicians to refer for an OSA diagnosis earlier.
AB - Our study’s main purpose is to emphasise the significance of medical knowledge of pathophysiology before machine learning. We investigated whether combining domain knowledge with machine learning results might increase accuracy and minimise the number of bio-features used to detect obstructive sleep apnea (OSA). The present study analysed data on 36 self-reported symptoms and 24 clinical features obtained from 3,495 patients receiving polysomnography at a regional hospital and a medical centre. The area under the receiver operating characteristic (AUC) curve was used to evaluate patients with and without moderate or severe OSA using three prediction models on the basis of various estimation methods: the multiple logistic regression (MLR), support vector machine (SVM), and neural network (NN) methods. Odds ratios stratified by gender and age were also measured to account for clinicians’ common sense. We discovered that adding the self-reported snoring item improved the AUC by 0.01–0.10 and helped us to rapidly achieve the optimum level. The performance of four items (gender, age, body mass index [BMI], and snoring) was comparable with that of adding two or more items (neck and waist circumference) for predicting moderate to severe OSA (Apnea–Hypopnea Index ≥15 events/hr) in all three prediction models, demonstrating the medical knowledge value of pathophysiology. The four-item test sample AUCs were 0.83, 0.84, and 0.83 for MLR, SVM, and NN, respectively. Participants with regular snoring and a BMI of ≥25 kg/m2 had a greater chance of moderate to severe OSA according to the stratified adjusted odds ratios. Combining domain knowledge into machine learning could increase efficiency and enable primary care physicians to refer for an OSA diagnosis earlier.
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U2 - 10.1111/jsr.13487
DO - 10.1111/jsr.13487
M3 - Article
C2 - 34549473
AN - SCOPUS:85115243346
SN - 0962-1105
VL - 31
JO - Journal of Sleep Research
JF - Journal of Sleep Research
IS - 2
M1 - e13487
ER -