Intelligent Incident Hypertension Prediction in Obstructive Sleep Apnea
Journal:
arXiv
Published Date:
May 27, 2025
Abstract
Obstructive sleep apnea (OSA) is a significant risk factor for hypertension,
primarily due to intermittent hypoxia and sleep fragmentation. Predicting
whether individuals with OSA will develop hypertension within five years
remains a complex challenge. This study introduces a novel deep learning
approach that integrates Discrete Cosine Transform (DCT)-based transfer
learning to enhance prediction accuracy. We are the first to incorporate all
polysomnography signals together for hypertension prediction, leveraging their
collective information to improve model performance. Features were extracted
from these signals and transformed into a 2D representation to utilize
pre-trained 2D neural networks such as MobileNet, EfficientNet, and ResNet
variants. To further improve feature learning, we introduced a DCT layer, which
transforms input features into a frequency-based representation, preserving
essential spectral information, decorrelating features, and enhancing
robustness to noise. This frequency-domain approach, coupled with transfer
learning, is especially beneficial for limited medical datasets, as it
leverages rich representations from pre-trained networks to improve
generalization. By strategically placing the DCT layer at deeper truncation
depths within EfficientNet, our model achieved a best area under the curve
(AUC) of 72.88%, demonstrating the effectiveness of frequency-domain feature
extraction and transfer learning in predicting hypertension risk in OSA
patients over a five-year period.