A CNN-based recurrence analysis of heart rate variability achieved a peak accuracy of 75% for detecting obstructive sleep apnea, outperforming traditional time-frequency models (<65% accuracy).
Does a CNN-based recurrence analysis of HRV improve the automatic detection of obstructive sleep apnea compared to traditional time-frequency models?
A novel deep learning approach using CNNs and HRV recurrence analysis provides a viable, resource-efficient alternative to polysomnography for detecting obstructive sleep apnea.
Absolute Event Rate: 75% vs 65%
Obstructive sleep apnea (OSA) represents a significant health concern. While polysomnography (PSG) remains the gold standard, its resource-intensive nature has encouraged the exploration of further alternative approaches. Most of these were based on the heart rate variability (HRV) analysis, but only a few of them have presented a recurrence-based approach. The present paper addresses this gap by integrating convolutional neural networks (CNNs) with HRV recurrence analysis. Employing three different and publicly available databases from PhysioNet’s official repository (Apnea-ECG, MIT-BIH, and UCD-DB), the presented method was able to expose concealed patterns within the distance matrix of HRV’s phase space, which is discernible at an appropriate level of abstraction through CNNs. Under the challenging context of external validation (MIT-BIH and UCD for training, and Apnea-ECG for testing), the results obtained were comparable to those presented in the state of the art, achieving a peak accuracy of 75%, while maintaining balanced sensitivity and specificity at 74% and 75%, respectively. Moreover, these results obtained by the proposed CNN-based recurrence analysis of HRV also outperformed traditional time–frequency models, which have yielded values of accuracy lower than 65%. Hence, this paper highlights the importance of the proposed method in gaining new insights into OSA’s HRV dynamics, offering a contribution that adds to the existing analytical approaches in the state of the art.
Padovano et al. (Sun,) conducted a other in Obstructive sleep apnea (OSA). CNN-based recurrence analysis of HRV vs. Traditional time-frequency models was evaluated on Accuracy of OSA detection. A CNN-based recurrence analysis of heart rate variability achieved a peak accuracy of 75% for detecting obstructive sleep apnea, outperforming traditional time-frequency models (<65% accuracy).