Augmentation of EEG and ECG Time Series for Deep Learning Applications: Integrating Changepoint Detection into the iAAFT Surrogates
Journal:
arXiv
Published Date:
Apr 2, 2025
Abstract
The performance of deep learning methods critically depends on the quality
and quantity of the available training data. This is especially the case for
physiological time series, which are both noisy and scarce, which calls for
data augmentation to artificially increase the size of datasets. Another issue
is that the time-evolving statistical properties of nonstationary signals
prevent the use of standard data augmentation techniques. To this end, we
introduce a novel method for augmenting nonstationary time series. This is
achieved by combining offline changepoint detection with the iterative
amplitude-adjusted Fourier transform (iAAFT), which ensures that the
time-frequency properties of the original signal are preserved during
augmentation. The proposed method is validated through comparisons of the
performance of i) a deep learning seizure detection algorithm on both the
original and augmented versions of the CHB-MIT and Siena scalp
electroencephalography (EEG) databases, and ii) a deep learning atrial
fibrillation (AF) detection algorithm on the original and augmented versions of
the Computing in Cardiology Challenge 2017 dataset. By virtue of the proposed
method, for the CHB-MIT and Siena datasets respectively, accuracy rose by 4.4%
and 1.9%, precision by 10% and 5.5%, recall by 3.6% and 0.9%, and F1 by 4.2%
and 1.4%. For the AF classification task, accuracy rose by 0.3%, precision by
2.1%, recall by 0.8%, and F1 by 2.1%.