Choosing a sampling frequency for ECG QRS detection using convolutional
networks
- URL: http://arxiv.org/abs/2007.02052v1
- Date: Sat, 4 Jul 2020 09:30:49 GMT
- Title: Choosing a sampling frequency for ECG QRS detection using convolutional
networks
- Authors: Ahsan Habib, Chandan Karmakar, John Yearwood
- Abstract summary: This research investigates the impact of six different sample frequencies on four different convolutional network-based models' generalisability and complexity.
Findings reveal that convolutional network-based deep learning models are capable of scoring higher levels of detection accuracies on ECG signals sampled at frequencies as low as 100Hz or 250Hz.
- Score: 1.6822770693792823
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Automated QRS detection methods depend on the ECG data which is sampled at a
certain frequency, irrespective of filter-based traditional methods or
convolutional network (CNN) based deep learning methods. These methods require
a selection of the sampling frequency at which they operate in the very first
place. While working with data from two different datasets, which are sampled
at different frequencies, often, data from both the datasets may need to
resample at a common target frequency, which may be the frequency of either of
the datasets or could be a different one. However, choosing data sampled at a
certain frequency may have an impact on the model's generalisation capacity,
and complexity. There exist some studies that investigate the effects of ECG
sample frequencies on traditional filter-based methods, however, an extensive
study of the effect of ECG sample frequency on deep learning-based models
(convolutional networks), exploring their generalisability and complexity is
yet to be explored. This experimental research investigates the impact of six
different sample frequencies (50, 100, 250, 500, 1000, and 2000Hz) on four
different convolutional network-based models' generalisability and complexity
in order to form a basis to decide on an appropriate sample frequency for the
QRS detection task for a particular performance requirement. Intra-database
tests report an accuracy improvement no more than approximately 0.6\% from
100Hz to 250Hz and the shorter interquartile range for those two frequencies
for all CNN-based models. The findings reveal that convolutional network-based
deep learning models are capable of scoring higher levels of detection
accuracies on ECG signals sampled at frequencies as low as 100Hz or 250Hz while
maintaining lower model complexity (number of trainable parameters and training
time).
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