deepQRS

Version 0.0.1 (487 KB) by varjak
An automatic QRS detection algorithm using Deep Learning in MATLAB
20 Downloads
Updated 27 Mar 2023

deepQRS

An automatic QRS detection algorithm using Deep Learning in MATLAB. It uses an LSTM model to predict the positions of the R peaks in an ECG. This is an adaptation of the detect method in the file correct.py of the Python library NeuXus: https://github.com/LaSEEB/NeuXus/blob/patch-3/neuxus/nodes/correct.py.

To use it, call deepQRS as:

marks = deepQRS(ecg,W,stride=50);

  • ecg: ecg vector, sampled at 250 Hz.
  • W: struct with the weights and biases of the model;
  • stride: number of points to jump between predictions.

As deepQRS slides a prediction window throughout the ecg, it is suitable to be used online by being called repeatedly.

Check example.m for a demonstration on how to use it.

PS. Based on the data I have used, I can see that deepQRS detects most R peaks correctly, except for some that seem perfectly normal and somewhat periodically spaced. I am not sure why this happens (it might be a small bug). Therefore, I recommend using interactiveQRS after, to confirm the results and mark the missing R peaks:

[Github] https://github.com/LaSEEB/interactiveQRS

[Mathworks file exchange] https://www.mathworks.com/matlabcentral/fileexchange/126884-interactiveqrs

Cite As

varjak (2024). deepQRS (https://github.com/varjak/deepQRS/releases/tag/0.0.1), GitHub. Retrieved .

MATLAB Release Compatibility
Created with R2019b
Compatible with any release
Platform Compatibility
Windows macOS Linux

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Version Published Release Notes
0.0.1

To view or report issues in this GitHub add-on, visit the GitHub Repository.
To view or report issues in this GitHub add-on, visit the GitHub Repository.