obtaining heart rate from ECG signal

40 visualizaciones (últimos 30 días)
Daniel
Daniel el 9 de Mayo de 2024
Comentada: Daniel el 14 de Mayo de 2024
Hello,
I need to obtain heart rate values from an ECG signal. While searching for information, I discovered that I need to (more or less) get the RR interval and then use the time difference between samples to calculate the instantaneous HR.
I have a database acquired in the local hospital, but the raw signal is full of noise and invalid samples but I dont know how to remove both.
Attached you can find of the raw ECG. It is sampled at 1kHz, stored in int16 data type and the measured units are milivolts.
fl = fopen("ficheroAnalogico.dat");
A = fread(fl, inf, 'int16');
fclose(fl);
figure(1)
subplot(3,1,1);
plot(A);
title('raw');
subplot(3,1,2);
plot(A_4000);
title('zoom');
I use this short code to read the data and plot it, but, as you can see in the capute, the data is full of noise and invalid samples.
The second plot show the first 4000 samples, where you can see the R peaks, but I need to filter and remove invalid samples before calculating HR. Can you please help me? I know I'm asking for too much, but I haven't programmed in more than 10 years, so my knowlegde is rusted and I'm really stucked.
Thanks you in advance and sorry for my english.
Daniel
  2 comentarios
Mario Malic
Mario Malic el 12 de Mayo de 2024
Amazing, put this as an answer @Diego please.
Diego Caro
Diego Caro el 12 de Mayo de 2024
Done!

Iniciar sesión para comentar.

Respuesta aceptada

Diego Caro
Diego Caro el 12 de Mayo de 2024
Movida: Image Analyst el 12 de Mayo de 2024
If you only want to estimate the heart rate, my suggestion is that you take the derivative of the ecg signal, so that R peaks increase their amplitude considerably.
Getting the raw signal:
fl = fopen("ficheroAnalogico.dat");
A = fread(fl,inf,'int16');
fs = 1e3; % Setting Sample Frequency
fclose(fl);
A = A - mean(A); % Removing offset
n = length(A);
t = (1:n)/fs;
figure
plot(t,A)
title('Raw data')
xlabel('Time (s)')
ylabel('Amplitude (mV)')
Now getting the derivative:
A_der = A;
for k = 2:length(A)-1
A_der(k) = (A(k+1)-A(k))./(1/fs);
end
figure
plot(t,A_der)
title('Derivative of raw data')
xlabel('Time (s)')
ylabel('Amplitude (mV)')
If you zoom into the figure above (R peaks show consistently as negative spikes):
Then you could use findpeaks to get RR intervals:
[peaks,tpeaks] = findpeaks(-A_der,'MinPeakHeight',1.5,'MinPeakDistance',0.25*fs);
hold on
plot(t(tpeaks),-peaks,'xr')
hold off
Zooming in to verify proper detection of negative peaks:
xlim([0 60])
Finally, computing the heart rate from the average RR interval (AVNN)
NN = 0;
j = 1;
peak_count = length(peaks);
NNs = zeros(1,peak_count-1);
for i = 1:peak_count-1
NNi = tpeaks(j+1) - tpeaks(i);
NNs(i) = NNi;
NN = NN + NNi;
j = j + 1;
end
AVNN = NN/(fs*length(peaks));
BPM = 60/AVNN
BPM =
152.4790
  3 comentarios
Diego Caro
Diego Caro el 13 de Mayo de 2024
In fact, the instantaneous BPM you obtained is correct for the signal provided. If you look at whats happening with the raw signal at the moment the derivative goes flat, you see the raw signal is also flat.
If you want to obtain a figure like HR2, I'd suggest using a moving average filter with movmean, to smooth out the spike at the end of the plot you obtained.
BPM2 = movmean(B,5); %try different values for k
tt = max(t)*(0:length(B)-1)/length(B);
figure
plot(tt,BPM2)
title('Smooth HR')
xlabel('Time (s)')
ylabel('BPM')
ylim([0 200])
Daniel
Daniel el 14 de Mayo de 2024
I will try the movmean function to get better results.
Once again, thanks!

Iniciar sesión para comentar.

Más respuestas (0)

Categorías

Más información sobre ECG / EKG en Help Center y File Exchange.

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by