Cardiovascular
diseases (CVD) are one of the leading causes of all deaths in the world.
According to the World Health Organization (WHO), about 17 million people die
from CVD every year. Cardiovascular diseases include strokes, heart attacks,
and coronary heart disease. About 1.3 million people die from diseases of the
cardiovascular system every year in Russia, which is about 55% of the total
number of deaths [1, 2]. Among the non-invasive methods of studying the
cardiovascular system (CCC), electrocardiography (ECG) retains a priority. ECG
is the most affordable, relatively cheap, and least time-consuming method of
examination. Daily outpatient ECG monitoring using the Holter method has become
widespread. Resting ECG and daily monitoring are currently the main research
methods at all stages of the management of cardiac patients. Recent studies
have shown that increasing reliability and effectiveness of cardiodiagnostics
is possible through the creation of intelligent ECG monitoring systems using
technologies such as deep learning, artificial intelligence, big data, and the
Internet of Things [3, 4].
The
entry into force of the law on telemedicine in our country from January 1, 2018
allowed us to start solving the problems of introducing telemedicine complexes
for remote electrocardiographic studies into medical practice [5]. The direction
of mobile electrocardiography (MECG) has been developed [6-8]. At the same
time, when it is possible to use small-sized ECG devices in almost any
conditions, the real electromagnetic environment is not always taken into
account, the type and level of electrical interference of the 50/60 Hz
industrial frequency power supply signals is determined, which can ultimately
lead to measurement errors and unreliability of diagnostic data.
In recent years, in our country, the developers of equipment
for recording and processing ECG signals of telemedicine systems have taken
into account the influence of only interference of the industrial frequency of
50 Hz [9-13]. The effect of harmonics of 100 Hz and 150 Hz on the cardiac
signal is usually not taken into account. Foreign experts in this field offer
solutions to eliminate 50-60 Hz interference signals [14-23]. In one of the
latest publications [24], the authors, in addition to the interference of the
fundamental frequency of 60 Hz, consider the effect on the ECG signal of the
second and third harmonics (120 Hz and 180 Hz). Thus, the solution of the
problem of high-precision isolation and visualization of the entire set of
interference, including harmonics of frequencies of 50/60 Hz, located in the
frequency band of the electrocardiographic signal and leading to errors in the
diagnosis of diseases of the cardiovascular system, should be considered
relevant.
A considerable amount of work has
been devoted to the study of methods for recording ECG signals and development
of devices for recording heart biopotentials on the surface of the human body.
Currently, the contact method of ECG registration is most widely used in
medical practice. The China Applications Support Team of Analog Devices has
developed "Guidelines for the development of the hardware part of the
module for ECG registration" [25], which fully contains the information
necessary for developers of electrocardiographic equipment.
Fig. 1 shows a generalized form
of the ECG signal indicating the characteristic values of the measured
parameters [25].
Fig. 1. ECG signal shape and characteristic values of its
parameters
Based on the information
presented in Figure 1, it follows that when analyzing the ECG parameters, we
have to deal with signals of several millivolts.
The frequency range of the
ECG signal is limited to several hundred Hertz, while for standard clinical
use, you can limit the band from 0.05 Hz to 100 Hz.
The signal in this
frequency band will experience the negative impact of interference frequency 50
/ 60 Hz (noise interference of the power supply).
Also in [25], attention is drawn
to other types of interference affecting the ECG signal: - electromagnetic
interference from various electronic devices; - noise resulting from changes in
the conditions of contact of the electrode with the skin; - distortion of the
signal when the patient moves, associated with a change in the impedance of the
electrode-skin contact; - human muscle activity.
Fig. 2 shows the appearance of
the "home cardioanalyzer" (LLC "ITM-Myocard", NIMP ESN and Laboratory
of Artificial Intelligence, Russia) and an example of ECG signal visualization
[26].
Fig. 2. The appearance of the "home cardioanalyzer" and
an example of ECG signal visualization
A significant increase in the reliability of diagnosing patients
is achieved by engineering and methodological support for metrological
assessment of the state of the used tools. For the effective use of ECG devices
in telemedicine systems, automated systems of metrological verification and
certification tests "on the ground" are being developed [27]. The
active development of cardiac monitoring systems based on the analysis of the
variability of heart rate parameters necessitates the accurate detection of QRS
complexes of the ECG signal to minimize errors in measuring the duration of R-R
intervals of the ECG signal (Fig. 1) under the influence of the above
interference [28, 29].
As a device for removing power
supply interference signals, a laryngophone headset with a small-sized digital
USB condenser microphone is used. The headset is fixed in the neck area, it provides
the recording of heart sounds, interference, as well as analog-to-digital
signal conversion. The recording path includes a Logitech PC Headset 960 USB
("Logitech", USA), a frequency range of 20-20000 Hz (Fig. 3), and an
AD Sound Recorder ("Adrosoft") [30]. WAV recording format, mono mode,
sampling rate 11025 Hz, bit depth 16 bits.
Fig. 3. Appearance of the Logitech PC
Headset 960 USB
Consider the possibilities of one of the most common audio editor
Audacity processing audio recordings in the time-frequency visualization of
heart sounds with power supply interference. The Audacity editor provides the
following functions: spectral analysis using the Fourier transform with different
window shapes; noise removal from the sample [31].
Fig. 4 shows the waveform of the recorded signal with
interference.
Fig. 4. Waveform of the registered signal with interference
Fig. 5 shows the spectral
cross-section of the signal section with interference of 50 Hz and 150 Hz,
obtained by the Audacity editor. The interference level with a frequency of 50
Hz is -20 dB, with a frequency of 150 Hz -52 dB.
Fig. 5. Spectral cross-section of the signal section with
interference
The analysis of the data in Fig.
5 shows that the use of the Fourier transform in the analysis of interference
signals does not provide the necessary accuracy and visual visualization of the
frequency components.
Research aimed at creating
software tools for high-precision processing and visualization of
non-stationary signals led to the creation of WaveView and WaveView-MWA
programs [32]. WaveView features: analysis of the signal section with the
ability to select the frequency band and time-frequency resolution; display of
the analysis results in the form of a wavelet sonogram ("visible
sound" images), using the mother Morle wavelet; obtaining the frequency
section at a given time; support for a large number of audio file formats. The
WaveView-MWA software is the latest version of the wavelet analysis software.
When constructing acoustic phonograms, the mother wavelets are used: Morle,
Haara,"Mexican hat". Testing on WaveView-MWA showed the ability to isolate
and visualize non-stationary signals of a small level up to -60 db. The use of
WaveView-MWA in solving problems of determining the authenticity of phonograms
[33], acoustic research of heart and lung sounds [34-36], visualization of
biomedical signals in telemedicine systems [37, 38], provides accuracy that is
not available for digital processing based on the Fourier transform.
In the course of studies
conducted at the Bauman Moscow State Technical University for the period
2009-2019, using hardware and software tools for taking and processing acoustic
biomedical heart signals, as well as the impact of network interference and electromagnetic
interference on acoustocardiography (ACG) signals, an analysis of 1092 records
recorded in various rooms was performed. Consider examples of wavelet sonograms
obtained using WaveView-MWA.
Fig. 6 shows the wavelet
sonograms of typical power supply interference signals (A, B, C, D) recorded in
different rooms.
Fig. 6. Wavelet sonograms of typical power supply interference
signals
Where A:
frequency components of interference of 50, 150 Hz (the waveform of the signal
is shown in Fig. 4. Fourier spectrogram - Fig. 5); B: 50, 100, 150, 200 Hz; C:
50, 150, 300 Hz; D: 50, 150, 250, 350, 450 Hz.
In addition to
the typical interference of the power supply network with a frequency of 50 Hz,
there are interference in the form of harmonics, for example, 150, 300 Hz (Fig.
7).
Fig. 7. Wavelet sonograms of acoustic biomedical speech signals
and heart tones with interference of 150, 300 Hz (left) and after noise
cleaning (right)
Noise cleaning of signals from interference after the
visualization stage and determination of frequency characteristics is also
provided by WaveView-MWA using Daubechies, Coifman, and Shannon filters.
One example of the effect of power supply interference on ACG
signals is shown in Fig. 8. The wavelet sonogram of the signal with 50 Hz
interference was obtained using the portal acustocard.ru in on-line mode.
Fig. 8. Wavelet sonogram of heart tones with interference of 50
Hz, the band of analyzed frequencies of 10-200 Hz
Fig. 9 shows the acoustic signal after removing the 50 Hz
interference.
Fig. 9. Wavelet
sonogram of heart tones without interference
Analysis of the interference
images presented in Fig. 6-9 shows that the wavelet sonograms are much more
informative than the usual Fourier spectrograms and, unlike the latter, allow
you to easily identify the finest local features of both acoustic signals and
electromagnetic signals of power supply interference.
With the
introduction of telemedicine systems of mobile electrocardiography into medical
practice, which provide registration and processing of signals in various
electromagnetic environments, current issues include the identification and
visualization of electromagnetic interference that negatively affects the ECG
signal.
Hardware
and software tools for taking, recording and high-precision visualization of
power supply network interference and electromagnetic interference are
proposed. A set of typical signals of power supply network interference during
the registration of biomedical cardiodiagnostic signals in real operating
conditions of mobile systems has been identified. The possibility of
visualization of interference in the on-line mode is shown.
Obtaining
accurate interference parameters and taking them into account in the analysis
of ECG signals will increase the reliability of the information obtained and
avoid errors in the diagnosis of cardiac diseases.
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