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Article

Car Seats with Capacitive ECG Electrodes Can Detect Cardiac Pacemaker Spikes

1
Medical Information Technology, Helmholtz-Institute for Biomedical Engineering, RWTH Aachen University, Pauwelsstr. 20, 52074 Aachen, Germany
2
Department of Cardiology, Pneumology, Angiology and Intensive Care Medicine, University Hospital RWTH Aachen, Pauwelsstr. 30, 52074 Aachen, Germany
*
Author to whom correspondence should be addressed.
Sensors 2020, 20(21), 6288; https://doi.org/10.3390/s20216288
Submission received: 31 August 2020 / Revised: 20 October 2020 / Accepted: 20 October 2020 / Published: 4 November 2020
(This article belongs to the Special Issue Sensors toward Unobtrusive Health Monitoring II)

Abstract

:
The capacitive electrocardiograph (cECG) has been tested for several measurement scenarios, including hospital beds, car seats and chairs since it was first proposed. The inferior signal quality of the cECG compared to the gold standard ECG guides the ongoing research in the direction of out-of-hospital applications, where unobtrusiveness is sought and high-level diagnostic signal quality is not essential. This study aims to expand the application range of cECG not in terms of the measurement scenario but in the profile of the subjects by including subjects with implanted cardiac pacemakers. Within this study, 20 patients with cardiac pacemakers were recruited during their clinical device follow-up and cECG measurements were conducted using a seat equipped with integrated cECG electrodes. The multichannel cECG recordings of active unipolar and bipolar pacemaker stimulation were analyzed offline and evaluated in terms of F β scores using a pacemaker spike detection algorithm. F β scores from 3652 pacing events, varying from 0.62 to 0.78, are presented with influencing parameters in the algorithm and the comparison of cECG channels. By tuning the parameters of the algorithm, different ranges of F β scores were found as 0.32 to 0.49 and 0.78 to 0.88 for bipolar and unipolar stimulations, respectively. For the first time, this study shows the feasibility of a cECG system allowing health monitoring in daily use on subjects wearing cardiac pacemakers.

1. Introduction

Cardiovascular diseases (CVD) are responsible for 30% of all deaths and represent the predominant causes of mortality. Among noncommunicable diseases, CVD account for 48% of all deaths and 35% of the causes of death for people younger than 60 years old [1]. Therefore, CVD is not specific to a group of people. On the contrary, it is a public health problem where early diagnosis, prevention and scaled-up monitoring are crucial. Cardiac rhythm abnormalities impair the coordination of the atria and ventricles, which can be treated by implantable cardiac pacemakers. From 2009 to 2013 in Europe, an average of 953 people per million inhabitants per year have received a pacemaker or a cardiac resynchronization device that is essentially a biventricular pacemaker [2]. The doubling of the prevalence rate in a developed economy is faster than 15 years, as opposed to the expected rate in the early 1990s [3]. Briefly, people with implanted cardiac pacemakers already constitute a significant part of society and their number is expected to increase further.
Research on the capacitive electrocardiogram (cECG) has gained momentum in recent years, which promises a way of unobtrusive monitoring of electrical heart activity. The cECG is not considered to be a replacement for the gold standard conductive ECG due to its higher susceptibility to noise and usually lower signal quality. Instead, its applications can be grouped in two fields. In the first scenario, cECG could be used where classical ECG becomes a burden. Lim et al. [4] has suggested patient beds with cECG electrodes. They could relieve the medical staff from replacing electrodes, which would also reduce the negative effects of drying electrodes and skin irritations in long-term monitoring. In the second scenario, cECG can extend ECG monitoring from hospitals to everyday life, which can improve the healthcare systems through prevention and early diagnosis. As an example, the feasibility of car seats for the cECG measurement of cardiac patients was shown in simulated driving [5].
In contrast to classical ECG, where the electrodes need to be attached to the subject’s body firmly, the electrodes in cECG form an electrical contact through the clothing of the subject assumed to form a plate capacitor [6]. The lack of conductive contact translates into a higher coupling impedance [7] that degrades the common-mode rejection ratio and prolongs the dispersion of triboelectric surface charges [8]. Moreover, the susceptibility of the clothing thickness to the changes in the contact pressure can cause additive and multiplicative noise [9] that can even be induced by the mechanical vibrations resulting from the contraction of the heart [10]. Because of these drawbacks, research in cECG is currently concentrating on new applications or technical solutions tested mostly on small groups of subjects without prioritizing the clinical relevance.
Several cECG applications offering unobtrusive monitoring of cardiac activity have already been presented in the literature as an extension of cardiac monitoring to everyday life. However, patients with electrically active implants have been excluded from these studies as a precaution, although these subjects constitute the group that may benefit greatly. They are already diagnosed with CVD and have a higher risk of cardiac events that may occur under the increased risk due to the stress caused while driving [11]. In addition to the risk of an acute event, the prolonged activity of driving provokes a stress response in the autonomous nervous system [12], which may increase the overall risk of these patients. Monitoring of cardiac activity while driving may ensure the well-being of the driver and even enable remote examinations by a cardiologist in necessary cases. Furthermore, cardiac monitoring of the driver may become even more important in the close future. With fully autonomous cars being out of reach for the foreseeable future [13], a semi-automatic driving scenario may utilize cardiac monitoring to ensure the physical state of the driver for switching the control back and forth. For example, the activity of an implanted defibrillator often causes temporary impairment [14] and reduced driving capability, which would be important to know, as the car could take over the control.
This study aims to test the feasibility of a cECG application on the monitoring of patients with artificial cardiac pacemakers and the detectability of pacing events. 20 patients were recruited during their routine visits to the outpatient pacemaker department. The multichannel cECG data collected from these patients wearing their everyday clothing were analyzed using a pacemaker spike detection algorithm.

2. Materials and Methods

2.1. ECG Recording

The cECG system used in this study was based on the car seat presented by Leicht et al. [5] with six cone-formed stainless-steel electrodes, as shown in Figure 1. Each of these electrodes was buffered to make the small amplitude biopotential less susceptible to inferences [6]. Subsequently, different combinations of the electrodes were driven to the instrumentation amplifiers with identical analog channels, according to conventional ECG principles. In addition to stainless-steel electrodes in the backrest, an electrode of silver-coated textile (Statex Produktions- und Vertriebs GmbH, Bremen, Germany) operated as a capacitive driven ground plane electrode at the seating surface. The potential of this electrode was actively driven to the sum of the potential of other electrodes, as in driven right leg electrode in classical ECG [15]. The transfer function of the instrumentation used for the analog signal processing can be seen in Figure 2. The passband gain of the measurement system was approximately 49 dB or 284 V / V . Since the motion artifacts in cECG can be tens of times higher than the expected amplitude of the cECG signal (approximately 1 m V ), the passband gain was kept at this level to avoid clipping due to motion artifacts. Amplified signals were recorded with a sampling rate of 1 k Hz using an NI USB-6009-DAQ (National Instruments, Austin, TX, USA). This sampling rate was chosen as 1 k Hz to ensure there was enough attenuation to prevent any aliasing and it is exactly two times the sampling rate of the reference system, which makes the resampling numerically more stable.
After the filters and the amplification in the analog domain as presented in Figure 2, recorded signals were band-pass filtered (0.7 to 140 Hz ) in the digital domain and the power-line interference was removed using two band-stop filters at 50 and 100 Hz . An ideal spike shape from a high-resolution ECG [16] was passed through the same processing to emulate the effect of the signal processing on pacemaker spikes. Starting from the analog filters of the system to the zero-phase digital filters used before the evaluation, all processing steps were implemented without adding any measurement noise or power-line interference. The ideal spike with a pulse width of 0.5 m s in Figure 3a was significantly dampened and widened in Figure 3b exhibiting the result of the simulation on the ideal spike shape. From these spikes, two spectrograms were generated using Hann window of 64 m s . The ideal spike shape exhibited an impulse-like spectral density with an almost equally distributed energy over the frequency spectrum at a brief time instance in Figure 3c. On the other hand, the processed spike had a limited frequency spectrum due to the low-pass filter in Figure 3d. Besides, the spike was widened in the time axis due to the band-pass filter and there were ripples caused especially by the band-stop filters. The total decrease in the energy and the dispersion of the energy over a wider time range explain the difference in the amplitudes of the spikes in Figure 3a,b. Zero-phase digital filters caused these ripples in the backward direction too, although they preserved the spike waveform better than causal filters.
A conventional ECG was recorded parallel to the cECG measurement, using a medical-grade bedside patient monitor (Philips MX700, Amsterdam, The Netherlands). This reference ECG (rECG) was employed in the configuration Einthoven Lead-I and has already been digitally processed by the internal proprietary software of the patient monitor. When a pacemaker spike is detected, this digital processing unit overrides the waveform and replaces the section with an ideal shape of a spike. The rECG system was used during the study as the gold standard additionally for its automatic annotation. The recording of both systems was realized separately but simultaneously. By programming the interfaces, both recordings were initialized at the same time, which ensures the time delay between the recordings was always significantly shorter than a single heartbeat. Subsequently, the rECG signal was resampled to 1 k Hz and manually aligned with the cECG system to remove possible time delays in the range of few hundreds of m s . The aligned signals were checked at different points to ensure there was no misalignment.

2.2. Measurement Protocol

The inclusion criteria of the study were an existing implanted cardiac pacemaker and being older than 65 years. Patients were recruited during their regular follow-up visit to the ambulatory pacemaker clinic at the RWTH Aachen University Hospital (ethical approval under the reference code EK 279/19, ClinicalTrials.gov/NCT04163965).
No special or predefined clothing or textile material was used in order to imitate real-life conditions for measurements. Patients kept their regular clothing, except for coats and thicker outerwear that are unlikely to be worn while driving. They were asked to sit on the cECG seat and three conventional ECG electrodes were attached for the rECG recording. The profile of the study population is given in Table 1.
It should be noted that the clothing of the patients is not grouped according to their materials in Table 1. Dielectric properties of textiles strongly depend on several factors such as frequency, temperature and surface roughness [17]. Note that most sources that present values for the relative permittivity of textiles measured them for the RF-Spectrum (in G Hz range) [18] which lies several decades over the ECG spectrum (0.1 Hz to 100 Hz ) and which itself spans more than 3 decades. In addition, the human body capacitance and the textile capacitance can be measured by different methods [19,20], each of which has different limitations. An example of potentially misleading permittivity values can be found by comparing the studies in the literature. A range from 1.3 to 1.6 was used as the relative permittivity of cotton for the simulations by Parente et al. [21], whereas the estimated relative permittivity of the same material under the influence of contact pressure yielded values from 2.3 to 4.0 in the measurements of Ueno et al. [22]. Moreover, the manufacturing processes of the same material from the fiber to the yarn or from the yarn to the fabric may lead to different properties, as textiles are very porous [23] and anisotropic materials [24], which alters the mechanical properties of the material as well. Contact pressure on the electrode positions defining the resulting thickness of the clothing depends on the subject’s body composition [25]. Hence, we refrained from grouping patients by clothing without conducting a fully controlled study by providing standardized types of clothing to the subjects, as this would be a misleading simplification of a broader and important discussion. This aspect was kept out of scope, as this study focuses on the feasibility of cECG on patients wearing cardiac pacemakers. Therefore, the clothing of the patients is not grouped. Instead, it is presented the way in Table 1 to show the randomness.
During an examination, the medical staff first check the functionality of the cardiac pacemaker and the occurrence of events since the last examination, by placing the telemetry wand provided by the pacemaker manufacturer over the chest of the patient. This wand enables the communication between the implanted pacemaker and the proprietary software, while the pacemaker is still operating on its own but can be programmed. The staff then continue by testing the sensitivity and capture thresholds to make any necessary changes to the settings of the pacemaker. The amplitude of the pacing stimulus in the performed capture threshold tests is gradually decreased until the pacing does not result in an effective stimulation of the heart, instead inconclusively without atrial or ventricular capture. This point (so-called loss of capture) is used to calculate the necessary amount of stimulus energy so that the stimulus amplitude and duration can be set to a safe level ensuring proper pacing while saving the battery in the meantime. This test can be repeated for different pacing modes of the cardiac pacemaker to test all leads. These threshold tests during the examination of the subjects were marked with the mode of the operation. The rECG and cECG signals were evaluated only during these tests to differentiate different modes of pacing. During the post-processing, short-time artifacts caused by the capacitive coupling between the telemetry wand and the cECG system were observed. As these artifacts were rare and only occurred while programming, they were removed not to cause a false positive spike detection.
The annotations made by the rECG system were grouped into the four modes of pacing utilizing a two-letter nomenclature with the free software SignalPlant [26]. The first letter (U or B) defines the mode of operation as either a uni- or bipolar mode. The second letter (A or V) defines the location of the stimulation as atrial or ventricular as follows:
  • UV: Unipolar ventricular stimulation,
  • BV: Bipolar ventricular stimulation,
  • UA: Unipolar atrial stimulation, or
  • BA: Bipolar atrial stimulation.
Note that this nomenclature, made for the sake of clarity, clusters the rarely occurring left ventricular stimulations in the same way as the right ventricular stimulations, just like the ventricular pacing in any atrioventricular sequential stimulation. This simplification applies to the atrial pacings in the atrioventricular sequential stimulations grouped with right atrial stimulations. Although there were patients with biventricular pacemakers, only isolated pacings of right and left ventricles were recorded during their threshold tests.

2.3. Detection Algorithm

The pacemaker spikes in ECGs are distinguishable because of their narrow width and higher amplitude compared to the other elements of a usual ECG waveform. This characteristic shape of the spikes is deteriorated by the processing of the cECG signal, mainly due to the high- and low-pass filters of the analog instrumentation. The low-pass filter limits the bandwidth of the spikes that could otherwise be approximated by an ideal impulse with all possible frequency components. While this widens the spikes, the high-pass filter causes a tail following the spike, which makes spikes look similar to the QRS complex as depicted in Figure 3.
The detection algorithms proposed in the literature were designed for high-resolution ECG with very high sampling rates to overcome this distortion and to benefit from the characteristic shape of the spikes. These detection methods include the fusion of ECG leads and have been tested for different sampling rates of 8 and 32 k Hz , the latter of which was found to increase performance [27]. However, as the bandwidth of the ECG broadens, it overlaps with the spectrum of electromyogram (EMG) artifacts. The negative effect of this overlap is found to be lower for higher sampling rates when both clean and EMG-contaminated signals were compared for two distinct sampling rates of 16 and 32 k Hz [28]. Moreover, larger bandwidths of the EMG artifacts lead to lower detection rates, as shown in the data with a sampling rate of 10 k Hz , which could be overcome by employing non-linear filters enhancing the difference between spikes and EMG artifacts [29].
Although the above-mentioned higher sampling rates are beneficial for the pacemaker spike detectability, lower sampling rates such as 500 Hz are more than enough for ECG monitoring. From a practical point of view, lower sampling rates are favored in mobile applications to avoid cumbersome electronics, larger datasets generated, and higher power consumption. A typical cECG application, where the unobtrusiveness is rated higher than the signal quality, would not be equipped with a sampling rate as high as the ones suggested in references [27,28,29]. Therefore, the algorithm used on the system should be suitable for this limited means of diagnostic bandwidth (DBW) ECG. Unlike more sophisticated spike detection algorithms benefiting from larger bandwidths, this study used a pacemaker spike detection algorithm tested on 12-lead ECG limited to DBW with the sampling rate of 500 Hz [30], based on the algorithm patented for patient monitors [31]. This algorithm (AlgDBW), illustrated in Figure 4, searches for consecutive edges with opposite polarities and amplitudes k times higher than the highest edge in the last 64 m s , after the signal waveform is filtered with the differentiator in Equation (1). The original algorithm, where the consecutive edges must occur within 3 m s , was adapted (AlgcECG) to expected cECG spikes with an allowed distance of 4 m s . The threshold factor k was swept from 1 to 4.
y [ n ] = ( x [ n ] + x [ n 1 ] ) ( x [ n 2 ] x [ n 3 ] ) .

2.4. Metrics

We introduce a signal quality index (SQI) defined as the average of three quality indices as follows:
basSQI = 1 0 Hz 1 Hz P ( f ) d f 0 Hz 40 Hz P ( f ) d f   ,
qrsSQI = 5 Hz 15 Hz P ( f ) d f 5 Hz 40 Hz P ( f ) d f   ,
pliSQI = 1 49 Hz 51 Hz P ( f ) d f 40 Hz 60 Hz P ( f ) d f   ,
SQI = ( basSQI + qrsSQI + pliSQI ) / 3   ,
where P ( f ) is the spectral power density.
qrsSQI and basSQI, adapted from Clifford et al. [32], are relative power in the QRS complex and in the baseline wander, respectively. pliSQI is the relative power of the power-line interference. Both pliSQI and basSQI converge to unity due to the 50 Hz band-stop filter and the high-pass filter, except for transients of power-line interference and temporary motion artifacts.
The signal-to-noise ratio (SNR) of the spike is proposed as the ratio of the peak-to-peak amplitude of the pacemaker spike in the cECG ( A p - p ) to the measurement noise ( A noise ) as follows:
SNR = A p - p / A noise   .
A p - p depends both on the quality of the electrode contact and the position of the cardiac pacemaker in the thorax regarding the electrodes. A noise is calculated as the approximate peak-to-peak noise in the close neighborhood of the spike ( 50 m s centered at the spike) and its amplitude increases with increasing contact impedance [33]. Located spikes were set to the value of zero so that only the vicinity of the spike can contribute to A noise . Both of A p - p and A noise were found using the annotations of the rECG to calculate this metric for each spike in the cECG. This metric is an indicator of how prominent the spike is.
Additionally, true positive rate (TPR) and positive predictive value (PPV) were calculated for the assessment of the detection of cardiac pacemaker spikes:
TPR = TP TP + FN ,   PPV = TP TP + FP   ,
where a true positive (TP) was defined as a detected spike by the cECG within a tolerance window of 50 m s of an annotated spike by the rECG. Using these definitions, F β scores were calculated as
F β = 1 + β 2   ·   TPR   ·   PPV TPR + PPV   ·   β 2   ,
where TPR is considered β times as important as PPV. Depending on the application, the operation of the cardiac pacemaker and the underlying pathology of the patient, a false negative detection may be more tolerable than a false positive one or vice versa. For example, in patients with a permanent 3rd degree AV nodal block, 100% ventricular pacing events occur and can be monitored by minimizing false positives. Although there would be more false negatives, the high occurrence rate of pacing events would lead to detected spikes, which could ensure the operation of the pacemaker. On the other hand, a system minimizing false negatives could evaluate the occurrence rate of pacing events of a ventricular-demand pacing mode that operates only when necessary (i.e., inhibition of pacing while detecting an intrinsic heart rhythm in a certain time frame). The occurrence rate of pacings can be estimated from outside while trying to eliminate false positives by comparing the locations of detected spikes with QRS complexes. Due to these possible applications with different focus points, the detection efficiency was evaluated for β values 0.5, 1 and 2, with β being a tuning parameter.

2.5. Fusion of the Channels

Unlike classical ECG, the multichannel measurement of cECG does not aim to increase the diagnostic power by capturing different vectors of electrical heart activity. Instead, it strives to increase the time coverage of the cECG measurement by providing redundancy, especially for the case of motion artifacts that are often present in the cECG applications. This redundancy is exploited by different methods in the literature. Injecting a current simultaneously to follow the contact impedances of the channels provides an indicator of the quality of the contact in each channel [34,35]. Another approach is the fusion of these channels at signal-level by using convolutional neural networks [36] or choosing the components of the cardiac activity after blind source separation of the channels [37].
The methods mentioned above require either additional hardware or sophisticated processing of the data, which could deflect the scope and the purpose of this study. Therefore, the channels were evaluated only visually and annotated as available or unavailable for each segment. This classification was not made to choose the best channel but to eliminate the channels without assessable ECG content. The channels were annotated as available as long as the signal was not clipped or the electrode contact was not interrupted.
The detection algorithm for pacemaker spikes was applied to each available channel. Whenever a spike was detected by the algorithm, SQI was calculated on the time instance of the detection. Detected spikes with an SQI lower than 0.2 were rejected, as a low SQI indicates a low signal quality of the measurement. This threshold value was chosen heuristically such that only the results with significantly lower signal quality were eliminated and the rest stayed untouched. The remaining spikes in different channels were combined with an OR relation. Spikes with less than 20 m s temporal distance were counted as one so that the same spike was not counted twice due to different positions in different channels. The overall scheme of the fusion algorithm is presented in Figure 5.
ECG content assessment of the channels and the fusion scheme were kept simple to keep the focus of the study on the feasibility of the cECG on pacemaker spike detectability. An automated motion artifact detection in cECG channels would influence the results according to its performance, just like a more complex fusion algorithm would do. Both of them are standalone research topics that are not aimed for in this study. Instead, the study is conducted as the test of the cECG measurement technique on a new patient profile.

3. Results

The presented results are summarized in Figure 6 depicting the workflow of how each figure and table was generated. Although the particular processes explained the relevant section, this figure was added to provide a clear overview.

3.1. Comparison of rECG with cECG

A short section of rECG and cECG signals can be seen in Figure 7, extracted from a unipolar atrioventricular sequential stimulation. The spikes in the rECG were digitally processed by the proprietary software of the reference system, which replaced the real spike shapes with an ideal impulse with an amplitude higher than 150 m V . These artificial spikes were clipped in the figure to the amplitude of 0.8 m V for better visualization. Note that the detection algorithm of the reference monitor failed at beats 2–5 and 7, where the unprocessed shapes can be seen in the presented section. Since the mode of the stimulation is unipolar, the spikes exhibit an amplitude of sufficient height to be recognized visually. However, this is not the case for bipolar stimulation. Therefore, only the peaks already detected by the reference system during the threshold tests have been annotated and evaluated in the rest of the results.
An alternative to the annotation by the rECG could be the manual annotations made by a cardiologist but this is not the method chosen. Recordings of the rECG is a single channel electrocardiogram for the visual interpretation. However, its internal software is specifically developed for the detection of pacemaker spikes. Unlike the illustration in Figure 7, the spikes missed by the rECG system are usually not detectable by the human eye, although it can also detect the spikes that are not clearly visible. If the cardiologists had annotated the spikes by visual inspection, no matter how experienced they are, they would have caused a stronger bias in the database of the spikes toward higher amplitudes, as they would not have annotated the ones that are not clearly visible. Therefore, the annotations of the rECG were used but the type and the locations of the annotations were confirmed to be fitting to the changed morphology of the ECG signal by the cardiologists.

3.2. Comparison of Signal Quality in cECG Channels

All three quality indices and their mean were calculated for each channel for the segments at which all of them were available to make them comparable. The average value of these indices and their standard deviations are presented in Table 2. These values were not divided among different groups of stimulation, as these metrics relate to the ECG signal quality. CH3 has the highest SQI, although the difference between CH3 and other channels is small. On the other hand, CH1 and CH2 exhibit similar values. The former has a slightly better performance in pliSQI but suffers from the baseline wander more, as can be seen in basSQI. All three channels have similar values in qrsSQI and, thus, the difference in SQI is based mostly upon indices basSQI and pliSQI.

3.3. Multichannel Measurement of Cardiac Pacemaker Spikes

A short section of multichannel cECG measurement can be seen in Figure 8, belonging to a segment of unipolar atrioventricular sequential stimulation. Red diamonds on the top indicate the pacemaker spikes annotated by the rECG system. Red dots are the result of the detection algorithm and manifest different rates of success in different channels. CH1 exhibits a more prominent baseline wander, whereas CH2 has a lower SNR.
The profile of the collected cardiac pacemaker spikes by the rECG system is presented in Table 3. The upper part of the table shows the number of cardiac spikes captured in each channel. CH3 has the highest availability among the three channels, covering 3340 from the total 3652 cardiac spikes. CH1 and CH2 cover 48.5% and 54.3% of all spikes, respectively. These availability ratios were calculated for the number of pacings, not for the number of segments. The reason is that segments are not identical and have different lengths, and thus, different numbers of pacings. The lower part of Table 3 presents the average value of the quality metrics related to the cardiac pacemaker spikes. The values were calculated only from the segments at which all channels were available to make the channels comparable. As expected, unipolar stimulations manifest both higher SNR and higher amplitudes than bipolar stimulations. The amplitudes of BA and BV are in the range of the measurement noise in the channels, which gives negative or almost zero SNR values in all channels. CH2 has the highest amplitudes both in UA and UV, although CH3 has higher SNR values. This contradiction is also present in the comparison of CH1 and CH2. Although the spikes in CH2 have higher amplitudes, they have similar SNR values to the spikes in CH1, due to the relatively higher noise in CH2.

3.4. Detection Efficiency

The detection efficiency of both AlgDBW and its modified version AlgcECG was tested for different threshold factors k from 1 to 4. Figure 9a,b show the TPR and PPV of both algorithms, respectively. AlgDBW exhibits a higher PPV and a lower TPR than AlgcECG at each value of k, since AlgcECG accepts wider slopes, which moves the balance between TPR and PPV in the direction of TPR.
The efficiencies of AlgDBW and AlgcECG on cECG data for the three different F β scores ( F 0.5 , F 1 and F 2 ) are plotted in Figure 9c,d, respectively. Both graphs have a similar shape with different peak points for F 0.5 , F 1 and F 2 . As the importance shifts from TPR to PPV, that is, from F 2 to F 0.5 , the locations of the highest scores move to higher k values. The highest scores for AlgDBW are at k values 1.6, 2.15 and 2.7 for F 2 , F 1 and F 0.5 , respectively. These points for AlgcECG correspond to k values 1.85, 2.35 and 3.1 with the same order. At their respective highest scores, AlgDBW has better scores in F 1 and F 0.5 , whereas AlgcECG exhibits a similar score in F 2 .
The detection efficiency of different groups is presented in Figure 9e for UA, BA, UV and BV by using AlgcECG. Both unipolar stimulations UA and UV (solid lines) have similar detection rates and exhibit a regular decrease with increasing k values. On the other hand, the detection rates of bipolar stimulations (dashed lines) BA and BV decrease more rapidly, with BV stimulations having higher detection rates than BA. Unlike TPR, PPV cannot be calculated for different pacing modes, since the detection algorithm used in this study is a binary classifier. Therefore, false positives cannot be assigned to any pacing mode.
Detection scores obtained from the fusion of the channels are presented in Table 4, grouped for different pacing modes at their highest scores. Since false positive spikes cannot be assigned to a specific group, given PPV values are the PPV values of the total collection at the given k value. At their optimal settings, AlgDBW is slightly better than AlgcECG. By choosing AlgDBW for a cECG application where sensitivity is as important as precision, a k value of 2.15 would be the optimal setting using F 1 score without any a priori information of the pacemaker mode. However, it is clear that unipolar and bipolar stimulations have their optimal settings at significantly different k values.

3.5. Effect of SQI and Fusion on Detection

The effect of the fusion of multichannel cECG was tested by applying AlgDBW on each channel separately. The TPR and PPV for each channel and their fusion are depicted in Figure 10a,b. CH1 and CH2 have significantly lower TPR and PPV values compared to CH3. CH1 is slightly better than CH2 in PPV, whereas CH2 has a moderately higher score in TPR. The fusion of these two channels to CH3 improves TPR slightly and degrades PPV. F β scores of the separate channels and the fusion are plotted in Figure 10c–e. CH3 has a better performance than CH1 and CH2 in all F β scores and even than the fusion of the channels. The maxima of the F β score for each channel are at different k values.
After grouping the spikes identified as TP and FN for each channel separately, the difference of the mean of their SQI indices can be seen in Table 5. The number of TPs and FNs in these groups are not paired. Therefore, a two-sample t-test with unequal variances was applied to test the significance of the difference of means. The significant results of this test are in bold and marked with an * in the table. These indices, essentially used as quality indices of ECG signals, have a varying indication on the detectability of a pacemaker spike. While pliSQI is significantly higher for TPs, qrsSQI and basSQI are either positive or negative indicators of the detection rate, depending on the channel and the stimulation type.

4. Discussion

This proof of concept study shows for the first time that the detection of pacemaker stimulation of the heart with cECG is feasible, with unipolar pacing configuration being superior to bipolar pacing in the detection performance. Multichannel cECG measurements were evaluated by using the annotations provided by the parallel rECG system. However, as shown in Figure 7, the rECG system failed to detect some spikes, which resulted in a limited database. The presented spikes not marked correctly by the rECG system could have been annotated by the cardiologists. However, this post-correction was not possible for most of the missed spikes with lower amplitudes and, therefore, not conducted to ensure comparability. Another side effect of the rECG system is the irreversible processing of the spike shapes, which hinders the comparison between rECG and cECG systems in terms of spike amplitude.
The cECG channels can be compared in two different aspects: The general signal quality and the efficiency in the spike detection. In terms of the ECG quality, CH3 exhibits the least susceptibility to baseline wander and power-line interference, as can be seen from basSQI and pliSQI in Table 2. Moreover, CH3 has the highest coverage in Table 3, supposedly due to its more central position and stable contact with the patients, which provides a balance between contact pressure and the proximity to the heart, as in earlier findings [25]. In terms of spike visibility, CH2 has the highest average amplitude, which can be attributed to its different orientation. However, the higher noise in CH2 makes the spike SNR in CH2 lower than in CH3 in Table 3. Although CH3 appears to be the best among them, it did not have 100% coverage. The gaps in the coverage in a real-world driving scenario could be more dramatic, which makes the fusion of the channels more beneficial by choosing the best channel available.
This study does not present a novel spike detection algorithm. Instead, it aims to show the feasibility of cECG to monitor subjects with cardiac pacemakers and implant activity. Therefore, an algorithm which has already been proposed was used on the cECG signals in two forms: AlgDBW and AlgcECG. AlgcECG allows wider spike shapes and exhibits higher detection rates in TPR. However, the original form of the algorithm, AlgDBW, leads to higher PPV, due to the more strictly accepted spike width. The same trade-off between TPR and PPV is also present in the choice of the threshold factor k in the algorithm. The importance of either one of these two can be different depending on the application of the cECG. AlgDBW is a better alternative for the applications where PPV is favored, whereas AlgcECG captures more spikes at the cost of FPs, as can be seen in Figure 9a,b. The difference between the algorithms in F β scores at their respective highest points is insignificant compared to how much k values can influence F β scores. Therefore, the right adjustment of a k value would have a higher impact on the detection efficiency than the adjustment of the spike width within the same algorithm, as in Figure 9c,d.
As the spike amplitude decreases, the threshold factor k plays a more crucial role in the detection efficiency, as can be seen in the comparison of bipolar and unipolar stimulations in Figure 9e. The choice of the parameter k in this algorithm or any trade-off between TPR and PPV in another algorithm should be made considering the target group of stimulations. Using connected personal healthcare devices, a priori information about the expected pacing (bipolar or unipolar) could be used to adapt the algorithm. The benefit of targeting the correct pacing mode is present in Table 4. Without any a priori information, AlgDBW optimized for F 1 score would deliver TPR and PPV values of 0.54 and 0.83, respectively. By separating the pacing modes and using different k values, TPR for UA and UV can be increased to 0.71 and 0.72, respectively, while improving their PPV to 0.91. Whereas these scores indicate a competent performance of the cECG system in the pacemaker spike detectability, the scores in bipolar pacing modes exhibit significantly lower values. Therefore, possible improvements in the hardware design, channel fusion, and algorithm development for mobile applications become more crucial for the systems aiming to cover all pacing modes with comparable performance.
CH3 with the highest SQI in Table 2 also has the widest coverage in the number of spikes and the highest SNR in Table 3. However, a direct link between the ECG signal quality and the detection rate is more complex since the comparison of quality indices in Table 5 underlines the different requirements in ECG signal analysis and the detection of pacemaker spikes. Only by evaluating the significant results in Table 5, a higher pliSQI accords with a higher chance of detection. On the other hand, a higher qrsSQI indicates a lower chance of detection, except for bipolar stimulations. This contradictory result can be explained by the definition of qrsSQI, which is the concentration of the energy around the band of the QRS complex. When there is an impulse-like pacemaker spike, the energy is distributed over the spectrum more equally, which reduces qrsSQI. This energy spread effect is more obvious in unipolar stimulations that have higher spike amplitudes, whereas qrsSQI acts as a general quality index in BV stimulations that do not have similarly dominant amplitudes.
The indication of SQIs on the detectability of a spike is variant from channel to channel in Table 5. A higher basSQI is a positive indicator for the detection rates in CH2 and CH3, whereas it correlates negatively in CH1. CH1 is already the channel with the lowest basSQI in Table 2 and has the lowest coverage. An increase in the baseline wander created by the respiratory activity degrades the signal quality in cECG. However, it can be seen as a sign of the coupling strength if the coupling is inherently more susceptible to the respiratory artifacts compared to the coupling in CH2 and CH3, which indicates a higher chance of detection. However, this dichotomy of SQIs in the spike detection and the ECG signal quality should not be directly generalized and needs to be addressed in a controlled experiment, since this study consists of only 20 patients with different physical attributes and pacemaker types.
The fusion of the cECG channels improved TPR slightly and degraded PPV. Therefore, the fusion score is similar to the score of the best channel. However, the fusion scheme in Figure 5 is still beneficial in the automatic choice of the best channel. The fusion of channels was not optimized further as this study focuses on the feasibility of cECG. A decision-level fusion of channels, as in this study, needs to be designed more carefully by taking the different sensitivity of the channels into consideration, since the cECG channels may need to be tuned differently. Instead of fusing all channels, choosing the most suitable channel could also be effective in cECG applications considering that the benefit in TPR does not justify the loss in PPV in the current form of fusion. The more important aspect of the signal fusion in cECG should be identified not as the increase in the diagnostic power but as the increase in the signal availability and time coverage. Therefore, signal-level fusion schemes implementing neural networks [36] and blind source separation methods [38] could be more beneficial.
Another discussion point relates to the properties of the cECG recordings collected in this study. The elderly subjects were recruited and measured in a hospital clinic wearing their everyday clothing. The susceptibility of the measurements to the motion artifacts can be considered lower than a measurement while driving. Due to the wide range of clothing, a generalization in the noise characteristics of the measurements is hardly possible. Power-line interference was removed from the measurements using a digital band-stop filter. However, there are some occasions of transient remnants of this artifact, due to several medical devices operating in the clinic. Consequently, measurements in an automobile environment would have less interference in this frequency range and may achieve better results, as pliSQI is a defining factor in spike SNR and detectability. As required by the study protocol, once the measurement had started, the medical examinations were not interrupted in the case of motion artifacts or any worsening in the electrode contact, due to the anamnesis or the changes in the sitting position of the patients. Therefore, the measurements can be considered a realistic simulation of a cECG system used in ambulatory clinics. Last but not least, the recorded pacemaker spikes belong to the threshold tests. Therefore, their amplitudes decrease gradually by starting from an already low level until the loss of capture, where the pacing amplitude is not enough to result in a cardiac depolarization. In other words, the vast majority of spikes evaluated in this study are weaker than during the normal operation of pacemakers. Hence, higher detectability rates and better signal quality can be expected in the day-to-day operation.

5. Conclusions

In this clinical study, spikes of an artificial cardiac pacemaker were recorded using cECG electrodes requiring no direct skin contact. To the best of our knowledge, this is the first application of cECG to humans wearing a cardiac pacemaker. Using the spikes collected from threshold tests, where the pacing amplitude is weaker than normal operation, this study demonstrates the ability of cECG to capture pacemaker spikes and the applicability of this technique in the monitoring of patients with pacemakers. Although the cECG system detected the pacemaker spikes less efficiently than the reference ECG system, it was found to be able to capture the spikes by using an adapted algorithm and a simple fusion strategy. The measurement setup used in this study can easily be extended to other unobtrusive health monitoring applications of cECG, such as chairs and hospital beds.
The analyses revealed the usual signal quality indices used for the signal quality assessment in classical ECG are not necessarily a good indicator of the spike detectability in cECG signals. A more defining factor is the shape of the spike, which is distorted in the analog instrumentation designed for mobile applications with a narrower passband. Both low- and high-pass filters diminish the total energy of the spike and cause phase distortion, which results in wider and dampened spikes. The design considerations of cECG applications, especially in terms of the low-pass filter in the analog signal processing, should be loosened to make cECG more than a QRS detector and a heart rate measurement unit.
In terms of F β scores, a wide range of results was obtained, showing the necessity of the careful tuning of algorithm parameters. The different channels of cECG require different settings for their optimal performance between false negatives and false positives, which makes the fusion of these channels essential. The simple decision-level fusion implemented in this study improved the results only in coverage, indicating that a fusion scheme needs to be designed more elaborately or directly in the signal or feature-level. One limitation of this study, as it was kept out of the scope, is dealing with the multichannel measurements in automated decision-making, which needs to be addressed in future work to fully realize a feasible cECG monitoring.
The limitations on the spike detectability using cECG come from the physical limitations and design choices. Its usually higher electrical noise and motion artifacts are physical limitations. On the other hand, the choice of analog filters has a significant effect on the spike amplitude and the intactness of the shape. These translate into our conclusion that unipolar stimulations are easier to detect due to higher amplitudes, comparing to bipolar stimulations. Moreover, the analyses made on the algorithm parameters point to different optimal settings for different types of stimulations, which indicates the necessity of personal healthcare devices with a priori information to fully utilize the capabilities of cECG for spike detectability.

6. Ethics Statement

All subjects gave their informed consent for inclusion before they participated in the study. The study was conducted in accordance with the Declaration of Helsinki, and the protocol was approved by the Ethics Committee of University Hospital RWTH Aachen (EK 279/19). Experimental procedures involving human subjects in this study were registered at ClinicalTrials.gov with the identifier NCT04163965.

Author Contributions

Conceptualization, S.L. and N.M.; data curation, D.U.U. and R.D.; methodology, D.U.U., R.D., A.N. and C.H.A.; investigation, D.U.U. and R.D.; project administration, D.U.U., M.W. and C.H.A.; resources R.D., A.N., M.W., N.M. and S.L.; software, D.U.U.; visualization, D.U.U.; writing—original draft preparation, D.U.U.; writing—review and editing, R.D., A.N., S.L. and C.H.A. All authors have read and agreed to the published version of the manuscript.

Funding

The work of Christoph Hoog Antink was supported by the German Research Foundation [Deutsche Forschungsgemeinschaft (DFG), LE 817/26-1].

Acknowledgments

The authors would like to thank Marcel Kurzeja and Simone Battermann for their support in the study.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Mendis, S.; Puska, P.; Norrving, B.; World Health Organization. Global Atlas on Cardiovascular Disease Prevention and Control; World Health Organization: Geneva, Switzerland, 2011. [Google Scholar]
  2. Raatikainen, M.P.; Arnar, D.O.; Zeppenfeld, K.; Merino, J.L.; Levya, F.; Hindriks, G.; Kuck, K.H. Statistics on the use of cardiac electronic devices and electrophysiological procedures in the European Society of Cardiology countries: 2014 report from the European Heart Rhythm Association. EP Eur. 2015, 17, i1–i75. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  3. Bradshaw, P.J.; Stobie, P.; Knuiman, M.W.; Briffa, T.G.; Hobbs, M.S. Trends in the incidence and prevalence of cardiac pacemaker insertions in an ageing population. Open Heart 2014, 1, e000177. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  4. Lim, Y.G.; Kim, K.K.; Park, K.S. ECG recording on a bed during sleep without direct skin-contact. IEEE Trans. Biomed. Eng. 2007, 54, 718–725. [Google Scholar] [CrossRef] [PubMed]
  5. Leicht, L.; Skobel, E.; Knackstedt, C.; Mathissen, M.; Sitter, A.; Wartzek, T.; Möhler, W.; Reith, S.; Leonhardt, S.; Teichmann, D. Capacitive ECG Monitoring in Cardiac Patients during Simulated Driving. IEEE Trans. Biomed. Eng. 2018, 66, 749–758. [Google Scholar] [CrossRef] [PubMed]
  6. Spinelli, E.; Haberman, M. Insulating electrodes: A review on biopotential front ends for dielectric skin–electrode interfaces. Physiol. Meas. 2010, 31, S183. [Google Scholar] [CrossRef] [PubMed]
  7. Chi, Y.M.; Jung, T.P.; Cauwenberghs, G. Dry-contact and noncontact biopotential electrodes: Methodological review. IEEE Rev. Biomed. Eng. 2010, 3, 106–119. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  8. Wartzek, T.; Lammersen, T.; Eilebrecht, B.; Walter, M.; Leonhardt, S. Triboelectricity in capacitive biopotential measurements. IEEE Trans. Biomed. Eng. 2011, 58, 1268–1277. [Google Scholar] [CrossRef]
  9. Serteyn, A.; Vullings, R.; Meftah, M.; Bergmans, J.W. Motion artifacts in capacitive ECG measurements: Reducing the combined effect of DC voltages and capacitance changes using an injection signal. IEEE Trans. Biomed. Eng. 2014, 62, 264–273. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  10. Uguz, D.U.; Tufan, T.B.; Uzun, A.; Leonhardt, S.; Antink, C.H. Physiological Motion Artifacts in Capacitive ECG: Ballistocardiographic Impedance Distortions. IEEE Trans. Instrum. Meas. 2020, 69, 3297–3307. [Google Scholar] [CrossRef]
  11. Lampert, R.; Joska, T.; Burg, M.M.; Batsford, W.P.; McPherson, C.A.; Jain, D. Emotional and physical precipitants of ventricular arrhythmia. Circulation 2002, 106, 1800–1805. [Google Scholar] [CrossRef] [Green Version]
  12. Antoun, M.; Edwards, K.M.; Sweeting, J.; Ding, D. The acute physiological stress response to driving: A systematic review. PLoS ONE 2017, 12, e0185517. [Google Scholar] [CrossRef]
  13. van Wyk, F.; Khojandi, A.; Masoud, N. Optimal switching policy between driving entities in semi-autonomous vehicles. Transp. Res. Part C Emerg. Technol. 2020, 114, 517–531. [Google Scholar] [CrossRef]
  14. Glikson, M.; Trusty, J.M.; Grice, S.K.; Hayes, D.L.; Hammill, S.C.; Stanton, M.S. A stepwise testing protocol for modern implantable cardioverter-defibrillator systems to prevent pacemaker-implantable cardioverter-defibrillator interactions. Am. J. Cardiol. 1999, 83, 360–366. [Google Scholar] [CrossRef]
  15. Winter, B.B.; Webster, J.G. Driven-right-leg circuit design. IEEE Trans. Biomed. Eng. 1983, 62–66. [Google Scholar] [CrossRef]
  16. Petrutiu, S.; Sahakian, A.V.; Ricke, A.; Young, B.; Swiryn, S. High resolution electrocardiography optimised for recording pulses from electronic pacemakers: Evaluation of a new pacemaker sensing system. In Proceedings of the 2007 Computers in Cardiology, Durham, NC, USA, 30 September–3 October 2007; pp. 197–200. [Google Scholar]
  17. Baker-Jarvis, J.; Janezic, M.D.; DeGroot, D.C. High-frequency dielectric measurements. IEEE Instrum. Meas. Mag. 2010, 13, 24–31. [Google Scholar] [CrossRef]
  18. Ouyang, Y.; Chappell, W.J. High frequency properties of electro-textiles for wearable antenna applications. IEEE Trans. Antennas Propag. 2008, 56, 381–389. [Google Scholar] [CrossRef]
  19. Lesnikowski, J. Dielectric permittivity measurement methods of textile substrate of textile transmission lines. Prz. Elektrotechniczny 2012, 3, 148–151. [Google Scholar]
  20. Jonassen, N. Human body capacitance: Static or dynamic concept? [ESD]. In Proceedings of the Electrical Overstress/Electrostatic Discharge Symposium Proceedings 1998 (Cat. No. 98TH8347), Reno, NV, USA, 6–8 October 1998; pp. 111–117. [Google Scholar]
  21. Parente, F.R.; Santonico, M.; Zompanti, A.; Benassai, M.; Ferri, G.; D’Amico, A.; Pennazza, G. An electronic system for the contactless reading of ECG signals. Sensors 2017, 17, 2474. [Google Scholar] [CrossRef] [Green Version]
  22. Ueno, A.; Akabane, Y.; Kato, T.; Hoshino, H.; Kataoka, S.; Ishiyama, Y. Capacitive sensing of electrocardiographic potential through cloth from the dorsal surface of the body in a supine position: A preliminary study. IEEE Trans. Biomed. Eng. 2007, 54, 759–766. [Google Scholar] [CrossRef]
  23. Carvalho, N.B.; Georgiadis, A. Wireless Power Transmission for Sustainable Electronics: COST WiPE-IC1301; John Wiley & Sons: New York, NY, USA, 2020. [Google Scholar]
  24. Salvado, R.; Loss, C.; Gonçalves, R.; Pinho, P. Textile materials for the design of wearable antennas: A survey. Sensors 2012, 12, 15841–15857. [Google Scholar] [CrossRef]
  25. Wartzek, T.; Eilebrecht, B.; Lem, J.; Lindner, H.J.; Leonhardt, S.; Walter, M. ECG on the road: Robust and unobtrusive estimation of heart rate. IEEE Trans. Biomed. Eng. 2011, 58, 3112–3120. [Google Scholar] [CrossRef] [PubMed]
  26. Plesinger, F.; Jurco, J.; Halamek, J.; Jurak, P. SignalPlant: An open signal processing software platform. Physiol. Meas. 2016, 37, N38. [Google Scholar] [CrossRef]
  27. Luo, S.; Johnston, P.; Hong, W. Performance Study of Digital Pacer Spike Detection as Sampling Rate Changes. In Proceedings of the 2008 Computers in Cardiology, Bologna, Italy, 14–17 September 2008; pp. 349–352. [Google Scholar]
  28. Jekova, I.; Tsibulko, V.; Iliev, I. ECG database applicable for development and testing of pace detection algorithms. Int. J. Bioautom. 2014, 18, 377–388. [Google Scholar]
  29. Polpetta, A.; Banelli, P. Fully Digital Pacemaker Detection in ECG Signals Using a Non-Linear Filtering Approach. In Proceedings of the 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Vancouver, BC, Canada, 20–24 August 2008; pp. 5406–5410. [Google Scholar]
  30. Helfenbein, E.D.; Lindauer, J.M.; Zhou, S.H.; Gregg, R.E.; Herleikson, E.C. A software-based pacemaker pulse detection and paced rhythm classification algorithm. J. Electrocardiol. 2002, 35, 95. [Google Scholar] [CrossRef]
  31. Herleikson, E.C. ECG Pace Pulse Detection and Processing. U.S. Patent 5,682,902, 4 November 1997. [Google Scholar]
  32. Clifford, G.; Behar, J.; Li, Q.; Rezek, I. Signal quality indices and data fusion for determining clinical acceptability of electrocardiograms. Physiol. Meas. 2012, 33, 1419. [Google Scholar] [CrossRef] [Green Version]
  33. Saadi, H.; Attari, M. Electrode-Gel-Skin Interface Characterization and Modeling for Surface Biopotential Recording: Impedance Measurements and Noise. In Proceedings of the 2nd International Conference on Advances in Biomedical Engineering (ICABME 2013), Tripoli, Lebanon, 10–14 September 2013; pp. 49–52. [Google Scholar]
  34. Eilebrecht, B.; Willkomm, J.; Pohl, A.; Wartzek, T.; Leonhardt, S. Impedance measurement system for determination of capacitive electrode coupling. IEEE Trans. Biomed. Circuits Syst. 2013, 7, 682–689. [Google Scholar] [CrossRef]
  35. Atallah, L.; Serteyn, A.; Meftah, M.; Schellekens, M.; Vullings, R.; Bergmans, J.; Osagiator, A.; Oetomo, S.B. Unobtrusive ECG monitoring in the NICU using a capacitive sensing array. Physiol. Meas. 2014, 35, 895. [Google Scholar] [CrossRef] [Green Version]
  36. Antink, C.H.; Breuer, E.; Uguz, D.U.; Leonhardt, S. Signal-Level Fusion with Convolutional Neural Networks for Capacitively Coupled ECG in the Car. In Proceedings of the Computing in Cardiology Conference 2018, Maastricht, The Netherlands, 23–26 September 2018; Volume 45, pp. 1–4. [Google Scholar]
  37. Wedekind, D.; Kleyko, D.; Osipov, E.; Malberg, H.; Zaunseder, S.; Wiklund, U. Robust methods for automated selection of cardiac signals after blind source separation. IEEE Trans. Biomed. Eng. 2018, 65, 2248–2258. [Google Scholar] [CrossRef]
  38. Serteyn, A.; Lin, X.; Amft, O. Reducing Motion Artifacts for Robust QRS Detection in Capacitive Sensor Arrays. In Proceedings of the 4th International Symposium on Applied Sciences in Biomedical and Communication Technologies, Barcelona, Spain, 26–29 October 2011; pp. 1–5. [Google Scholar]
Figure 1. Positions of the capacitive electrocardiogram (ECG) electrodes on the car seat. In the sitting place, the sewn conductive textile was used as a driven ground plane feeding the common-mode signal back to the subject’s body.
Figure 1. Positions of the capacitive electrocardiogram (ECG) electrodes on the car seat. In the sitting place, the sewn conductive textile was used as a driven ground plane feeding the common-mode signal back to the subject’s body.
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Figure 2. The transfer function of the instrumentation with a gain of 49 dB. The cutoff frequencies were approximately at 0.13 and 102 Hz for 2nd order high-pass and 6th order low-pass Butterworth filters analog domain, respectively.
Figure 2. The transfer function of the instrumentation with a gain of 49 dB. The cutoff frequencies were approximately at 0.13 and 102 Hz for 2nd order high-pass and 6th order low-pass Butterworth filters analog domain, respectively.
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Figure 3. The effect of the analog filters on the spikes of a cardiac pacemaker. The shape of the ideal spike (a) is widened with an attenuated amplitude in (b), which can be attributed to the low-pass filter in the analog measurement channel. The spectrograms in (c,d) from the short-time Fourier transform (with Hann window of 64 m s ) of the spikes illustrate the impulse-like characteristics of the ideal pacemaker spike and the dampened one of the measurement simulation, respectively. Both spectrograms have the same frequency and color scales but have different time scales to demonstrate the widening better.
Figure 3. The effect of the analog filters on the spikes of a cardiac pacemaker. The shape of the ideal spike (a) is widened with an attenuated amplitude in (b), which can be attributed to the low-pass filter in the analog measurement channel. The spectrograms in (c,d) from the short-time Fourier transform (with Hann window of 64 m s ) of the spikes illustrate the impulse-like characteristics of the ideal pacemaker spike and the dampened one of the measurement simulation, respectively. Both spectrograms have the same frequency and color scales but have different time scales to demonstrate the widening better.
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Figure 4. The pacemaker spike detection algorithm proposed by Herleikson [31]. After a differentiator, the algorithm searches for consecutive extrema points with opposite polarities occurring within 3 m s . If the magnitudes of both extrema (marked with red circles) are higher than the adaptive threshold, the instance is classified as a pacemaker spike. The adaptive threshold is calculated as the threshold factor k times the highest absolute value in the last 64 m s window.
Figure 4. The pacemaker spike detection algorithm proposed by Herleikson [31]. After a differentiator, the algorithm searches for consecutive extrema points with opposite polarities occurring within 3 m s . If the magnitudes of both extrema (marked with red circles) are higher than the adaptive threshold, the instance is classified as a pacemaker spike. The adaptive threshold is calculated as the threshold factor k times the highest absolute value in the last 64 m s window.
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Figure 5. Illustration of the overall fusion algorithm for the detection of the cardiac pacemaker spikes. The resulting spikes (red dots) with an signal quality index (SQI) higher than 0.2 from the channels available (CH2 and CH3) are combined with OR logic and depicted with red diamonds.
Figure 5. Illustration of the overall fusion algorithm for the detection of the cardiac pacemaker spikes. The resulting spikes (red dots) with an signal quality index (SQI) higher than 0.2 from the channels available (CH2 and CH3) are combined with OR logic and depicted with red diamonds.
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Figure 6. Overview of the workflow generating the results.
Figure 6. Overview of the workflow generating the results.
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Figure 7. A short section of reference ECG (rECG) and cECG signals serving as an example. When spikes are detected in the rECG by the internal algorithm of the patient monitor, they are irreversibly replaced by an ideal impulse. Undetected spikes (marked with black dots) are present in the beat numbers 2, 3, 4, 5 and 7, which preserved their original shape and amplitude.
Figure 7. A short section of reference ECG (rECG) and cECG signals serving as an example. When spikes are detected in the rECG by the internal algorithm of the patient monitor, they are irreversibly replaced by an ideal impulse. Undetected spikes (marked with black dots) are present in the beat numbers 2, 3, 4, 5 and 7, which preserved their original shape and amplitude.
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Figure 8. A short section of multichannel cECG measurement during DDD stimulation with three cECG channels. The red circles indicate the results of the spike detection algorithm for each channel, whereas red diamonds are the annotated spikes from the reference system.
Figure 8. A short section of multichannel cECG measurement during DDD stimulation with three cECG channels. The red circles indicate the results of the spike detection algorithm for each channel, whereas red diamonds are the annotated spikes from the reference system.
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Figure 9. True positive rate (TPR), positive predictive value (PPV) and F β scores of the pacemaker spike detection algorithm [31] on cECG measurements. TPR (a) and PPV (b) are plotted for both AlgDBW (blue) and AlgcECG (orange). AlgDBW (c) and AlgcECG (d) are evaluated with F β scores for three different β values of 0.5, 1 and 2 (blue, orange and gold, respectively). TPR of AlgcECG for different stimulation types (UA, UV, BA and BV) are plotted in (e).
Figure 9. True positive rate (TPR), positive predictive value (PPV) and F β scores of the pacemaker spike detection algorithm [31] on cECG measurements. TPR (a) and PPV (b) are plotted for both AlgDBW (blue) and AlgcECG (orange). AlgDBW (c) and AlgcECG (d) are evaluated with F β scores for three different β values of 0.5, 1 and 2 (blue, orange and gold, respectively). TPR of AlgcECG for different stimulation types (UA, UV, BA and BV) are plotted in (e).
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Figure 10. TPR, PPV and F β scores of AlgDBW on cECG measurements. TPR (a) and PPV (b) are plotted for each channel and their fusion separately. F 0.5 , F 1 and F 2 are plotted in (c,d,e) respectively.
Figure 10. TPR, PPV and F β scores of AlgDBW on cECG measurements. TPR (a) and PPV (b) are plotted for each channel and their fusion separately. F 0.5 , F 1 and F 2 are plotted in (c,d,e) respectively.
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Table 1. Patient profile recruited in the study.
Table 1. Patient profile recruited in the study.
PatientAgeSexHeight (cm)Weight (kg)PacemakerClothing
P185M17675DDDCotton undershirt
P282M18292DDDCotton undershirt and cotton shirt
P384F16385DDDThin blouse of a cotton-polyester mixture
P463F18089DDDCotton undershirt and cotton t-shirt
P578M17482DDDTwo layers of cotton undershirt
P682F15886DDDT-shirt of a cotton-polyester-elastane mixture
P780M18895DDDCotton undershirt and cotton t-shirt
P873F15655Bi-ventThin blouse of a polyester-cotton mixture
P986F16875DDDThin cotton pullover
P1084M17175DDDCotton undershirt
P1188F17775Bi-ventCotton undershirt and thin pullover
of a cotton-polyester mixture
P1262F16168DDDThick cotton pullover and two layers of
cotton undershirt
P1383M18285DDDHospital gown and bathrobe
P1486F15495DDDPullover of a cotton-polyester mixture
P1573M190103DDDCotton undershirt
P1683F16868DDDCotton undershirt and cotton t-shirt
P1772F16280DDDCotton undershirt and pullover of
a cotton-polyester mixture
P1880M17163DDDCotton undershirt and cotton shirt
P1975F16469Bi-ventCotton undershirt
P2085M15853DDDCotton undershirt and cotton shirt
Table 2. Signal quality indices of cECG channels.
Table 2. Signal quality indices of cECG channels.
basSQIqrsSQIpliSQISQI
CH10.25 ± 0.220.87 ± 0.110.67 ± 0.230.60 ± 0.11
CH20.36 ± 0.230.81 ± 0.170.62 ± 0.240.60 ± 0.12
CH30.52 ± 0.290.78 ± 0.170.82 ± 0.180.71 ± 0.12
Table 3. Collection of cardiac pacemaker events annotated by the rECG system.
Table 3. Collection of cardiac pacemaker events annotated by the rECG system.
# of Spikes
UAUVBABVTotal
CH13986912194641772 (48.5%)
CH24277662605291982 (54.3%)
CH379913084268073340 (91.5%)
SNR (dB)Ap-p ( μ V )
UAUVBABVUAUVBABV
CH15.74.5−1.8−2.3100902925
CH24.66.7−1.6−1.61551494243
CH313.512.0−1.50.61401231115
Table 4. Optimal settings and detection scores of the stimulation modes for different F β scores.
Table 4. Optimal settings and detection scores of the stimulation modes for different F β scores.
Optimized for F 0.5 Optimized for F 1 Optimized for F 2
kTPRPPV F 0.5 kTPRPPV F 1 kTPRPPV F 2
AlgDBWBA1.40.230.410.351.30.310.340.3210.560.180.40
BV1.70.240.610.471.40.410.410.411.10.680.230.49
UA30.660.960.882.50.710.910.801.90.800.720.78
UV30.670.960.882.450.720.910.8020.780.770.78
Total2.70.470.930.782.150.540.830.651.60.640.550.62
AlgcECGBA1.70.170.470.351.40.340.300.321.150.560.190.40
BV1.850.290.560.471.60.390.410.401.250.670.230.48
UA3.450.650.950.872.90.700.910.7920.820.650.78
UV3.350.650.950.872.750.710.890.802.10.790.690.78
Total3.10.470.930.782.350.540.780.641.850.640.560.62
Table 5. Differences of mean SQI of the groups of spikes identified true positive (TP) and FN, where * indicates a difference found significant with α = 0.05 in two-sample t-test with unequal variances.
Table 5. Differences of mean SQI of the groups of spikes identified true positive (TP) and FN, where * indicates a difference found significant with α = 0.05 in two-sample t-test with unequal variances.
basSQIqrsSQIpliSQISQI
BACH1−0.07 *−0.010.05−0.01
CH20.040.000.000.01
CH30.17 *0.020.040.08 *
BVCH1−0.040.010.06 * 0.01
CH2−0.030.03 * 0.06 * 0.02
CH30.030.05 * 0.020.04 *
UACH1−0.07 * −0.03 * 0.09 * 0.00
CH20.07 * −0.22 * 0.18 * 0.01
CH30.17 * −0.10 * 0.13 * 0.07 *
UVCH1−0.05 * −0.03 * 0.06 * −0.01
CH20.03−0.10 * 0.10 * 0.01
CH30.05 * −0.07 * 0.14 * 0.04 *
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Uguz, D.U.; Dettori, R.; Napp, A.; Walter, M.; Marx, N.; Leonhardt, S.; Hoog Antink, C. Car Seats with Capacitive ECG Electrodes Can Detect Cardiac Pacemaker Spikes. Sensors 2020, 20, 6288. https://doi.org/10.3390/s20216288

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Uguz DU, Dettori R, Napp A, Walter M, Marx N, Leonhardt S, Hoog Antink C. Car Seats with Capacitive ECG Electrodes Can Detect Cardiac Pacemaker Spikes. Sensors. 2020; 20(21):6288. https://doi.org/10.3390/s20216288

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Uguz, Durmus Umutcan, Rosalia Dettori, Andreas Napp, Marian Walter, Nikolaus Marx, Steffen Leonhardt, and Christoph Hoog Antink. 2020. "Car Seats with Capacitive ECG Electrodes Can Detect Cardiac Pacemaker Spikes" Sensors 20, no. 21: 6288. https://doi.org/10.3390/s20216288

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