Dedicated Algorithm for Unobtrusive Fetal Heart Rate Monitoring Using Multiple Dry Electrodes
Abstract
:1. Introduction
2. Materials and Methods
2.1. Acquisition System
2.2. Dataset
- Gestational age (GA) weeks;
- Fetus in cephalic position;
- Body Mass Index (BMI) (before pregnancy);
- Singleton pregnancy.
- Age years;
- Pregnancy with maternal or fetal complications;
- Unable to read and speak English and Dutch.
2.3. fHR Estimation
2.3.1. Hybrid Pre-Processing
Triboelectricity Artifacts
Filtering
Amplitude Demodulation
- On the filtered signal , where , we detected the positive and the negative peaks of the QRS complexes by means of a peak detector based on adaptive thresholding. The detector in [27] adopted a finite state machine (FSM) to adapt the threshold to the amplitude variation of the signal induced by the modulation.
- Positive () and negative () envelops were calculated by interpolation of the peaks using a cubic spline.
- The envelops were combined as: .
- A scale factor, defined as , was computed over the full trace to preserve the amplitude information.
- The de-modulated signal was obtained according to: .
2.3.2. Main Processing
mQRS Detection
- All the principal components were forward-backward filtered with a Butterworth bandpass filter (6.3–16 Hz) to enhance the QRS complexes, whose position was then identified by means of a peak detector based on adaptive thresholding [29], already introduced in [16]. Figure 7 shows the 4 main components, obtained with ICA, with the related QRS complexes identified by the peak detector. After this step, for each component the estimation of the maternal heart rate (, with ) was derived as:
- The series, and related component, that best represents the maternal HR was selected a posteriori according to the following procedure: for each component, the mean value of the maternal heart rate series was computed; if this value was outside the range [50–180] beats per minute (bpm), the series (and related component) was discarded. If all series were discarded, the mECG removal was not performed. For the remaining series, the following parameters were derived to select the best candidate:
- Number of outliers , i.e., number of the series elements outside the range 50–180 bpm;
- Series variability, defined as the sum of the absolute difference between successive elements of the series. This criterion is based on the pseudo-periodicity of the ECG signal [30], since we expected the HR to show limited variability between subsequent beats.
- The discrepancy of the mean value of the series with a predefined mean value of the HR, bpm. This criterion was adopted to avoid confusion between fECG and mECG.
These parameters were combined by the following formula to establish a quality index for the selection of the best candidate component:In Figure 7, the selected mHR series was the one related to the second independent component, which seems correct.
mECG Canceling
fECG Enhancement and fHR Estimation
- Series variability based on the mean of the absolute first and second derivative of the HR series values. This constraint was based on a priori knowledge of the fHR regularity.
- The correlation between the position of the fQRS and the mQRS, introduced to avoid the selection of the maternal series in the presence of the mECG residual left.
- If the mean value of the fHR was outside the range bpm, a penalty factor was added and depended on the deviation of the mean value from the edges of the range.
2.4. Evaluation Metrics
- Sensitivity (Se) measures the proportion of actual fQRS complexes that are correctly identified as such:
- F1-score measures the overall performance of the algorithm to identify fQRS complexes:
- Root Mean Square Error (RMSE) measures in beats per minute (bpm) the difference between the true fetal HR () and the estimation provided by the algorithm ():
2.5. Statistical Tests
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Sub-ID | Age | GA | G | P | BMI |
---|---|---|---|---|---|
001 | 32 | 4 | 3 | 27 | |
002 | 31 | 2 | 1 | 21 | |
003 | 36 | 2 | 1 | 23 |
VA [16] | Proposed Approach | ||||||
---|---|---|---|---|---|---|---|
Mean ± Std | Median | Iqr | Mean ± Std | Median | Iqr | p-Value | |
Sensitivity (%) | |||||||
F1-score (%) | |||||||
RMSE (bpm) |
VA [16] | Proposed Approach | ||||||
---|---|---|---|---|---|---|---|
Mean ± Std | Median | Iqr | Mean ± Std | Median | Iqr | p-Value | |
Sensitivity (%) | |||||||
F1-score (%) | |||||||
RMSE (bpm) |
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Galli, A.; Peri, E.; Zhang, Y.; Vullings, R.; van der Ven, M.; Giorgi, G.; Ouzounov, S.; Harpe, P.J.A.; Mischi, M. Dedicated Algorithm for Unobtrusive Fetal Heart Rate Monitoring Using Multiple Dry Electrodes. Sensors 2021, 21, 4298. https://doi.org/10.3390/s21134298
Galli A, Peri E, Zhang Y, Vullings R, van der Ven M, Giorgi G, Ouzounov S, Harpe PJA, Mischi M. Dedicated Algorithm for Unobtrusive Fetal Heart Rate Monitoring Using Multiple Dry Electrodes. Sensors. 2021; 21(13):4298. https://doi.org/10.3390/s21134298
Chicago/Turabian StyleGalli, Alessandra, Elisabetta Peri, Yijing Zhang, Rik Vullings, Myrthe van der Ven, Giada Giorgi, Sotir Ouzounov, Pieter J. A. Harpe, and Massimo Mischi. 2021. "Dedicated Algorithm for Unobtrusive Fetal Heart Rate Monitoring Using Multiple Dry Electrodes" Sensors 21, no. 13: 4298. https://doi.org/10.3390/s21134298
APA StyleGalli, A., Peri, E., Zhang, Y., Vullings, R., van der Ven, M., Giorgi, G., Ouzounov, S., Harpe, P. J. A., & Mischi, M. (2021). Dedicated Algorithm for Unobtrusive Fetal Heart Rate Monitoring Using Multiple Dry Electrodes. Sensors, 21(13), 4298. https://doi.org/10.3390/s21134298