| Literature DB >> 33266973 |
Leonardo Sarlabous1,2,3, Luis Estrada1,2,3, Ana Cerezo-Hernández4,5, Sietske V D Leest6, Abel Torres1,2,3, Raimon Jané1,2,3, Marieke Duiverman5,7, Ainara Garde6.
Abstract
To optimize long-term nocturnal non-invasive ventilation in patients with chronic obstructive pulmonary disease, surface diaphragm electromyography (EMGdi) might be helpful to detect patient-ventilator asynchrony. However, visual analysis is labor-intensive and EMGdi is heavily corrupted by electrocardiographic (ECG) activity. Therefore, we developed an automatic method to detect inspiratory onset from EMGdi envelope using fixed sample entropy (fSE) and a dynamic threshold based on kernel density estimation (KDE). Moreover, we combined fSE with adaptive filtering techniques to reduce ECG interference and improve onset detection. The performance of EMGdi envelopes extracted by applying fSE and fSE with adaptive filtering was compared to the root mean square (RMS)-based envelope provided by the EMG acquisition device. Automatic onset detection accuracy, using these three envelopes, was evaluated through the root mean square error (RMSE) between the automatic and mean visual onsets (made by two observers). The fSE-based method provided lower RMSE, which was reduced from 298 ms to 264 ms when combined with adaptive filtering, compared to 301 ms provided by the RMS-based method. The RMSE was negatively correlated with the proposed EMGdi quality indices. Following further validation, fSE with KDE, combined with adaptive filtering when dealing with low quality EMGdi, indicates promise for detecting the neural onset of respiratory drive.Entities:
Keywords: adaptive filtering; chronic obstructive pulmonary disease; diaphragm electromyography; fixed sample entropy; non-invasive mechanical ventilation; root mean square
Year: 2019 PMID: 33266973 PMCID: PMC7514739 DOI: 10.3390/e21030258
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Characteristics and clinical data of the included COPD patients.
| Sex, female/male (n) | 5/4 |
| Age (years) | 63 (58–72) |
| BMI (kg/m2) | 25 (22–29) |
| FEV1 (L) | 0.59 (0.52–0.75) |
| FEV1 (%pred) | 20 (16–26) |
| FVC (L) | 2.22 (1.43–2.63) |
| FVC (%pred) | 53 (44–66) |
| FEV1/FVC (%) | 28 (23–33) |
| TLC (L) | 8.01 (6.82–9.22) |
| TLC (%pred) | 134 (116–156) |
| RV (L) | 5.29 (4.88–6.21) |
| RV (%pred) | 252 (215–267) |
| RV/TLC (%) | 66 (61–74) |
| PaCO2 before NIV initiation (kPa) | 6.6 (6.2–8.9) |
| PaO2 before NIV initiation (kPa) | 8.3 (5.9–9.4) |
BMI, body mass index; FEV1, postbronchodilator forced expiratory volume in 1 s in liters (L); FVC, forced vital capacity in liters (L); RV, residual volume; TLC, total lung capacity; %pred: percentage of the predicted values [14,15]; PaO2, arterial oxygen pressure at daytime without ventilation; PaCO2, arterial carbon dioxide pressure at daytime without ventilation; kPa, kilopascal; NIV, non-invasive ventilation. Characteristics are represented by their median and inter-quartile range.
Figure 1(a) EMGdi signal segments from a COPD patient with high quality signal recorded during non-invasive ventilation at night. Inspiratory cycles are representing by dotted line boxes. EMGdi inspiratory and expiratory segments without ECG interference (solid magenta and green traces, respectively), and ECG inspiratory and expiratory segments (solid red and cyan traces, respectively) are also shown. Solid blue traces shown not included segments. (b) PSD corresponding to ECG inspiratory and expiratory and (c) PSD corresponding to EMGdi inspiratory and expiratory phases.
Figure 2Representative examples of EMGdi signal (a1,a2) recorded in two patients with low (left panels) and high (right panels) signal quality, respectively. Derived root mean square (b1,b2) envelopes given by the EMG recording system (RMSp). Derived fixed sample entropy (fSE) envelopes over the EMGdi signal (fSE-EMGdi) (c1,c2). fSE was calculated using m = 1, r = 0.2 × standard deviation of EMGdi free of electrocardiographic interference and overlapping sliding window of 0.25 s. The EMGdi signal was adaptively filtered (d1,d2) using an LMS-based adaptive algorithm (EMGdi-LMS) and fSE (e1,e2) was also calculated (fSE-EMGdi-LMS). Rinex is an expression of increment of inspiratory EMGdi activity with respect to basal expiratory EMGdi activity, while Rcardio is an expression of the ECG interference over the EMGdi signals. Expert onset detections are shown in black solid lines (black and red lines). The onsets of neural respiratory activity (blue dotted lines) were detected through a dynamic threshold over the fSE-EMGdi and fSE-EMGdi-LMS using the Gaussian kernel density estimation approach.
Onset difference between manual detections considering reliable breaths less than 150 ms. Percentage of cycles removed.
| COPD | Differences between Scores (ms) | Discarded Cycles (%) |
|---|---|---|
| 1 | −6 ± 77 | 34.2 |
| 2 | −32 ± 73 | 39.3 |
| 3 | 15 ± 74 | 27.1 |
| 4 | 10 ± 68 | 21.0 |
| 5 | −10 ± 70 | 40.0 |
| 6 | −13 ± 67 | 24.4 |
| 7 | 6 ± 81 | 45.0 |
| 8 | 33 ± 56 | 5.4 |
| 9 | 16 ± 46 | 2.2 |
| Mean ± SD | 5 ± 69 | 26.5 ± 15.1 |
Rinex and Rcardio indices calculated over the EMGdi signal before and after applying the LMS-based adaptive algorithm.
| Rinex | Rcardio | |||
|---|---|---|---|---|
| COPD | EMGdi | EMGdi-LMS | EMGdi | EMGdi-LMS |
| 1 | 1.70 | 1.73 | 0.0060 | 0.4019 |
| 2 | 5.09 | 6.59 | 0.0009 | 0.5051 |
| 3 | 6.31 | 6.57 | 0.0082 | 0.3306 |
| 4 | 3.44 | 4.82 | 0.0100 | 0.0790 |
| 5 | 6.65 | 10.48 | 0.0035 | 1.2849 |
| 6 | 9.63 | 15.18 | 0.0047 | 0.6149 |
| 7 | 3.65 | 3.29 | 0.0129 | 0.1493 |
| 8 | 5.82 | 9.23 | 0.0011 | 0.2751 |
| 9 | 43.74 | 64.30 | 0.0293 | 7.2753 |
EMGdi-LMS: EMGdi signal filtered using an LMS-based adaptive algorithm. Rinex: ratio between the mean power spectral density (PSD) of inspiratory segments without ECG and the mean PSD of expiratory segments without ECG. Rcardio: ratio between the mean PSD of inspiratory EMGdi segments without ECG and the mean PSD of expiratory EMGdi segments with ECG.
Figure 3Root-mean-square error (RMSE) between the visual onset detection and automatic onset detections. Fixed sample entropy (fSE) was estimated over both the EMGdi signal (fSE-EMGdi) and filtered EMGdi signal using an LMS-based adaptive algorithm (fSE-EMGdi-LMS). fSE was calculated for different settings: m = 1 and 2, and tolerance values r = 0.1, 0.2 and 0.3 × standard deviation of EMGdi free of electrocardiographic interference, and overlapping sliding windows of 0.25, 0.3, 0.4 and 0.5 s. Each RMSE represents the geometric mean of obtained values for the 9 analyzed patients.
The RMSE (in ms) of the automatic respiratory onset detection per patient.
| COPD | fSE-EMGdi | fSE-EMGdi-LMS | RMSp |
|---|---|---|---|
| 1 | 303 | 318 | 353 |
| 2 | 335 | 316 | 303 |
| 3 | 317 | 264 | 376 |
| 4 | 523 | 346 | 282 |
| 5 | 369 | 293 | 339 |
| 6 | 278 | 273 | 277 |
| 7 | 251 | 225 | 333 |
| 8 | 187 | 220 | 255 |
| 9 | 116 | 120 | 194 |
| Mean ± SD | 298 ± 115 | 264 ± 68 | 301 ± 56 |
fSE-EMGdi: fixed sample entropy (fSE) estimated over the EMGdi signal. fSE-EMGdi-LMS: fSE estimated over filtered EMGdi signal using an LMS-based adaptive algorithm. fSE was calculated using m = 1, tolerance values r = 0.3 × standard deviation of EMGdi free of electrocardiographic interference and overlapping sliding windows of 0.25 s. RMSp: root mean square given by the recording system.
The difference (in ms) between the visual scores (average detection of two visual scorers) and the automatic onset detection per patient.
| COPD | fSE-EMGdi | fSE-EMGdi-LMS | RMSp |
|---|---|---|---|
| 1 | 101 ± 286 | 99 ± 302 | 220 ± 276 |
| 2 | 211 ± 260 | 233 ± 214 | 239 ± 186 |
| 3 | 157 ± 276 | 138 ± 226 | 223 ± 302 |
| 4 | 309 ± 422 | 204 ± 280 | 174 ± 222 |
| 5 | 222 ± 296 | 204 ± 210 | 255 ± 224 |
| 6 | 199 ± 194 | 180 ± 205 | 209 ± 181 |
| 7 | 80 ± 238 | 47 ± 221 | 89 ± 321 |
| 8 | 129 ± 136 | 163 ± 148 | 183 ± 177 |
| 9 | 30 ± 112 | 47 ± 110 | 139 ± 136 |
| Mean ± SD | 159 ± 261 | 152 ± 218 | 196 ± 221 |
fSE-EMGdi: fixed sample entropy (fSE) estimated over the EMGdi signal. fSE-EMGdi-LMS: fSE estimated over filtered EMGdi signal using an LMS-based adaptive algorithm. fSE was calculated using m = 1, tolerance values r = 0.3 × standard deviation of EMGdi free of electrocardiographic interference and overlapping sliding windows of 0.25 s. RMSp: root mean square given by the recording system.
Figure 4Comparison between the onset average detection of two visual scorers (tonV) and the automatic onset detection, including all studied methods, in two representative patients with low (left panels) and high (right panels) quality signal, respectively. Automatic detections were estimated from RMS-based (a1,a2) envelopes provided by the acquisition device (RMSp), fSE-based envelopes (b1,b2) over the EMGdi signal (fSE-EMGdi), and fSE-based envelopes (c1,c2) from the LMS-based adaptively filtered EMGdi signal (fSE-EMGdi-LMS). Upper red dots represent early detection and lower blue dots represent late detection of the automatic methods.