| Literature DB >> 33285878 |
João Monteiro-Santos1,2, Teresa Henriques1,2, Inês Nunes2,3,4, Célia Amorim-Costa2,3,5, João Bernardes2,5,6, Cristina Costa-Santos1,2.
Abstract
Prediction of labor is of extreme importance in obstetric care to allow for preventive measures, assuring that both baby and mother have the best possible care. In this work, the authors studied how important nonlinear parameters (entropy and compression) can be as labor predictors. Linear features retrieved from the SisPorto system for cardiotocogram analysis and nonlinear measures were used to predict labor in a dataset of 1072 antepartum tracings, at between 30 and 35 weeks of gestation. Two groups were defined: Group A-fetuses whose traces date was less than one or two weeks before labor, and Group B-fetuses whose traces date was at least one or two weeks before labor. Results suggest that, compared with linear features such as decelerations and variability indices, compression improves labor prediction both within one (C-Statistics of 0.728) and two weeks (C-Statistics of 0.704). Moreover, the correlation between compression and long-term variability was significantly different in groups A and B, denoting that compression and heart rate variability look at different information associated with whether the fetus is closer to or further from labor onset. Nonlinear measures, compression in particular, may be useful in improving labor prediction as a complement to other fetal heart rate features.Entities:
Keywords: complexity analysis; data compression; entropy; fetal heart rate; labor; nonlinear analysis; preterm
Year: 2020 PMID: 33285878 PMCID: PMC7516409 DOI: 10.3390/e22010104
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1Example of a fetal heart rate (FHR) time series.
Description of SisPorto features [22,24].
| SisPorto Variable | Description |
|---|---|
| Basal line FHR | mean level of the most horizontal and less oscillatory FHR segments, in the absence of fetal movements and uterine contraction (UC), associated with periods of fetal rest, estimated via a complex algorithm |
| baseline | approximation of basal FHR to long-term FHR fluctuations using running averaging |
| number of accelerations (nAccel) | number of increases in FHR over the baseline lasting 15–120 s and reaching a peak of at least 15 bpm in 60 min |
| number of contractions (nContr) | number of periods in 60 min, lasting a maximum of 254 s, where an upward slope exceeding 17 s was detected reaching a peak lasting more than 90 s, followed by a downward slope exceeding 17 s |
| number of mild decelerations (mDec) | number of decreases in FHR under the baseline lasting 15–120 s, with a minimum amplitude of 15 bpm in 60 min |
| number of intermediate decelerations (iDec) | number of decreases in FHR under the baseline lasting 120–300 s, with a minimum amplitude of 15 bpm in 60 min |
| number of prolonged decelerations (pDec) | number of decelerations lasting more than 300 s in 60 min |
| average short-term variability (avSTV) | mean difference between adjacent FHR signals at 4 Hz on the fetal monitor, after removal of adjacent signals that differ >15 bpm |
| abnormal short-term variability (abSTV) | percentage of subsequent FHR signals differing <1 bpm |
| average long-term variability (avLTV) | mean difference between max and min FHR in a 1 min sliding window, in segments free of accelerations or deceleration |
| abnormal long-term variability (abLTV) | percentage of FHR signals with a difference between minimum |
Fetal and maternal features from Group A—fetuses whose traces date was less than two weeks before labor, and Group B—fetuses whose traces date was at least two weeks before labor.
| Group A (n = 96) | Group B (n = 976) | ||
|---|---|---|---|
| Trace duration (min) | 25.56 (14.82–67.07) | 25.18 (11.28–96.31) | 0.905 |
| Gestational age at delivery (weeks) | 36.58 ± 1.12 | 38.92 ± 1.20 | |
| Maternal age (years) | 31 (16–43) | 31 (15–52) | 0.291 |
| Cesarean section | 31 (32.3) | 321 (32.9) | 0.067 |
| Baby presentation (cephalic) | 90 (93.8) | 918 (94.1) | 0.524 |
| Gender (male) | 49 (51) | 506 (51.8) | 0.881 |
| Signal quality (%) | 97 (80–100) | 96 (80–100) | 0.105 |
| Signal loss (%) | 3 (0–20) | 4 (0–21) | 0.106 |
SisPorto and nonlinear features from Group A—fetuses whose traces date were less than two weeks before labor, and Group B—fetuses whose traces date were at least two weeks before labor.
| Group A (n = 96) | Group B (n = 976) | ||
|---|---|---|---|
| Basal line | 133 (108–154) | 134 (105–168) | 0.137 |
| Baseline | 135.5 (114–160) | 137 (105–169) | 0.237 |
| nAccel | 5 (0–13) | 5 (0–31) | 0.188 |
| nContr | 1 (0–15) | 1 (0–15) | 0.200 |
| mDec | 0 (0–5) | 0 (0–13) | 0.787 |
| iDec (% of no iDec) | 89 (92.71) | 962 (98.57) | |
| pDec (% of no pDec) | 96 (100) | 973 (99.69) | 1.000 |
| abSTV | 50.49 ± 8.83 | 50.27 ± 8.42 | 0.805 |
| avSTV | 14.48 ± 3.48 | 14.55 ± 3.45 | 0.839 |
| abLTV | 1 (0–35) | 0 (0–38) | |
| avLTV | 15.85 (8–33) | 16.8 (0–40) | 0.229 |
| mean_UC | 172.504 ± 103.426 | 166.663 ± 101.650 | 0.592 |
| sd_UC | 56.350 ± 42.403 | 45.768 ± 35.096 | |
| cv_UC | 0.424 ± 0.347 | 0.369 ± 0.328 | 0.121 |
| Gzip_UC | 6.089 ± 1.769 | 5.664 ± 1.568 | |
| SampEn_UC | 0.547 ± 0.306 | 0.595 ± 0.287 | 0.117 |
| Gzip_FHR | 11.559 ± 0.995 | 11.758 ± 0.878 | |
| SampEn_FHR | 0.670 ± 0.159 | 0.693 ± 0.195 | 0.265 |
Logistic regression for labor prediction in two weeks or less.
| B | Exp(B) | 95% CI | ||
|---|---|---|---|---|
| Constant | −20.639 | <0.001 | ||
| wCTG | 0.674 | <0.001 | 1.962 | 1.489–2.584 |
| Gzip_FHR | −0.341 | 0.005 | 0.711 | 0.560–0.902 |
| iDec a | 1.782 | <0.001 | 5.950 | 2.217–15.918 |
a No iDec was set as reference instance.
Logistic regression for labor prediction in one week or less.
| B | Exp(B) | 95% CI | ||
|---|---|---|---|---|
| Constant | −6.679 | 0.330 | ||
| wCTG | 0.317 | 0.097 | 1.373 | 0.944–1.997 |
| Gzip_FHR | −0.573 | 0.010 | 0.564 | 0.364–0.873 |
| iDec | 2.780 | <0.001 | 16.112 | 5.205–49.874 |
Spearman’s correlation coefficient and respective 95% confidence interval (CI) between Gzip_FHR and short- and long-term variabilities given by SisPorto. Confidence intervals were calculated using bootstrapping. Bold means significant differences between groups.
| Two Weeks Prediction | One Week Prediction | ||||
|---|---|---|---|---|---|
| Total | Group A | Group B | Group A | Group B | |
| abSTV | −0.524 (−0.564; −0.481) | −0.636 (−0.733; −0.501) | −0.512 (−0.565; −0.463) | −0.694 (−0.867; −0.370) | −0.515 (−0.560; −0.468) |
| avSTV | 0.500 (0.452; 0.541) | 0.596 (0.442; 0.720) | 0.489 (0.437; 0.539) | 0.698 (0.410; 0.864) | 0.492 (0.444; 0.539) |
| abLTV | −0.562 (−0.602; −0.520) | − | − | −0.760 (−0.893; −0.489) | −0.551 (−0.596; −0.509) |
| avLTV | 0.765 (0.737; 0.792) | 0.874 (0.663; 0.970) | 0.760 (0.730; 0.789) | ||
SisPorto and nonlinear features from Group A—fetuses whose traces date were less than one week before labor, and Group B—fetuses whose traces date were at least one week before labor.
| Group A (n = 27) | Group B (n = 1045) | ||
|---|---|---|---|
| Baseline | 134 (123–160) | 137 (105–169) | 0.507 |
| Basal line | 130 (122–146) | 134 (105–168) | 0.234 |
| nAccel | 5 (0–11) | 5 (0–31) | 0.714 |
| nContr | 1 (0–11) | 1 (0–15) | 0.246 |
| mDec | 0 (0–2) | 0 (0–13) | 0.175 |
| iDec (% of no iDec) | 22 (81.48) | 1029 (98.47) | |
| pDec (% of no pDec) | 27 (100) | 1042 (99.71) | 1.000 |
| abSTV | 52.89 ± 8.95 | 50.22 ± 8.44 | 0.105 |
| avSTV | 13.78 ± 3.65 | 14.57 ± 3.44 | 0.240 |
| abLTV | 3 (0–31) | 0 (0–38) | |
| avLTV | 14.7 (8–33) | 16.8 (0–40) | 0.126 |
| mean_UC | 161.167 ± 138.37 | 167.342 ± 100.739 | 0.756 |
| sd_UC | 55.844 ± 44.593 | 46.480 ± 35.659 | 0.181 |
| cv_UC | 0.463 ± 0.329 | 0.372 ± 0.329 | 0.155 |
| Gzip_UC | 6.132 ± 1.981 | 5.691 ± 1.579 | 0.261 |
| SampEn_UC | 0.537 ± 0.269 | 0.592 ± 0.290 | 0.325 |
| Gzip_FHR | 11.356 ± 1.089 | 11.750 ± 0.883 | |
| SampEn_FHR | 0.655 ± 0.149 | 0.692 ± 0.193 | 0.320 |