| Literature DB >> 35214412 |
Somayeh Mohammadi Far1, Matin Beiramvand2, Mohammad Shahbakhti3, Piotr Augustyniak1.
Abstract
OBJECTIVE: The early prediction of preterm labor can significantly minimize premature delivery complications for both the mother and infant. The aim of this research is to propose an automatic algorithm for the prediction of preterm labor using a single electrohysterogram (EHG) signal.Entities:
Keywords: electrohysterogram; empirical mode decomposition; prediction; preterm labor; support vector machine
Mesh:
Year: 2022 PMID: 35214412 PMCID: PMC8878555 DOI: 10.3390/s22041507
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The block diagram for the discrimination of the deliveries.
Figure 2The placement of EHG electrodes, adopted from [46].
Figure 3Examples of the EHG signals from all three channels.
Figure 4The distribution of the extracted features from IMF1 (first row) and IMF2 (second row) from (a) , (b) , and (c) .
kNN performance for different channel configurations. The best obtained results are in bold.
| No. of K | Channel | Se | Sp | Acc |
|---|---|---|---|---|
| 2 | CH1 | 81.2 % | 95.1 % | 93.9 % |
| CH2 | 78.9 % | 94.0 % | 91.8 % | |
| CH3 | 77.3 % | 95.4 % | 93.2 % | |
| 4 | CH1 | 86.1 % | 97.8 % | 96.3 % |
| CH2 | ||||
| CH3 | 82.9 % | 97.6 % | 96.7 % | |
| 8 | CH1 | 82.1 % | 98.7 % | 96.6 % |
| CH2 | 80.0 % | 98.0 % | 95.8 % | |
| CH3 | 81.3 % | 99.6 % | 97.2 % | |
| 10 | CH1 | 79.2 % | 98.8 % | 96.2 % |
| CH2 | 79.0 % | 98.3 % | 95.9 % | |
| CH3 | 80.0 % | 99.6 % | 97.1 % | |
| 12 | CH1 | 77.1 % | 98.9 % | 96.0 % |
| CH2 | 76.7 % | 98.2 % | 95.4 % | |
| CH3 | 78.0 % | 99.6 % | 96.8 % |
SVM performance for different channel configurations. The best results are in bold.
| Kernel | Channel | Se | Sp | Acc |
|---|---|---|---|---|
| Linear | CH1 | 77.5 % | 98.4 % | 95.8 % |
| CH2 | 78.9 % | 98.5 % | 96.0 % | |
| CH3 | 85.0 % | 99.6 % | 97.7 % | |
| RBF | CH1 | 82.8 % | 98.8 % | 96.7 % |
| CH2 | 83.7 % | 98.3 % | 96.4 % | |
| CH3 | 76.8 % | 100 % | 97.0 % | |
| Poly | CH1 | |||
| CH2 | 93.6 % | 99.6 % | 98.9 % | |
| CH3 | 88.4 % | 99.0 % | 97.7 % |
Decision tree performance for different channel configurations. The best results are in bold.
| MLS | Channel | Se | Sp | Acc |
|---|---|---|---|---|
| 10 | CH1 | 93.4 % | 96.4 % | 96.1 % |
| CH2 | 87.8 % | 92.8 % | 92.1 % | |
| CH3 | 89.7 % | 94.8 % | 94.5 % | |
| 20 | CH1 | |||
| CH2 | 91.0 % | 96.9 % | 96.2 % | |
| CH3 | 91.7 % | 96.8 % | 96.2 % | |
| 30 | CH1 | 100% | 97.7 % | 98.2 % |
| CH2 | 94.1% | 96.7 % | 96.2 % | |
| CH3 | 91% | 97.0 % | 96.2 % | |
| 40 | CH1 | 97.2 % | 96.8 % | 96.8 % |
| CH2 | 97.1 % | 96.8 % | 96.9 % | |
| CH3 | 100 % | 97.3 % | 97.6 % | |
| 50 | CH1 | 100% | 93.2 % | 94.1 % |
| CH2 | 100% | 93.3 % | 94.1 % | |
| CH3 | 100% | 93.2 % | 94.0 % |
Figure 5The performance comparison of all three classifiers. * stands for p < 0.05.
Figure 6ROC of all classifiers with their best performance.
The comparison of our study with sate-of-the-art algorithms. * means feature selection was performed before the classification.
| blackWork | Data Balancing | Channel | No. Data | Classifier | Acc | Se | Sp | AUC |
|---|---|---|---|---|---|---|---|---|
| black [ | Yes (SMOTE) | CH3 | 262 term; 38 preterm | polynomial | – | 96% | 90% | 0.95 |
| [ | Yes (Min–Max) | CH3 | 150 term; 19 preterm | SONIA | 92.7% | 91.2% | 94.5% | 0.93 |
| [ | Yes (SMOTE) | CH3 | 262 term; 38 preterm | SVM | 87% | 96% | 79% | – |
| [ | Yes (SMOTE) | CH3 | 262 term; 38 preterm | Combined * | – | 91% | 84% | 0.94 |
| [ | Yes (ADASYN) | CH1-3 | 143 term; 19 preterm | RF * | 93% | 89% | 97% | 0.962 |
| [ | Yes (ADASYN) | CH1 | 262 term; 38 preterm | SVM | 99.72% | 99.48% | 99.96% | – |
| [ | Yes (SMOTE) | CH3 | 262 term; 38 preterm | Adaboost | – | – | – | 0.986 |
| [ | No | CH1-2 | 26 term; 26 preterm | SVM * | 95.70% | 98.40% | 93% | 0.95 |
| [ | Yes (ADASYN) | CH1-3 | 262 term; 38 preterm | SVM * | 96.25% | 95.08% | 97.33% | – |
| [ | Yes (SMOTE) | CH1-3 | 275 term; 51 preterm | Ensemble * | 91.64% | 96.23% | 87.04% | 98.13 |
| [ | Yes (SMOTE) | CH1-3 | 275 term; 51 preterm | LDA * | 89.2% | 98.4% | 79.9% | 0.936 |
| [ | Yes (SMOTE) | CH1-3 | 262 term; 38 preterm | GBC | 85% | - | - | 0.91 |
| [ | Yes (Partition-Synthesis) | CH1-3 | 275 term; 51 preterm | SVM * | 91% | 89.0% | 93% | 0.97 |
| [ | Yes (ADASYN) | CH1-3 | 262 term; 38 preterm | SVM * | 98.5% | 98.4% | 98.4% | - |
| Ours | No | CH1 | 262 term; 38 preterm | SVM | 99.7% | 99.5% | 99.7% | 0.999 |