Matches in SemOpenAlex for { <https://semopenalex.org/work/W4206007621> ?p ?o ?g. }
- W4206007621 endingPage "2887" @default.
- W4206007621 startingPage "2876" @default.
- W4206007621 abstract "Preterm birth is the leading cause of neonatal morbidity and mortality. Early identification of high-risk patients followed by medical interventions is essential to the prevention of preterm birth. Based on the relationship between uterine contraction and the fundamental electrical activities of muscles, we extracted effective features from EHG signals recorded from pregnant women, and use them to train classifiers with the purpose of providing high precision in classifying term and preterm pregnancies.To characterize changes from irregularity to coherence of the uterine activity during the whole pregnancy, network representations of the original electrohysterogram (EHG) signals are established by applying the Horizontal Visibility Graph (HVG) algorithm, from which we extract network degree density and distribution, clustering coefficient and assortativity coefficient. Concerns on the interferences of different noise sources embedded in the EHG signal, we apply Short-Time Fourier Transform (STFT) to expand the original signal in the time-frequency domain. This allows a network representation and the extraction of related features on each frequency component. Feature selection algorithms are then used to filter out unrelated frequency components. We further apply the proposed feature extraction method to EHG signals available in the Term-Preterm EHG database (TPEHG), and use them to train classifiers. We adopt the Partition-Synthesis scheme which splits the original imbalanced dataset into two sets, and synthesizes artificial samples separately within each subset to solve the problem of dataset imbalance.The optimally selected network-based features, not only contribute to the identification of the essential frequency components of uterine activities related to preterm birth, but also to improved performance in classifying term/preterm pregnancies, i.e., the SVM (Support Vector Machine) classifier trained with the available samples in the TPEHG gives sensitivity, specificity, overall accuracy, and auc values as high as 0.89, 0.93, 0.91, and 0.97, respectively." @default.
- W4206007621 created "2022-01-25" @default.
- W4206007621 creator A5008601105 @default.
- W4206007621 creator A5019962926 @default.
- W4206007621 creator A5034109008 @default.
- W4206007621 creator A5041666851 @default.
- W4206007621 creator A5048752035 @default.
- W4206007621 creator A5052812709 @default.
- W4206007621 creator A5072037560 @default.
- W4206007621 date "2022-07-01" @default.
- W4206007621 modified "2023-10-15" @default.
- W4206007621 title "Network Theory Based EHG Signal Analysis and its Application in Preterm Prediction" @default.
- W4206007621 cites W1527463082 @default.
- W4206007621 cites W1552648027 @default.
- W4206007621 cites W1989139494 @default.
- W4206007621 cites W1994687138 @default.
- W4206007621 cites W1997198850 @default.
- W4206007621 cites W2012929040 @default.
- W4206007621 cites W2016710902 @default.
- W4206007621 cites W2030892577 @default.
- W4206007621 cites W2031611270 @default.
- W4206007621 cites W2038968264 @default.
- W4206007621 cites W2040956707 @default.
- W4206007621 cites W2055538060 @default.
- W4206007621 cites W2066309786 @default.
- W4206007621 cites W2089811959 @default.
- W4206007621 cites W2099644549 @default.
- W4206007621 cites W2104216382 @default.
- W4206007621 cites W2144085487 @default.
- W4206007621 cites W2148143831 @default.
- W4206007621 cites W2148657112 @default.
- W4206007621 cites W2162800060 @default.
- W4206007621 cites W2179863576 @default.
- W4206007621 cites W2189109888 @default.
- W4206007621 cites W2442918763 @default.
- W4206007621 cites W2468086005 @default.
- W4206007621 cites W2531587544 @default.
- W4206007621 cites W2566381922 @default.
- W4206007621 cites W2595303237 @default.
- W4206007621 cites W2598849564 @default.
- W4206007621 cites W2607312241 @default.
- W4206007621 cites W2735000467 @default.
- W4206007621 cites W2768049785 @default.
- W4206007621 cites W2789937855 @default.
- W4206007621 cites W2804603709 @default.
- W4206007621 cites W2806165159 @default.
- W4206007621 cites W2809868225 @default.
- W4206007621 cites W287014092 @default.
- W4206007621 cites W2886456067 @default.
- W4206007621 cites W2896066615 @default.
- W4206007621 cites W2898395584 @default.
- W4206007621 cites W2899900073 @default.
- W4206007621 cites W2950583864 @default.
- W4206007621 cites W2952856780 @default.
- W4206007621 cites W3007498322 @default.
- W4206007621 cites W3016843594 @default.
- W4206007621 cites W3106983564 @default.
- W4206007621 cites W3136410796 @default.
- W4206007621 cites W3182968307 @default.
- W4206007621 cites W846368589 @default.
- W4206007621 doi "https://doi.org/10.1109/jbhi.2022.3140427" @default.
- W4206007621 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/34986107" @default.
- W4206007621 hasPublicationYear "2022" @default.
- W4206007621 type Work @default.
- W4206007621 citedByCount "7" @default.
- W4206007621 countsByYear W42060076212022 @default.
- W4206007621 countsByYear W42060076212023 @default.
- W4206007621 crossrefType "journal-article" @default.
- W4206007621 hasAuthorship W4206007621A5008601105 @default.
- W4206007621 hasAuthorship W4206007621A5019962926 @default.
- W4206007621 hasAuthorship W4206007621A5034109008 @default.
- W4206007621 hasAuthorship W4206007621A5041666851 @default.
- W4206007621 hasAuthorship W4206007621A5048752035 @default.
- W4206007621 hasAuthorship W4206007621A5052812709 @default.
- W4206007621 hasAuthorship W4206007621A5072037560 @default.
- W4206007621 hasConcept C102519508 @default.
- W4206007621 hasConcept C106131492 @default.
- W4206007621 hasConcept C134306372 @default.
- W4206007621 hasConcept C136764020 @default.
- W4206007621 hasConcept C142433447 @default.
- W4206007621 hasConcept C148483581 @default.
- W4206007621 hasConcept C153180895 @default.
- W4206007621 hasConcept C154945302 @default.
- W4206007621 hasConcept C166386157 @default.
- W4206007621 hasConcept C19118579 @default.
- W4206007621 hasConcept C203024314 @default.
- W4206007621 hasConcept C31972630 @default.
- W4206007621 hasConcept C33923547 @default.
- W4206007621 hasConcept C34947359 @default.
- W4206007621 hasConcept C41008148 @default.
- W4206007621 hasConcept C52622490 @default.
- W4206007621 hasConcept C89694873 @default.
- W4206007621 hasConceptScore W4206007621C102519508 @default.
- W4206007621 hasConceptScore W4206007621C106131492 @default.
- W4206007621 hasConceptScore W4206007621C134306372 @default.
- W4206007621 hasConceptScore W4206007621C136764020 @default.
- W4206007621 hasConceptScore W4206007621C142433447 @default.
- W4206007621 hasConceptScore W4206007621C148483581 @default.