Cargando…

Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline

CONTEXT: The computerization of both fetal heart rate (FHR) and intelligent classification modeling of the cardiotocograph (CTG) is one of the approaches that are utilized in assisting obstetricians in conducting initial interpretation based on (CTG) analysis. CTG tracing interpretation is crucial f...

Descripción completa

Detalles Bibliográficos
Autores principales: Al-yousif, Shahad, Najm, Ihab A., Talab, Hossam Subhi, Hasan Al Qahtani, Nourah, Alfiras, M., Al-Rawi, Osama YM, Subhi Al-Dayyeni, Wisam, Amer Ahmed Alrawi, Ali, Jabbar Mnati, Mohannad, Jarrar, Mu’taman, Ghabban, Fahad, Al-Shareefi, Nael A., Musa Jaber, Mustafa, H. Saleh, Abbadullah, Md Tahir, Nooritawati, Najim, Huda T., Taher, Mayada
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PeerJ Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9454876/
https://www.ncbi.nlm.nih.gov/pubmed/36092005
http://dx.doi.org/10.7717/peerj-cs.1050
_version_ 1784785455831580672
author Al-yousif, Shahad
Najm, Ihab A.
Talab, Hossam Subhi
Hasan Al Qahtani, Nourah
Alfiras, M.
Al-Rawi, Osama YM
Subhi Al-Dayyeni, Wisam
Amer Ahmed Alrawi, Ali
Jabbar Mnati, Mohannad
Jarrar, Mu’taman
Ghabban, Fahad
Al-Shareefi, Nael A.
Musa Jaber, Mustafa
H. Saleh, Abbadullah
Md Tahir, Nooritawati
Najim, Huda T.
Taher, Mayada
author_facet Al-yousif, Shahad
Najm, Ihab A.
Talab, Hossam Subhi
Hasan Al Qahtani, Nourah
Alfiras, M.
Al-Rawi, Osama YM
Subhi Al-Dayyeni, Wisam
Amer Ahmed Alrawi, Ali
Jabbar Mnati, Mohannad
Jarrar, Mu’taman
Ghabban, Fahad
Al-Shareefi, Nael A.
Musa Jaber, Mustafa
H. Saleh, Abbadullah
Md Tahir, Nooritawati
Najim, Huda T.
Taher, Mayada
author_sort Al-yousif, Shahad
collection PubMed
description CONTEXT: The computerization of both fetal heart rate (FHR) and intelligent classification modeling of the cardiotocograph (CTG) is one of the approaches that are utilized in assisting obstetricians in conducting initial interpretation based on (CTG) analysis. CTG tracing interpretation is crucial for the monitoring of the fetal status during weeks into the pregnancy and childbirth. Most contemporary studies rely on computer-assisted fetal heart rate (FHR) feature extraction and CTG categorization to determine the best precise diagnosis for tracking fetal health during pregnancy. Furthermore, through the utilization of a computer-assisted fetal monitoring system, the FHR patterns can be precisely detected and categorized. OBJECTIVE: The goal of this project is to create a reliable feature extraction algorithm for the FHR as well as a systematic and viable classifier for the CTG through the utilization of the MATLAB platform, all the while adhering to the recognized Royal College of Obstetricians and Gynecologists (RCOG) recommendations. METHOD: The compiled CTG data from spiky artifacts were cleaned by a specifically created application and compensated for missing data using the guidelines provided by RCOG and the MATLAB toolbox after the implemented data has been processed and the FHR fundamental features have been extracted, for example, the baseline, acceleration, deceleration, and baseline variability. This is followed by the classification phase based on the MATLAB environment. Next, using the guideline provided by the RCOG, the signals patterns of CTG were classified into three categories specifically as normal, abnormal (suspicious), or pathological. Furthermore, to ensure the effectiveness of the created computerized procedure and confirm the robustness of the method, the visual interpretation performed by five obstetricians is compared with the results utilizing the computerized version for the 150 CTG signals. RESULTS: The attained CTG signal categorization results revealed that there is variability, particularly a trivial dissimilarity of approximately (+/−4 and 6) beats per minute (b.p.m.). It was demonstrated that obstetricians’ observations coincide with algorithms based on deceleration type and number, except for acceleration values that differ by up to (+/−4). DISCUSSION: The results obtained based on CTG interpretation showed that the utilization of the computerized approach employed in infirmaries and home care services for pregnant women is indeed suitable. CONCLUSIONS: The classification based on CTG that was used for the interpretation of the FHR attribute as discussed in this study is based on the RCOG guidelines. The system is evaluated and validated by experts based on their expert opinions and was compared with the CTG feature extraction and classification algorithms developed using MATLAB.
format Online
Article
Text
id pubmed-9454876
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher PeerJ Inc.
record_format MEDLINE/PubMed
spelling pubmed-94548762022-09-09 Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline Al-yousif, Shahad Najm, Ihab A. Talab, Hossam Subhi Hasan Al Qahtani, Nourah Alfiras, M. Al-Rawi, Osama YM Subhi Al-Dayyeni, Wisam Amer Ahmed Alrawi, Ali Jabbar Mnati, Mohannad Jarrar, Mu’taman Ghabban, Fahad Al-Shareefi, Nael A. Musa Jaber, Mustafa H. Saleh, Abbadullah Md Tahir, Nooritawati Najim, Huda T. Taher, Mayada PeerJ Comput Sci Bioinformatics CONTEXT: The computerization of both fetal heart rate (FHR) and intelligent classification modeling of the cardiotocograph (CTG) is one of the approaches that are utilized in assisting obstetricians in conducting initial interpretation based on (CTG) analysis. CTG tracing interpretation is crucial for the monitoring of the fetal status during weeks into the pregnancy and childbirth. Most contemporary studies rely on computer-assisted fetal heart rate (FHR) feature extraction and CTG categorization to determine the best precise diagnosis for tracking fetal health during pregnancy. Furthermore, through the utilization of a computer-assisted fetal monitoring system, the FHR patterns can be precisely detected and categorized. OBJECTIVE: The goal of this project is to create a reliable feature extraction algorithm for the FHR as well as a systematic and viable classifier for the CTG through the utilization of the MATLAB platform, all the while adhering to the recognized Royal College of Obstetricians and Gynecologists (RCOG) recommendations. METHOD: The compiled CTG data from spiky artifacts were cleaned by a specifically created application and compensated for missing data using the guidelines provided by RCOG and the MATLAB toolbox after the implemented data has been processed and the FHR fundamental features have been extracted, for example, the baseline, acceleration, deceleration, and baseline variability. This is followed by the classification phase based on the MATLAB environment. Next, using the guideline provided by the RCOG, the signals patterns of CTG were classified into three categories specifically as normal, abnormal (suspicious), or pathological. Furthermore, to ensure the effectiveness of the created computerized procedure and confirm the robustness of the method, the visual interpretation performed by five obstetricians is compared with the results utilizing the computerized version for the 150 CTG signals. RESULTS: The attained CTG signal categorization results revealed that there is variability, particularly a trivial dissimilarity of approximately (+/−4 and 6) beats per minute (b.p.m.). It was demonstrated that obstetricians’ observations coincide with algorithms based on deceleration type and number, except for acceleration values that differ by up to (+/−4). DISCUSSION: The results obtained based on CTG interpretation showed that the utilization of the computerized approach employed in infirmaries and home care services for pregnant women is indeed suitable. CONCLUSIONS: The classification based on CTG that was used for the interpretation of the FHR attribute as discussed in this study is based on the RCOG guidelines. The system is evaluated and validated by experts based on their expert opinions and was compared with the CTG feature extraction and classification algorithms developed using MATLAB. PeerJ Inc. 2022-08-18 /pmc/articles/PMC9454876/ /pubmed/36092005 http://dx.doi.org/10.7717/peerj-cs.1050 Text en © 2022 Al-yousif et al. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by-nc/4.0/) , which permits using, remixing, and building upon the work non-commercially, as long as it is properly attributed. For attribution, the original author(s), title, publication source (PeerJ Computer Science) and either DOI or URL of the article must be cited.
spellingShingle Bioinformatics
Al-yousif, Shahad
Najm, Ihab A.
Talab, Hossam Subhi
Hasan Al Qahtani, Nourah
Alfiras, M.
Al-Rawi, Osama YM
Subhi Al-Dayyeni, Wisam
Amer Ahmed Alrawi, Ali
Jabbar Mnati, Mohannad
Jarrar, Mu’taman
Ghabban, Fahad
Al-Shareefi, Nael A.
Musa Jaber, Mustafa
H. Saleh, Abbadullah
Md Tahir, Nooritawati
Najim, Huda T.
Taher, Mayada
Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline
title Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline
title_full Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline
title_fullStr Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline
title_full_unstemmed Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline
title_short Intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on RCOG guideline
title_sort intrapartum cardiotocography trace pattern pre-processing, features extraction and fetal health condition diagnoses based on rcog guideline
topic Bioinformatics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9454876/
https://www.ncbi.nlm.nih.gov/pubmed/36092005
http://dx.doi.org/10.7717/peerj-cs.1050
work_keys_str_mv AT alyousifshahad intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT najmihaba intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT talabhossamsubhi intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT hasanalqahtaninourah intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT alfirasm intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT alrawiosamaym intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT subhialdayyeniwisam intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT amerahmedalrawiali intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT jabbarmnatimohannad intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT jarrarmutaman intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT ghabbanfahad intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT alshareefinaela intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT musajabermustafa intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT hsalehabbadullah intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT mdtahirnooritawati intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT najimhudat intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline
AT tahermayada intrapartumcardiotocographytracepatternpreprocessingfeaturesextractionandfetalhealthconditiondiagnosesbasedonrcogguideline