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Published in: BMC Medical Informatics and Decision Making 1/2021

Open Access 01-12-2021 | Research article

Investigating the interpretability of fetal status assessment using antepartum cardiotocographic records

Authors: Liting Huang, Zhiying Jiang, Ruichu Cai, Li Li, Qinqun Chen, Jiaming Hong, Zhifeng Hao, Hang Wei

Published in: BMC Medical Informatics and Decision Making | Issue 1/2021

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Abstract

Background

Cardiotocography (CTG) interpretation plays a critical role in prenatal fetal monitoring. However, the interpretation of fetal status assessment using CTG is mainly confined to clinical research. To the best of our knowledge, there is no study on data analysis of CTG records to explore the causal relationships between the important CTG features and fetal status evaluation.

Methods

For analyses, 2126 cardiotocograms were automatically processed and the respective diagnostic features measured by the Sisporto program. In this paper, we aim to explore the causal relationships between the important CTG features and fetal status evaluation. First, we utilized data visualization and Spearman correlation analysis to explore the relationship among CTG features and their importance on fetal status assessment. Second, we proposed a forward-stepwise-selection association rule analysis (ARA) to supplement the fetal status assessment rules based on sparse pathological cases. Third, we established structural equation models (SEMs) to investigate the latent causal factors and their causal coefficients to fetal status assessment.

Results

Data visualization and the Spearman correlation analysis found that thirteen CTG features were relevant to the fetal state evaluation. The forward-stepwise-selection ARA further validated and complemented the CTG interpretation rules in the fetal monitoring guidelines. The measurement models validated the five latent variables, which were baseline category (BCat), variability category (VCat), acceleration category (ACat), deceleration category (DCat) and uterine contraction category (UCat) based on fetal monitoring knowledge and the above analyses. Furthermore, the interpretable models discovered the cause factors of fetal status assessment and their causal coefficients to fetal status assessment. For instance, VCat could predict BCat, and UCat could predict DCat as well. ACat, BCat and DCat directly affected fetal status assessment, where ACat was the important causal factor.

Conclusions

The analyses revealed the interpretation rules and discovered the causal factors and their causal coefficients for fetal status assessment. Moreover, the results are consistent with the computerized fetal monitoring and clinical knowledge. Our approaches are conducive to evidence-based medical research and realizing intelligent fetal monitoring.
Literature
1.
go back to reference Grivell RM, Alfirevic Z, Gyte GM, Devane D. Antenatal cardiotocography for fetal assessment. Cochrane Database Syst Rev. 2015;2015(9):CD007863.PubMedCentral Grivell RM, Alfirevic Z, Gyte GM, Devane D. Antenatal cardiotocography for fetal assessment. Cochrane Database Syst Rev. 2015;2015(9):CD007863.PubMedCentral
2.
go back to reference Alfirevic Z, Gyte GM, Cuthbert A, Devane D. Continuous cardiotocography (CTG) as a form of electronic fetal monitoring (EFM) for fetal assessment during labour. Cochrane Database Syst Rev. 2017;2(2):CD006066.PubMed Alfirevic Z, Gyte GM, Cuthbert A, Devane D. Continuous cardiotocography (CTG) as a form of electronic fetal monitoring (EFM) for fetal assessment during labour. Cochrane Database Syst Rev. 2017;2(2):CD006066.PubMed
3.
go back to reference Cheng Z, Song S. Fetal electronic monitoring. Obstet Gynaecol Reprod Med. 2001;81–92. Cheng Z, Song S. Fetal electronic monitoring. Obstet Gynaecol Reprod Med. 2001;81–92.
4.
go back to reference Haran SS, Everett TR. Antenatal fetal wellbeing. Obstet Gynaecol Reprod Med. 2017;27(2):44–9.CrossRef Haran SS, Everett TR. Antenatal fetal wellbeing. Obstet Gynaecol Reprod Med. 2017;27(2):44–9.CrossRef
5.
go back to reference SOGC clinical practice guidelines. Guidelines for vaginal birth after previous caesarean birth. Number 155 (Replaces guideline Number 147), February 2005. Int J Gynaecol Obstet 2005;89(3):319–31. SOGC clinical practice guidelines. Guidelines for vaginal birth after previous caesarean birth. Number 155 (Replaces guideline Number 147), February 2005. Int J Gynaecol Obstet 2005;89(3):319–31.
6.
go back to reference Santo S, Ayres-de Campos D, Costa-Santos C, Schnettler W, Ugwumadu A, Da Graça LM, et al. Agreement and accuracy using the FIGO, ACOG and NICE cardiotocography interpretation guidelines. Acta Obstet Gynecol Scand. 2017;96(2):166–75.CrossRef Santo S, Ayres-de Campos D, Costa-Santos C, Schnettler W, Ugwumadu A, Da Graça LM, et al. Agreement and accuracy using the FIGO, ACOG and NICE cardiotocography interpretation guidelines. Acta Obstet Gynecol Scand. 2017;96(2):166–75.CrossRef
7.
go back to reference Ayres-de Campos D, Spong CY, Chandraharan E. FIGO consensus guidelines on intrapartum fetal monitoring: cardiotocography. Int J Gynecol Obstet. 2015;131(1):13–24.CrossRef Ayres-de Campos D, Spong CY, Chandraharan E. FIGO consensus guidelines on intrapartum fetal monitoring: cardiotocography. Int J Gynecol Obstet. 2015;131(1):13–24.CrossRef
8.
go back to reference Chinese Medical Association PMB. Expert consensus on the application of electronic fetal heart monitoring. Chin J Perinat Med 2015;18(007):486–90. Chinese Medical Association PMB. Expert consensus on the application of electronic fetal heart monitoring. Chin J Perinat Med 2015;18(007):486–90.
9.
go back to reference Sabiani L, Le Dû R, Loundou A, d’Ercole C, Bretelle F, Boubli L, et al. Intra-and interobserver agreement among obstetric experts in court regarding the review of abnormal fetal heart rate tracings and obstetrical management. Am J Obstet Gynecol. 2015;213(6):856.e1.CrossRef Sabiani L, Le Dû R, Loundou A, d’Ercole C, Bretelle F, Boubli L, et al. Intra-and interobserver agreement among obstetric experts in court regarding the review of abnormal fetal heart rate tracings and obstetrical management. Am J Obstet Gynecol. 2015;213(6):856.e1.CrossRef
10.
go back to reference Dawes GS, Moulden M, Redman CWG. System 8000: computerized antenatal FHR analysis. J Issue. 1991;19(1–2):47–51. Dawes GS, Moulden M, Redman CWG. System 8000: computerized antenatal FHR analysis. J Issue. 1991;19(1–2):47–51.
11.
go back to reference Cömert Z, Kocamaz AF. Open-access software for analysis of fetal heart rate signals. Biomed Signal Process Control. 2018;45:98–108.CrossRef Cömert Z, Kocamaz AF. Open-access software for analysis of fetal heart rate signals. Biomed Signal Process Control. 2018;45:98–108.CrossRef
12.
go back to reference Sbrollini A, Agostinelli A, Burattini L, Morettini M, Di Nardo F, Fioretti S, et al. CTG analyzer: a graphical user interface for cardiotocography. In: 2017 39th annual international conference of the IEEE engineering in medicine and biology society (EMBC). IEEE; 2017. p. 2606–9. Sbrollini A, Agostinelli A, Burattini L, Morettini M, Di Nardo F, Fioretti S, et al. CTG analyzer: a graphical user interface for cardiotocography. In: 2017 39th annual international conference of the IEEE engineering in medicine and biology society (EMBC). IEEE; 2017. p. 2606–9.
13.
go back to reference Ayres-de Campos D, Bernardes J, Garrido A, Marques-de Sa J, Pereira-Leite L. SisPorto 2.0: a program for automated analysis of cardiotocograms. J Matern-Fetal Med. 2000;9(5):311–8.CrossRef Ayres-de Campos D, Bernardes J, Garrido A, Marques-de Sa J, Pereira-Leite L. SisPorto 2.0: a program for automated analysis of cardiotocograms. J Matern-Fetal Med. 2000;9(5):311–8.CrossRef
14.
go back to reference Bernardes J, Costa-Pereira A. The effect of different sampling intervals on the measurement of intrapartum fetal heart rate variability. Obstet Gynecol. 1997;90(2):318–9.CrossRef Bernardes J, Costa-Pereira A. The effect of different sampling intervals on the measurement of intrapartum fetal heart rate variability. Obstet Gynecol. 1997;90(2):318–9.CrossRef
15.
go back to reference Yang X, Fang S, Ling S. Clinical application of fetal heart monitoring for the diagnosis of fetal distress. Mod Med Health. 2017;2017(04):105–7. Yang X, Fang S, Ling S. Clinical application of fetal heart monitoring for the diagnosis of fetal distress. Mod Med Health. 2017;2017(04):105–7.
16.
go back to reference Sahin H, Subasi A. Classification of the cardiotocogram data for anticipation of fetal risks using machine learning techniques. Appl Soft Comput. 2015;33:231–8.CrossRef Sahin H, Subasi A. Classification of the cardiotocogram data for anticipation of fetal risks using machine learning techniques. Appl Soft Comput. 2015;33:231–8.CrossRef
17.
go back to reference Zhang Y, Zhao Z. Fetal state assessment based on cardiotocography parameters using PCA and AdaBoost. In: 2017 10th international congress on image and signal processing. BioMedical engineering and informatics (CISP-BMEI). IEEE; 2017. p. 1–6. Zhang Y, Zhao Z. Fetal state assessment based on cardiotocography parameters using PCA and AdaBoost. In: 2017 10th international congress on image and signal processing. BioMedical engineering and informatics (CISP-BMEI). IEEE; 2017. p. 1–6.
18.
go back to reference Nagendra V, Gude H, Sampath D, Corns S, Long S. Evaluation of support vector machines and random forest classifiers in a real-time fetal monitoring system based on cardiotocography data. In: 2017 IEEE conference on computational intelligence in bioinformatics and computational biology (CIBCB). IEEE; 2017. p. 1–6. Nagendra V, Gude H, Sampath D, Corns S, Long S. Evaluation of support vector machines and random forest classifiers in a real-time fetal monitoring system based on cardiotocography data. In: 2017 IEEE conference on computational intelligence in bioinformatics and computational biology (CIBCB). IEEE; 2017. p. 1–6.
19.
go back to reference Zhao Z, Zhang Y, Deng Y. A comprehensive feature analysis of the fetal heart rate signal for the intelligent assessment of fetal state. J Clin Med. 2018;7(8):223.CrossRef Zhao Z, Zhang Y, Deng Y. A comprehensive feature analysis of the fetal heart rate signal for the intelligent assessment of fetal state. J Clin Med. 2018;7(8):223.CrossRef
20.
go back to reference Asuncion A, Newman D. UCI machine learning repository. 2007. Asuncion A, Newman D. UCI machine learning repository. 2007.
21.
go back to reference Huang Z, Zhou Z, He T, et al. Improved classification algorithm for multiclass imbalanced data association. Pattern Recogn Artif Intell. 2015;000(010):922–9. Huang Z, Zhou Z, He T, et al. Improved classification algorithm for multiclass imbalanced data association. Pattern Recogn Artif Intell. 2015;000(010):922–9.
22.
go back to reference Long L, Peng L, Kejia Z, Shan H, Qian L. Research and application of the improved a priori algorithm. Comput Digit Eng. 2019;47(6):1293–7. Long L, Peng L, Kejia Z, Shan H, Qian L. Research and application of the improved a priori algorithm. Comput Digit Eng. 2019;47(6):1293–7.
23.
go back to reference Alsolami F, Amin T, Moshkov M, Zielosko B. Comparison of heuristics for optimization of association rules. Fund Inform. 2019;166(1):1–14. Alsolami F, Amin T, Moshkov M, Zielosko B. Comparison of heuristics for optimization of association rules. Fund Inform. 2019;166(1):1–14.
24.
go back to reference Cheng W, Cheng Z. Fetal electronic monitoring. People’s Medical Publishing House; 2018. Cheng W, Cheng Z. Fetal electronic monitoring. People’s Medical Publishing House; 2018.
25.
go back to reference Zhang H, Wang L, Wang J, Hei J, Ruan C. Premature rupture of the fetal membrane combined with subclinical chorioamnionitis negatively affects pregnancy outcomes by a mechanism associated with reduced levels of matrix metalloproteinase-2. Exp Ther Med. 2015;10(2):561–6.CrossRef Zhang H, Wang L, Wang J, Hei J, Ruan C. Premature rupture of the fetal membrane combined with subclinical chorioamnionitis negatively affects pregnancy outcomes by a mechanism associated with reduced levels of matrix metalloproteinase-2. Exp Ther Med. 2015;10(2):561–6.CrossRef
26.
go back to reference Yang H, Li X, Wang ea Z. Expert consensus on electronic fetal heart monitoring application. Chin J Perin Med. 2015;18(7):486–90. Yang H, Li X, Wang ea Z. Expert consensus on electronic fetal heart monitoring application. Chin J Perin Med. 2015;18(7):486–90.
27.
go back to reference Byrne BM. Structural equation modeling with AMOS, EQS, and LISREL: comparative approaches to testing for the factorial validity of a measuring instrument. Int J Test. 2001;1(1):55–86.CrossRef Byrne BM. Structural equation modeling with AMOS, EQS, and LISREL: comparative approaches to testing for the factorial validity of a measuring instrument. Int J Test. 2001;1(1):55–86.CrossRef
28.
go back to reference Wen Z, Hau KT, Herbert WM. Structural equation model testing: cutoff criteria for goodness of fit indices and chi-square test. Acta Psychol Sin. 2004;36(02):186–94. Wen Z, Hau KT, Herbert WM. Structural equation model testing: cutoff criteria for goodness of fit indices and chi-square test. Acta Psychol Sin. 2004;36(02):186–94.
29.
go back to reference Hernán MA, Robins JM. Causal inference. CRC; 2010. Hernán MA, Robins JM. Causal inference. CRC; 2010.
30.
go back to reference Koller D, Friedman N. Probabilistic graphical models: principles and techniques. MIT Press; 2009. Koller D, Friedman N. Probabilistic graphical models: principles and techniques. MIT Press; 2009.
31.
go back to reference Tomáš P, Krohova J, Dohnalek P, Gajdoš P. Classification of cardiotocography records by random forest. In: 2013 36th international conference on telecommunications and signal processing (TSP). IEEE; 2013. p. 620–923. Tomáš P, Krohova J, Dohnalek P, Gajdoš P. Classification of cardiotocography records by random forest. In: 2013 36th international conference on telecommunications and signal processing (TSP). IEEE; 2013. p. 620–923.
32.
go back to reference Shah SAA, Aziz W, Arif M, Nadeem MSA. Decision trees based classification of cardiotocograms using bagging approach. In: 2015 13th international conference on frontiers of information technology (FIT). IEEE; 2015. p. 12–7. Shah SAA, Aziz W, Arif M, Nadeem MSA. Decision trees based classification of cardiotocograms using bagging approach. In: 2015 13th international conference on frontiers of information technology (FIT). IEEE; 2015. p. 12–7.
33.
go back to reference Street P, Dawes G, Moulden M, Redman C. Short-term variation in abnormal antenatal fetal heart rate records. Am J Obstet Gynecol. 1991;165(3):515–23.CrossRef Street P, Dawes G, Moulden M, Redman C. Short-term variation in abnormal antenatal fetal heart rate records. Am J Obstet Gynecol. 1991;165(3):515–23.CrossRef
34.
go back to reference Elements of causal inference: foundations and learning algorithms. Cambridge; 2017. Elements of causal inference: foundations and learning algorithms. Cambridge; 2017.
35.
go back to reference Spencer JA. Clinical overview of cardiotocography. BJOG Int J Obst Gynaecol. 1993;100:4–7.CrossRef Spencer JA. Clinical overview of cardiotocography. BJOG Int J Obst Gynaecol. 1993;100:4–7.CrossRef
36.
go back to reference Agostinelli A, Palmieri F, Biagini A, Sbrollini A, Burattini L, Di Nardo F, et al. Relationship between deceleration areas in the second stage of labor and neonatal acidemia. In: 2016 computing in cardiology conference (CinC). IEEE; 2016. p. 897–900. Agostinelli A, Palmieri F, Biagini A, Sbrollini A, Burattini L, Di Nardo F, et al. Relationship between deceleration areas in the second stage of labor and neonatal acidemia. In: 2016 computing in cardiology conference (CinC). IEEE; 2016. p. 897–900.
37.
go back to reference Ferrario M, Aletti F, Baselli G, Signorini MG, Cerutti S. Heart rate variability analysis for the monitoring of fetal distress and neonatal critical care. Heart rate variability (HRV) signal analysis clinical applications. Press; 2012. p. 24. Ferrario M, Aletti F, Baselli G, Signorini MG, Cerutti S. Heart rate variability analysis for the monitoring of fetal distress and neonatal critical care. Heart rate variability (HRV) signal analysis clinical applications. Press; 2012. p. 24.
Metadata
Title
Investigating the interpretability of fetal status assessment using antepartum cardiotocographic records
Authors
Liting Huang
Zhiying Jiang
Ruichu Cai
Li Li
Qinqun Chen
Jiaming Hong
Zhifeng Hao
Hang Wei
Publication date
01-12-2021
Publisher
BioMed Central
Published in
BMC Medical Informatics and Decision Making / Issue 1/2021
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/s12911-021-01714-4

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