Predicting the Risk of Adverse Events in Pregnant Women With Congenital Heart Disease

Author:

Chu Ran1ORCID,Chen Wei2ORCID,Song Guangmin3,Yao Shu1ORCID,Xie Lin1ORCID,Song Li1ORCID,Zhang Yue1ORCID,Chen Lijun1,Zhang Xiangli1,Ma Yuyan1,Luo Xia1,Liu Yuan1,Sun Ping1,Zhang Shuquan1,Fang Yan1,Dong Taotao1,Zhang Qing1,Peng Jin1,Zhang Lu1,Wei Yuan1,Zhang Wenxia1,Su Xuantao2,Qiao Xu2ORCID,Song Kun1ORCID,Yang Xingsheng1,Kong Beihua1

Affiliation:

1. Department of Obstetrics and Gynecology Qilu Hospital Cheeloo College of Medicine Shandong University Jinan Shandong China

2. School of Control Science and Engineering Shandong University Jinan Shandong China

3. Department of Cardiovascular Surgery Qilu Hospital Cheeloo College of Medicine Shandong University Jinan Shandong China

Abstract

Background Women with congenital heart disease are considered at high risk for adverse events. Therefore, we aim to establish 2 prediction models for mothers and their offspring, which can predict the risk of adverse events occurred in pregnant women with congenital heart disease. Methods and Results A total of 318 pregnant women with congenital heart disease were included; 213 women were divided into the development cohort, and 105 women were divided into the validation cohort. Least absolute shrinkage and selection operator was used for predictor selection. After validation, multivariate logistic regression analysis was used to develop the model. Machine learning algorithms (support vector machine, random forest, AdaBoost, decision tree, k‐nearest neighbor, naïve Bayes, and multilayer perceptron) were used to further verify the predictive ability of the model. Forty‐one (12.9%) women experienced adverse maternal events, and 93 (29.2%) neonates experienced adverse neonatal events. Seven high‐risk factors were discovered in the maternal model, including New York Heart Association class, Eisenmenger syndrome, pulmonary hypertension, left ventricular ejection fraction, sinus tachycardia, arterial blood oxygen saturation, and pregnancy duration. The machine learning–based algorithms showed that the maternal model had an accuracy of 0.76 to 0.86 (area under the receiver operating characteristic curve=0.74–0.87) in the development cohort, and 0.72 to 0.86 (area under the receiver operating characteristic curve=0.68–0.80) in the validation cohort. Three high‐risk factors were discovered in the neonatal model, including Eisenmenger syndrome, preeclampsia, and arterial blood oxygen saturation. The machine learning–based algorithms showed that the neonatal model had an accuracy of 0.75 to 0.80 (area under the receiver operating characteristic curve=0.71–0.77) in the development cohort, and 0.72 to 0.79 (area under the receiver operating characteristic curve=0.69–0.76) in the validation cohort. Conclusions Two prenatal risk assessment models for both adverse maternal and neonatal events were established, which might assist clinicians in tailoring precise management and therapy in pregnant women with congenital heart disease.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Cardiology and Cardiovascular Medicine

Cited by 28 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Pregnancy in women with congenital heart disease: New insights into neonatal risk prediction;American Heart Journal;2024-07

2. An early screening model for preeclampsia: utilizing zero-cost maternal predictors exclusively;Hypertension Research;2024-02-07

3. Innovative Models for Integrative Prenatal Care;BRAIN. Broad Research in Artificial Intelligence and Neuroscience;2024-02-06

4. Artificial intelligence and cardiovascular disease in women;Intelligence-Based Cardiology and Cardiac Surgery;2024

5. The smart earlier prediction of conginental heart disease in pregnancy using deep learning model;2023 IEEE Technology & Engineering Management Conference - Asia Pacific (TEMSCON-ASPAC);2023-12-14

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