早期预测妊娠高血压疾病,实现预防性早期干预

Satoshi Mizuno PhD , Satoshi Nagaie PhD , Junichi Sugawara MD, PhD , Gen Tamiya PhD , Taku Obara PhD , Mami Ishikuro PhD , Shinichi Kuriyama MD, PhD , Nobuo Yaegashi MD, PhD , Hiroshi Tanaka PhD , Masayuki Yamamoto MD, PhD , Soichi Ogishima PhD
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引用次数: 0

摘要

背景利用电子健康记录的广泛应用,人们开发出了各种疾病预测模型,但在非传染性疾病发展过程中起重要作用的环境因素却很少被纳入预测模型。妊娠高血压疾病是导致孕产妇发病和死亡的主要原因,而且已知会在以后的生活中引起多种严重并发症。研究设计我们利用东北医疗大数据库出生和三代队列研究中约 23,000 例妊娠的早期妊娠数据,开发了用于早期预测妊娠高血压疾病的机器学习和人工智能模型。根据可解释的人工智能模型(即逻辑回归模型、随机森林模型和 XGBoost 模型)的回归系数或基尼系数,明确了所开发模型的重要预测特征。在早期预测模型中,表现最好的模型是基于妊娠早期(填表时平均孕周为 20.2)的自我报告问卷数据,其中包括全面的生活方式。对模型的解释表明,两种饮食习惯对预测都非常重要。 结论我们利用东北医学巨型数据库项目的大规模队列数据,建立了高性能的妊娠早期高血压疾病预测模型。我们的研究清楚地表明,利用自我报告问卷中的综合生活方式,我们可以在妊娠早期预测妊娠期高血压疾病的风险,这将有助于早期干预,降低妊娠期高血压疾病的风险。
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Early prediction of hypertensive disorders of pregnancy toward preventive early intervention

Background

Various disease prediction models have been developed, capitalizing on the wide use of electronic health records, but environmental factors that are important in the development of noncommunicable diseases are rarely included in the prediction models. Hypertensive disorders of pregnancy are leading causes of maternal morbidity and mortality and are known to cause several serious complications later in life.

Objective

This study aims to develop early hypertensive disorders of pregnancy prediction models using comprehensive environmental factors based on self-report questionnaires in early pregnancy.

Study Design

We developed machine learning and artificial intelligence models for the early prediction of hypertensive disorders of pregnancy using early pregnancy data from approximately 23,000 pregnancies in the Tohoku Medical Megabank Birth and Three Generation Cohort Study. We clarified the important features for prediction based on regression coefficients or Gini coefficients of the interpretable artificial intelligence models (i.e., logistic regression, random forest and XGBoost models) among our developed models.

Results

The performance of the early hypertensive disorders of pregnancy prediction models reached an area under the receiver operating characteristic curve of 0.93, demonstrating that the early hypertensive disorders of pregnancy prediction models developed in this study retain sufficient performance in hypertensive disorders of pregnancy prediction. Among the early prediction models, the best performing model was based on self-reported questionnaire data in early pregnancy (mean of 20.2 gestational weeks at filling) which consist of comprehensive lifestyles. The interpretation of the models reveals that both eating habits were dominantly important for prediction.

Conclusion

We have developed high-performance models for early hypertensive disorders of pregnancy prediction using large-scale cohort data from the Tohoku Medical Megabank project. Our study clearly revealed that the use of comprehensive lifestyles from self-report questionnaires led us to predict hypertensive disorders of pregnancy risk at the early stages of pregnancy, which will aid early intervention to reduce the risk of hypertensive disorders of pregnancy.
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来源期刊
AJOG global reports
AJOG global reports Endocrinology, Diabetes and Metabolism, Obstetrics, Gynecology and Women's Health, Perinatology, Pediatrics and Child Health, Urology
CiteScore
1.20
自引率
0.00%
发文量
0
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