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首页> 外文期刊>Journal of women’s health >A model for prediction of spontaneous preterm birth in asymptomatic women.
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A model for prediction of spontaneous preterm birth in asymptomatic women.

机译:无症状女性自发性早产的预测模型。

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BACKGROUND: Preterm birth is a complex health problem with social, environmental, behavioral, and genetic determinants of an individual's risk and remains a major challenge in obstetrics. Recent research has caused improvements in predicting preterm birth; however, there is still controversy about the prediction of preterm birth in asymptomatic women. The purpose of this study was to determine if Bayesian filtering can be used in a clinical setting to predict spontaneous preterm birth in asymptomatic women. METHODS: A model of predicting spontaneous preterm birth using PopBayes based on a Bayesian filtering algorithm was developed using a previously collected dataset, then applied to a prospectively collected cohort of asymptomatic women who delivered singleton live newborns at or after 24 weeks of gestation. Cases complicated with major congenital malformations were excluded. RESULTS: The proportion of patients with spontaneous preterm birth was 18.4% (96 of 522) at <37 weeks gestation, 5.4% (28 of 522) at <34 weeks gestation, and 2.7% (14 of 522) at <32 weeks gestation. The match rates with the combination of demographic, clinical, and genetic factors using a Bayesian filtering method (PopBayes) were higher than the match rates using demographic and clinical factors only, including maternal age, maternal body mass index (BMI), prior preterm birth, education, occupation, income, and active and passive smoking. The match rates in preterm delivery before 32 weeks of gestation were higher than the match rates in preterm delivery before 37 and 34 weeks of gestation (94.3% vs. 84.7% and 82.0%, respectively). The negative predictive values for demographic, clinical, and genetic factors in predicting preterm delivery using PopBayes were consistently >90%. CONCLUSIONS: We suggest that Bayesian filtering (PopBayes) is a customizable and useful tool in establishing a model for the prediction of preterm birth.
机译:背景:早产是一个复杂的健康问题,其社会,环境,行为和遗传因素决定着个人的风险,并且仍然是产科的主要挑战。最近的研究在预测早产方面取得了进步。然而,关于无症状妇女早产的预测仍然存在争议。这项研究的目的是确定是否可以在临床环境中使用贝叶斯过滤来预测无症状女性的自然早产。方法:使用先前收集的数据集,使用基于贝叶斯过滤算法的PopBayes预测使用PopBayes自发早产的模型,然后将其应用于预期收集的无症状妇女队列,这些妇女在妊娠24周或之后分娩单胎活产婴儿。排除并发重大先天性畸形的病例。结果:妊娠<37周时自发性早产的患者比例为18.4%(522名中的96名),妊娠<34周时为5.4%(522名中的28名),以及妊娠<32周时为2.7%(522名中的14名) 。使用贝叶斯过滤方法(PopBayes)结合人口统计学,临床和遗传因素的匹配率高于仅使用人口统计学和临床​​因素的匹配率,包括孕产妇年龄,孕产妇体重指数(BMI),早产,教育,职业,收入以及主动和被动吸烟。妊娠32周之前早产的匹配率高于妊娠37周和34周之前早产的匹配率(分别为94.3%比84.7%和82.0%)。使用PopBayes预测早产时,人口统计学,临床和遗传因素的阴性预测值始终> 90%。结论:我们建议贝叶斯过滤(PopBayes)是一种可定制且有用的工具,可用于建立预测早产儿的模型。

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