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首页> 外文期刊>Annals of epidemiology >Application of machine-learning to predict early spontaneous preterm birth among nulliparous non-Hispanic black and white women
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Application of machine-learning to predict early spontaneous preterm birth among nulliparous non-Hispanic black and white women

机译:机器学习在零纯属黑白女性中预测早期自发早产的应用

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PurposeSpontaneous preterm birth is a leading cause of perinatal mortality in the United States, occurring disproportionately among non-Hispanic black women compared to other race-ethnicities. Clinicians lack tools to identify first-time mothers at risk for spontaneous preterm birth. This study assessed prediction of early (<32?weeks) spontaneous preterm birth among non-Hispanic black and white women by applying state-of-the-art machine-learning to multilevel data from a large birth cohort. MethodsData from birth certificate and hospital discharge records for 336,214 singleton births to nulliparous women in California from 2007 to 2011 were used in cross-validated regressions, with multiple imputation for missing covariate data. Residential census tract information was overlaid for 281,733 births. Prediction was assessed with areas under the receiver operator characteristic curves (AUCs). ResultsCross-validated AUCs were low (0.62 [min?=?0.60, max?=?0.63] for non-Hispanic blacks and 0.63 [min?=?0.61, max?=?0.65] for non-Hispanic whites). Combining racial-ethnic groups improved prediction (cross-validated AUC?=?0.67 [min?=?0.65, max?=?0.68]), approaching what others have achieved using biomarkers. Census tract-level information did not improve prediction. ConclusionsThe resolution of administrative data was inadequate to precisely predict individual risk for early spontaneous preterm birth despite the use of advanced statistical methods.
机译:目的是出生是美国围产期死亡率的主要原因,与其他种族民族相比,非西班牙裔女性不成比例地发生。临床医生缺乏工具,以确定有危险的自发早产风险的首次母亲。本研究通过将最先进的机器学习应用于来自大型出生队列的多级数据,评估了非西班牙裔黑白女性的早期(<32?周)自发早产的预测。方法从出生证和医院出场记录为336,214次出生记录,从2007年到2011年从加利福尼亚州的禁止妇女进行了交叉验证的回归,具有多重丢失的协变量数据。住宅人口普查道信息覆盖了281,733个诞生。在接收器操作员特征曲线(AUCS)下的区域评估预测。非西班牙裔黑人和0.63 [min?= 0.60,最大?= 0.63]的结果验证的AUC(0.62 [min?= 0.60,最大?0.61,最大?0.65]用于非西班牙裔怀特,为非西班牙裔人,0.62 [min?= 0.60,max = 0.63])。组合种族群体改进预测(交叉验证的AUC?=?0.67 [min?=?0.65,Max?0.68]),接近使用别人使用生物标志物实现的内容。人口普查派级信息没有改善预测。结论,尽管使用先进的统计方法,但仍然不足以预先预测早期自发早产的个体风险。

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