低资源环境下死产和新生儿死亡率的风险预测。

Vivek V Shukla, Waldemar A Carlo
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引用次数: 1

摘要

高死产和新生儿死亡率是主要的公共卫生问题,特别是在低收入和中等收入国家资源匮乏的环境中。尽管在过去的几十年里,国家和国际组织做出了持续的努力,但优质的分娩和新生儿护理并不是普遍可用的,特别是在这些资源匮乏的环境中。一些研究确定了中低收入国家低资源环境中不良围产期结局的危险因素。这篇综述强调了死产和新生儿死亡风险预测的证据。基于中低收入国家低资源环境数据建立的先进机器学习统计模型的证据表明,使用产前和产前数据预测产时死产和新生儿死亡率的准确性较低。具有分娩和产后数据的模型对新生儿死亡风险具有良好的预测准确性。出生体重是新生儿死亡率最重要的预测指标。在其他低资源环境中进一步验证和测试这些模型,以及随后开发和测试可能的干预措施,可以推动该领域的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Risk Prediction for Stillbirth and Neonatal Mortality in Low-resource Settings.

Risk Prediction for Stillbirth and Neonatal Mortality in Low-resource Settings.
High stillbirth and neonatal mortality are major public health problems, particularly in low-resource settings in low- and middle-income countries (LMIC). Despite sustained efforts by national and international organizations over the last several decades, quality intrapartum and neonatal care is not universally available, especially in these low-resource settings. A few studies identify risk factors for adverse perinatal outcomes in low-resource settings in LMICs. This review highlights the evidence of risk prediction for stillbirth and neonatal death. Evidence using advanced machine-learning statistical models built on data from low-resource settings in LMICs suggests that the predictive accuracy for intrapartum stillbirth and neonatal mortality using prenatal and pre-delivery data is low. Models with delivery and post-delivery data have good predictive accuracy of the risk for neonatal mortality. Birth weight is the most important predictor of neonatal mortality. Further validation and testing of the models in other low-resource settings and subsequent development and testing of possible interventions could advance the field.
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