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Clinical and Cost Impact Analysis of a Novel Prognostic Test for Early Detection of Preterm Birth

机译:早产的新型预后测试的临床和成本影响分析

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Objective The objective of this study was to evaluate the potential impact to the U.S. health care system by adopting a novel test that identifies women at risk for spontaneous preterm birth. Methods A decision-analytic model was developed to assess clinical and cost outcomes over a 1-year period. The use of a prognostic test to predict spontaneous preterm birth in a hypothetical population of women reflective of the U.S. population (predictive arm) was compared with the current baseline rate of spontaneous preterm birth and associated infant morbidity and mortality (baseline care arm). Results In a population of 3,528,593 births, our model predicts a 23.5% reduction in infant mortality (8,300 vs. 6,343 deaths) with use of the novel test. The rate of acute conditions at birth decreased from 11.2 to 8.1%; similarly, the rate of developmental disabilities decreased from 13.2 to 11.5%. The rate of spontaneous preterm birth decreased from 9.8 to 9.1%, a reduction of 23,430 preterm births. Direct medical costs savings was $511.7M (? 2.1%) in the first year of life. Discussion The use of a prognostic test for reducing spontaneous preterm birth is a dominant strategy that could reduce costs and improve outcomes. More research is needed once such a test is available to determine if these results are borne out upon real-world use.
机译:目的本研究的目的是通过采用一种新颖的测试来评估对美国卫生保健系统的潜在影响,该测试可以识别有自发早产风险的妇女。方法建立了决策分析模型,以评估一年内的临床和成本结果。将预后测试用于预测反映美国人口的假设人群中的自然早产情况(预测组)与当前的自然早产率以及相关的婴儿发病率和死亡率(基线护理组)进行了比较。结果在3,528,593例出生的人口中,我们的模型预测,使用新方法可以使婴儿死亡率降低23.5%(8,300比6,343例死亡)。出生时的急性疾病发生率从11.2%下降到8.1%;同样,发育障碍的比例从13.2下降到11.5%。自发性早产率从9.8%降至9.1%,减少了23,430例早产。生命的第一年直接节省的医疗费用为5.117亿美元(2.1%)。讨论使用预后测试来减少自发性早产是一种主要策略,可以降低成本并改善结局。一旦有了这样的测试,就需要进行更多的研究,以确定这些结果是否在实际使用中得到证实。

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