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Data mining methods find demographic predictors of preterm birth.

机译:数据挖掘方法可以找到早产的人口统计学预测因子。

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BACKGROUND: Preterm births in the United States increased from 11.0% to 11.4% between 1996 and 1997; they continue to be a complex healthcare problem in the United States. OBJECTIVE: The objective of this research was to compare traditional statistical methods with emerging new methods called data mining or knowledge discovery in databases in identifying accurate predictors of preterm births. METHOD: An ethnically diverse sample (N = 19,970) of pregnant women provided data (1,622 variables) for new methods of analysis. Preterm birth predictors were evaluated using traditional statistical and newer data mining analyses. RESULTS: Seven demographic variables (maternal age and binary coding for county of residence, education, marital status, payer source, race, and religion) yielded a .72 area under the curve using Receiving Operating Characteristic curves to test predictive accuracy. The addition of hundreds of other variables added only a .03 to the area under the curve. CONCLUSION: Similar results across data mining methods suggest that results are data-driven and not method-dependent, and that demographic variables offer a small set of parsimonious variables with reasonable accuracy in predicting preterm birth outcomes in a racially diverse population.
机译:背景:1996年至1997年间,美国早产从11.0%增加到11.4%。在美国,它们仍然是一个复杂的医疗保健问题。目的:本研究的目的是比较传统的统计方法与新兴的新方法,即数据库中的数据挖掘或知识发现,以识别早产的准确预测指标。方法:不同种族的孕妇样本(N = 19,970)为新的分析方法提供了数据(1,622个变量)。使用传统的统计和较新的数据挖掘分析对早产预测因子进行评估。结果:七个人口统计学变量(产妇年龄和居住县,教育程度,婚姻状况,付款人来源,种族和宗教的二进制编码)使用“接收工作特征曲线”测试预测准确性,得出曲线下的.72面积。加上数百个其他变量,曲线下的面积仅增加了0.03。结论:各种数据挖掘方法的相似结果表明,结果是数据驱动的,而不是方法依赖的;人口统计学变量提供了少量的简约变量,在预测种族多样化人群的早产结局方面具有合理的准确性。

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