使用随机森林决策树方法识别英国千禧年队列中早产的风险因素

IF 1.1 Q4 OBSTETRICS & GYNECOLOGY Reproductive medicine (Basel, Switzerland) Pub Date : 2022-12-09 DOI:10.3390/reprodmed3040025
D. Waynforth
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摘要

先前对早产原因的研究倾向于关注病理生理过程,同时承认社会经济指标的作用。本研究从妊娠期的病理生理和进化生命史角度探讨了可能与早产相关的广泛因素。为了实现这一点,将机器学习集成分类数据分析方法随机森林(RF)应用于英国千禧年队列(18201名新生儿)。研究结果强调了社会经济变量和父母年龄在预测早产(37周前)和极早产(32周前)中的重要性。出生在低收入家庭和父亲年轻的婴儿发生极早产和早产的风险增加。没有发现孕妇健康和妊娠期健康问题是有用的预测因素。性能最好的算法适用于极早产,使用六个变量具有93%的敏感性和100%的特异性。预测37周前早产的算法显示错误增加,袋外错误率约为7%,而预测极早产的算法仅为1%。预测早产至妊娠37周的算法性能较差,这表明一些早产可能不是由与母亲健康状况不佳或社会或经济劣势有关的病理学引起的,而是代表了正常的生活史变化。
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Identifying Risk Factors for Premature Birth in the UK Millennium Cohort Using a Random Forest Decision-Tree Approach
Prior research on causes of preterm birth has tended to focus on pathophysiological processes while acknowledging the role of socioeconomic indicators. The present research explored a wide range of factors plausibly associated with preterm birth informed by pathophysiological and evolutionary life history perspectives on gestation length. To achieve this, a machine learning ensemble classification data analysis approach, random forest (RF), was applied to the UK Millennium Cohort (18,201 births). The results highlighted the importance of socioeconomic variables and parental age in predicting preterm (before 37 completed weeks) and very preterm (before 32 weeks) birth. Infants born in households with low income and with young fathers had an increased risk of both very preterm and preterm birth. Maternal health and health problems during pregnancy were not found to be useful predictors. The best-performing algorithm was for very preterm birth and had 93% sensitivity and 100% specificity using six variables. Algorithms predicting preterm birth before 37 weeks showed increased error, with out-of-bag error rates of about 7% versus only 1% for those predicting very preterm birth. The poorer performance of algorithms predicting preterm births to 37 weeks of gestation suggests that some preterm birth may not result from pathology related to poor maternal health or social or economic disadvantage, but instead represents normal life-history variation.
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