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Using Electronic Health Records and Machine Learning to Predict Postpartum ' Depression

机译:使用电子健康记录和机器学习预测产后的抑郁症

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Postpartum depression (PPD) is one of the most frequent maternal morbidities after delivery with serious implications. Currently, there is a lack of effective screening strategies and high-quality clinical trials. The ability to leverage a large amount of detailed patient data from electronic health records (EHRs) to predict PPD could enable the implementation of effective clinical decision support interventions. To develop a PPD prediction model, using EHRs from Weill Cornell Medicine and NewYork-Presbyterian Hospital between 2015–17, 9,980 episodes of pregnancy were identified. Six machine learning algorithms, including L2-regularized Logistic Regression, Support Vector Machine, Decision Tree, Na?ve Bayes, XGBoost, and Random forest were constructed. Our model’s best prediction performance achieved an AUC of 0.79. Race, obesity, anxiety, depression, different types of pain, antidepressants, and anti-inflammatory drugs during pregnancy were among the significant predictors. Our results suggest a potential for applying machine learning to EHR data to predict PPD and inform healthcare delivery.
机译:产后抑郁症(PPD)是递送严重影响后最常见的母体生命之一。目前,缺乏有效的筛查策略和高质量的临床试验。能够利用来自电子健康记录(EHRS)的大量详细患者数据来预测PPD可以实现有效的临床决策支持干预。为了开发PPD预测模型,2015-17之间的韦尔康奈尔医学和纽约高峰医院的EHRS鉴定了9,980集。六种机器学习算法,包括L2-正则化物流回归,支持向量机,决策树,Na?ve Bayes,XGBoost和随机林。我们的模型最佳预测性能达到了0.79的AUC。妊娠期间,妊娠,肥胖,抑郁症,不同类型的疼痛,抗抑郁药和抗炎药都是重要的预测因子。我们的结果表明,将机器学习应用于EHR数据的可能性,以预测PPD并告知医疗保健交付。

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