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Machine-learning prediction of unplanned 30-day rehospitalization using the French hospital medico-administrative database

机译:使用法国医院Medico-Accoundation数据库的无计划30天再生的机器学习预测

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Predicting unplanned rehospitalizations has traditionally employed logistic regression models. Machine learning (ML) methods have been introduced in health service research and may improve the prediction of health outcomes. The objective of this work was to develop a ML model to predict 30-day all-cause rehospitalizations based on the French hospital medico-administrative database. This was a retrospective cohort study of all discharges in the year 2015 from acute-care inpatient hospitalizations in a tertiary-care university center comprising 4 French hospitals. The study endpoint was unplanned 30-day all-cause rehospitalization. Logistic regression (LR), classification and regression trees (CART), random forest (RF), gradient boosting (GB), and neural networks (NN) were applied to the collected data. The predictive performance of the models was evaluated using the H-measure and the area under the ROC curve (AUC). Our analysis included 118,650 hospitalizations, of which 4127 (3.5%) led to rehospitalizations via emergency departments. The RF model was the most performant model according to the H-measure (0.29) and the AUC (0.79). The performances of the RF, GB and NN models (H-measures ranged from 0.18 to 0. 29, AUC ranged from 0.74 to 0.79) were better than those of the LR model (H-measure = 0.18, AUC = 0.74); all P values .001. In contrast, LR was superior to CART (H-measure = 0.16, AUC = 0.70), P .0001. The use of ML may be an alternative to regression models to predict health outcomes. The integration of ML, particularly the RF algorithm, in the prediction of unplanned rehospitalization may help health service providers target patients at high risk of rehospitalizations and propose effective interventions at the hospital level.
机译:预测无计划的再生活化传统上采用了物流回归模型。机器学习(ML)方法已在卫生服务研究中引入,并可能改善了健康结果的预测。这项工作的目的是开发ML模型,以预测基于法国医院医疗管理数据库的30天全源再次研究。这是2015年全部排放的回顾性队列研究,从包括4个法国医院的第三级护理大学中心中的急性护理住院住院。研究终点是无计划30天的全部导致再次研究。逻辑回归(LR),分类和回归树(推车),随机森林(RF),梯度升压(GB)和神经网络(NN)被应用于收集的数据。使用H型测量和ROC曲线(AUC)下的区域评估模型的预测性能。我们的分析包括118,650个住院治疗,其中4127(3.5%)导致了通过急诊部门的再生活动。 RF模型是根据H型测量(0.29)和AUC(0.79)的最具表现模型。 RF,GB和NN模型的性能(H尺寸范围为0.18至0.29,AUC的范围为0.74至0.79)优于LR模型(H型测量= 0.18,AUC = 0.74);所有p值<.001。相比之下,LR优于推车(H型测量= 0.16,AUC = 0.70),P <.0001。使用M1可以是回归模型的替代方法,以预测健康结果。 ML,特别是RF算法的整合,在预测计划内的再生中,可以帮助健康服务提供商在恢复生物化的高风险中靶向患者,并提出在医院水平的有效干预措施。

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