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首页> 外文期刊>British Journal of Haematology >Machine-learning algorithms for predicting hospital re-admissions in sickle cell disease
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Machine-learning algorithms for predicting hospital re-admissions in sickle cell disease

机译:用于预测医院重新入学镰状细胞病的机器学习算法

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Reducing preventable hospital re-admissions in Sickle Cell Disease (SCD) could potentially improve outcomes and decrease healthcare costs. In a retrospective study of electronic health records, we hypothesized Machine-Learning (ML) algorithms may outperform standard re-admission scoring systems (LACE and HOSPITAL indices). Participants (n = 446) included patients with SCD with at least one unplanned inpatient encounter between January 1, 2013, and November 1, 2018. Patients were randomly partitioned into training and testing groups. Unplanned hospital admissions (n = 3299) were stratified to training and testing samples. Potential predictors (n = 486), measured from the last unplanned inpatient discharge to the current unplanned inpatient visit, were obtained via both data-driven methods and clinical knowledge. Three standard ML algorithms, Logistic Regression (LR), Support-Vector Machine (SVM), and Random Forest (RF) were applied. Prediction performance was assessed using the C-statistic, sensitivity, and specificity. In addition, we reported the most important predictors in our best models. In this dataset, ML algorithms outperformed LACE [C-statistic 0.6, 95% Confidence Interval (CI) 0.57-0.64] and HOSPITAL (C-statistic 0.69, 95% CI 0.66-0.72), with the RF (C-statistic 0.77, 95% CI 0.73-0.79) and LR (C-statistic 0.77, 95% CI 0.73-0.8) performing the best. ML algorithms can be powerful tools in predicting re-admission in high-risk patient groups.
机译:减少镰状细胞疾病(SCD)的可预防医院重新入院可能会改善结果并降低医疗费用。在回顾性的电子健康记录研究中,我们假设机器学习(ML)算法可能会优越标准的重新入场评分系统(花边和医院指数)。参与者(n = 446)包括SCD的患者,2013年1月1日至2018年1月1日至2018年11月1日之间至少有一个无计划的住院患者。患者被随机分配到培训和测试组中。无计划的医院入学(n = 3299)分类为培训和测试样品。通过数据驱动的方法和临床知识获得从最后一计划的住院病人放电到当前无计预计的住院病人访问的潜在预测因子(n = 486)。应用了三种标准ML算法,逻辑回归(LR),支持矢量机(SVM)和随机林(RF)。使用C统计,灵敏度和特异性评估预测性能。此外,我们报告了我们最好的模型中最重要的预测因子。在该数据集中,ML算法优于表现优于蕾丝[C型统计0.6,95%置信区间(CI)0.57-0.64]和医院(C型统计0.69,95%CI 0.66-0.72),具有RF(C级0.77, 95%CI 0.73-0.79)和LR(C型统计0.77,95%CI 0.73-0.8)表现最佳。 ML算法可以是预测高风险患者组的重新入场的强大工具。

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