Samuels-Kalow Margaret E, Bryan Matthew W, Sommers Marilyn Sawyer, Zorc Joseph J, Camargo Carlos A, Mollen Cynthia
From the Department of Emergency Medicine, Massachusetts General Hospital, Harvard Medical School, Boston, MA.
Department of Biostatistics and Epidemiology, University of Pennsylvania Perelman School of Medicine.
Pediatr Emerg Care. 2020 Feb;36(2):e85-e89. doi: 10.1097/PEC.0000000000001866.
Asthma is the most common chronic condition among children with high-frequency emergency department (ED) utilization. Previous research has shown in outpatients seen for asthma that acute care visits predict subsequent health care utilization. Among ED patients, however, the optimal method of predicting subsequent ED utilization remains to be described. The goal of this study was to create a predictive model to identify children in the ED who are at risk of subsequent high-frequency utilization of the ED for asthma.
We used 3 years of data, 2013-2015, drawn from the electronic health records at a tertiary care, urban, children's hospital that is a high-volume center for asthma care. Data were split into a derivation (50%) and validation/test (50%) set, and 3 models were created for testing: (1) all index patients; (2) removing patients with complex chronic conditions; and (3) subset of patients with in-network care on whom more clinical data were available. Each multivariable model was then tested in the validation set, and its performance evaluated by predicting error rate, calculation of a receiver operating characteristic (ROC) curve, and identification of the optimal cutpoint to maximize sensitivity and specificity.
There were 5535 patients with index ED visits, of whom 2767 were in the derivation set and 2768 in the validation set. Of the 5535 patients, 125 patients (2.3%) had 4 or more visits for asthma in the outcome year. Significant predictors in models 1 and 2 were age and number of prior ED visits for asthma. For model 3 (additional clinical information available), the predictors were number of prior ED visits for asthma, number of primary care visits, and not having a controller medication. Areas under the ROC curve were 0.77 for model 1, 0.80 for model 2, and 0.77 for model 3.
Administrative data available at the time of ED triage can predict subsequent high utilization of the ED, with areas under the ROC curve of 0.77 to 0.80. The addition of clinical variables did not improve the model performance. These models provide useful tools for researchers interested in examining intervention efficacy by predicted risk group.
哮喘是急诊室(ED)高频率就诊儿童中最常见的慢性病。先前的研究表明,在因哮喘就诊的门诊患者中,急性护理就诊可预测随后的医疗保健利用情况。然而,在急诊患者中,预测随后急诊利用情况的最佳方法仍有待描述。本研究的目的是创建一个预测模型,以识别急诊室中存在随后因哮喘而高频率利用急诊室风险的儿童。
我们使用了2013 - 2015年3年的数据,这些数据来自一家三级医疗、城市儿童医院的电子健康记录,该医院是哮喘护理的高流量中心。数据被分为一个推导集(50%)和一个验证/测试集(50%),并创建了3个模型进行测试:(1)所有索引患者;(2)排除患有复杂慢性病的患者;(3)有网络内护理且可获得更多临床数据的患者子集。然后在验证集中测试每个多变量模型,并通过预测错误率、计算受试者工作特征(ROC)曲线以及确定使敏感性和特异性最大化的最佳切点来评估其性能。
有5535例患者进行了索引急诊就诊,其中2767例在推导集中,2768例在验证集中。在这5535例患者中,125例(2.3%)在结果年因哮喘就诊4次或更多次。模型1和2中的显著预测因素是年龄和先前因哮喘的急诊就诊次数。对于模型3(可获得额外临床信息),预测因素是先前因哮喘的急诊就诊次数、初级保健就诊次数以及未使用控制药物。模型1的ROC曲线下面积为0.77,模型2为0.80,模型3为0.77。
急诊分诊时可用的管理数据可以预测随后急诊的高利用率,ROC曲线下面积为0.77至0.80。添加临床变量并未改善模型性能。这些模型为有兴趣通过预测风险组检查干预效果的研究人员提供了有用的工具。