Predictive Medicine Group, Computational Health Informatics Program and
Division of Emergency Medicine, Department of Medicine, Boston Children's Hospital, Boston, Massachusetts; and.
Pediatrics. 2017 May;139(5). doi: 10.1542/peds.2016-2785.
Emergency departments (EDs) in the United States are overcrowded and nearing a breaking point. Alongside ever-increasing demand, one of the leading causes of ED overcrowding is the boarding of hospitalized patients in the ED as they await bed placement. We sought to develop a model for early prediction of hospitalizations, thus enabling an earlier start for the placement process and shorter boarding times.
We conducted a retrospective cohort analysis of all visits to the Boston Children's Hospital ED from July 1, 2014 to June 30, 2015. We used 50% of the data for model derivation and the remaining 50% for validation. We built the predictive model by using a mixed method approach, running a logistic regression model on results generated by a naive Bayes classifier. We performed sensitivity analyses to evaluate the impact of the model on overall resource utilization.
Our analysis comprised 59 033 patient visits, of which 11 975 were hospitalized (cases) and 47 058 were discharged (controls). Using data available within the first 30 minutes from presentation, our model identified 73.4% of the hospitalizations with 90% specificity and 35.4% of hospitalizations with 99.5% specificity (area under the curve = 0.91). Applying this model in a real-time setting could potentially save the ED 5917 hours per year or 30 minutes per hospitalization.
This approach can accurately predict patient hospitalization early in the ED encounter by using data commonly available in most electronic medical records. Such early identification can be used to advance patient placement processes and shorten ED boarding times.
美国的急诊部门(ED)人满为患,已接近崩溃边缘。除了需求不断增加之外,导致 ED 过度拥挤的主要原因之一是,住院患者在等待床位安置时在 ED 中滞留。我们试图开发一种模型,以便对住院进行早期预测,从而更早地开始安置过程并缩短滞留时间。
我们对 2014 年 7 月 1 日至 2015 年 6 月 30 日期间波士顿儿童医院 ED 的所有就诊进行了回顾性队列分析。我们使用数据的 50%进行模型推导,其余 50%用于验证。我们使用混合方法构建预测模型,在基于朴素贝叶斯分类器生成的结果上运行逻辑回归模型。我们进行了敏感性分析,以评估该模型对整体资源利用的影响。
我们的分析包括 59033 例患者就诊,其中 11975 例住院(病例),47058 例出院(对照)。使用就诊后 30 分钟内可获得的数据,我们的模型以 90%的特异性识别出 73.4%的住院患者,以 99.5%的特异性识别出 35.4%的住院患者(曲线下面积 = 0.91)。在实时环境中应用该模型每年可节省 ED 5917 小时或每例住院 30 分钟。
这种方法可以通过使用大多数电子病历中通常可用的数据,在 ED 就诊早期准确预测患者住院情况。这种早期识别可用于推进患者安置流程并缩短 ED 滞留时间。