Mesgarpour Mohsen, Chaussalet Thierry, Chahed Salma
HSCMG, Faculty of Science and Technology, University of Westminster, 115 New Cavendish Street, W1W 6UW London, UK.
Int J Med Inform. 2017 Jul;103:65-77. doi: 10.1016/j.ijmedinf.2017.04.010. Epub 2017 Apr 18.
About half of hospital readmissions can be avoided with preventive interventions. Developing decision support tools for identification of patients' emergency readmission risk is an important area of research. Because, it remains unclear how to design features and develop predictive models that can adjust continuously to a fast-changing healthcare system and population characteristics. The objective of this study was to develop a generic ensemble Bayesian risk model of emergency readmission.
We produced a decision support tool that predicts risk of emergency readmission using England's Hospital Episode Statistics inpatient database. Firstly, we used a framework to develop an optimal set of features. Then, a combination of Bayes Point Machine (BPM) models for different cohorts was considered to create an optimised ensemble model, which is stronger than the individual generative and non-linear classifications. The developed Ensemble Risk Model of Emergency Admissions (ERMER) was trained and tested using three time-frames: 1999-2004, 2000-05 and 2004-09, each of which includes about 20% of patients in England during the trigger year.
Comparisons are made for different time-frames, sub-populations, risk cut-offs, risk bands and top risk segments. The precision was 71.6-73.9%, the specificity was 88.3-91.7% and the sensitivity was 42.1-49.2% across different time-frames. Moreover, the Area Under the Curve was 75.9-77.1%.
The decision support tool performed considerably better than the previous modelling approaches, and it was robust and stable with high precision. Moreover, the framework and the Bayesian model allow the model to continuously adjust it to new significant features, different population characteristics and changes in the system.
通过预防性干预措施可避免约一半的医院再入院情况。开发用于识别患者紧急再入院风险的决策支持工具是一个重要的研究领域。因为,目前尚不清楚如何设计特征并开发能够根据快速变化的医疗系统和人群特征持续调整的预测模型。本研究的目的是开发一种通用的集成贝叶斯紧急再入院风险模型。
我们制作了一种决策支持工具,该工具使用英格兰医院事件统计住院患者数据库来预测紧急再入院风险。首先,我们使用一个框架来开发一组最优特征。然后,考虑针对不同队列的贝叶斯点机器(BPM)模型组合,以创建一个优化的集成模型,该模型比单个生成式和非线性分类模型更强。所开发的紧急入院集成风险模型(ERMER)使用三个时间框架进行训练和测试:1999 - 2004年、2000 - 2005年和2004 - 2009年,每个时间框架都包括触发年份英格兰约20%的患者。
对不同时间框架、亚人群、风险临界值、风险区间和最高风险段进行了比较。在不同时间框架内,精确度为71.6 - 73.9%,特异性为88.3 - 91.7%,灵敏度为42.1 - 49.2%。此外,曲线下面积为75.9 - 77.1%。
该决策支持工具的表现明显优于先前的建模方法,并且具有高精度,稳健且稳定。此外,该框架和贝叶斯模型允许模型根据新的重要特征、不同的人群特征和系统变化进行持续调整。