Hurst Jillian H, Zhao Congwen, Hostetler Haley P, Ghiasi Gorveh Mohsen, Lang Jason E, Goldstein Benjamin A
Department of Pediatrics, Division of Infectious Diseases, Duke University School of Medicine, Durham, NC, USA.
Department of Pediatrics, Children's Health and Discovery Initiative, Duke University School of Medicine, Durham, NC, USA.
BMC Med Inform Decis Mak. 2022 Apr 22;22(1):108. doi: 10.1186/s12911-022-01847-0.
Asthma exacerbations are triggered by a variety of clinical and environmental factors, but their relative impacts on exacerbation risk are unclear. There is a critical need to develop methods to identify children at high-risk for future exacerbation to allow targeted prevention measures. We sought to evaluate the utility of models using spatiotemporally resolved climatic data and individual electronic health records (EHR) in predicting pediatric asthma exacerbations.
We extracted retrospective EHR data for 5982 children with asthma who had an encounter within the Duke University Health System between January 1, 2014 and December 31, 2019. EHR data were linked to spatially resolved environmental data, and temporally resolved climate, pollution, allergen, and influenza case data. We used xgBoost to build predictive models of asthma exacerbation over 30-180 day time horizons, and evaluated the contributions of different data types to model performance.
Models using readily available EHR data performed moderately well, as measured by the area under the receiver operating characteristic curve (AUC 0.730-0.742) over all three time horizons. Inclusion of spatial and temporal data did not significantly improve model performance. Generating a decision rule with a sensitivity of 70% produced a positive predictive value of 13.8% for 180 day outcomes but only 2.9% for 30 day outcomes.
EHR data-based models perform moderately wellover a 30-180 day time horizon to identify children who would benefit from asthma exacerbation prevention measures. Due to the low rate of exacerbations, longer-term models are likely to be most clinically useful.
Not applicable.
哮喘急性发作由多种临床和环境因素触发,但其对发作风险的相对影响尚不清楚。迫切需要开发方法来识别未来有急性发作高风险的儿童,以便采取有针对性的预防措施。我们试图评估使用时空分辨气候数据和个人电子健康记录(EHR)的模型在预测儿童哮喘急性发作方面的效用。
我们提取了2014年1月1日至2019年12月31日期间在杜克大学医疗系统就诊的5982名哮喘儿童的回顾性EHR数据。EHR数据与空间分辨环境数据以及时间分辨气候、污染、过敏原和流感病例数据相关联。我们使用xgBoost构建了30至180天时间范围内哮喘急性发作的预测模型,并评估了不同数据类型对模型性能的贡献。
使用现成EHR数据的模型表现中等,在所有三个时间范围内,通过接受者操作特征曲线下面积(AUC 0.730 - 0.742)来衡量。纳入空间和时间数据并未显著提高模型性能。生成灵敏度为70%的决策规则,对于180天的结果,阳性预测值为13.8%,但对于30天的结果仅为2.9%。
基于EHR数据的模型在30至180天的时间范围内表现中等,能够识别出将从哮喘急性发作预防措施中受益的儿童。由于急性发作率较低,长期模型可能在临床上最有用。
不适用。