Benka-Coker Wande O, Gale Sara L, Brandt Sylvia J, Balmes John R, Magzamen Sheryl
Department of Environmental and Radiological Health Sciences, Colorado State University, Fort Collins, CO, USA.
Division of Epidemiology, School of Public Health, University of California, Berkeley, CA, USA.
Prev Med Rep. 2018 Feb 8;10:55-61. doi: 10.1016/j.pmedr.2018.02.004. eCollection 2018 Jun.
Community-level approaches for pediatric asthma management rely on locally collected information derived primarily from two sources: claims records and school-based surveys. We combined claims and school-based surveillance data, and examined the asthma-related risk patterns among adolescent students. Symptom data collected from school-based asthma surveys conducted in Oakland, CA were used for case identification and determination of severity levels for students (high and low). Survey data were matched to Medicaid claims data for all asthma-related health care encounters for the year prior to the survey. We then employed recursive partitioning to develop classification trees that identified patterns of demographics and healthcare utilization associated with severity. A total of 561 students had complete matched data; 86.1% were classified as high-severity, and 13.9% as low-severity asthma. The classification tree consisted of eight subsets: three indicating high severity and five indicating low severity. The risk subsets highlighted varying combinations of non-specific demographic and socioeconomic predictors of asthma prevalence, morbidity and severity. For example, the subset with the highest class-prior probability (92.1%) predicted high-severity asthma and consisted of students without prescribed rescue medication, but with at least one in-clinic nebulizer treatment. The predictive accuracy of the tree-based model was approximately 66.7%, with an estimated 91.1% of high-severity cases and 42.3% of low-severity cases correctly predicted. Our analysis draws on the strengths of two complementary datasets to provide community-level information on children with asthma, and demonstrates the utility of recursive partitioning methods to explore a combination of features that convey asthma severity.
理赔记录和学校调查。我们将理赔数据和学校监测数据相结合,研究了青少年学生中与哮喘相关的风险模式。从加利福尼亚州奥克兰市开展的学校哮喘调查中收集的症状数据用于病例识别和学生严重程度(高和低)的判定。调查数据与调查前一年所有与哮喘相关的医疗保健就诊的医疗补助理赔数据进行匹配。然后,我们采用递归划分法来构建分类树,以识别与严重程度相关的人口统计学和医疗保健利用模式。共有561名学生拥有完整的匹配数据;86.1%被归类为高严重度哮喘,13.9%为低严重度哮喘。分类树由八个子集组成:三个表明高严重度,五个表明低严重度。这些风险子集突出了哮喘患病率、发病率和严重程度的非特定人口统计学和社会经济预测因素的不同组合。例如,具有最高先验概率(92.1%)的子集预测为高严重度哮喘,该子集中的学生没有处方急救药物,但至少有一次诊所雾化治疗。基于树的模型的预测准确率约为66.7%,估计正确预测了91.1%的高严重度病例和42.3%的低严重度病例。我们的分析利用了两个互补数据集的优势,以提供有关哮喘儿童的社区层面信息,并证明了递归划分方法在探索传达哮喘严重程度的特征组合方面的效用。