Leary Jana C, Price Lori Lyn, Scott Cassandra E R, Kent David, Wong John B, Freund Karen M
Department of Pediatrics, Floating Hospital for Children,
Institute for Clinical Research and Health Policy Studies, Tufts Medical Center, Boston, Massachusetts; and.
Hosp Pediatr. 2019 Mar;9(3):201-208. doi: 10.1542/hpeds.2018-0174.
To target interventions to prevent readmission, we sought to develop clinical prediction models for 30-day readmission among children with complex chronic conditions (CCCs).
After extracting sociodemographic and clinical characteristics from electronic health records for children with CCCs admitted to an academic medical center, we constructed a multivariable logistic regression model to predict readmission from characteristics obtainable at admission and then a second model adding hospitalization and discharge variables to the first model. We assessed model performance using c-statistic and calibration curves and internal validation using bootstrapping. We then created readmission risk scoring systems from final model β-coefficients.
Of the 2296 index admissions involving children with CCCs, 188 (8.2%) had unplanned 30-day readmissions. The model with admission characteristics included previous admissions, previous emergency department visits, number of CCC categories, and medical versus surgical admission (c-statistic 0.65). The model with hospitalization and discharge factors added discharge disposition, length of stay, and weekday discharge to the admission variables (c-statistic 0.67). Bootstrap samples had similar c-statistics, and slopes did not suggest significant overfitting for either model. Readmission risk was 3.6% to 4.9% in the lowest risk quartile versus 15.9% to 17.6% in the highest risk quartile (or 3.6-4.5 times higher) for both models.
Clinical variables related to the degree of medical complexity and illness severity can stratify children with CCCs into groups with clinically meaningful differences in the risk of readmission. Future research will explore whether these models can be used to target interventions and resources aimed at decreasing readmissions.
为了确定预防再入院的干预措施,我们试图为患有复杂慢性病(CCC)的儿童构建30天再入院的临床预测模型。
从一家学术医疗中心收治的患有CCC的儿童的电子健康记录中提取社会人口统计学和临床特征后,我们构建了一个多变量逻辑回归模型,以根据入院时可获得的特征预测再入院情况,然后在第一个模型中加入住院和出院变量构建第二个模型。我们使用c统计量和校准曲线评估模型性能,并使用自抽样法进行内部验证。然后,我们根据最终模型的β系数创建了再入院风险评分系统。
在涉及患有CCC的儿童的2296次首次入院中,188例(8.2%)出现了非计划的30天再入院。包含入院特征的模型包括既往入院史、既往急诊科就诊史、CCC类别数量以及内科与外科入院情况(c统计量为0.65)。加入住院和出院因素的模型在入院变量的基础上增加了出院处置方式、住院时间和工作日出院情况(c统计量为0.67)。自抽样样本的c统计量相似,且斜率表明两个模型均未出现明显的过度拟合。两个模型中,最低风险四分位数的再入院风险为3.6%至4.9%,而最高风险四分位数的再入院风险为15.9%至17.6%(或高出3.6 - 4.5倍)。
与医疗复杂性和疾病严重程度相关的临床变量可以将患有CCC的儿童分层为再入院风险存在临床显著差异的组。未来的研究将探讨这些模型是否可用于针对旨在减少再入院的干预措施和资源。