Nicklaus Children's Research Institute,
Nicklaus Children's Health System, Miami, Florida; and.
Hosp Pediatr. 2020 Mar;10(3):246-256. doi: 10.1542/hpeds.2019-0241.
Accurately predicting and reducing risk of unplanned readmissions (URs) in pediatric care remains difficult. We sought to develop a set of accurate algorithms to predict URs within 3, 7, and 30 days of discharge from inpatient admission that can be used before the patient is discharged from a current hospital stay.
We used the Children's Hospital Association Pediatric Health Information System to identify a large retrospective cohort of 1 111 323 children with 1 321 376 admissions admitted to inpatient care at least once between January 1, 2016, and December 31, 2017. We used gradient boosting trees (XGBoost) to accommodate complex interactions between these predictors.
In the full cohort, 1.6% of patients had at least 1 UR in 3 days, 2.4% had at least 1 UR in 7 days, and 4.4% had at least 1 UR within 30 days. Prediction model discrimination was strongest for URs within 30 days (area under the curve [AUC] = 0.811; 95% confidence interval [CI]: 0.808-0.814) and was nearly identical for UR risk prediction within 3 days (AUC = 0.771; 95% CI: 0.765-0.777) and 7 days (AUC = 0.778; 95% CI: 0.773-0.782), respectively. Using these prediction models, we developed a publicly available pediatric readmission risk scores prediction tool that can be used before or during discharge planning.
Risk of pediatric UR can be predicted with information known before the patient's discharge and that is easily extracted in many electronic medical record systems. This information can be used to predict risk of readmission to support hospital-discharge-planning resources.
准确预测和降低儿科患者住院后未计划再入院(UR)的风险仍然具有挑战性。我们试图开发一组准确的算法,以预测患者从当前住院期间出院后 3、7 和 30 天内的 UR,这些算法可以在患者出院前使用。
我们使用儿童保健协会儿科健康信息系统(Children's Hospital Association Pediatric Health Information System),确定了一个大型回顾性队列,其中包括 1111323 名儿童,这些儿童在 2016 年 1 月 1 日至 2017 年 12 月 31 日期间至少有一次住院治疗。我们使用梯度提升树(XGBoost)来适应这些预测因素之间的复杂交互作用。
在整个队列中,有 1.6%的患者在 3 天内至少有 1 次 UR,2.4%的患者在 7 天内至少有 1 次 UR,4.4%的患者在 30 天内至少有 1 次 UR。对于 30 天内的 UR,预测模型的区分度最强(曲线下面积 [AUC] = 0.811;95%置信区间 [CI]:0.808-0.814),而对于 3 天内 UR 风险预测的 AUC 几乎相同(AUC = 0.771;95%CI:0.765-0.777)和 7 天内 UR 风险预测的 AUC(AUC = 0.778;95%CI:0.773-0.782)。使用这些预测模型,我们开发了一个公共的儿科再入院风险评分预测工具,可在出院计划之前或期间使用。
可以使用患者出院前已知的且易于在许多电子病历系统中提取的信息来预测儿科 UR 的风险。这些信息可用于预测再入院的风险,以支持医院出院计划资源。