Madrid-García Alfredo, Font-Urgelles Judit, Vega-Barbas Mario, León-Mateos Leticia, Freites Dalifer Dayanira, Lajas Cristina Jesus, Pato Esperanza, Jover Juan Angel, Fernández-Gutiérrez Benjamín, Abásolo-Alcazar Lydia, Rodríguez-Rodríguez Luis
Rheumatology Department, and Health Research Institute (IdISSC), Hospital Clínico San Carlos, 28040 Madrid, Spain.
Dpto. Ingeniería Sistemas Telemáticos, ETSI Telecomunicación, Universidad Politécnica de Madrid, Avda. Complutense 3, 28040 Madrid, Spain.
J Clin Med. 2019 Aug 2;8(8):1156. doi: 10.3390/jcm8081156.
Our objective is to develop and validate a predictive model based on the random forest algorithm to estimate the readmission risk to an outpatient rheumatology clinic after discharge. We included patients from the Hospital Clínico San Carlos rheumatology outpatient clinic, from 1 April 2007 to 30 November 2016, and followed-up until 30 November 2017. Only readmissions between 2 and 12 months after the discharge were analyzed. Discharge episodes were chronologically split into training, validation, and test datasets. Clinical and demographic variables (diagnoses, treatments, quality of life (QoL), and comorbidities) were used as predictors. Models were developed in the training dataset, using a grid search approach, and performance was compared using the area under the receiver operating characteristic curve (AUC-ROC). A total of 18,662 discharge episodes were analyzed, out of which 2528 (13.5%) were followed by outpatient readmissions. Overall, 38,059 models were developed. AUC-ROC, sensitivity, and specificity of the reduced final model were 0.653, 0.385, and 0.794, respectively. The most important variables were related to follow-up duration, being prescribed with disease-modifying anti-rheumatic drugs and corticosteroids, being diagnosed with chronic polyarthritis, occupation, and QoL. We have developed a predictive model for outpatient readmission in a rheumatology setting. Identification of patients with higher risk can optimize the allocation of healthcare resources.
我们的目标是开发并验证一种基于随机森林算法的预测模型,以估计出院后门诊风湿病诊所的再入院风险。我们纳入了2007年4月1日至2016年11月30日期间圣卡洛斯临床医院风湿病门诊的患者,并随访至2017年11月30日。仅分析出院后2至12个月内的再入院情况。出院记录按时间顺序分为训练集、验证集和测试集。临床和人口统计学变量(诊断、治疗、生活质量(QoL)和合并症)用作预测指标。在训练集中使用网格搜索方法开发模型,并使用受试者工作特征曲线下面积(AUC-ROC)比较模型性能。共分析了18,662次出院记录,其中252次(13.5%)随后有门诊再入院情况。总体而言,共开发了38,059个模型。简化后的最终模型的AUC-ROC、敏感性和特异性分别为0.653、0.385和0.794。最重要的变量与随访时间、是否开具改善病情抗风湿药物和皮质类固醇、是否诊断为慢性多关节炎、职业以及生活质量有关。我们开发了一种用于风湿病门诊再入院的预测模型。识别高风险患者可优化医疗资源的分配。