Department of Epidemiology, Johns Hopkins Bloomberg School of Public Health, Baltimore, Maryland, USA.
Department of Epidemiology, Johns Hopkins Bloomberg School of Public Health, Baltimore, Maryland, USA.
Kidney Int. 2023 Nov;104(5):985-994. doi: 10.1016/j.kint.2023.06.020. Epub 2023 Jun 28.
Clinicians need improved prediction models to estimate time to kidney replacement therapy (KRT) for children with chronic kidney disease (CKD). Here, we aimed to develop and validate a prediction tool based on common clinical variables for time to KRT in children using statistical learning methods and design a corresponding online calculator for clinical use. Among 890 children with CKD in the Chronic Kidney Disease in Children (CKiD) study, 172 variables related to sociodemographics, kidney/cardiovascular health, and therapy use, including longitudinal changes over one year were evaluated as candidate predictors in a random survival forest for time to KRT. An elementary model was specified with diagnosis, estimated glomerular filtration rate and proteinuria as predictors and then random survival forest identified nine additional candidate predictors for further evaluation. Best subset selection using these nine additional candidate predictors yielded an enriched model additionally based on blood pressure, change in estimated glomerular filtration rate over one year, anemia, albumin, chloride and bicarbonate. Four additional partially enriched models were constructed for clinical situations with incomplete data. Models performed well in cross-validation, and the elementary model was then externally validated using data from a European pediatric CKD cohort. A corresponding user-friendly online tool was developed for clinicians. Thus, our clinical prediction tool for time to KRT in children was developed in a large, representative pediatric CKD cohort with an exhaustive evaluation of potential predictors and supervised statistical learning methods. While our models performed well internally and externally, further external validation of enriched models is needed.
临床医生需要改进预测模型,以估计慢性肾脏病 (CKD) 儿童接受肾脏替代治疗 (KRT) 的时间。在这里,我们旨在使用统计学习方法为儿童的 KRT 时间开发和验证一个基于常见临床变量的预测工具,并设计一个相应的在线计算器用于临床使用。在 CKiD 研究中的 890 名 CKD 儿童中,评估了 172 个与社会人口统计学、肾脏/心血管健康和治疗使用相关的变量,包括一年的纵向变化,作为 KRT 时间的随机生存森林的候选预测因子。指定了一个基本模型,使用诊断、估计肾小球滤过率和蛋白尿作为预测因子,然后随机生存森林确定了另外九个候选预测因子进行进一步评估。使用这九个附加候选预测因子进行最佳子集选择,得到了一个额外的富集模型,该模型还基于血压、一年来估计肾小球滤过率的变化、贫血、白蛋白、氯和碳酸氢盐。对于数据不完整的临床情况,构建了另外四个部分富集模型。模型在交叉验证中表现良好,然后使用欧洲儿科 CKD 队列的数据对基本模型进行外部验证。为临床医生开发了一个相应的用户友好型在线工具。因此,我们的儿童 KRT 时间临床预测工具是在一个大型、代表性的儿科 CKD 队列中开发的,对潜在预测因子进行了详尽的评估,并使用了监督统计学习方法。虽然我们的模型在内部和外部表现良好,但需要进一步对富集模型进行外部验证。