Department of Surgery, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Korea.
Statistics and Data Center, Research Institute for Future Medicine, Samsung Medical Center, Seoul, Korea.
PLoS One. 2019 Apr 18;14(4):e0214247. doi: 10.1371/journal.pone.0214247. eCollection 2019.
This study was designed to develop and cross-validate a statistical model for predicting post-transplant serum creatinine of living donor kidney transplantation.
Adult recipients of living donor kidney transplantation from August 2012 to October 2017 at Samsung Medical Center (SMC) and Seoul National University Hospital (SNUH) with normal post-transplant protocol biopsy were included for modelling. Demographic data including recipient and donor's sex, age, body measurements and comorbidities, pre-transplant donor serum creatinine, graft weight, post-transplant recipient serum creatinine and the result of protocol biopsy were collected. Multivariate linear regression analysis was performed for developing the model based on SMC cohort. Internal validation was performed using leave-one-out cross-validation with the same cohort. External validation using leave-one-out cross-validation was performed based on the cohort of SNUH.
A total of 238 and 191 recipients were included from SMC and SNUH, respectively. The prediction model included recipient's sex (β = 0.228, P<0.001), height (β = 0.007, P<0.001), and weight (β = 0.006, P<0.001), donor's age (β = 0.004, P<0.001), height (β = -0.007, P<0.001), pre-transplant serum Cr (β = 0.377, P<0.001) and graft weight (β = -0.002, P<0.001). The model showed R2 of 0.708, root mean square error of prediction (RMSEP) of 0.161 and intraclass correlation coefficient (ICC) of 0.83. The internal validation showed predicted ICC of 0.82, RMSEP of 0.161, and accuracy was calculated 0.895. The external validation showed predicted ICC of 0.78, RMSEP of 0.170, and accuracy was calculated 0.876.
The linear prediction model based on body measurement and donor serum creatinine and graft weight showed a high accuracy in cross-validation.
本研究旨在开发并验证一种用于预测活体供肾移植后血清肌酐的统计模型。
纳入 2012 年 8 月至 2017 年 10 月在三星医疗中心(SMC)和首尔国立大学医院(SNUH)接受活体供肾移植且术后常规进行移植肾活检的成年受者进行建模。收集受者和供者的性别、年龄、身体测量和合并症、移植前供者血清肌酐、移植物重量、移植后受者血清肌酐以及移植肾活检结果等数据。基于 SMC 队列进行多变量线性回归分析以建立模型。使用同一队列进行留一法交叉验证进行内部验证。基于 SNUH 队列进行留一法交叉验证进行外部验证。
SMC 和 SNUH 队列分别纳入 238 例和 191 例受者。预测模型包括受者性别(β=0.228,P<0.001)、身高(β=0.007,P<0.001)和体重(β=0.006,P<0.001)、供者年龄(β=0.004,P<0.001)、身高(β=-0.007,P<0.001)、移植前血清肌酐(β=0.377,P<0.001)和移植物重量(β=-0.002,P<0.001)。该模型的 R2 为 0.708,预测均方根误差(RMSEP)为 0.161,组内相关系数(ICC)为 0.83。内部验证显示预测 ICC 为 0.82,RMSEP 为 0.161,准确率为 0.895。外部验证显示预测 ICC 为 0.78,RMSEP 为 0.170,准确率为 0.876。
基于身体测量和供者血清肌酐及移植物重量的线性预测模型在交叉验证中具有较高的准确性。