Prediction of post-donation renal function using machine learning techniques and conventional regression models in living kidney donors

被引:1
作者
Jeon, Junseok [1 ]
Song, Yeejun [2 ,3 ]
Yu, Jae Yong [4 ]
Jung, Weon [3 ]
Lee, Kyungho [1 ]
Lee, Jung Eun [1 ]
Huh, Wooseong [1 ]
Cha, Won Chul [2 ,3 ,5 ]
Jang, Hye Ryoun [1 ]
机构
[1] Sungkyunkwan Univ, Samsung Med Ctr, Dept Med, Div Nephrol,Sch Med, Seoul, South Korea
[2] Sungkyunkwan Univ, Samsung Adv Inst Hlth Sci & Technol SAIHST, Dept Digital Hlth, Seoul, South Korea
[3] Samsung Med Ctr, Res Inst Future Med, Smart Hlth Lab, Seoul, South Korea
[4] Yonsei Univ, Coll Med, Dept Biomed Syst Informat, Seoul, South Korea
[5] Sungkyunkwan Univ, Sch Med, Samsung Med Ctr, Dept Emergency Med, Seoul, South Korea
基金
新加坡国家研究基金会;
关键词
Living kidney donor; Machine learning; Prediction model; Post-donation renal function; GFR;
D O I
10.1007/s40620-024-02027-1
中图分类号
R5 [内科学]; R69 [泌尿科学(泌尿生殖系疾病)];
学科分类号
1002 ; 100201 ;
摘要
BackgroundAccurate prediction of renal function following kidney donation and careful selection of living donors are essential for living-kidney donation programs. We aimed to develop a prediction model for post-donation renal function following living kidney donation using machine learning.MethodsThis retrospective cohort study was conducted with 823 living kidney donors between 2009 and 2020. The dataset was randomly split into training (80%) and test sets (20%). The main outcome was the post-donation estimated glomerular filtration rate (eGFR) 12 months after nephrectomy. We compared the performance of machine learning techniques, traditional regression models, and models from previous studies. The best-performing model was selected based on the mean absolute error (MAE) and root mean square error (RMSE).ResultsThe mean age of the participants was 45.2 +/- 12.3 years, and 48.4% were males. The mean pre-donation and post-donation eGFRs were 101.3 +/- 13.0 and 68.8 +/- 12.7 mL/min/1.73 m2, respectively. The XGBoost model with the eGFR, age, serum creatinine, 24-h urine creatinine, 24-h urine sodium, creatinine clearance, cystatin C, cystatin C-based eGFR, computed tomography volume of the remaining kidney/body weight, normalized GFR of the remaining kidney measured through a diethylenetriaminepentaacetic acid scan, and sex, showed the best performance with a mean absolute error of 6.23 and root mean square error of 8.06. An easy-to-use web application titled Kidney Donation with Nephrologic Intelligence (KDNI) was developed.ConclusionsThe prediction model using XGBoost accurately predicted the post-donation eGFR after living kidney donation. This model can be applied in clinical practice using KDNI, the developed web application.
引用
收藏
页码:1679 / 1687
页数:9
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