Frontiers in Medicine (Jul 2023)

Prediction tool for renal adaptation after living kidney donation using interpretable machine learning

  • Junseok Jeon,
  • Jae Yong Yu,
  • Yeejun Song,
  • Yeejun Song,
  • Weon Jung,
  • Kyungho Lee,
  • Jung Eun Lee,
  • Wooseong Huh,
  • Won Chul Cha,
  • Won Chul Cha,
  • Hye Ryoun Jang

DOI
https://doi.org/10.3389/fmed.2023.1222973
Journal volume & issue
Vol. 10

Abstract

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IntroductionPost-donation renal outcomes are a crucial issue for living kidney donors considering young donors’ high life expectancy and elderly donors’ comorbidities that affect kidney function. We developed a prediction model for renal adaptation after living kidney donation using interpretable machine learning.MethodsThe study included 823 living kidney donors who underwent nephrectomy in 2009–2020. AutoScore, a machine learning-based score generator, was used to develop a prediction model. Fair and good renal adaptation were defined as post-donation estimated glomerular filtration rate (eGFR) of ≥ 60 mL/min/1.73 m2 and ≥ 65% of the pre-donation values, respectively.ResultsThe mean age was 45.2 years; 51.6% were female. The model included pre-donation demographic and laboratory variables, GFR measured by diethylenetriamine pentaacetate scan, and computed tomography kidney volume/body weight of both kidneys and the remaining kidney. The areas under the receiver operating characteristic curve were 0.846 (95% confidence interval, 0.762–0.930) and 0.626 (0.541–0.712), while the areas under the precision-recall curve were 0.965 (0.944–0.978) and 0.709 (0.647–0.788) for fair and good renal adaptation, respectively. An interactive clinical decision support system was developed.1ConclusionThe prediction tool for post-donation renal adaptation showed good predictive capability and may help clinical decisions through an easy-to-use web-based application.

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