JMIR Medical Informatics (Jun 2022)

Machine Learning Support for Decision-Making in Kidney Transplantation: Step-by-step Development of a Technological Solution

  • François-Xavier Paquette,
  • Amir Ghassemi,
  • Olga Bukhtiyarova,
  • Moustapha Cisse,
  • Natanael Gagnon,
  • Alexia Della Vecchia,
  • Hobivola A Rabearivelo,
  • Youssef Loudiyi

DOI
https://doi.org/10.2196/34554
Journal volume & issue
Vol. 10, no. 6
p. e34554

Abstract

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BackgroundKidney transplantation is the preferred treatment option for patients with end-stage renal disease. To maximize patient and graft survival, the allocation of donor organs to potential recipients requires careful consideration. ObjectiveThis study aimed to develop an innovative technological solution to enable better prediction of kidney transplant survival for each potential donor-recipient pair. MethodsWe used deidentified data on past organ donors, recipients, and transplant outcomes in the United States from the Scientific Registry of Transplant Recipients. To predict transplant outcomes for potential donor-recipient pairs, we used several survival analysis models, including regression analysis (Cox proportional hazards), random survival forests, and several artificial neural networks (DeepSurv, DeepHit, and recurrent neural network [RNN]). We evaluated the performance of each model in terms of its ability to predict the probability of graft survival after kidney transplantation from deceased donors. Three metrics were used: the C-index, integrated Brier score, and integrated calibration index, along with calibration plots. ResultsOn the basis of the C-index metrics, the neural network–based models (DeepSurv, DeepHit, and RNN) had better discriminative ability than the Cox model and random survival forest model (0.650, 0.661, and 0.659 vs 0.646 and 0.644, respectively). The proposed RNN model offered a compromise between the good discriminative ability and calibration and was implemented in a technological solution of technology readiness level 4. ConclusionsOur technological solution based on the RNN model can effectively predict kidney transplant survival and provide support for medical professionals and candidate recipients in determining the most optimal donor-recipient pair.