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Predicting chronic kidney disease progression with artificial intelligence

  • Mario A. Isaza-Ruget
  • , Nancy Yomayusa
  • , Camilo A. González
  • , Catherine Alvarado H
  • , Fabio A. de Oro V
  • , Andrés Cely
  • , Jossie Murcia
  • , Abel Gonzalez-Velez
  • , Adriana Robayo
  • , Claudia C. Colmenares-Mejía
  • , Andrea Castillo
  • , María I. Conde
  • Fundación Universitaria Sanitas
  • Unisanitas Translational Research Group. Renal Unit. Clinica Colsanitas
  • Clínica Colsanitas
  • Insular University Hospital
  • Institute for Health Technology Assessment (IETS)
  • Evaluation and Knowledge Management. EPS Sanitas
  • EPS Sanitas

Research output: Contribution to journalArticlepeer-review

21 Scopus citations

Abstract

Background: The use of tools that allow estimation of the probability of progression of chronic kidney disease (CKD) to advanced stages has not yet achieved significant practical importance in clinical setting. This study aimed to develop and validate a machine learning-based model for predicting the need for renal replacement therapy (RRT) and disease progression for patients with stage 3–5 CKD. Methods: This was a retrospective, closed cohort, observational study. Patients with CKD affiliated with a private insurer with five-year follow-up data were selected. Demographic, clinical, and laboratory variables were included, and the models were developed based on machine learning methods. The outcomes were CKD progression, a significant decrease in the estimated glomerular filtration rate (eGFR), and the need for RRT. Results: Three prediction models were developed—Model 1 (risk at 4.5 years, n = 1446) with a F1 of 0.82, 0.53, and 0.55 for RRT, stage progression, and reduction in the eGFR, respectively,— Model 2 (time- to-event, n = 2143) with a C-index of 0.89, 0.67, and 0.67 for RRT, stage progression, reduction in the eGFR, respectively, and Model 3 (reduced Model 2) with C-index = 0.68, 0.68 and 0.88, for RRT, stage progression, reduction in the eGFR, respectively. Conclusion: The time-to-event model performed well in predicting the three outcomes of CKD progression at five years. This model can be useful for predicting the onset and time of occurrence of the outcomes of interest in the population with established CKD.

Original languageEnglish
Article number148
JournalBMC Nephrology
Volume25
Issue number1
DOIs
StatePublished - Dec 2024
Externally publishedYes

Keywords

  • Artificial intelligence
  • Machine learning
  • Prediction
  • Renal insufficiency
  • Renal replacement therapy

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