Comparison of Machine Learning Algorithms and Bayesian Estimation in Predicting Tacrolimus Concentration in Tunisian Kidney Transplant Patients During the Early Post-Transplant Period.

Journal: European journal of drug metabolism and pharmacokinetics
Published Date:

Abstract

BACKGROUND AND OBJECTIVE: Model-informed precision dosing (MIPD), based on a Bayesian approach and machine learning (ML) algorithms, is a suitable approach to personalize dosage recommendations and to improve the concentration target attainment for each patient. The objective of this study is to compare the predictive performance of two ML approaches, XGBoost and LSTM, with a previously developed Bayesian model of tacrolimus (Tac) in a cohort of Tunisian kidney transplant patients during the early post-transplant period (0-3 months) METHOD: This was a cross-sectional study conducted at the Pharmacology department in Fattouma Bourguiba's hospital in Monastir, Tunisia. We included patients who had undergone kidney transplantation in the Nephrology department of Monastir Hospital and received the Tac immunosuppressant protocol, for whom routine therapeutic drug monitoring (TDM) during the early post-transplant period (0-3 months) had been performed in our department.

Authors

  • Nadia Ben-Fredj
    Service de Pharmacologie Clinique, CHU Fattouma Bourguiba de Monastir, Rue Avicenne, 5019, Monastir, Tunisia. benfredj.nadia@gmail.com.
  • Issam Dridi
    Laboratoire de Mécanique Productique et Énergétique, École Nationale Supérieure d'ingénieurs de Tunis, Université de Tunis, Tunis, Tunisia.
  • Ichrak Dridi
    Service de Pharmacologie Clinique, CHU Fattouma Bourguiba de Monastir, Rue Avicenne, 5019, Monastir, Tunisia.
  • Noureddine Ben-Yahya
    Laboratoire de Mécanique Productique et Énergétique, École Nationale Supérieure d'ingénieurs de Tunis, Université de Tunis, Tunis, Tunisia.
  • Karim Aouam
    Service de Pharmacologie Clinique, CHU Fattouma Bourguiba de Monastir, Rue Avicenne, 5019, Monastir, Tunisia.