Learning pharmacometric covariate model structures with symbolic regression networks

J Pharmacokinet Pharmacodyn. 2024 Apr;51(2):155-167. doi: 10.1007/s10928-023-09887-3. Epub 2023 Oct 21.

Abstract

Efficiently finding covariate model structures that minimize the need for random effects to describe pharmacological data is challenging. The standard approach focuses on identification of relevant covariates, and present methodology lacks tools for automatic identification of covariate model structures. Although neural networks could potentially be used to approximate covariate-parameter relationships, such approximations are not human-readable and come at the risk of poor generalizability due to high model complexity.In the present study, a novel methodology for the simultaneous selection of covariate model structure and optimization of its parameters is proposed. It is based on symbolic regression, posed as an optimization problem with a smooth loss function. This enables training of the model through back-propagation using efficient gradient computations.Feasibility and effectiveness are demonstrated by application to a clinical pharmacokinetic data set for propofol, containing infusion and blood sample time series from 1031 individuals. The resulting model is compared to a published state-of-the-art model for the same data set. Our methodology finds a covariate model structure and corresponding parameter values with a slightly better fit, while relying on notably fewer covariates than the state-of-the-art model. Unlike contemporary practice, finding the covariate model structure is achieved without an iterative procedure involving manual interactions.

Keywords: Covariate modeling; Neural networks; Pharmacokinetics; Pharmacometrics; Symbolic regression.

MeSH terms

  • Humans
  • Neural Networks, Computer*
  • Propofol*
  • Time Factors

Substances

  • Propofol