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Vpop calibration

Description

A set of Python tools to allow for virtual population calibration, using a non-linear mixed effects (NLME) model approach, combined with surrogate models in order to speed up the simulation of QSP models.

The approach was mainly inspired from [^Grenier2018].

Currently available features

  • Surrogate modeling using gaussian processes, implemented using GPyTorch
  • Synthetic data generation using ODE models. The current implementation uses scipy.integrate.solve_ivp, parallelized with multiprocessing
  • Non-linear mixed effect models, see the dedicated doc:
    • Log-distributed parameters
    • Additive or multiplicative error model
    • Covariates handling
    • Known individual patient descriptors (i.e. covariates with no effect on other descriptors outside of the structural model)
  • SAEM: see the dedicated doc
    • Optimization of random and fixed effects using repeated longitudinal data

Getting started

Support

For any issue or comments, please reach out to paul.lemarre@novainsilico.ai, or feel free to open an issue in the repo directly.

Authors

  • Paul Lemarre
  • Eléonore Dravet
  • Hugo Alves

Acknowledgements

  • Adeline Leclerq-Sampson
  • Eliott Tixier
  • Louis Philippe

Roadmap

  • NLME:
    • Support additional error models (additive-multiplicative, power, etc...)
    • Support additional covariate models (categorical covariates)
    • Add residual diagnostic methods (weighted residuals computation and visualization)
  • Structural models:
    • Integrate with SBML models (Roadrunner)
  • Surrogate models:
    • Support additional surrogate models in PyTorch
  • Optimizer:
    • Add preconditioned Stochastic-Gradient-Descent (SGD) method for surrogate model optimization

References

[^Grenier2018]: Grenier et al. 2018: Grenier, E., Helbert, C., Louvet, V. et al. Population parametrization of costly black box models using iterations between SAEM algorithm and kriging. Comp. Appl. Math. 37, 161–173 (2018). https://doi.org/10.1007/s40314-016-0337-5

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