AI Article Synopsis

  • Dynamical models using ordinary differential equations are essential in systems biology, but estimating their numerous unknown parameters from experimental data can be challenging.
  • Gradient-based optimization is effective for parameter estimation, but calculating gradients becomes increasingly expensive for larger models due to their complexity.
  • The authors introduce a new adjoint method that improves gradient computation using steady-state data, demonstrating a significant reduction in simulation time by up to 4.4 times, particularly benefitting large-scale models.

Article Abstract

Dynamical models in the form of systems of ordinary differential equations have become a standard tool in systems biology. Many parameters of such models are usually unknown and have to be inferred from experimental data. Gradient-based optimization has proven to be effective for parameter estimation. However, computing gradients becomes increasingly costly for larger models, which are required for capturing the complex interactions of multiple biochemical pathways. Adjoint sensitivity analysis has been pivotal for working with such large models, but methods tailored for steady-state data are currently not available. We propose a new adjoint method for computing gradients, which is applicable if the experimental data include steady-state measurements. The method is based on a reformulation of the backward integration problem to a system of linear algebraic equations. The evaluation of the proposed method using real-world problems shows a speedup of total simulation time by a factor of up to 4.4. Our results demonstrate that the proposed approach can achieve a substantial improvement in computation time, in particular for large-scale models, where computational efficiency is critical.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9838866PMC
http://dx.doi.org/10.1371/journal.pcbi.1010783DOI Listing

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