English

Identifying Bayesian Optimal Experiments for Uncertain Biochemical Pathway Models

Molecular Networks 2023-09-27 v2 Applications Computation

Abstract

Pharmacodynamic (PD) models are mathematical models of cellular reaction networks that include drug mechanisms of action. These models are useful for studying predictive therapeutic outcomes of novel drug therapies in silico. However, PD models are known to possess significant uncertainty with respect to constituent parameter data, leading to uncertainty in the model predictions. Furthermore, experimental data to calibrate these models is often limited or unavailable for novel pathways. In this study, we present a Bayesian optimal experimental design approach for improving PD model prediction accuracy. We then apply our method using simulated experimental data to account for uncertainty in hypothetical laboratory measurements. This leads to a probabilistic prediction of drug performance and a quantitative measure of which prospective laboratory experiment will optimally reduce prediction uncertainty in the PD model. The methods proposed here provide a way forward for uncertainty quantification and guided experimental design for models of novel biological pathways.

Keywords

Cite

@article{arxiv.2309.06540,
  title  = {Identifying Bayesian Optimal Experiments for Uncertain Biochemical Pathway Models},
  author = {Natalie M. Isenberg and Susan D. Mertins and Byung-Jun Yoon and Kristofer Reyes and Nathan M. Urban},
  journal= {arXiv preprint arXiv:2309.06540},
  year   = {2023}
}
R2 v1 2026-06-28T12:19:42.678Z