Bayesian Uncertainty Quantification for Systems Biology Models Parameterized Using Qualitative Data

08/30/2019
by   Eshan D. Mitra, et al.
0

Motivation: Recent work has demonstrated the feasibility of using non-numerical, qualitative data to parameterize mathematical models. However, uncertainty quantification (UQ) of such parameterized models has remained challenging because of a lack of a statistical interpretation of the objective functions used in optimization. Results: We formulated likelihood functions suitable for performing Bayesian UQ using qualitative data or a combination of qualitative and quantitative data. To demonstrate the resulting UQ capabilities, we analyzed a published model for IgE receptor signaling using synthetic qualitative and quantitative datasets. Remarkably, estimates of parameter values derived from the qualitative data were nearly as consistent with the assumed ground-truth parameter values as estimates derived from the lower throughput quantitative data. These results provide further motivation for leveraging qualitative data in biological modeling. Availability: The likelihood functions presented here are implemented in a new release of PyBioNetFit, an open-source application for analyzing SBML- and BNGL-formatted models, available online at www.github.com/lanl/PyBNF.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/24/2021

Parameter estimation and uncertainty quantification using information geometry

In this work we: (1) review likelihood-based inference for parameter est...
research
11/16/2017

Bayesian uncertainty quantification in linear models for diffusion MRI

Diffusion MRI (dMRI) is a valuable tool in the assessment of tissue micr...
research
07/07/2022

Inferring Structural Parameters of Low-Surface-Brightness-Galaxies with Uncertainty Quantification using Bayesian Neural Networks

Measuring the structural parameters (size, total brightness, light conce...
research
09/18/2012

Qualitative Modelling via Constraint Programming: Past, Present and Future

Qualitative modelling is a technique integrating the fields of theoretic...
research
03/03/2022

NUQ: A Noise Metric for Diffusion MRI via Uncertainty Discrepancy Quantification

Diffusion MRI (dMRI) is the only non-invasive technique sensitive to tis...

Please sign up or login with your details

Forgot password? Click here to reset