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Main Authors: Hamis, Sara, Forslund, John, Gu, Cici Chen, Cochrane, Jodie A.
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.20343
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author Hamis, Sara
Forslund, John
Gu, Cici Chen
Cochrane, Jodie A.
author_facet Hamis, Sara
Forslund, John
Gu, Cici Chen
Cochrane, Jodie A.
contents Integrating dynamical systems models with time series data is a central part of contemporary mathematical biology. With the rich variety of available models and data, numerous methods and computational tools have been developed for these purposes. One such tool is Stan, a freely available and open-source probabilistic programming framework that provides efficient methods for estimating model parameters from data using computational Bayesian inference algorithms. Stan includes built-in mechanisms for working with ordinary differential equation (ODE) models, which are widely used in mathematical biology and related fields to study simulated, experimental, and real-world systems that change over time. Through step-by-step worked examples, including both pedagogical toy models and applications with real data, this article provides a practical, self-contained introduction to performing parameter estimation and model evaluation for first-order linear and nonlinear ODE models in Stan. The article also explains key statistical methods that underpin Stan and discusses computational Bayesian modelling in the context of biological applications.
format Preprint
id arxiv_https___arxiv_org_abs_2603_20343
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A practical introduction to ODE modelling in Stan for biological systems
Hamis, Sara
Forslund, John
Gu, Cici Chen
Cochrane, Jodie A.
Computation
Applications
Integrating dynamical systems models with time series data is a central part of contemporary mathematical biology. With the rich variety of available models and data, numerous methods and computational tools have been developed for these purposes. One such tool is Stan, a freely available and open-source probabilistic programming framework that provides efficient methods for estimating model parameters from data using computational Bayesian inference algorithms. Stan includes built-in mechanisms for working with ordinary differential equation (ODE) models, which are widely used in mathematical biology and related fields to study simulated, experimental, and real-world systems that change over time. Through step-by-step worked examples, including both pedagogical toy models and applications with real data, this article provides a practical, self-contained introduction to performing parameter estimation and model evaluation for first-order linear and nonlinear ODE models in Stan. The article also explains key statistical methods that underpin Stan and discusses computational Bayesian modelling in the context of biological applications.
title A practical introduction to ODE modelling in Stan for biological systems
topic Computation
Applications
url https://arxiv.org/abs/2603.20343