Abstract

BackgroundDiffusion is a key component of many biological processes such as chemotaxis, developmental differentiation and tissue morphogenesis. Since recently, the spatial gradients caused by diffusion can be assessed in-vitro and in-vivo using microscopy based imaging techniques. The resulting time-series of two dimensional, high-resolutions images in combination with mechanistic models enable the quantitative analysis of the underlying mechanisms. However, such a model-based analysis is still challenging due to measurement noise and sparse observations, which result in uncertainties of the model parameters.MethodsWe introduce a likelihood function for image-based measurements with log-normal distributed noise. Based upon this likelihood function we formulate the maximum likelihood estimation problem, which is solved using PDE-constrained optimization methods. To assess the uncertainty and practical identifiability of the parameters we introduce profile likelihoods for diffusion processes.Results and conclusionAs proof of concept, we model certain aspects of the guidance of dendritic cells towards lymphatic vessels, an example for haptotaxis. Using a realistic set of artificial measurement data, we estimate the five kinetic parameters of this model and compute profile likelihoods. Our novel approach for the estimation of model parameters from image data as well as the proposed identifiability analysis approach is widely applicable to diffusion processes. The profile likelihood based method provides more rigorous uncertainty bounds in contrast to local approximation methods.

Highlights

  • Diffusion is assumed to be the basis of many spatial organization processes for multi-cellular organisms

  • Dendritic cells move towards the closest lymphatic vessel in the tissue and are subsequently transported through the lymphoid system towards the lymph nodes

  • In this paper we introduced profile likelihood-based identifiability analysis for diffusion processes based on 2D image data

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Summary

Introduction

Diffusion is assumed to be the basis of many spatial organization processes for multi-cellular organisms. Crucial processes such as developmental pattern formation or chemotaxis rely on gradient information arising from diffusion and transport processes [1,2]. Gradients of signaling molecules can be made visible in-vivo via antibody stainings (see Figure 1 and [5,6,7]) Combined with microscopy, this yields two-dimensional (2D) images. The resulting time-series of two dimensional, high-resolutions images in combination with mechanistic models enable the quantitative analysis of the underlying mechanisms Such a model-based analysis is still challenging due to measurement noise and sparse observations, which result in uncertainties of the model parameters

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