Abstract

At the crossroad between biology and mathematical modeling, computational systems biology can contribute to a mechanistic understanding of high-level biological phenomenon. But as knowledge accumulates, the size and complexity of mathematical models increase, calling for the development of efficient dynamical analysis methods. Here, we propose the use of two approaches for the development and analysis of complex cellular network models. A first approach, called "model verification" and inspired by unitary testing in software development, enables the formalization and automated verification of validation criteria for whole models or selected sub-parts. When combined with efficient analysis methods, this approach is suitable for continuous testing, thereby greatly facilitating model development. A second approach, called "value propagation," enables efficient analytical computation of the impact of specific environmental or genetic conditions on the dynamical behavior of some models. We apply these two approaches to the delineation and the analysis of a comprehensive model for T cell activation, taking into account CTLA4 and PD-1 checkpoint inhibitory pathways. While model verification greatly eases the delineation of logical rules complying with a set of dynamical specifications, propagation provides interesting insights into the different potential of CTLA4 and PD-1 immunotherapies. Both methods are implemented and made available in the all-inclusive CoLoMoTo Docker image, while the different steps of the model analysis are fully reported in two companion interactive jupyter notebooks, thereby ensuring the reproduction of our results.

Highlights

  • Recent technical developments have allowed scientists to study immunology and health-related issues from a variety of angles

  • We further outline and apply a value propagation method, which enables the assessment of the impact of environmental or genetic constraints on the dynamical behavior of complex cellular networks

  • Using value propagation, we aimed to provide a tool for the comparative analysis of intra-cellular consequences when targeting CTLA4 vs. PD-1 T-cell co-receptors

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Summary

INTRODUCTION

Recent technical developments have allowed scientists to study immunology and health-related issues from a variety of angles. The large size of recent models hinders the complete exploration of their dynamical behavior through simulation, especially in non-deterministic settings To address these difficulties, we define and apply a model verification approach to systematically verify whether a model complies with a list of known properties. We further outline and apply a value propagation method, which enables the assessment of the impact of environmental or genetic constraints on the dynamical behavior of complex cellular networks. The different steps of analysis are fully reported in two companion interactive jupyter notebooks, available with the model on the GINsim website (http://ginsim.org/model/tcell-checkpoint-inhibitors-tcla4-pd1), thereby ensuring their reproducibility

A Software Engineering Framework for Logical Model Building
CONCLUSIONS AND PROSPECTS
DATA AVAILABILITY STATEMENT
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