ADAM: Analysis of Discrete Models of Biological Systems Using Computer Algebra
Franziska Hinkelmann, Madison Brandon, Bonny Guang, Rustin McNeill,, Grigoriy Blekherman, Alan Veliz-Cuba, Reinhard Laubenbacher

TL;DR
This paper introduces ADAM, a web-based tool that converts discrete biological models into algebraic systems to efficiently analyze their dynamics, especially attractors, using computational algebra techniques.
Contribution
The paper presents a novel method and tool for analyzing discrete biological models by translating them into polynomial systems, simplifying attractor detection.
Findings
ADAM efficiently identifies attractors in biological models.
Algebraic algorithms perform well on sparse, robust networks.
The approach is applicable to various types of discrete models.
Abstract
Background: Many biological systems are modeled qualitatively with discrete models, such as probabilistic Boolean networks, logical models, Petri nets, and agent-based models, with the goal to gain a better understanding of the system. The computational complexity to analyze the complete dynamics of these models grows exponentially in the number of variables, which impedes working with complex models. Although there exist sophisticated algorithms to determine the dynamics of discrete models, their implementations usually require labor-intensive formatting of the model formulation, and they are oftentimes not accessible to users without programming skills. Efficient analysis methods are needed that are accessible to modelers and easy to use. Method: By converting discrete models into algebraic models, tools from computational algebra can be used to analyze their dynamics. Specifically,…
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