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Open AccessJournal ArticleDOI

Inference of S-system models of gene regulatory networks using immune algorithm.

TLDR
The Immune Algorithm (IA), a heuristic search method inspired by the biological mechanism of acquired immunity, was applied to search for the S-system parameters and showed higher performance than GA for both simulation and real data analyses.
Abstract
The S-system model is one of the nonlinear differential equation models of gene regulatory networks, and it can describe various dynamics of the relationships among genes. If we successfully infer rigorous S-system model parameters that describe a target gene regulatory network, we can simulate gene expressions mathematically. However, the problem of finding an optimal S-system model parameter is too complex to be solved analytically. Thus, some heuristic search methods that offer approximate solutions are needed for reducing the computational time. In previous studies, several heuristic search methods such as Genetic Algorithms (GAs) have been applied to the parameter search of the S-system model. However, they have not achieved enough estimation accuracy. One of the conceivable reasons is that the mechanisms to escape local optima. We applied an Immune Algorithm (IA) to search for the S-system parameters. IA is also a heuristic search method, which is inspired by the biological mechanism of acquired immunity. Compared to GA, IA is able to search large solution space, thereby avoiding local optima, and have multiple candidates of the solutions. These features work well for searching the S-system model. Actually, our algorithm showed higher performance than GA for both simulation and real data analyses.

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Citations
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Journal ArticleDOI

Biochemical Systems Theory: A Review

TL;DR: This paper depicts major developments in BST up to the current state of the art in 2012 and is intended as a guide for investigators entering the fascinating field of biological systems analysis and as a resource for practitioners and experts.
Journal ArticleDOI

Reconstructing biological gene regulatory networks: where optimization meets big data

TL;DR: The benefit of the data deluge and the study of ALife for modelling GRNs as well as their reconstruction are detailed, and how metaheuristics can solve big data problems and the inference of GRNs offer real world problems for both areas of research are discussed.
Journal ArticleDOI

Biophysically Motivated Regulatory Network Inference: Progress and Prospects.

Tarmo Äijö, +1 more
- 01 Jan 2016 - 
TL;DR: Methods combining advances in these 4 categories of required effort with new genomic technologies will result in biophysically motivated dynamic genome-wide regulatory network models for several of the best-studied organisms and cell types.
Journal ArticleDOI

Reverse engineering of gene regulatory networks based on S-systems and Bat algorithm.

TL;DR: Bat algorithm, based on the echolocation of bats, has been used to optimize the S-system model parameters and significant improvements in the detection of a greater number of true regulations, and in the minimization of false detections compared to other existing methods are shown.
Journal ArticleDOI

Recurrent neural network-based modeling of gene regulatory network using elephant swarm water search algorithm

TL;DR: A new metaheuristic namely Elephant Swarm Water Search Algorithm (ESWSA) to infer Gene Regulatory Network (GRN) is proposed, mainly based on the water search strategy of intelligent and social elephants during drought, utilizing the different types of communication techniques.
References
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Journal ArticleDOI

Structure and function of the feed-forward loop network motif

TL;DR: This study defines the function of one of the most significant recurring circuit elements in transcription networks, the feed-forward loop (FFL), which is a three-gene pattern composed of two input transcription factors, both jointly regulating a target gene.
Journal ArticleDOI

Dynamic modeling of genetic networks using genetic algorithm and S-system

TL;DR: A unified extension of the basic method to predict not only the network structure but also its dynamics using a Genetic Algorithm and an S-system formalism is proposed and successfully inferred the dynamics of a small genetic network constructed with 60 parameters for 5 network variables and feedback loops using only time-course data of gene expression.
Proceedings Article

Multi-parent recombination with simplex crossover in real coded genetic algorithms

TL;DR: Experimental results using test functions showed SPX works well on functions having multimodality and/or epistasis with a medium number of parents: 3-parent on a low dimensional function or 4 parents on high dimensional functions.
Journal ArticleDOI

Inference of S-system models of genetic networks using a cooperative coevolutionary algorithm

TL;DR: A new method is proposed for inferring S-system models of large-scale genetic networks based on the problem decomposition strategy and a cooperative coevolutionary algorithm that can be used to infer any S- system model ready for computational simulation.
Journal ArticleDOI

Algorithms for identifying Boolean networks and related biological networks based on matrix multiplication and fingerprint function.

TL;DR: An improved O(momega-2nD + mnD+omegas-3) time Monte-Carlo type randomized algorithm, where omega is the exponent of matrix multiplication and the result is nontrivial and the technique can be applied to several related problems.
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