Evolutionary Computation for Modeling and Optimization

Evolutionary Computation for Modeling and Optimization

Author: Daniel Ashlock

Publisher: Springer Science & Business Media

Published: 2005-12-15

Total Pages: 600

ISBN-13: 9780387221960

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Concentrates on developing intuition about evolutionary computation and problem solving skills and tool sets. Lots of applications and test problems, including a biotechnology chapter.


Computational Modeling of Gene Regulatory Networks

Computational Modeling of Gene Regulatory Networks

Author: Hamid Bolouri

Publisher: Imperial College Press

Published: 2008

Total Pages: 341

ISBN-13: 1848162200

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This book serves as an introduction to the myriad computational approaches to gene regulatory modeling and analysis, and is written specifically with experimental biologists in mind. Mathematical jargon is avoided and explanations are given in intuitive terms. In cases where equations are unavoidable, they are derived from first principles or, at the very least, an intuitive description is provided. Extensive examples and a large number of model descriptions are provided for use in both classroom exercises as well as self-guided exploration and learning. As such, the book is ideal for self-learning and also as the basis of a semester-long course for undergraduate and graduate students in molecular biology, bioengineering, genome sciences, or systems biology.


Probabilistic Boolean Networks

Probabilistic Boolean Networks

Author: Ilya Shmulevich

Publisher: SIAM

Published: 2010-01-01

Total Pages: 277

ISBN-13: 0898717639

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This is the first comprehensive treatment of probabilistic Boolean networks (PBNs), an important model class for studying genetic regulatory networks. This book covers basic model properties, including the relationships between network structure and dynamics, steady-state analysis, and relationships to other model classes." "Researchers in mathematics, computer science, and engineering are exposed to important applications in systems biology and presented with ample opportunities for developing new approaches and methods. The book is also appropriate for advanced undergraduates, graduate students, and scientists working in the fields of computational biology, genomic signal processing, control and systems theory, and computer science.


Gene Regulatory Network Reconstruction Using Time-delayed S-system Model

Gene Regulatory Network Reconstruction Using Time-delayed S-system Model

Author: Ahsan Chowdhury

Publisher:

Published: 2013

Total Pages: 412

ISBN-13:

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The advent of microarray technology and the availability of high-throughput timeseries gene expression data has gradually led to the emergence of system biologists' proficiency in determining cellular dynamics, thus enabling the reverse engineering of Gene Regulatory Networks (GRNs). However, the curse of dimensionality, i.e., very few observations available for a large number of genes, is still considered one of the key factors affecting the inferring of GRNs from time-series data. Amongst the available models to infer GRNs, S-system formalism is considered to be an excellent compromise between accuracy and mathematical flexibility. Although the S-system model has the ability to represent the regulations very accurately, due to the higher numberof parameters, it is currently limited to reconstructing small-and medium-scale GRNs. Evolutionary algorithms, a sub-field of computational intelligence, have been widely used for optimization in reverse engineering GRNs (and specifically with the S-system model) because of its computational simplicity and its capacity to cater difficult and intractable problems. As one of its objectives, this research aims to develop efficient evolutionary optimization techniques for S-system based GRN modeling.For implementing evolutionary optimization, Differential Evolution (DE) and its variants show promise in the complex multi-modal search landscape which exist during the process of reverse engineering GRNs. However, considering that for large-scale GRNs the performance of DE can deteriorate and cause the algorithm to frequently stall or become stuck in local minima, as the first step to achieve the objective of efficient algorithm design, we incorporate the domain knowledge in the initial population generation and a new mutation operation (Flip Operation or FO) in the optimization process. Incorporation of knowledge allows the population to commencewith good seeds, while the proposed FO allows the optimization to search for global solutions by not getting potentially trapped in local minima. A refinement algorithm is also included as a post-processing operation to eliminate possible false regulations from the near optimal candidate solutions.Further, domain knowledge is also incorporated to develop a novel cardinality based fitness criteria that is motivated with the biologically relevant power-law distribution of genes' in-degrees. The adaptive nature of the maximum and minimum in-degrees allows dynamic reduction of search space, thereby resulting in a skeletal structure of the network with accurate parameters values. In other words, the new approach improves the search technique and reaches the solution more quickly compared to the existing methods in the literature. The cardinality values are updated adaptively to further narrow down the search space to obtain superior results quickly.In addition, the method is further improvised so that it can cope with the absence of microRNA (miRNA) expression profiles during the inference process. A critical analysis is also presented on the influence of miRNAs regulations on the GRN, in spite of a lack of miRNA data.Since the traditional S-system models genetic interactions with non-time-delayed ordinary differential equations, all reverse engineering methods using the S-system model can only infer instantaneous regulations. Thus, time-delayed regulations, whose existence is obvious in the GRNs, are either missed completely or these are inferred with incorrect regulatory weight and/or direction by the existing methods. In this research, by including time-delays to be part of the S-system parameters, a novel time-delayed S-system (TDSS) model is proposed to overcome limitations of the existing S-system model. Moreover, we have further improved our inference method developed earlier to reconstruct the network by simultaneously inferring instantaneous andtime-delayed regulations present in the GRNs.Due to the large number of parameters to infer, the current state-of-the-art S-system modeling approaches are limited to reconstructing small-and medium-scale GNRs. Exploiting the biological interactions of a GRN and the knowledge about genes, we show that a GRN can be naturally decoupled and incorporated in our proposed time-delayed S-system modeling. In the process, the previous fitness function is also enhanced to work more effectively to infer model parameters (including time-delays) of very large-scale GRNs. We also demonstrate how a domain knowledgebasedclustering technique can be applied to develop a local search procedure that is very effective while inferring regulations of large-scale GRNs.


Computational Genetic Regulatory Networks: Evolvable, Self-organizing Systems

Computational Genetic Regulatory Networks: Evolvable, Self-organizing Systems

Author: Johannes F. Knabe

Publisher: Springer

Published: 2012-08-13

Total Pages: 0

ISBN-13: 9783642302954

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Genetic Regulatory Networks (GRNs) in biological organisms are primary engines for cells to enact their engagements with environments, via incessant, continually active coupling. In differentiated multicellular organisms, tremendous complexity has arisen in the course of evolution of life on earth. Engineering and science have so far achieved no working system that can compare with this complexity, depth and scope of organization. Abstracting the dynamics of genetic regulatory control to a computational framework in which artificial GRNs in artificial simulated cells differentiate while connected in a changing topology, it is possible to apply Darwinian evolution in silico to study the capacity of such developmental/differentiated GRNs to evolve. In this volume an evolutionary GRN paradigm is investigated for its evolvability and robustness in models of biological clocks, in simple differentiated multicellularity, and in evolving artificial developing 'organisms' which grow and express an ontogeny starting from a single cell interacting with its environment, eventually including a changing local neighbourhood of other cells. These methods may help us understand the genesis, organization, adaptive plasticity, and evolvability of differentiated biological systems, and may also provide a paradigm for transferring these principles of biology's success to computational and engineering challenges at a scale not previously conceivable.


Integrative Modeling for Genome-wide Regulation of Gene Expression

Integrative Modeling for Genome-wide Regulation of Gene Expression

Author: Zhengqing Ouyang

Publisher: Stanford University

Published: 2010

Total Pages: 135

ISBN-13:

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High-throughput genomics has been increasingly generating the massive amount of genome-wide data. With proper modeling methodologies, we can expect to archive a more comprehensive understanding of the regulatory mechanisms of biological systems. This work presents integrative approaches for the modeling and analysis of gene regulatory systems. In mammals, gene expression regulation is combinatorial in nature, with diverse roles of regulators on target genes. Microarrays (such as Exon Arrays) and RNA-Seq can be used to quantify the whole spectrum of RNA transcripts. ChIP-Seq is being used for the identification of transcription factor (TF) binding sites and histone modification marks. RNA interference (RNAi), coupled with gene expression profiles, allow perturbations of gene regulatory systems. Our approaches extract useful information from those genome-wide measurements for effectively modeling the logic of gene expression regulation. We present a predictive model for the prediction of gene expression from ChIP-Seq signals, based on quantitative modeling of regulator-gene association strength, principal component analysis, and regression-based model selection. We demonstrate the combinatorial regulation of TFs, and their power for explaining genome-wide gene expression variation. We also illustrate the roles of covalent histone modification marks on predicting gene expression and their regulation by TFs. We present a dynamical model of gene expression profiling, and derive the perturbed behaviors of the ordinary differential equation (ODE) system. Based on that, we present a regularized multivariate regression method for inferring the gene regulatory network of a stable cell type. We model the sparsity and stability of the network by a regularization approach. We applied the approaches to both a simulation data set and the RNAi perturbation data in mouse embryonic stem cells.


Frontiers of Evolutionary Computation

Frontiers of Evolutionary Computation

Author: Anil Menon

Publisher: Springer Science & Business Media

Published: 2004-02-29

Total Pages: 288

ISBN-13: 1402075243

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The articles feature a mixture of informal discussion interspersed with formal statements, thus providing the reader an opportunity to observe a wide range of EC problems from the investigative perspective of world-renowned researchers."