Handbook of research on computational methodologies in gene regulatory networks 1st Edition by Sanjoy Das, Doina Caragea, Stephen Welch, William Hsu, Sanjoy Das, Doina Caragea, Stephen Welch, William Hsu – Ebook PDF Instant Download/Delivery: 1605666858, 9781605666853
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Product details:
ISBN 10: 1605666858
ISBN 13: 9781605666853
Author: Sanjoy Das, Doina Caragea, Stephen Welch, William Hsu, Sanjoy Das, Doina Caragea, Stephen Welch, William Hsu
Recent advances in gene sequencing technology are now shedding light on the complex interplay between genes that elicit phenotypic behavior characteristic of any given organism. In order to mediate internal and external signals, the daunting task of classifying an organism’s genes into complex signaling pathways needs to be completed. The Handbook of Research on Computational Methodologies in Gene Regulatory Networks focuses on methods widely used in modeling gene networks including structure discovery, learning, and optimization. This innovative Handbook of Research presents a complete overview of computational intelligence approaches for learning and optimization and how they can be used in gene regulatory networks.
Handbook of research on computational methodologies in gene regulatory networks 1st Table of contents:
- What are Gene Regulatory Networks?
- Introduction to GRNs
- Bayesian Networks for Modeling and Inferring Gene Regulatory Networks
- Inferring Gene Regulatory Networks from Genetical Genomics Data
- Inferring Genetic Regulatory Interactions with Bayesian Logic-Based Model
- A Bayes Regularized Ordinary Differential Equation Model for the Inference of Gene Regulatory Networ
- Computational Approaches for Modeling Intrinsic Noise and Delays in Genetic Regulatory Networks
- Modeling Gene Regulatory Networks with Delayed Stochastic Dynamics
- Nonlinear Stochastic Differential Equations Method for Reverse Engineering of Gene Regulatory Networ
- Modelling Gene Regulatory Networks Using Computational Intelligence Techniques
- A Synthesis Method of Gene Regulatory Networks based on Gene Expression by Network Learning
- Structural Learning of Genetic Regulatory Networks Based on Prior Biological Knowledge and Microarra
- Problems for Structure Learning
- Complexity of the BN and the PBN Models of GRNs and Mappings for Complexity Reduction
- Abstraction Methods for Analysis of Gene Regulatory Networks
- Improved Model Checking Techniques for State Space Analysis of Gene Regulatory Networks
- Determining the Properties of Gene Regulatory Networks from Expression Data
- Generalized Boolean Networks
- A Linear Programming Framework for Inferring Gene Regulatory Networks by Integrating Heterogeneous D
- Integrating Various Data Sources for Improved Quality in Reverse Engineering of Gene Regulatory Netw
- Dynamic Links and Evolutionary History in Simulated Gene Regulatory Networks
- A Model for a Heterogeneous Genetic Network
- Planning Interventions for Gene Regulatory Networks as Partially Observable Markov Decision Processe
- Mathematical Modeling of the λ Switch
- Petri Nets and GRN Models
- Compilation of References
People also search Handbook of research on computational methodologies in gene regulatory networks 1st:
Model Checking Techniques
Gene Regulatory Networks
Determining the Properties of Gene Regulatory
A Linear Programming Framework
Integrating Various Data Sources
Tags: computational, methodologies, regulatory networks, Sanjoy Das, Doina Caragea, Stephen Welch, William Hsu, Sanjoy Das, Doina Caragea, Stephen Welch, William Hsu



