Big Data in Omics and Imaging Big Data in Omics and Imaging
Chapman & Hall/CRC Computational Biology Series

Big Data in Omics and Imaging

Integrated Analysis and Causal Inference

    • $59.99
    • $59.99

Publisher Description

Big Data in Omics and Imaging: Integrated Analysis and Causal Inference addresses the recent development of integrated genomic, epigenomic and imaging data analysis and causal inference in big data era. Despite significant progress in dissecting the genetic architecture of complex diseases by genome-wide association studies (GWAS), genome-wide expression studies (GWES), and epigenome-wide association studies (EWAS), the overall contribution of the new identified genetic variants is small and a large fraction of genetic variants is still hidden. Understanding the etiology and causal chain of mechanism underlying complex diseases remains elusive. It is time to bring big data, machine learning and causal revolution to developing a new generation of genetic analysis for shifting the current paradigm of genetic analysis from shallow association analysis to deep causal inference and from genetic analysis alone to integrated omics and imaging data analysis for unraveling the mechanism of complex diseases.

FEATURES
Provides a natural extension and companion volume to Big Data in Omic and Imaging: Association Analysis, but can be read independently. Introduce causal inference theory to genomic, epigenomic and imaging data analysis Develop novel statistics for genome-wide causation studies and epigenome-wide causation studies. Bridge the gap between the traditional association analysis and modern causation analysis Use combinatorial optimization methods and various causal models as a general framework for inferring multilevel omic and image causal networks Present statistical methods and computational algorithms for searching causal paths from genetic variant to disease Develop causal machine learning methods integrating causal inference and machine learning Develop statistics for testing significant difference in directed edge, path, and graphs, and for assessing causal relationships between two networks
The book is designed for graduate students and researchers in genomics, epigenomics, medical image, bioinformatics, and data science. Topics covered are: mathematical formulation of causal inference, information geometry for causal inference, topology group and Haar measure, additive noise models, distance correlation, multivariate causal inference and causal networks, dynamic causal networks, multivariate and functional structural equation models, mixed structural equation models, causal inference with confounders, integer programming, deep learning and differential equations for wearable computing, genetic analysis of function-valued traits, RNA-seq data analysis, causal networks for genetic methylation analysis, gene expression and methylation deconvolution, cell –specific causal networks, deep learning for image segmentation and image analysis, imaging and genomic data analysis, integrated multilevel causal genomic, epigenomic and imaging data analysis.

GENRE
Science & Nature
RELEASED
2018
June 14
LANGUAGE
EN
English
LENGTH
766
Pages
PUBLISHER
CRC Press
SELLER
Taylor & Francis Group
SIZE
25
MB

More Books Like This

Advanced Linear Modeling Advanced Linear Modeling
2019
Spatial Statistics and Modeling Spatial Statistics and Modeling
2009
Introduction to Functional Data Analysis Introduction to Functional Data Analysis
2017
Gaussian Markov Random Fields Gaussian Markov Random Fields
2005
Linear Models and Generalizations Linear Models and Generalizations
2007
Festschrift in Honor of R. Dennis Cook Festschrift in Honor of R. Dennis Cook
2021

More Books by Momiao Xiong

Artificial Intelligence and Causal Inference Artificial Intelligence and Causal Inference
2022
Big Data in Omics and Imaging Big Data in Omics and Imaging
2017

Other Books in This Series

An Introduction to Systems Biology An Introduction to Systems Biology
2019
Computational Genomics with R Computational Genomics with R
2020
Computational Systems Biology Approaches in Cancer Research Computational Systems Biology Approaches in Cancer Research
2019
Bioinformatics Bioinformatics
2022
Metabolomics Metabolomics
2019
Virus Bioinformatics Virus Bioinformatics
2021