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Computational Methods for Next Generation Sequencing Data Analysis

Computational Methods for Next Generation Sequencing Data Analysis
Author: Ion Mandoiu
Publisher: John Wiley & Sons
Total Pages: 460
Release: 2016-10-03
Genre: Computers
ISBN: 1118169484

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Introduces readers to core algorithmic techniques for next-generation sequencing (NGS) data analysis and discusses a wide range of computational techniques and applications This book provides an in-depth survey of some of the recent developments in NGS and discusses mathematical and computational challenges in various application areas of NGS technologies. The 18 chapters featured in this book have been authored by bioinformatics experts and represent the latest work in leading labs actively contributing to the fast-growing field of NGS. The book is divided into four parts: Part I focuses on computing and experimental infrastructure for NGS analysis, including chapters on cloud computing, modular pipelines for metabolic pathway reconstruction, pooling strategies for massive viral sequencing, and high-fidelity sequencing protocols. Part II concentrates on analysis of DNA sequencing data, covering the classic scaffolding problem, detection of genomic variants, including insertions and deletions, and analysis of DNA methylation sequencing data. Part III is devoted to analysis of RNA-seq data. This part discusses algorithms and compares software tools for transcriptome assembly along with methods for detection of alternative splicing and tools for transcriptome quantification and differential expression analysis. Part IV explores computational tools for NGS applications in microbiomics, including a discussion on error correction of NGS reads from viral populations, methods for viral quasispecies reconstruction, and a survey of state-of-the-art methods and future trends in microbiome analysis. Computational Methods for Next Generation Sequencing Data Analysis: Reviews computational techniques such as new combinatorial optimization methods, data structures, high performance computing, machine learning, and inference algorithms Discusses the mathematical and computational challenges in NGS technologies Covers NGS error correction, de novo genome transcriptome assembly, variant detection from NGS reads, and more This text is a reference for biomedical professionals interested in expanding their knowledge of computational techniques for NGS data analysis. The book is also useful for graduate and post-graduate students in bioinformatics.


Computational Methods for the Analysis of Next Generation Sequencing Data

Computational Methods for the Analysis of Next Generation Sequencing Data
Author: Wei Wang
Publisher:
Total Pages: 186
Release: 2014
Genre:
ISBN:

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Recently, next generation sequencing (NGS) technology has emerged as a powerful approach and dramatically transformed biomedical research in an unprecedented scale. NGS is expected to replace the traditional hybridization-based microarray technology because of its affordable cost and high digital resolution. Although NGS has significantly extended the ability to study the human genome and to better understand the biology of genomes, the new technology has required profound changes to the data analysis. There is a substantial need for computational methods that allow a convenient analysis of these overwhelmingly high-throughput data sets and address an increasing number of compelling biological questions which are now approachable by NGS technology. This dissertation focuses on the development of computational methods for NGS data analyses. First, two methods are developed and implemented for detecting variants in analysis of individual or pooled DNA sequencing data. SNVer formulates variant calling as a hypothesis testing problem and employs a binomial-binomial model to test the significance of observed allele frequency by taking account of sequencing error. SNVerGUI is a GUI-based desktop tool that is built upon the SNVer model to facilitate the main users of NGS data, such as biologists, geneticists and clinicians who often lack of the programming expertise. Second, collapsing singletons strategy is explored for associating rare variants in a DNA sequencing study. Specifically, a gene-based genome-wide scan based on singleton collapsing is performed to analyze a whole genome sequencing data set, suggesting that collapsing singletons may boost signals for association studies of rare variants in sequencing study. Third, two approaches are proposed to address the 3'UTR switching problem. PolyASeeker is a novel bioinformatics pipeline for identifying polyadenylation cleavage sites from RNA sequencing data, which helps to enhance the knowledge of alternative polyadenylation mechanisms and their roles in gene regulation. A change-point model based on a likelihood ratio test is also proposed to solve such problem in analysis of RNA sequencing data. To date, this is the first method for detecting 3'UTR switching without relying on any prior knowledge of polyadenylation cleavage sites.


Next-Generation Sequencing Data Analysis

Next-Generation Sequencing Data Analysis
Author: Xinkun Wang
Publisher: CRC Press
Total Pages: 252
Release: 2016-04-06
Genre: Mathematics
ISBN: 1482217899

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A Practical Guide to the Highly Dynamic Area of Massively Parallel SequencingThe development of genome and transcriptome sequencing technologies has led to a paradigm shift in life science research and disease diagnosis and prevention. Scientists are now able to see how human diseases and phenotypic changes are connected to DNA mutation, polymorphi


Computational Methods for Analyzing and Visualizing NGS Data

Computational Methods for Analyzing and Visualizing NGS Data
Author: Sruthi Chappidi
Publisher:
Total Pages:
Release: 2019
Genre: Application software
ISBN:

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Advancements in next-generation sequencing (NGS) technology have enabled the rapid growth and availability of large quantities of DNA and RNA sequences. These sequences from both model and non-model organisms can now be acquired at a low cost. The sequencing of large amounts of genomic and proteomic data empowers scientific achievements, many of which were thought to be impossible, and novel biological applications have been developed to study their genetic contribution to human diseases and evolution. This is especially true for uncovering new insights from comparative genomics to the evolution of the disease. For example, NGS allows researchers to identify all changes between sequences in the sample set, which could be used in a clinical setting for things like early cancer detection. This dissertation describes a set of computational bioinformatic approaches that bridge the gap between the large-scale, high-throughput sequencing data that is available, and the lack of computational tools to make predictions for and assist in evolutionary studies. Specifically, I have focused on developing computational methods that enable analysis and visualization for three distinct research tasks. These tasks focus on NGS data and will range in scope from processed genomic data to raw sequencing data, to viral proteomic data. The first task focused on the visualization of two genomes and the changes required to transform from one sequence into the other, which mimics the evolutionary process that has occurred on these organisms. My contribution to this task is DCJVis. DCJVis is a visualization tool based on a linear-time algorithm that computes the distance between two genomes and visualizes the number and type of genomic operations necessary to transform one genome set into another. The second task focused on developing a software application and efficient algorithmic workflow for analyzing and comparing raw sequence reads of two samples without the need of a reference genome. Most sequence analysis pipelines start with aligning to a known reference. However, this is not an ideal approach as reference genomes are not available for all organisms and alignment inaccuracies can lead to biased results. I developed a reference-free sequence analysis computational tool, NoRef, using k-length substring (k-mer) analysis. I also proposed an efficient k-mer sorting algorithm that decreases execution time by 3-folds compared to traditional sorting methods. Finally, the NoRef workflow outputs the results in the raw sequence read format based on user-selected filters, that can be directly used for downstream analysis. The third task is focused on viral proteomic data analysis and answers the following questions: 1. How many viral genes originate as "stolen host" (human) genes? 2. What viruses most often steal genes from a host (human) and are specific to certain locations within the host? 3. Can we understand the function of the host (human) gene through a viral perspective? To address these questions, I took a computational approach starting with string sequence comparisons and localization prediction using machine learning models to create a comprehensive community data resource that will enable researchers to gain insights into viruses that affect human immunity and diseases.


Biological Sequence Analysis

Biological Sequence Analysis
Author: Richard Durbin
Publisher: Cambridge University Press
Total Pages: 372
Release: 1998-04-23
Genre: Science
ISBN: 113945739X

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Probabilistic models are becoming increasingly important in analysing the huge amount of data being produced by large-scale DNA-sequencing efforts such as the Human Genome Project. For example, hidden Markov models are used for analysing biological sequences, linguistic-grammar-based probabilistic models for identifying RNA secondary structure, and probabilistic evolutionary models for inferring phylogenies of sequences from different organisms. This book gives a unified, up-to-date and self-contained account, with a Bayesian slant, of such methods, and more generally to probabilistic methods of sequence analysis. Written by an interdisciplinary team of authors, it aims to be accessible to molecular biologists, computer scientists, and mathematicians with no formal knowledge of the other fields, and at the same time present the state-of-the-art in this new and highly important field.


Statistical and Computational Methods in Brain Image Analysis

Statistical and Computational Methods in Brain Image Analysis
Author: Moo K. Chung
Publisher: CRC Press
Total Pages: 436
Release: 2013-07-23
Genre: Mathematics
ISBN: 1439836353

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The massive amount of nonstandard high-dimensional brain imaging data being generated is often difficult to analyze using current techniques. This challenge in brain image analysis requires new computational approaches and solutions. But none of the research papers or books in the field describe the quantitative techniques with detailed illustrations of actual imaging data and computer codes. Using MATLAB® and case study data sets, Statistical and Computational Methods in Brain Image Analysis is the first book to explicitly explain how to perform statistical analysis on brain imaging data. The book focuses on methodological issues in analyzing structural brain imaging modalities such as MRI and DTI. Real imaging applications and examples elucidate the concepts and methods. In addition, most of the brain imaging data sets and MATLAB codes are available on the author’s website. By supplying the data and codes, this book enables researchers to start their statistical analyses immediately. Also suitable for graduate students, it provides an understanding of the various statistical and computational methodologies used in the field as well as important and technically challenging topics.


Statistical Analysis of Next Generation Sequencing Data

Statistical Analysis of Next Generation Sequencing Data
Author: Somnath Datta
Publisher: Springer
Total Pages: 438
Release: 2014-07-03
Genre: Medical
ISBN: 3319072129

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Next Generation Sequencing (NGS) is the latest high throughput technology to revolutionize genomic research. NGS generates massive genomic datasets that play a key role in the big data phenomenon that surrounds us today. To extract signals from high-dimensional NGS data and make valid statistical inferences and predictions, novel data analytic and statistical techniques are needed. This book contains 20 chapters written by prominent statisticians working with NGS data. The topics range from basic preprocessing and analysis with NGS data to more complex genomic applications such as copy number variation and isoform expression detection. Research statisticians who want to learn about this growing and exciting area will find this book useful. In addition, many chapters from this book could be included in graduate-level classes in statistical bioinformatics for training future biostatisticians who will be expected to deal with genomic data in basic biomedical research, genomic clinical trials and personalized medicine. About the editors: Somnath Datta is Professor and Vice Chair of Bioinformatics and Biostatistics at the University of Louisville. He is Fellow of the American Statistical Association, Fellow of the Institute of Mathematical Statistics and Elected Member of the International Statistical Institute. He has contributed to numerous research areas in Statistics, Biostatistics and Bioinformatics. Dan Nettleton is Professor and Laurence H. Baker Endowed Chair of Biological Statistics in the Department of Statistics at Iowa State University. He is Fellow of the American Statistical Association and has published research on a variety of topics in statistics, biology and bioinformatics.


Next Generation Sequencing and Data Analysis

Next Generation Sequencing and Data Analysis
Author: Melanie Kappelmann-Fenzl
Publisher: Springer Nature
Total Pages: 218
Release: 2021-05-04
Genre: Science
ISBN: 3030624900

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This textbook provides step-by-step protocols and detailed explanations for RNA Sequencing, ChIP-Sequencing and Epigenetic Sequencing applications. The reader learns how to perform Next Generation Sequencing data analysis, how to interpret and visualize the data, and acquires knowledge on the statistical background of the used software tools. Written for biomedical scientists and medical students, this textbook enables the end user to perform and comprehend various Next Generation Sequencing applications and their analytics without prior understanding in bioinformatics or computer sciences.


Computational Genomics with R

Computational Genomics with R
Author: Altuna Akalin
Publisher: CRC Press
Total Pages: 462
Release: 2020-12-16
Genre: Mathematics
ISBN: 1498781861

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Computational Genomics with R provides a starting point for beginners in genomic data analysis and also guides more advanced practitioners to sophisticated data analysis techniques in genomics. The book covers topics from R programming, to machine learning and statistics, to the latest genomic data analysis techniques. The text provides accessible information and explanations, always with the genomics context in the background. This also contains practical and well-documented examples in R so readers can analyze their data by simply reusing the code presented. As the field of computational genomics is interdisciplinary, it requires different starting points for people with different backgrounds. For example, a biologist might skip sections on basic genome biology and start with R programming, whereas a computer scientist might want to start with genome biology. After reading: You will have the basics of R and be able to dive right into specialized uses of R for computational genomics such as using Bioconductor packages. You will be familiar with statistics, supervised and unsupervised learning techniques that are important in data modeling, and exploratory analysis of high-dimensional data. You will understand genomic intervals and operations on them that are used for tasks such as aligned read counting and genomic feature annotation. You will know the basics of processing and quality checking high-throughput sequencing data. You will be able to do sequence analysis, such as calculating GC content for parts of a genome or finding transcription factor binding sites. You will know about visualization techniques used in genomics, such as heatmaps, meta-gene plots, and genomic track visualization. You will be familiar with analysis of different high-throughput sequencing data sets, such as RNA-seq, ChIP-seq, and BS-seq. You will know basic techniques for integrating and interpreting multi-omics datasets. Altuna Akalin is a group leader and head of the Bioinformatics and Omics Data Science Platform at the Berlin Institute of Medical Systems Biology, Max Delbrück Center, Berlin. He has been developing computational methods for analyzing and integrating large-scale genomics data sets since 2002. He has published an extensive body of work in this area. The framework for this book grew out of the yearly computational genomics courses he has been organizing and teaching since 2015.