Comparative Gene Finding

Models, Algorithms and Implementation

Nonfiction, Science & Nature, Science, Biological Sciences, Physiology, Computers, Advanced Computing, Computer Science
Cover of the book Comparative Gene Finding by Marina Axelson-Fisk, Springer London
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Marina Axelson-Fisk ISBN: 9781447166931
Publisher: Springer London Publication: April 13, 2015
Imprint: Springer Language: English
Author: Marina Axelson-Fisk
ISBN: 9781447166931
Publisher: Springer London
Publication: April 13, 2015
Imprint: Springer
Language: English

This book presents a guide to building computational gene finders, and describes the state of the art in computational gene finding methods, with a focus on comparative approaches. Fully updated and expanded, this new edition examines next-generation sequencing (NGS) technology. The book also discusses conditional random fields, enhancing the broad coverage of topics spanning probability theory, statistics, information theory, optimization theory and numerical analysis. Features: introduces the fundamental terms and concepts in the field; discusses algorithms for single-species gene finding, and approaches to pairwise and multiple sequence alignments, then describes how the strengths in both areas can be combined to improve the accuracy of gene finding; explores the gene features most commonly captured by a computational gene model, and explains the basics of parameter training; illustrates how to implement a comparative gene finder; examines NGS techniques and how to build a genome annotation pipeline.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

This book presents a guide to building computational gene finders, and describes the state of the art in computational gene finding methods, with a focus on comparative approaches. Fully updated and expanded, this new edition examines next-generation sequencing (NGS) technology. The book also discusses conditional random fields, enhancing the broad coverage of topics spanning probability theory, statistics, information theory, optimization theory and numerical analysis. Features: introduces the fundamental terms and concepts in the field; discusses algorithms for single-species gene finding, and approaches to pairwise and multiple sequence alignments, then describes how the strengths in both areas can be combined to improve the accuracy of gene finding; explores the gene features most commonly captured by a computational gene model, and explains the basics of parameter training; illustrates how to implement a comparative gene finder; examines NGS techniques and how to build a genome annotation pipeline.

More books from Springer London

Cover of the book Fetal and Neonatal Pathology by Marina Axelson-Fisk
Cover of the book Reinventing Ourselves: Contemporary Concepts of Identity in Virtual Worlds by Marina Axelson-Fisk
Cover of the book Nanomaterials: A Danger or a Promise? by Marina Axelson-Fisk
Cover of the book Control of Noise and Structural Vibration by Marina Axelson-Fisk
Cover of the book Pediatric Critical Care Medicine by Marina Axelson-Fisk
Cover of the book Guide to Programming and Algorithms Using R by Marina Axelson-Fisk
Cover of the book Skin Diseases in the Immunocompromised by Marina Axelson-Fisk
Cover of the book Markov Models for Handwriting Recognition by Marina Axelson-Fisk
Cover of the book Translational Informatics by Marina Axelson-Fisk
Cover of the book Orchestrating Human-Centered Design by Marina Axelson-Fisk
Cover of the book Machining of Hard Materials by Marina Axelson-Fisk
Cover of the book Exercise Cardiopulmonary Function in Cardiac Patients by Marina Axelson-Fisk
Cover of the book Guide to OCR for Indic Scripts by Marina Axelson-Fisk
Cover of the book Management of Urological Cancers in Older People by Marina Axelson-Fisk
Cover of the book Infected Total Joint Arthroplasty by Marina Axelson-Fisk
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy