Probability Models for DNA Sequence Evolution

Author:   Richard Durrett
Publisher:   Springer-Verlag New York Inc.
ISBN:  

9780387954356


Pages:   248
Publication Date:   01 January 2002
Replaced By:   9780387781686
Format:   Hardback
Availability:   Out of stock   Availability explained


Our Price $224.27 Quantity:  
Add to Cart

Share |

Probability Models for DNA Sequence Evolution


Add your own review!

Overview

Full Product Details

Author:   Richard Durrett
Publisher:   Springer-Verlag New York Inc.
Imprint:   Springer-Verlag New York Inc.
Dimensions:   Width: 15.60cm , Height: 1.70cm , Length: 23.40cm
Weight:   0.544kg
ISBN:  

9780387954356


ISBN 10:   038795435
Pages:   248
Publication Date:   01 January 2002
Audience:   Professional and scholarly ,  Professional & Vocational
Replaced By:   9780387781686
Format:   Hardback
Publisher's Status:   Out of Print
Availability:   Out of stock   Availability explained

Table of Contents

Basic Models.- Neutral Complications.- Natural Selection.- Statistical Tests.- Genome Rearrangement.

Reviews

From the reviews: This book serves as an introduction to, and a compilation of, results in the new and growing field of probability theory for DNA evolution. The author is a probabilist, but he has made an effort to appeal to biologists and mathematicians alike. Biologists will find in this book those methods used for studying DNA variability that go beyond straightforward applications of statistics and require genuine mathematical insight into the underlying mechanisms. The example data are real and the driving motivation is to understand these truthfully. Mathematicians will find in this book not an attempt to develop some abstract theory, but rather a kaleidoscopic collection of ideas and methods invented to attack a common problem. The emphasis is on catching the main ideas in down-to-earth calculations; continuum models and more sophisticated methods from analysis are avoided. The book starts with the Wright-Fisher model for neutral selection in a constant population, and then builds and varies on this in Chapters 1--3 by adding the effects of mutation, recombination, selection, nonconstant population sizes and spatial structure. Chapter 4 is devoted to statistical tests for detecting departures from the neutral model and Chapter 5 discusses the large-scale structure of the DNA such as the size and number of chromosomes, inversions, translocations and duplications. This book will serve as a useful guide to this new and exciting field and an inspiration even for the more experienced readers.--Mathematical Reviews With numerous interspersed example datasets from the primary literature, this book offers a brief introduction to models of both long-term and short-term DNAsequence evolution, with emphasis on the lattera ]Diverse audiences will find much of the value in this concise book. The authora (TM)s rigor and ability to embed material in a broader mathematical context will appeal to quantitative readers with little background in biologya ]The booka (TM)s strength is in its mathematical content, which revives almost-forgotten theorems, includes new proofs, and is thorough but not overwhelmingly detailed or overburdened with notation. Journal of the American Statistical Association, June 2004 Stochastic modelling of genetic sequences and their evolution continues to be one of the hottest areas of research in applied probability even today. This book is a useful and interesting addition to a large number of similar texts in this area. ... it is surely a reliable introductory text for beginners taking interest in the subject. (Probal Chaudhuri, Sankhya: The Indian Journal of Statistics, Vol. 65 (4), 2003) This is the first book covering the mathematical theory of molecular evolution developed during the last two decades. a ] A particularly pleasing feature of this text is that most important concepts and results are immediately applied to real data, thus providing many illuminating examples. This book can be highly recommended to students and researchers in applied probability and mathematical biology, especially to those interested in genetics, evolution, or bioinformatics. (R.BA1/4rger, Monatshefte fA1/4r Mathematik, Vol. 143 (1), 2004) The author did an admirable job in providing a concise and up-to-date summary of modern molecular population genetics. The details of derivations are often given, allowing the reader to follow thetheory. a ] Overall, I found the book great fun to read. I recommend it to population geneticists who are interested in a concise modern summary of analytical results in the field, and to mathematicians who would like to work in this exciting area of research. (Z Yang, Heredity, Vol. 92, 2004) This book serves as an introduction to, and a compilation of, results in the new and growing field of probability theory for DNA evolution. The author is a probabilist, but he has made an effort to appeal to biologists and mathematicians alike. a ] This book will serve as a useful guide to this new and exciting field and an inspiration even for the more experienced readers. (Jan M. Swart, Mathematical Reviews, Issue 2003 b) The evolution of genetic characteristics of populations over generations is an important scientific frontier to mathematical modelling. It is one where probability models and statistical analysis have a fundamental and important role to play. a ] The goal of this book is to introduce the reader to probability models which might explain the patterns of variability observable in DNA sequences collected from many individuals in a population. a ] it would provide a good supplemental source for a graduate course in stochastic modelling or in mathematical genomics. (R.W. Oldford, Short Book Reviews, Vol. 22 (3), 2002)


From the reviews: <p>This book serves as an introduction to, and a compilation of, results in the new and growing field of probability theory for DNA evolution. The author is a probabilist, but he has made an effort to appeal to biologists and mathematicians alike. Biologists will find in this book those methods used for studying DNA variability that go beyond straightforward applications of statistics and require genuine mathematical insight into the underlying mechanisms. The example data are real and the driving motivation is to understand these truthfully. Mathematicians will find in this book not an attempt to develop some abstract theory, but rather a kaleidoscopic collection of ideas and methods invented to attack a common problem. The emphasis is on catching the main ideas in down-to-earth calculations; continuum models and more sophisticated methods from analysis are avoided. The book starts with the Wright-Fisher model for neutral selection in a constant population, and then builds and varies on this in Chapters 1--3 by adding the effects of mutation, recombination, selection, nonconstant population sizes and spatial structure. Chapter 4 is devoted to statistical tests for detecting departures from the neutral model and Chapter 5 discusses the large-scale structure of the DNA such as the size and number of chromosomes, inversions, translocations and duplications. This book will serve as a useful guide to this new and exciting field and an inspiration even for the more experienced readers.--Mathematical Reviews <p> With numerous interspersed example datasets from the primary literature, this book offers a brief introduction to models of both long-term and short-term DNAsequence evolution, with emphasis on the lattera ]Diverse audiences will find much of the value in this concise book. The authora (TM)s rigor and ability to embed material in a broader mathematical context will appeal to quantitative readers with little background in biologya ]The booka (TM)s strength is in its mathematical content, which revives almost-forgotten theorems, includes new proofs, and is thorough but not overwhelmingly detailed or overburdened with notation. Journal of the American Statistical Association, June 2004 <p> Stochastic modelling of genetic sequences and their evolution continues to be one of the hottest areas of research in applied probability even today. This book is a useful and interesting addition to a large number of similar texts in this area. ... it is surely a reliable introductory text for beginners taking interest in the subject. (Probal Chaudhuri, Sankhya: The Indian Journal of Statistics, Vol. 65 (4), 2003) <p> This is the first book covering the mathematical theory of molecular evolution developed during the last two decades. a ] A particularly pleasing feature of this text is that most important concepts and results are immediately applied to real data, thus providing many illuminating examples. This book can be highly recommended to students and researchers in applied probability and mathematical biology, especially to those interested in genetics, evolution, or bioinformatics. (R.BA1/4rger, Monatshefte fA1/4r Mathematik, Vol. 143 (1), 2004) <p> The author did an admirable job in providing a concise and up-to-date summary of modern molecular population genetics. The details of derivations are often given, allowing the reader to follow thetheory. a ] Overall, I found the book great fun to read. I recommend it to population geneticists who are interested in a concise modern summary of analytical results in the field, and to mathematicians who would like to work in this exciting area of research. (Z Yang, Heredity, Vol. 92, 2004) <p> This book serves as an introduction to, and a compilation of, results in the new and growing field of probability theory for DNA evolution. The author is a probabilist, but he has made an effort to appeal to biologists and mathematicians alike. a ] This book will serve as a useful guide to this new and exciting field and an inspiration even for the more experienced readers. (Jan M. Swart, Mathematical Reviews, Issue 2003 b) <p> The evolution of genetic characteristics of populations over generations is an important scientific frontier to mathematical modelling. It is one where probability models and statistical analysis have a fundamental and important role to play. a ] The goal of this book is to introduce the reader to probability models which might explain the patterns of variability observable in DNA sequences collected from many individuals in a population. a ] it would provide a good supplemental source for a graduate course in stochastic modelling or in mathematical genomics. (R.W. Oldford, Short Book Reviews, Vol. 22 (3), 2002)


Author Information

Tab Content 6

Author Website:  

Customer Reviews

Recent Reviews

No review item found!

Add your own review!

Countries Available

All regions
Latest Reading Guide

Aorrng

Shopping Cart
Your cart is empty
Shopping cart
Mailing List