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E-Book

E-Book, Englisch, 280 Seiten

Reihe: Chapman & Hall/CRC Texts in Statistical Science

Reilly Statistics in Human Genetics and Molecular Biology


1. Auflage 2011
ISBN: 978-1-4200-7264-8
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)

E-Book, Englisch, 280 Seiten

Reihe: Chapman & Hall/CRC Texts in Statistical Science

ISBN: 978-1-4200-7264-8
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)



Focusing on the roles of different segments of DNA, Statistics in Human Genetics and Molecular Biology provides a basic understanding of problems arising in the analysis of genetics and genomics. It presents statistical applications in genetic mapping, DNA/protein sequence alignment, and analyses of gene expression data from microarray experiments.

The text introduces a diverse set of problems and a number of approaches that have been used to address these problems. It discusses basic molecular biology and likelihood-based statistics, along with physical mapping, markers, linkage analysis, parametric and nonparametric linkage, sequence alignment, and feature recognition. The text illustrates the use of methods that are widespread among researchers who analyze genomic data, such as hidden Markov models and the extreme value distribution. It also covers differential gene expression detection as well as classification and cluster analysis using gene expression data sets.

Ideal for graduate students in statistics, biostatistics, computer science, and related fields in applied mathematics, this text presents various approaches to help students solve problems at the interface of these areas.

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Zielgruppe


Graduate students in statistics, biostatistics, and computer science.


Autoren/Hrsg.


Weitere Infos & Material


Basic Molecular Biology for Statistical Genetics and Genomics

Mendelian genetics
Cell biology
Genes and chromosomes
DNA
RNA
Proteins
Some basic laboratory techniques

Bibliographic notes and further reading
Basics of Likelihood-Based Statistics
Conditional probability and Bayes theorem
Likelihood-based inference
Maximum likelihood estimates

Likelihood ratio tests
Empirical Bayes analysis

Markov chain Monte Carlo sampling

Bibliographic notes and further reading
Markers and Physical Mapping

Introduction
Types of markers
Physical mapping of genomes
Radiation hybrid mapping
Basic Linkage Analysis

Production of gametes and data for genetic mapping

Some ideas from population genetics
The idea of linkage analysis
Quality of genetic markers
Two point parametric linkage analysis
Multipoint parametric linkage analysis

Computation of pedigree likelihoods
Extensions of the Basic Model for Parametric Linkage

Introduction
Penetrance
Phenocopies
Heterogeneity in the recombination fraction
Relating genetic maps to physical maps

Multilocus models
Nonparametric Linkage and Association Analysis

Introduction

Sib-pair method

Identity by descent

Affected sib-pair (ASP) methods
QTL mapping in human populations
A case study: dealing with heterogeneity in QTL mapping

Linkage disequilibrium

Association analysis
Sequence Alignment

Sequence alignment

Dot plots

Finding the most likely alignment

Dynamic programming

Using dynamic programming to find the alignment

Global versus local alignments
Significance of Alignments and Alignment in Practice
Statistical significance of sequence similarity

Distributions of maxima of sets of iid random variables

Rapid methods of sequence alignment

Internet resources for computational biology
Hidden Markov Models

Statistical inference for discrete parameter finite state space Markov chains

Hidden Markov models

Estimation for hidden Markov models

Parameter estimation

Integration over the model parameters
Feature Recognition in Biopolymers

Gene transcription

Detection of transcription factor binding sites

Computational gene recognition
Multiple Alignment and Sequence Feature Discovery

Introduction
Dynamic programming
Progressive alignment methods
Hidden Markov models
Block motif methods
Enumeration based methods

A case study: detection of conserved elements in mRNA
Statistical Genomics
Functional genomics

The technology

Spotted cDNA arrays

Oligonucleotide arrays

Normalization
Detecting Differential Expression

Introduction

Multiple testing and the false discovery rate

Significance analysis for microarrays

Model based empirical Bayes approach

A case study: normalization and differential detection
Cluster Analysis in Genomics

Introduction
Some approaches to cluster analysis

Determining the number of clusters

Biclustering
Classification in Genomics

Introduction

Cross-validation

Methods for classification
Aggregating classifiers

Evaluating performance of a classifier
References
Index
Exercises appear at the end of each chapter.


Cavan Reilly is associate professor of biostatistics at the University of Minnesota.



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