Book description
While numerous advanced statistical approaches have recently been developed for quantitative trait loci (QTL) mapping, the methods are scattered throughout the literature. This book brings together many recent statistical techniques that address the data complexity of QTL mapping. It emphasizes the modern statistical methodology for QTL mapping as well as the statistical issues that arise during this process. The book gives the necessary biological background for statisticians without training in genetics and, likewise, covers statistical thinking and principles for geneticists.
Table of contents
- Cover
- Series
- Contents (1/2)
- Contents (2/2)
- List of Figures
- List of Tables
- Preface
- Chapter 1: Biological Background (1/6)
- Chapter 1: Biological Background (2/6)
- Chapter 1: Biological Background (3/6)
- Chapter 1: Biological Background (4/6)
- Chapter 1: Biological Background (5/6)
- Chapter 1: Biological Background (6/6)
- Chapter 2: Selected Topics in Statistics (1/10)
- Chapter 2: Selected Topics in Statistics (2/10)
- Chapter 2: Selected Topics in Statistics (3/10)
- Chapter 2: Selected Topics in Statistics (4/10)
- Chapter 2: Selected Topics in Statistics (5/10)
- Chapter 2: Selected Topics in Statistics (6/10)
- Chapter 2: Selected Topics in Statistics (7/10)
- Chapter 2: Selected Topics in Statistics (8/10)
- Chapter 2: Selected Topics in Statistics (9/10)
- Chapter 2: Selected Topics in Statistics (10/10)
- Chapter 3: Quantitative Genetics and General Issues on QTL Mapping (1/5)
- Chapter 3: Quantitative Genetics and General Issues on QTL Mapping (2/5)
- Chapter 3: Quantitative Genetics and General Issues on QTL Mapping (3/5)
- Chapter 3: Quantitative Genetics and General Issues on QTL Mapping (4/5)
- Chapter 3: Quantitative Genetics and General Issues on QTL Mapping (5/5)
- Chapter 4: One-dimensional Mapping Approaches (1/6)
- Chapter 4: One-dimensional Mapping Approaches (2/6)
- Chapter 4: One-dimensional Mapping Approaches (3/6)
- Chapter 4: One-dimensional Mapping Approaches (4/6)
- Chapter 4: One-dimensional Mapping Approaches (5/6)
- Chapter 4: One-dimensional Mapping Approaches (6/6)
- Chapter 5: Multiple Interval Mapping (1/8)
- Chapter 5: Multiple Interval Mapping (2/8)
- Chapter 5: Multiple Interval Mapping (3/8)
- Chapter 5: Multiple Interval Mapping (4/8)
- Chapter 5: Multiple Interval Mapping (5/8)
- Chapter 5: Multiple Interval Mapping (6/8)
- Chapter 5: Multiple Interval Mapping (7/8)
- Chapter 5: Multiple Interval Mapping (8/8)
- Chapter 6: QTL Mapping with Dense Markers (1/4)
- Chapter 6: QTL Mapping with Dense Markers (2/4)
- Chapter 6: QTL Mapping with Dense Markers (3/4)
- Chapter 6: QTL Mapping with Dense Markers (4/4)
- Chapter 7: Bayesian Approach to QTL Mapping (1/7)
- Chapter 7: Bayesian Approach to QTL Mapping (2/7)
- Chapter 7: Bayesian Approach to QTL Mapping (3/7)
- Chapter 7: Bayesian Approach to QTL Mapping (4/7)
- Chapter 7: Bayesian Approach to QTL Mapping (5/7)
- Chapter 7: Bayesian Approach to QTL Mapping (6/7)
- Chapter 7: Bayesian Approach to QTL Mapping (7/7)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (1/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (2/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (3/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (4/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (5/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (6/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (7/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (8/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (9/10)
- Chapter 8: Multi-trait QTL Mapping and eQTL Mapping (10/10)
- Bibliography (1/4)
- Bibliography (2/4)
- Bibliography (3/4)
- Bibliography (4/4)
- Back Cover
Product information
- Title: Statistical Methods for QTL Mapping
- Author(s):
- Release date: April 2016
- Publisher(s): Chapman and Hall/CRC
- ISBN: 9781439868317
You might also like
book
Statistics and Data Analysis for Microarrays Using R and Bioconductor, 2nd Edition
Richly illustrated in color, this bestselling text provides a clear and rigorous description of powerful analysis …
book
Contrast Data Mining
This work collects recent results from this specialized area of data mining that have previously been …
book
Using R for Numerical Analysis in Science and Engineering
This practical guide shows how to use R and its add-on packages to obtain numerical solutions …
book
Adaptive Learning Methods for Nonlinear System Modeling
Adaptive Learning Methods for Nonlinear System Modeling presents some of the recent advances on adaptive algorithms …