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Statistical Methods in Molecular Biology

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Cover of 'Statistical Methods in Molecular Biology'

Table of Contents

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    Book Overview
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    Chapter 1 Experimental Statistics for Biological Sciences
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    Chapter 2 Nonparametric Methods for Molecular Biology
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    Chapter 3 Basics of Bayesian Methods
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    Chapter 4 The Bayesian t -Test and Beyond
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    Chapter 5 Sample size and power calculation for molecular biology studies.
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    Chapter 6 Designs for linkage analysis and association studies of complex diseases.
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    Chapter 7 Introduction to Epigenomics and Epigenome-Wide Analysis
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    Chapter 8 Exploration, Visualization, and Preprocessing of High–Dimensional Data
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    Chapter 9 Introduction to the Statistical Analysis of Two-Color Microarray Data
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    Chapter 10 Building networks with microarray data.
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    Chapter 11 Support Vector Machines for Classification: A Statistical Portrait
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    Chapter 12 An Overview of Clustering Applied to Molecular Biology
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    Chapter 13 Hidden Markov Model and Its Applications in Motif Findings
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    Chapter 14 Dimension Reduction for High-Dimensional Data
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    Chapter 15 Introduction to the Development and Validation of Predictive Biomarker Models from High-Throughput Data Sets
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    Chapter 16 Multi-gene Expression-based Statistical Approaches to Predicting Patients’ Clinical Outcomes and Responses
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    Chapter 17 Two-Stage Testing Strategies for Genome-Wide Association Studies in Family-Based Designs
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    Chapter 18 Statistical Methods for Proteomics
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    Chapter 19 Statistical methods for integrating multiple types of high-throughput data.
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    Chapter 20 A Bayesian Hierarchical Model for High-Dimensional Meta-analysis
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    Chapter 21 Methods for Combining Multiple Genome-Wide Linkage Studies
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    Chapter 22 Improved reporting of statistical design and analysis: guidelines, education, and editorial policies.
  24. Altmetric Badge
    Chapter 23 Stata Companion
Attention for Chapter 21: Methods for Combining Multiple Genome-Wide Linkage Studies
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Chapter title
Methods for Combining Multiple Genome-Wide Linkage Studies
Chapter number 21
Book title
Statistical Methods in Molecular Biology
Published in
Methods in molecular biology, January 2010
DOI 10.1007/978-1-60761-580-4_21
Pubmed ID
Book ISBNs
978-1-60761-578-1, 978-1-60761-580-4
Authors

Trecia A. Kippola, Stephanie A. Santorico, Kippola, Trecia A., Santorico, Stephanie A.

Abstract

Cardiovascular disease, metabolic syndrome, schizophrenia, diabetes, bipolar disorder, and autism are a few of the numerous complex diseases for which researchers are trying to decipher the genetic composition. One interest of geneticists is to determine the quantitative trait loci (QTLs) that underlie the genetic portion of these diseases and their risk factors. The difficulty for researchers is that the QTLs underlying these diseases are likely to have small to medium effects which will necessitate having large studies in order to have adequate power. Combining information across multiple studies provides a way for researchers to potentially increase power while making the most of existing studies.Here, we will explore some of the methods that are currently being used by geneticists to combine information across multiple genome-wide linkage studies. There are two main types of meta-analyses: (1) those that yield a measure of significance, such as Fisher's p-value method along with its extensions/modifications and the genome search meta-analysis (GSMA) method, and (2) those that yield a measure of a common effect size and the corresponding standard error, such as model-based methods and Bayesian methods. Some of these methods allow for the assessment of heterogeneity. This chapter will conclude with a recommendation for usage.

Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 51 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
South Africa 1 2%
Unknown 50 98%

Demographic breakdown

Readers by professional status Count As %
Student > Ph. D. Student 12 24%
Researcher 11 22%
Professor > Associate Professor 4 8%
Student > Doctoral Student 3 6%
Student > Master 3 6%
Other 6 12%
Unknown 12 24%
Readers by discipline Count As %
Agricultural and Biological Sciences 13 25%
Medicine and Dentistry 11 22%
Neuroscience 4 8%
Biochemistry, Genetics and Molecular Biology 3 6%
Psychology 2 4%
Other 4 8%
Unknown 14 27%