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In Silico Tools for Gene Discovery

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Cover of 'In Silico Tools for Gene Discovery'

Table of Contents

  1. Altmetric Badge
    Book Overview
  2. Altmetric Badge
    Chapter 1 Accessing and Selecting Genetic Markers from Available Resources
  3. Altmetric Badge
    Chapter 2 In Silico Tools for Gene Discovery
  4. Altmetric Badge
    Chapter 3 Association Mapping
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    Chapter 4 The ForeSee (4C) Approach for Integrative Analysis in Gene Discovery
  6. Altmetric Badge
    Chapter 5 R Statistical Tools for Gene Discovery
  7. Altmetric Badge
    Chapter 6 In silico PCR analysis.
  8. Altmetric Badge
    Chapter 7 In Silico Analysis of the Exome for Gene Discovery
  9. Altmetric Badge
    Chapter 8 In Silico Knowledge and Content Tracking
  10. Altmetric Badge
    Chapter 9 Application of Gene Ontology to Gene Identification
  11. Altmetric Badge
    Chapter 10 Phenotype mining for functional genomics and gene discovery.
  12. Altmetric Badge
    Chapter 11 Conceptual Thinking for In Silico Prioritization of Candidate Disease Genes
  13. Altmetric Badge
    Chapter 12 Web Tools for the Prioritization of Candidate Disease Genes
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    Chapter 13 Comparative View of In Silico DNA Sequencing Analysis Tools
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    Chapter 14 Mutation Surveyor: An In Silico Tool for Sequencing Analysis
  16. Altmetric Badge
    Chapter 15 In Silico Searching for Disease-Associated Functional DNA Variants
  17. Altmetric Badge
    Chapter 16 In Silico Prediction of Transcriptional Factor-Binding Sites
  18. Altmetric Badge
    Chapter 17 In silico prediction of splice-affecting nucleotide variants.
  19. Altmetric Badge
    Chapter 18 In Silico Tools for qPCR Assay Design and Data Analysis
  20. Altmetric Badge
    Chapter 19 RNA Structure Prediction
  21. Altmetric Badge
    Chapter 20 In Silico Prediction of Post-translational Modifications
  22. Altmetric Badge
    Chapter 21 In Silico Tools for Gene Discovery
Attention for Chapter 10: Phenotype mining for functional genomics and gene discovery.
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Chapter title
Phenotype mining for functional genomics and gene discovery.
Chapter number 10
Book title
In Silico Tools for Gene Discovery
Published in
Methods in molecular biology, January 2011
DOI 10.1007/978-1-61779-176-5_10
Pubmed ID
Book ISBNs
978-1-61779-175-8, 978-1-61779-176-5
Authors

Philip Groth, Ulf Leser, Bertram Weiss, Groth, Philip, Leser, Ulf, Weiss, Bertram

Abstract

In gene prediction, studying phenotypes is highly valuable for reducing the number of locus candidates in association studies and to aid disease gene candidate prioritization. This is due to the intrinsic nature of phenotypes to visibly reflect genetic activity, making them potentially one of the most useful data types for functional studies. However, systematic use of these data has begun only recently. 'Comparative phenomics' is the analysis of genotype-phenotype associations across species and experimental methods. This is an emerging research field of utmost importance for gene discovery and gene function annotation. In this chapter, we review the use of phenotype data in the biomedical field. We will give an overview of phenotype resources, focusing on PhenomicDB--a cross-species genotype-phenotype database--which is the largest available collection of phenotype descriptions across species and experimental methods. We report on its latest extension by which genotype-phenotype relationships can be viewed as graphical representations of similar phenotypes clustered together ('phenoclusters'), supplemented with information from protein-protein interactions and Gene Ontology terms. We show that such 'phenoclusters' represent a novel approach to group genes functionally and to predict novel gene functions with high precision. We explain how these data and methods can be used to supplement the results of gene discovery approaches. The aim of this chapter is to assist researchers interested in understanding how phenotype data can be used effectively in the gene discovery field.

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Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 12 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
Brazil 1 8%
Unknown 11 92%

Demographic breakdown

Readers by professional status Count As %
Student > Master 2 17%
Researcher 2 17%
Student > Ph. D. Student 2 17%
Other 1 8%
Professor 1 8%
Other 1 8%
Unknown 3 25%
Readers by discipline Count As %
Agricultural and Biological Sciences 5 42%
Medicine and Dentistry 2 17%
Computer Science 1 8%
Biochemistry, Genetics and Molecular Biology 1 8%
Unknown 3 25%
Attention Score in Context

Attention Score in Context

This research output has an Altmetric Attention Score of 1. This is our high-level measure of the quality and quantity of online attention that it has received. This Attention Score, as well as the ranking and number of research outputs shown below, was calculated when the research output was last mentioned on 26 October 2011.
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#15,237,301
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Outputs from Methods in molecular biology
#5,279
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#140,031
of 180,260 outputs
Outputs of similar age from Methods in molecular biology
#141
of 230 outputs
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