Difference between revisions of "BIN-Data integration"

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The biomaRt bioconductor package has a good quick start introduction to "Functional Annotation".
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The <code>biomartr</code> bioconductor package is a second-generation R interface to BioMart that extends the <code>biomaRt</code> package. It has a good quick start introduction to "Functional Annotation".
 
* Navigate to https://cran.r-project.org/web/packages/biomartr/vignettes/Functional_Annotation.html
 
* Navigate to https://cran.r-project.org/web/packages/biomartr/vignettes/Functional_Annotation.html
 
* Work through the tutorial.
 
* Work through the tutorial.

Revision as of 23:09, 9 October 2017

Data Integration


 

Keywords:  Integration of biological data; Identifier mapping; Entrez; UniProt; BioMart. ID mapping service and match() function.


 



 


 


Abstract

Data integration is a challenging problem. This unit discusses the issues and how the large databases solve this with NCBI's Entrez system and the EBI's UniProt Knoledeg Base and BioMart System. R coding exercises put some technical issues in practice.


 


This unit ...

Prerequisites

You need to complete the following units before beginning this one:


 


Objectives

This unit will ...

  • ... introduce issue of database integration and how the NCBI and the EBI address this;
  • ... demonstrate use of Entrez, UniProt and BioMart;
  • ... teach ID mapping techniques with R.


 


Outcomes

After working through this unit you ...

  • ... are familar with the NCBI and EBI query and retrieval systems;
  • ... can use BioMart bot online and in R code;
  • ... can retrieve ID cross references via scripts and match IDs in large tables with R's match() function.


 


Deliverables

  • Time management: Before you begin, estimate how long it will take you to complete this unit. Then, record in your course journal: the number of hours you estimated, the number of hours you worked on the unit, and the amount of time that passed between start and completion of this unit.
  • Journal: Document your progress in your Course Journal. Some tasks may ask you to include specific items in your journal. Don't overlook these.
  • Insights: If you find something particularly noteworthy about this unit, make a note in your insights! page.


 


Evaluation

Evaluation: NA

This unit is not evaluated for course marks.


 


Contents


 

Task:

  • Visit the UniProt ID mapping service, enter NP_010227 into the identifier field, select options from RefSeq Protein to UniProtKB and click Go.
  • Confirm that this retrieved the right identifier.
  • Also note that you could have searched with a list of IDs, and downloaded the results, e.g. for further processing in R.


 

Task:

 
  • Open RStudio and load the ABC-units R project. If you have loaded it before, choose FileRecent projectsABC-Units. If you have not loaded it before, follow the instructions in the RPR-Introduction unit.
  • Choose ToolsVersion ControlPull Branches to fetch the most recent version of the project from its GitHub repository with all changes and bug fixes included.
  • Type init() if requested.
  • Open the file BIN-Data_integration.R and follow the instructions.


 

Note: take care that you understand all of the code in the script. Evaluation in this course is cumulative and you may be asked to explain any part of code.


 


 

Task:
The biomartr bioconductor package is a second-generation R interface to BioMart that extends the biomaRt package. It has a good quick start introduction to "Functional Annotation".



 


Further reading, links and resources

Xie & Ahn (2010) Statistical methods for integrating multiple types of high-throughput data. Methods Mol Biol 620:511-29. (pmid: 20652519)

PubMed ] [ DOI ] Large-scale sequencing, copy number, mRNA, and protein data have given great promise to the biomedical research, while posing great challenges to data management and data analysis. Integrating different types of high-throughput data from diverse sources can increase the statistical power of data analysis and provide deeper biological understanding. This chapter uses two biomedical research examples to illustrate why there is an urgent need to develop reliable and robust methods for integrating the heterogeneous data. We then introduce and review some recently developed statistical methods for integrative analysis for both statistical inference and classification purposes. Finally, we present some useful public access databases and program code to facilitate the integrative analysis in practice.


 


Notes


 


Self-evaluation

 



 




 

If in doubt, ask! If anything about this learning unit is not clear to you, do not proceed blindly but ask for clarification. Post your question on the course mailing list: others are likely to have similar problems. Or send an email to your instructor.



 

About ...
 
Author:

Boris Steipe <boris.steipe@utoronto.ca>

Created:

2017-08-05

Modified:

2017-08-05

Version:

1.0

Version history:

  • 1.0 First live version.
  • 0.1 First stub

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