Difference between revisions of "User:Daly"

(Visualize Gene Expression)
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Visualization tools provide a view of the chip(s) under investigation and can be used for ascertaining the quality of the data. The phenotype and gene panel can be used to limit display.  The images can be saved and exported.
 
Visualization tools provide a view of the chip(s) under investigation and can be used for ascertaining the quality of the data. The phenotype and gene panel can be used to limit display.  The images can be saved and exported.
  
The Microarray view can be used to inspect each separate microarray using the scroll bar.
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The '''Microarray View''' can be used to inspect each separate microarray using the scroll bar.
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The Tabular Microarray Panel can be used to see data in spreadsheet format.
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'''(insert image)'''
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The '''Tabular Microarray Panel''' can be used to see data in spreadsheet format. One row is created per individual marker/probe and one column per microarray.
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'''(insert image)'''
  
 
== Filter and Normalize Data==
 
== Filter and Normalize Data==

Revision as of 15:58, 14 February 2006

Overview

'(who uses this , why/ what for? background )

geWorkbench is an open-source bioinformatics platform that offers a comprehensive and extendible collection of tools for the management, analysis, visualization and annotation of biomedical data.

Benefits include:

  • Integration with existing bioinformatics modules for analysis and visualization.
  • Support for a variety of genomic data including microarrays, sequences, pathways, networks, alignments and phenotypes.
  • Access to remote servers and clusters for the performance of computationally intensive calculations.
  • Accesses analyses with biological annotations from the National Cancer Institute.
  • Flexible import options: Allows user to merge files from various sources.
  • Community: decribe this aspect
  • Insert developer benefit ( plugin)



Slide1.gif

Tutorials

The following { insert description)

Getting Started

  • Starting the application
  • GUI elements
    • Panels
    • Navigation

Loading Data

  • Data formats

Working with Marker and Phenotype Panels

Creating panels

We can now assign phenotypes to each chip. We will place the phenotypes in the default group, however you can create new phenotype groups by pushing the New button on the Phenotype Panel at lower left.

Here we select and label arrays in the Phenotype Panel which contain samples from the congestive cardiomyopathy disease state...

T PanelLabelCardio.png


Next, we can similarly label the remaining arrays as "Normal". We have also checked boxes to indicate that these groups of arrays are "Active". Various analysis and visualization components can be set to only use/display activated arrays or markers.

T PhenotypesPriorToCase.png


For statistical tests such as the t-test the Case and Control groups can be specified. This is done by left-clicking on the thumb-tack icon in front of the phenotype name. Here we are specifying the disease arrays as the "Case". The remaining "Normal" arrays are by default labeled control. T PhenotypeSettingCase.png


A red thumbtack indicates the arrays have been specified as "Case".

T PhenotypeCaseSet.png


Visualize Panels

Here we select the relative display type.

T ChangePrefsToRelative.png


Returning to the Open File dialog as we before by right-clicking on the project entry, we will select the "cardiomyopathy.exp" file we previously saved...

T OpenCardio.png


Resulting in the following colorful display of the array data for the first array....

T RelativeDisplay.png

Visualize Gene Expression

Visualization tools provide a view of the chip(s) under investigation and can be used for ascertaining the quality of the data. The phenotype and gene panel can be used to limit display. The images can be saved and exported.

The Microarray View can be used to inspect each separate microarray using the scroll bar.


(insert image)

The Tabular Microarray Panel can be used to see data in spreadsheet format. One row is created per individual marker/probe and one column per microarray.


(insert image)

Filter and Normalize Data

Clustering Gene Expression Data

  • Hierarchical Clustering
  • Self Organizing Map (SOM)

Differential Expression

  • T Test
  • Multi Test
    • Volcano Plot
    • Color Mosaic

Regulatory Network

  • Reverse Engineering
  • Cytoscape

Integrated Annotation Information

Enrichment Analysis

  • Go Term
    • Go Miner

Sequence Analysis

  • Sequence Retrieval
  • Sequence Homology Analysis
    • Blast
    • Other

Pattern Discovery

  • Position Histogram

Promoter Analysis