Difference between revisions of "Known Issues"
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<h3>java.lang.NullPointerException (GSEA v1)</h3> | <h3>java.lang.NullPointerException (GSEA v1)</h3> | ||
<span style="font-weight: bold;">Problem</span>: By default, a gene set enrichment analysis uses phenotype permutations. If you have too few samples for phenotype permutation, the following error occurs:<br /> | <span style="font-weight: bold;">Problem</span>: By default, a gene set enrichment analysis uses phenotype permutations. If you have too few samples for phenotype permutation, the following error occurs:<br /> | ||
− | <br /> | + | <br /><tt> |
---- Stack Trace ----<br /> | ---- Stack Trace ----<br /> | ||
# of exceptions: 1<br /> | # of exceptions: 1<br /> | ||
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at xtools.gsea.Gsea.execute(Gsea.java:111)<br /> | at xtools.gsea.Gsea.execute(Gsea.java:111)<br /> | ||
at edu.mit.broad.xbench.tui.TaskManager$ToolRunnable.run(TaskManager.java:468)<br /> | at edu.mit.broad.xbench.tui.TaskManager$ToolRunnable.run(TaskManager.java:468)<br /> | ||
− | at java.lang.Thread.run(Unknown Source)<br /> | + | at java.lang.Thread.run(Unknown Source)</tt><br /> |
<br /> | <br /> | ||
<span style="font-weight: bold;">Solution</span>: Corrected in GSEA v2. In GSEA v1, use gene_set permutation rather than phenotype permutation. For more information, see the description of the <em>Permutation type</em> parameter on the [http://www.broad.mit.edu/gsea/doc/GSEAUserGuideFrame.html?Run_GSEA_Page Run GSEA Page] in the <em style="">GSEA User Guide</em>.<br /> | <span style="font-weight: bold;">Solution</span>: Corrected in GSEA v2. In GSEA v1, use gene_set permutation rather than phenotype permutation. For more information, see the description of the <em>Permutation type</em> parameter on the [http://www.broad.mit.edu/gsea/doc/GSEAUserGuideFrame.html?Run_GSEA_Page Run GSEA Page] in the <em style="">GSEA User Guide</em>.<br /> | ||
<hr width="100%" size="2" /> | <hr width="100%" size="2" /> | ||
+ | |||
<h1>GSEA on Linux</h1> | <h1>GSEA on Linux</h1> | ||
<h3>Browser links do not work under Linux</h3> | <h3>Browser links do not work under Linux</h3> |
Revision as of 10:19, 13 May 2009
<a href="http://www.broad.mit.edu/gsea/">GSEA Home</a> | <a href="http://www.broad.mit.edu/gsea/downloads.jsp">Downloads</a> | <a href="http://www.broad.mit.edu/gsea/msigdb/">Molecular Signatures Database</a> | Documentation | <a href="http://www.broad.mit.edu/gsea/contact.jsp">Contact</a>
Contents
- 1 GSEA version 2
- 1.1 OutOfMemoryError when running GSEA
- 1.2 Error in memory.size when running GSEA-R
- 1.3 Warning ('\%' is an unrecognized escape) when running GSEA-R
- 1.4 Firewall / FTP connection issues for CHIP annotations or Gene Set Databases
- 1.5 Error running leading edge analysis
- 1.6 "No probe called" error in log while running GSEA
- 2 GSEA version 1
- 3 GSEA on Linux
GSEA version 2
OutOfMemoryError when running GSEA
Problem: When running an analysis in GSEA. the following error occurs:
---- Stack Trace ----
- of exceptions: 1
Java heap space------
java.lang.OutOfMemoryError: Java heap space
The error is either due to improper memory allocation, or because you have reached the limits on your machine.
Solutions:
- Start GSEA by clicking the Launch button on the Downloads page of the GSEA web site.
- Run GSEA on a more powerful computer.
- Use no more than 1,000 permutations.
- First, collapse gene identifiers to symbols using
Chip2Chip tool,
then run GSEA on the collapsed data set.
When running GSEA on the collapsed dataset, make sure that 'Collapse dataset(s)' = false - When running GSEA from the command line, use the -Xmx option to specify sufficient maximum amount of memory for the program.
Error in memory.size when running GSEA-R
Problem: When running the example programs provided for R, the following error occurs:
[1] " *** Running GSEA Analysis..."
Error in memory.size(size) : don't be silly!: your machine has a 4Gb address limit
Solution: This is produced by the following line early in the GSEA.1.R file:
memory.limit(6000000000)
This line set the memory limit to a large size as a work around to a platform problem with an earlier R version.
The easiest fix is just to comment out that line:
# memory.limit(6000000000)
This will allocate the default amount of memory. If after this change the program runs out of memory, change the line to:
memory.limit(max. size in Mbytes available)
Warning ('\%' is an unrecognized escape) when running GSEA-R
Problem: When running the example programs provided for R, the following warnings occur:
1: '\%' is an unrecognized escape in a character string
2: unrecognized escape removed from "Tag \%"
3: '\%' is an unrecognized escape in a character string
4: unrecognized escape removed from "Gene \%"
5: '\%' is an unrecognized escape in a character string
6: unrecognized escape removed from "\%"
7: '\%' is an unrecognized escape in a character string
8: unrecognized escape removed from " \%)"
9: '\.' is an unrecognized escape in a character string
10: '\.' is an unrecognized escape in a character string
11: unrecognized escapes removed from "\.report\."
12: '\.' is an unrecognized escape in a character string
13: '\.' is an unrecognized escape in a character string
14: unrecognized escapes removed from "\.report\."
15: '\.' is an unrecognized escape in a character string
16: unrecognized escape removed from "\."
Solution: You can ignore these warning messages.
They occur when you have R version 2.5 and higher installed.
Firewall / FTP connection issues for CHIP annotations or Gene Set Databases
Problem: When you try to access the CHIP annotation files or the Gene Set Database / MSigDB Browser you see an error t the effect: "Error listing Broad website// Connection reset//"
Cause: This is probably because you are behind a network firewall or someother network configuration that prevents you from accessing FTP servers on port 500. The Broad chip files and gene sets are placed on a publically accessible Broad FTP server. The GSEA Java Desktop program tries to access the Broad FTP site to provide you easy access to the files but the network configuration blocks access.
Work-around:
(1) See if you can temporarilly disable your firewall when using GSEA
(2) Consult with your local network administrator to see if they have any suggestions or prior experience such issues
(3) Download the .CHIP, GeneSet databases and MSigDB XML file from the link below to your local file system. Expand it with WinZIP and then load the files into the program as *local files* rather than over the network. You will also have to turn off the internet connection mode. For this, go to Preferences -> General -> uncheck the box at 'Connect over the internet'
This large ZIP file contains ALL current (as of April 8, 2008) .CHIP annotations, GENE_SET databases and MSigDB.xml file:
<a href="http://www.broad.mit.edu/gsea/resources/files_to_download_locally_on_firewall_issues.zip">www.broad.mit.edu/gsea/resources/files_to_download_locally_on_firewall_issues.zip</a>
We are working on a URL based access for the next release.
Error running leading edge analysis
Problem: When you select a report for leading edge analysis, the following error sometimes occurs:
java.lang.NullPointerException
at org.genepattern.gsea.LeadingEdgeWidget.setData(EIKM)
at xapps.gsea.LeadingEdgeReportWidget.setData(EIKM)
at xapps.gsea.LeadingEdgeReportWidget$1.run(EIKM)
at java.lang.Thread.run(Unknown Source)
Solution: Corrected in GSEA v2.0.1.
"No probe called" error in log while running GSEA
Problem: When you run GSEA, sometimes the following errors appear in the log file:
ERROR - No Probe called: USP9X /// USP9Y on this chip (chip name is >GENE_SYMBOL<)
ERROR - Turning off subsequent error notifications
Solution: You can ignore these errors. The three slashes (///) indicates that the chip file contains ambiguous mappings, where a probe on the chip cannot be mapped to exactly one HUGO gene symbol. GSEA displays this error and ignores these probes.
GSEA version 1
java.lang.OutOfMemoryError (GSEA v1)
Problem: On the Mac, you can run GSEA from the command line, but when you attempt to use the GSEA application from the desktop you receive errors similar to the following:
Full Error Message ----
na
Stack Trace ----
- of exceptions: 1
null------
java.lang.OutOfMemoryError
Solution: Corrected in GSEA v2. In GSEA v1, this is a memory issue with the gsea installer on the Mac. As a workaround, use the following command to launch the GSEA application rather than double clicking the icon:
java -Xmx1800m xapps.gsea.Main
java.lang.NullPointerException (GSEA v1)
Problem: By default, a gene set enrichment analysis uses phenotype permutations. If you have too few samples for phenotype permutation, the following error occurs:
Stack Trace ----
- of exceptions: 1
null------
java.lang.NullPointerException
at edu.mit.broad.genome.alg.DatasetStatsCore.calc2ClassCategoricalMetricMarkerScores(DatasetStatsCore.java:236)
at edu.mit.broad.genome.alg.markers.PermutationTestBuilder.<init>(PermutationTestBuilder.java:94)
at edu.mit.broad.genome.alg.gsea.KSTests.shuffleTemplate_canned_templates(KSTests.java:360)
at edu.mit.broad.genome.alg.gsea.KSTests.shuffleTemplate(KSTests.java:291)
at edu.mit.broad.genome.alg.gsea.KSTests.executeGsea(KSTests.java:156)
at edu.mit.broad.genome.alg.gsea.KSTests.executeGsea(KSTests.java:130)
at xtools.gsea.AbstractGsea2Tool.execute_one(AbstractGsea2Tool.java:103)
at xtools.gsea.AbstractGsea2Tool.execute_one_with_reporting(AbstractGsea2Tool.java:137)
at xtools.gsea.Gsea.execute(Gsea.java:111)
at edu.mit.broad.xbench.tui.TaskManager$ToolRunnable.run(TaskManager.java:468)
at java.lang.Thread.run(Unknown Source)
Solution: Corrected in GSEA v2. In GSEA v1, use gene_set permutation rather than phenotype permutation. For more information, see the description of the Permutation type parameter on the Run GSEA Page in the GSEA User Guide.
GSEA on Linux
Browser links do not work under Linux
Problem: When running the GSEA desktop application under Linux, buttons and links that would normally open a browser window do not open the browser window.
Work-around: After running an analysis, you cannot click on the Success link to display the result. However, you can go to the directory that contains the analysis report output and open the index.html file in that directory.