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Help
There are following six different tools available to query, retrieve and analyze
the information stored in this Bio Resource. These tools provide multiple options
for analyzing results of microarray experiments and developing a biological interpretation of the results.
Genes : Collective information from various public
biological
resources for genes
- Input Fields:
- This search option requires input of data as Genbank Accessions, Unigene Cluster IDs, Gene names or aliases. Please select an organism and the type of input data you are going to provide before submitting the data.
- For batch search, copy and paste the input data or upload a text file using the Browse button. Please make sure all the accessions are in one column and each line has only one accession.
- Output Fields:
- Since the resource contains information associated with genes represented in Unigene or Locus Link, if the input data is not associated with any of these, the search script will return result as Accession not present in the database.
- The data will be returned in a table form. The first column of the table is the user given gene identifier followed by data collected from Unigene, Locus link, OMIM, NCBI dbEST, protein domains from NCBI CDD, Gene Ontology, Pathways (Kegg, Genmapp and Biocarta) and Protein interactions (BIND). The data is hyper linked to more detail information.

- The default option displays the data in the order of the input data. Currently the only sort option that is available is by chromosome location but there will be more in future.
- To download the results in an excel format, go to the link at the top of the page.
Go terms : Classify Genes based on Gene Ontology
Terms
- Input Fields:
- This requires input of data as Genbank accessions in a column with each accession on a separate line. For batch search, copy and paste the input data or upload a text file using the Browse button.
- Along with the accessions you have an option to upload the signal to reference (log2)ratios for your experiments. Up to four columns of values are allowed along with the accessions. To upload the data in an excel file: save the excel file with column of accessions followed by the experimental values as a tab delimited file and then upload using the Browse button.
- If you are uploading the experimental values make sure you choose the 'yes' option and the number of columns of experimental values that are being entered (this does not take into account the accession column).
- Output & Explanation of results :
- This will return back the GO terms associated with each accession, organized by cellular component, process and function ontologies. The output is returned in three different formats:
- a) Output 1: The results will be organized based on GO terms and the accessions associated with it will have the expression value (if given by the user) associated with it in color according to the chosen scheme.
- Gene Ontology being a hierarchical classification, there are multiple biological functions that are associated with any given gene, these other associated GO terms with a particular gene are displayed alongside in a second column. Clicking on any of these terms will take you to the accessions grouped under those terms.
- b) Output 2: The Gene Ontology terms are organized based on the order of number of accessions from the given dataset that are associated with Go terms for any ontology. This will give you the most represented Gene Ontology terms mapped to the accessions in your dataset. If expression values are uploaded then the GO terms will be colored based on the expression value and will help you in identifying the associated upregulated and the downregulated GO functions. If more than one experimental dataset values are provided, coloring would be done based on the first set of values.
- Both a) and b) are downloadable in two different excel formats.
Tissues : View tissue specific expression for
genes
- Input Fields:
- This search option requires input of data as Genbank Accessions/Unigene Cluster IDs/Gene names or aliases. Please select an organism and the type of input data you are going to provide before submitting the data.
- For batch search, copy and paste the input data or upload a text file using the Browse button. Please make sure all the accessions are in one column and each line has only one accession.
- Output & Explanation of results :
- The results for tissue/organ specific expression of each gene are shown in a graph format. The unigene and the number of est sequences (total count) associated with the unigene is shown at the top, followed by the graph. If the accessions you provided are not associated with any unigene then the results will not be returned.
- The data for tissue specific expression has been compiled from NCBI dbEST and Unigene sets for the human and mouse genes. Tissues have been further grouped by using the Anatomy Concept hierarchy of Medical Subject Headings MESH terms that is used to index citations in the MEDLINE database. The 17 MESH headings are shown in different colors in the graph legend. Details about specific tissues/organs under a heading and count of ESTs that make up the distribution are represented on the left of the graph.
- Some of the ESTs that fall into undecided section are those for which dbest reports didn't provide proper tissue identification. Such ESTs are counted under Data not available.
- If an EST belongs to more than one or many different tissues/MESH Headings then it is counted in all those tissues. Thus for some of the genes, the total count shown at the top (that represents number of ESTs present in a Unigene) may be less than the total number of sequences shown to be present for all the tissues.
- The X-axis of the graph consists of the 17 terms that are part of the concept hierarchy Anatomy and the Y axis represents the number of sequences. Y Scale is based upon the max number of ESTs under a Mesh Heading found in that particular gene. This tool is particularly useful for finding genes that are uniquely or maximally expressed in any one given tissue or organ.

Pathway Miner - Classify and Extract Network of
Associated Genes/Proteins based on Kegg, Biocarta and GenMapp Pathways.
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