| Literature DB >> 14604444 |
Deyun Pan1, Ning Sun, Kei-Hoi Cheung, Zhong Guan, Ligeng Ma, Matthew Holford, Xingwang Deng, Hongyu Zhao.
Abstract
BACKGROUND: To date, many genomic and pathway-related tools and databases have been developed to analyze microarray data. In published web-based applications to date, however, complex pathways have been displayed with static image files that may not be up-to-date or are time-consuming to rebuild. In addition, gene expression analyses focus on individual probes and genes with little or no consideration of pathways. These approaches reveal little information about pathways that are key to a full understanding of the building blocks of biological systems. Therefore, there is a need to provide useful tools that can generate pathways without manually building images and allow gene expression data to be integrated and analyzed at pathway levels for such experimental organisms as Arabidopsis.Entities:
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Year: 2003 PMID: 14604444 PMCID: PMC302111 DOI: 10.1186/1471-2105-4-56
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Figure 1The system architecture.
Figure 2Flow chart of major functions of PathMAPA.
Figure 3Calvin Cycle Pathway associated with gene expressions. The green ellipse is EC number, colored rectangular box is gene expression computed as the mean value of the probes that belong to the EC number. The long text box near EC 5.1.3.1 is the tool tip showing the enzyme name of EC 5.1.3.1. The user can click EC to open a new page to explore the enzyme details.
Figure 4The major tables used to compute gene expression and generate pathway graphs. The table names are at the top of boxes in the bold font. The field names are at the bottom of boxes and the join columns between two tables are in the same color with link line.
Statistical test of gene expression at pathway level.
| ATP synthesis | 0.02358 | Significant | Up |
| Photosynthesis | 0.04368 | Significant | Up |
| Glutamate metabolism | 0.00569 | Significant | Up |
| Glyoxylate and dicarboxylate metabolism | 1.0E-4 | Significant | Up |
| Carbon fixation | 1.0E-4 | Significant | Up |
| Proteasome | 0.02033 | Significant | Up |
| Oxidative phosphorylation | 0.001279 | Significant | Down |
| Tyrosine metabolism | 0.02515 | Significant | Down |
| Glycolysis or Gluconeogenesis | 0.515 | NS | |
| Citrate cycle (TCA cycle) | 0.5626 | NS | |
| Pentose phosphate pathway | 0.5711 | NS | |
| Inositol metabolism | 1.0 | NS | |
| Pentose and glucuronate interconversions | 0.7458 | NS | |
| Fructose and mannose metabolism | 1.0 | NS | |
| Galactose metabolism | 0.3579 | NS | |
| Ascorbate and aldarate metabolism | 0.8625 | NS | |
| Fatty acid biosynthesis (path 2) | 1.0 | NS | |
| Fatty acid metabolism | 0.101 | NS | |
| Sterol biosynthesis | 0.4255 | NS | |
| Bile acid biosynthesis | 0.4304 | NS | |
| Ubiquinone biosynthesis | 0.08707 | NS | |
| Androgen and estrogen metabolism | 0.6917 | NS | |
| Urea cycle and metabolism of amino groups | 0.6471 | NS | |
| Purine metabolism | 0.8689 | NS |
This is an example to identify pathways that are affected by experimental treatment for one experiment with four replicates. NS: non-significant. Significance level is 0.05.
Figure 5The integrated pathway test graph showing the light effect on gene expressions across experiments. In this figure, F1, F2, and F3 mean data file 1, file 2 and file 3 that correspond to experiment 1, experiment 2 and experiment 3, respectively. The squares in the color of red, green and gray mean up-regulated, down-regulated and non-regulated, respectively.
Statistical test of gene expression at enzyme level.
| 1.2.1.12 | Glyceraldehyde 3-phosphate dehydrogenase | S | Up |
| 2.2.1.1 | Transketolase. | S | Up |
| 2.6.1.2 | Alanine aminotransferase. | S | Up |
| 2.7.1.19 | Phosphoribulokinase. | S | Up |
| 2.7.2.3 | Phosphoglycerate kinase. | S | Up |
| 3.1.3.11 | Fructose-bisphosphatase. | S | Up |
| 3.1.3.37 | Sedoheptulose-bisphosphatase. | S | Up |
| 4.1.1.39 | Ribulose-bisphosphate carboxylase. | S | Up |
| 4.1.2.13 | Fructose-bisphosphate aldolase. | S | Up |
| 5.3.1.1 | Triosephosphate isomerase. | S | Up |
| 5.3.1.6 | Ribose-5-phosphate isomerase | S | Down |
This is an example to identify enzymes that are affected by experimental treatment for the Calvin cycle pathway. S means significant and NS means non-significant. Significance level is 0.05.
Statistical test of gene expression at gene level.
| 1.2.1.12 | Glyceraldehyde 3-phosphate dehydrogenase | At1g13440 | S | Up |
| At3g26650 | S | Up | ||
| At3g04120 | S | Down | ||
| At1g79530 | NS | |||
| At1g16300 | S | Up | ||
| At1g12900 | S | Up | ||
| At1g42970 | NS | |||
| 2.2.1.1 | Transketolase. | At2g45290 | NS | |
| At3g60750 | S | Up | ||
| 2.6.1.2 | Alanine aminotransferase. | At1g23310 | S | Up |
| 2.7.1.19 | Phosphoribulokinase. | At1g32060 | S | Up |
| 2.7.2.3 | Phosphoglycerate kinase. | At1g56190 | S | Up |
| At1g79550 | S | Down | ||
| At3g12780 | S | Up | ||
| 3.1.3.11 | Fructose-bisphosphatase. | At1g43670 | NS | |
| At3g54050 | S | Up | ||
| 3.1.3.37 | Sedoheptulose-bisphosphatase. | At3g55800 | S | Up |
| 4.1.1.39 | Ribulose-bisphosphate carboxylase. | At1g67090 | S | Up |
| At5g38430 | S | Up | ||
| At5g38410 | S | Up | ||
| At5g38420 | S | Up | ||
| 4.1.2.13 | Fructose-bisphosphate aldolase. | At2g01140 | NS | |
| At2g21330 | S | Up | ||
| At2g36460 | NS | |||
| At3g52930 | S | Up | ||
| At4g26530 | NS | |||
| At4g38970 | S | Up | ||
| 5.3.1.1 | Triosephosphate isomerase. | At3g55440 | NS | |
| At2g21170 | S | Up |
This is an example to identify genes that are affected by experimental treatment for the Calvin cycle pathway. S means significant and NS means non-significant. Significance level is 0.05.