| Literature DB >> 22971268 |
Tzintzuni I Garcia1, Yingjia Shen, Douglas Crawford, Marjorie F Oleksiak, Andrew Whitehead, Ronald B Walter.
Abstract
BACKGROUND: The release of oil resulting from the blowout of the Deepwater Horizon (DH) drilling platform was one of the largest in history discharging more than 189 million gallons of oil and subject to widespread application of oil dispersants. This event impacted a wide range of ecological habitats with a complex mix of pollutants whose biological impact is still not yet fully understood. To better understand the effects on a vertebrate genome, we studied gene expression in the salt marsh minnow Fundulus grandis, which is local to the northern coast of the Gulf of Mexico and is a sister species of the ecotoxicological model Fundulus heteroclitus. To assess genomic changes, we quantified mRNA expression using high throughput sequencing technologies (RNA-Seq) in F. grandis populations in the marshes and estuaries impacted by DH oil release. This application of RNA-Seq to a non-model, wild, and ecologically significant organism is an important evaluation of the technology to quickly assess similar events in the future.Entities:
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Year: 2012 PMID: 22971268 PMCID: PMC3487974 DOI: 10.1186/1471-2164-13-474
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Sample information
| | |||||
|---|---|---|---|---|---|
| Location* | 1-3 | 5-8 | 4 | 4 | 4 |
| Prior Hypoxia† | locations 1,3 | location 6 | no data | no data | no data |
| Collection Date | April 2008 | April 2008 | June 28, 2010 | June 28, 2010 | June 28, 2010 |
| Individuals in Sample | 6 | 8 | 1 | 1 | 1 |
| Read Pairs | 25,757,552 | 37,299,468 | 26,416,910 | 22,400,861 | 22,920,486 |
| Single Reads | 12,856,844 | 3,849,038 | 7,802,114 | 7,017,190 | 5,451,850 |
| Aligned Fragments | 2,919,635 | 4,907,552 | 4,722,098 | 3,844,805 | 4,180,692 |
*Locations: 1) Port Aransas, TX [27°45'59" N, 97°7'33" W], 2) Cocodrie, LA [29°15'13.89" N, 90°39'45.91" W], 3) Leeville, LA [29°12'43.37" N, 90°09'08.37" W], 4) Isle Grande Terre, LA [29°16'22.93" N, 89°56'41.87" W], 5) Dauphin Island, AL [30°20'04.92" N, 88°07'57.21" W], 6) Weeks Bay, AL [30°22'41.80" N, 87°50'19.60" W], 7) Santa Rosa Island, FL [30°21'16.63" N, 87°2'46.92" W], 8) Florida State University Marine Station, FL [29°54'56.83" N, 84°30'39.07" W]. †History further detailed in Additional file 1: Table S3.
Figure 1Sample collection map. The sample collection sites are shown here on a map of the northern coast of the Gulf of Mexico. Sample sites 1-3 and 5-8 are pooled into the unexposed reference samples 1 and 2 respectively and were collected during April of 2008. Samples from site 4 were taken on June 28, 2010, when the oil had been present at the location for at least 2 weeks. The blue star indicates the position of the Deepwater Horizon blowout which occurred on April 20, 2010 and was effectively uncontrolled until July 15, 2010, though the well was not officially sealed until September 19, 2010.
Figure 2Sample Clustering. Samples are clustered by similarity of gene expression values. The blocks in the comparison matrix are scaled by color so that the most similar are dark blue and least similar are white. The samples from each treatment cluster together indicating global differences between the two treatments.
Figure 3Significant differences found in oil exposed samples unexposed samples. Each point represents the mean expression level plotted against the fold change for a given sequence. Black points are not statistically significant, and red points are significant at P < 0.01.
Figure 4Volcano plot of the oil exposed () versus the unexposed () treatments. The horizontal axis is the log2 fold change between the treatment means. The -log10 (P-value) is plotted on the vertical axis. Each sequence is represented by one point on the graph. The length of each transcript is indicated by the color of the point in reference to the color scale at the top. The transition from blue to green occurs at roughly 300bp, and from green to orange occurs at roughly 3000bp. This creates three categories with 32,527 sequences shorter than 300bp, then 83,043 sequences between 300 and 3,000bp, and finally 5,155 sequences over 3,000bp. With this many points, some occlusion is unavoidable but in general points representing longer sequences provide more statistical power than shorter sequences. Points above the dotted red line indicate sequences that pass the P < 0.01 significance threshold. The two vertical columns of points in the chart are sequences for which expression was only detected in one treatment so the log2 fold change values were artificially set to (±) 0.5 (instead of +/- infinity) as appropriate.
Figure 5Detail of selected gene expression. This is a selection of sequences from the larger volcano plot in Figure 2. Each point is labeled with a gene name or sequence description if gene name was unavailable. The genes are grouped into five general groups illustrating a particular response as indicated by color. Note that a large section of empty space has been removed from the horizontal range for legibility.
Figure 6Comparison of expression changes in RNA-Seq and microarray-based methods. The log2 fold-change in expression values measured by the RNA-Seq based method presented here are plotted against those measured by microarray analysis (microarray data from [16]). The red spots are representative of the full set of 2,290 sequences from the microarray for which a best hit was selected from the de novo assembly. The blue spots indicate sequences that were statistically significant in both comparisons to a threshold of p < 0.01. Three sequences are not shown that were down-regulated in the microarray analysis but seemed to be turned off completely in the RNA-Seq analysis as a result of exposure. Another four sequences are not shown which would have expanded the scale greatly but for which both techniques agreed in the direction of regulation if not the magnitude. A linear model is fit to the blue points, and the Pearson’s correlation is given as well.