| Literature DB >> 20492649 |
Dinesh K Barupal1, Tobias Kind, Shankar L Kothari, Do Yup Lee, Oliver Fiehn.
Abstract
BACKGROUND: Biofuels derived from algae biomass and algae lipids might reduce dependence on fossil fuels. Existing analytical techniques need to facilitate rapid characterization of algal species by phenotyping hydrocarbon-related constituents.Entities:
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Year: 2010 PMID: 20492649 PMCID: PMC2883956 DOI: 10.1186/1472-6750-10-40
Source DB: PubMed Journal: BMC Biotechnol ISSN: 1472-6750 Impact factor: 2.563
Figure 1Flowchart for hydrocarbon phenotyping of algal species by pyrolysis GC-MS.
Figure 2Algae hydrocarbon chromatograms for extracted ion trace m/z 55. Stars are indicating structurally similar components that are eluting in a gradual order. Carbon chain lengths are annotated by NIST MS similarity search. The lower pane represents a heatmap of all peaks (in columns) detected by AMDIS after consistency filtering by SpectConnect (red = present, blue = absent. Substructure annotation and identification of algae components are given in supplement S1 and S2.
Annotation of pyGC-MS components using AMDIS substructure classifiers.
| Hydrocarbons | Non hydrocarbons | Total components | |
|---|---|---|---|
| 158 | 318 | 476 | |
| 235 | 277 | 512 | |
| 258 | 241 | 499 |
Figure 3Substructure annotation network of . Nodes represent unique pyrogram hydrocarbons that were clustered by substructure similarities. Node sizes were proportional to the relative component abundances. Color coding was applied by increasing retention time, from blue (low-boiling compounds) to red (high-boiling point compounds). Identified nodes were labeled as A nonacosadiene, B stearic acid, C diepoxyhexadecane, D nonanal, E-a C18 methyl ester1, E-b C18 methyl ester 2, F eicosadiene, G phytadiene, H phytol, I hentriacontadiene, J C30 botryococcene, K eicosadiene, L 1-decane, M palmitic acid, O sterol1, P sterol2, Q epoxynonacosane, R heptacosadiene, S 1-undecane, T 1-nonene.
Figure 4Species discrimination using pyGC-MS. Left panel: Venn diagram showing the compound overlap between three algal strains. Right panel: Multivariate principal component analysis using the SpectConnect output matrix of intensities of detected components. Vector 1 discriminates Chlamydomonas (red) from Botryococcus strains, explaining most of the variance in the data set. Vector 3 comprises only 6.7% of the total variance but clearly distinguishes the Botryococcus braunii race A (blue) from race B samples (black).