4.5 Article

INTERCOLONIAL VARIABILITY IN MACROMOLECULAR COMPOSITION INP-STARVED AND P-REPLETE SCENEDESMUS POPULATIONS REVEALED BY INFRARED MICROSPECTROSCOPY

Journal

JOURNAL OF PHYCOLOGY
Volume 44, Issue 5, Pages 1335-1339

Publisher

WILEY
DOI: 10.1111/j.1529-8817.2008.00564.x

Keywords

FTIR spectroscopy; macromolecular composition; nutrient limitation; population variability; Scenedesmus

Funding

  1. Australian Research Council

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Macromolecular variability in microalgal populations subject to different nutrient environments was investigated, using the chlorophyte alga Scenedesmus quadricauda (Turpin) Breb. as a model organism. The large size of the four-cell coenobia in the strain used in this study (similar to 35 mu m diameter) conveniently allowed high quality spectra to be obtained from individual coenobia using a laboratory-based Fourier transform infrared (FTIR) microscope with a conventional globar source of IR. By drawing sizable subpopulations of coenobia from two Scenedesmus cultures grown under either nutrient-replete or P-starved conditions, the population variability in macromolecular composition, and the effects of nutrient change upon this, could be estimated. On average, P-starved coenobia had higher carbohydrate and lower protein absorbance compared with P-replete coenobia. These parameters varied between coenobia with histograms of the ratio of absorbance of the largest protein and carbohydrate bands being Gaussian distributed. Distributions for the P-replete and P-starved subpopulations were nonoverlapping, with the difference in mean ratios for the two populations being statistically significant. Greater variance was observed in the P-starved subpopulation. In addition, multivariate models were developed using the spectral data, which could accurately predict the nutrient status of an independent individual coenobium, based on its FTIR spectrum. Partial least squares discriminant analysis (PLS-DA) was a better prediction method compared with soft independent modeling by class analogy (SIMCA).

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