| Literature DB >> 35585588 |
Thomas M Lange1, Maria Rotärmel1, Dominik Müller2, Gregory S Mahone2, Friedrich Kopisch-Obuch2, Harald Keunecke2, Armin O Schmitt3,4.
Abstract
BACKGROUND: In research questions such as in resistance breeding against the Beet necrotic yellow vein virus it is of interest to compare the virus concentrations of samples from different groups. The enzyme-linked immunosorbent assay (ELISA) counts as the standard tool to measure virus concentrations. Simple methods for data analysis such as analysis of variance (ANOVA), however, are impaired due to non-normality of the resulting optical density (OD) values as well as unequal variances in different groups.Entities:
Keywords: BNYVV; Beet necrotic yellow vein virus; Data analysis; Generalised least squares model; Logistic regression; Serial dilution; Virus concentration
Mesh:
Year: 2022 PMID: 35585588 PMCID: PMC9118653 DOI: 10.1186/s12985-022-01804-3
Source DB: PubMed Journal: Virol J ISSN: 1743-422X Impact factor: 5.913
Fig. 1The eleven serial dilutions used in this trial and the fitted curves. The dual logarithm of the relative concentration is displayed on the X axis, the corresponding OD value is displayed on the Y axis. Blue line: 5PL model, red line: 5PL model with predefined values for top and bottom asymptote, black dots: observed values
AICc of the 5PL model with different predefined values for the eleven serial dilutions as well as the mean AICc for all eleven serial dilutions
| Predefined parameters | |||||||
|---|---|---|---|---|---|---|---|
| none | |||||||
| 1 | -22.714 | -8.724 | -6.421 | -24.688 | -26.267 | -31.514 | -32.552 |
| 2 | -25.508 | -4.557 | -2.636 | -26.232 | -26.789 | -34.308 | -33.074 |
| 3 | -30.735 | -4.473 | -2.052 | -26.85 | -29.595 | -39.535 | -35.881 |
| 4 | -11.73 | -4.226 | -3.198 | -17.608 | -17.548 | -20.53 | -23.833 |
| 5 | -19.368 | -6.963 | -3.423 | -18.951 | -25.138 | -28.168 | -31.423 |
| 6 | -5.105 | 0.005 | 4.449 | -1.516 | -12.002 | -13.905 | -18.288 |
| 7 | -17.987 | -6.82 | -6.319 | -23.749 | -20.692 | -26.787 | -26.978 |
| 8 | -13.647 | -6.684 | -5.212 | -16.764 | -20.742 | -22.447 | -27.028 |
| 9 | -9.264 | -3.486 | -2.567 | -16.195 | -14.567 | -18.064 | -20.852 |
| 10 | -12.951 | -6.583 | -4.548 | -14.438 | -19.944 | -21.751 | -26.23 |
| 11 | -10.923 | -4.824 | -2.335 | -15.069 | -17.42 | -19.723 | -23.705 |
| mean | -16.4 | -5.2 | -3.1 | -18.4 | -21 | -25.2 | -27.3 |
Results from the gls model with transformed data as response variable
| numDF | F-value | p-value | |
|---|---|---|---|
| (Intercept) | 1 | 9481.088 | <.0001 |
| Genotype | 6 | 255.132 | <.0001 |
| HarvestTimePoint | 1 | 0.011 | 0.9163 |
| Environment | 1 | 4.181 | 0.0412 |
| Genotype:HarvestTimePoint | 6 | 4.195 | 0.0004 |
| Genotype:Environment | 6 | 5.714 | <.0001 |
| HarvestTimePoint:Environment | 1 | 0.022 | 0.8824 |
| Genotype:HarvestTimePoint:Environment | 6 | 0.885 | 0.5051 |