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Phenotypic determinants of inter-individual variability of litter consumption rate in a detritivore population

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Academic year: 2021

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Figure 1. Hierarchical framework for organising the phenotypic  traits controlling resource consumption
Table 1. Phenotypic traits measured on Gammarus fossarum. Intraclass correlation coefficients (ICC) are displayed along with bootstrap 95%  confidence intervals (CI 95%, bootstrap: 1000 samples)
Figure 2. Principal component analysis of phenotypic traits. The correlation circle (a) and ordination plot of the individuals (b) were drawn  for the two first principal components, which condensed 51.6% of the total variation in phenotypic traits within

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