Environmental factors controlling lake diatom communities: a meta-analysis of published data

  • Blanco S
  • Blanco Lanza S
  • others
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Abstract

Diatoms play a key role in the development of quantitative methods for environmental reconstruction in lake ecosystems. Diatom-based calibration datasets developed dur-ing the last decades allow the inference of past limnological variables such as TP, pH or conductivity and provide information on the autecology and distribution of diatom 5 taxa. However, little is known about the relationships between diatoms and climatic or geographic factors. The response of surface sediment diatom assemblages to abi-otic factors is usually examined using canonical correspondence analysis (CCA) and subsequent forward selection of variables based on Monte Carlo permutation tests that show the set of predictors best explaining the distributions of diatom species. The 10 results reported in 40 previous studies using this methodology in different regions of the world are re-analyzed in this paper. Bi-and multivariate statistics (canonical cor-relation and two-block partial least-squares) were used to explore the correspondence between physical, chemical and physiographical factors and the variables that explain most of the variance in the diatom datasets. Results show that diatom communities 15 respond mainly to chemical variables (pH, nutrients) with lake depth being the most important physiographical factor. However, the relative importance of certain param-eters varied along latitudinal and trophic gradients. Canonical analyses demonstrated a strong concordance with regard to the predictor variables and the amount of variance they captured, suggesting that, on a broad scale, lake diatoms give a robust indication 20 of past and present environmental conditions.

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Blanco, S., Blanco Lanza, S., & others. (2014). Environmental factors controlling lake diatom communities: a meta-analysis of published data. Biogeosciences Discussions, 11(11), 15889–15909.

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