| Literature DB >> 27762295 |
Guilhem Sommeria-Klein1, Lucie Zinger1, Pierre Taberlet2, Eric Coissac2, Jérôme Chave1.
Abstract
The DNA present in the environment is a unique and increasingly exploited source of information for conducting fast and standardized biodiversity assessments for any type of organisms. The datasets resulting from these surveys are however rarely compared to the quantitative predictions of biodiversity models. In this study, we simulate neutral taxa-abundance datasets, and artificially noise them by simulating noise terms typical of DNA-based biodiversity surveys. The resulting noised taxa abundances are used to assess whether the two parameters of Hubbell's neutral theory of biodiversity can still be estimated. We find that parameters can be inferred provided that PCR noise on taxa abundances does not exceed a certain threshold. However, inference is seriously biased by the presence of artifactual taxa. The uneven contribution of organisms to environmental DNA owing to size differences and barcode copy number variability does not impede neutral parameter inference, provided that the number of sequence reads used for inference is smaller than the number of effectively sampled individuals. Hence, estimating neutral parameters from DNA-based taxa abundance patterns is possible but requires some caution. In studies that include empirical noise assessments, our comprehensive simulation benchmark provides objective criteria to evaluate the robustness of neutral parameter inference.Entities:
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Year: 2016 PMID: 27762295 PMCID: PMC5071827 DOI: 10.1038/srep35644
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Neutral parameter inference without dispersal limitation.
Left panels: mean MOTU rank- abundance distributions over 100 realizations for θ = 20 in a 104-read sample, without (dashed blue line) and with (black line) simulated noise: (a) 30% artifactual MOTUs added (as measured in benchmark dataset), (c) multiplicative lognormal noise of log standard deviation σ = 1.2 (as measured in benchmark dataset), (e) multiplicative zero-truncated Poisson noise simulating barcode copy number variability (Poisson parameter λ = 4; cf. Kembel et al.52), and (g) size structure among individuals, for a ratio (mean body mass over birth mass). Right panels: mean and standard deviation over 100 realizations of the relative bias on the θ estimate in a 104-read sample, for θ = 1 (green), θ = 20 (black) and θ = 500 (red), as a function of (b) the proportion of artifactual MOTUs (dashed blue line underlines the linear dependence), (d) the lognormal noise intensity σ, (f) the Poisson parameter λ, and (h) the ratio .
Figure 2Neutral parameter inference in the presence of dispersal limitation.
We simulated a 104-read sample and computed the mean and standard deviation over 100 realizations of and . Results are plotted for θ = 20 and for m = 1 (black), m = 0.1 (green), m = 0.01 (blue) and m = 0.001 (red). Panels a,b: variation with the proportion of artifactual MOTUs (dashed blue line underlines the linear dependence). Panels c,d: variation with the log standard deviation σ of a multiplicative lognormal noise on relative abundances. Panels e,f: variation with the parameter λ of a multiplicative zero-truncated Poisson noise. Panels g,h: variation with body size ratio .