| Literature DB >> 27516868 |
Katherine A Zeller1, Tyler G Creech2, Katie L Millette3, Rachel S Crowhurst2, Robert A Long4, Helene H Wagner5, Niko Balkenhol6, Erin L Landguth7.
Abstract
Mantel-based tests have been the primary analytical methods for understanding how landscape features influence observed spatial genetic structure. Simulation studies examining Mantel-based approaches have highlighted major challenges associated with the use of such tests and fueled debate on when the Mantel test is appropriate for landscape genetics studies. We aim to provide some clarity in this debate using spatially explicit, individual-based, genetic simulations to examine the effects of the following on the performance of Mantel-based methods: (1) landscape configuration, (2) spatial genetic nonequilibrium, (3) nonlinear relationships between genetic and cost distances, and (4) correlation among cost distances derived from competing resistance models. Under most conditions, Mantel-based methods performed poorly. Causal modeling identified the true model only 22% of the time. Using relative support and simple Mantel r values boosted performance to approximately 50%. Across all methods, performance increased when landscapes were more fragmented, spatial genetic equilibrium was reached, and the relationship between cost distance and genetic distance was linearized. Performance depended on cost distance correlations among resistance models rather than cell-wise resistance correlations. Given these results, we suggest that the use of Mantel tests with linearized relationships is appropriate for discriminating among resistance models that have cost distance correlations <0.85 with each other for causal modeling, or <0.95 for relative support or simple Mantel r. Because most alternative parameterizations of resistance for the same landscape variable will result in highly correlated cost distances, the use of Mantel test-based methods to fine-tune resistance values will often not be effective.Entities:
Keywords: CDPOP; landscape fragmentation; landscape genetics; landscape resistance; simulations
Year: 2016 PMID: 27516868 PMCID: PMC4879002 DOI: 10.1002/ece3.2154
Source DB: PubMed Journal: Ecol Evol ISSN: 2045-7758 Impact factor: 2.912
Figure 1Summary of simulation methods used in this investigation. Each landscape was replicated five times and simulated using the same seed. A set of discriminant landscapes (using a different seed) was generated to represent a different underlying environmental variable. Gene flow was simulated across the true resistance model for 50 Monte Carlo replications, and Mantel‐based tests were evaluated using causal modeling (α = 0.05, 0.005), relative support, and simple Mantel r.
Figure 2Examples of simulated resistance models. (A) Resistance models with equal levels of spatial autocorrelation scale and strength (autocorrelation range = 100, noise = 0%), but different resolution and scaling of resistance values. This represents a resistance model cluster for a R100N0 landscape. (B) Resistance surfaces with the same resolution and scaling of resistance values (1–101 with a squared distribution), but differing in the strength and scale of spatial autocorrelation. Black dots represent the locations of 1,000 simulated individuals. Gray lines represent least‐cost paths between all individuals.
Success rate of Mantel‐based methods to identify the true resistance model when compared to all the competing resistance models in a landscape cluster (including the discriminant surface). Success rate is the proportion of all 50 MC replicates in which the true resistance model outperformed all other resistance models in a cluster. Results are pooled across truth 10U and truth 100SQ. Log refers to whether the cost distances were log‐transformed to better linearize their relationship with genetic distance. Eq indicates whether the genetic data used were from a generation that had reached genetic equilibrium or whether a prior generation was used. Numbers in table are means with standard deviations in parentheses
| Log = N Eq = N | Log = N Eq = Y | Log = Y Eq = N | Log = Y Eq = Y | Mean across approaches | |
|---|---|---|---|---|---|
| Causal modeling ( | 0.009 (0.044) | 0.313 (0.426) | 0.153 (0.310) | 0.388 (0.450) | 0.216 (0.374) |
| Causal modeling ( | 0.013 (0.052) | 0.326 (0.427) | 0.173 (0.323) | 0.414 (0.448) | 0.231 (0.379) |
| Relative support (RS) | 0.430 (0.425) | 0.397 (0.424) | 0.511 (0.405) | 0.547 (0.423) | 0.471 (0.420) |
| Simple Mantel | 0.462 (0.414) | 0.468 (0.455) | 0.522 (0.419) | 0.554 (0.437) | 0.501 (0.429) |
| Mean across methods | 0.228 (0.367) | 0.376 (0.434) | 0.339 (0.405) | 0.475 (0.442) | 0.354 (0.421) |
Figure 3Model performance as judged by the proportion of MC replicates in which the true resistance model outperformed all other resistance models. Proportion success is averaged across the and simple Mantel r methods. Error bars represent the 95% confidence intervals. Causal modeling results have been omitted. Truth 10U and 100SQ results are pooled. (A) Model performance by landscape cluster. (B) Model performance by all possible combinations of linearity and spatial genetic equilibrium. Log refers to whether the cost distances were log‐transformed to linearize their relationship with genetic distance. Eq indicates whether the genetic data used were from a generation that had reached spatial genetic equilibrium or whether a prior generation was used.
Success rate of Mantel‐based methods to identify the true resistance model over the discriminant resistance model (i.e., proportion of 50 MC replicates in which true model outperformed discriminant model) when only those two models are included as competing hypotheses. Truth 10U and truth 100SQ results are pooled. Log refers to whether the cost distances were log‐transformed to linearize their relationship with genetic distance. Eq indicates whether the genetic data used were from a generation that had reached genetic equilibrium or whether a prior generation was used. Numbers in table are means with standard deviations in parentheses
| Log = N Eq = N | Log = N Eq = Y | Log = Y Eq = N | Log = Y Eq = Y | Mean across approaches | |
|---|---|---|---|---|---|
| Causal modeling ( | 0.156 (0.300) | 0.783 (0.317) | 0.629 (0.403) | 0.739 (0.321) | 0.577 (0.418) |
| Causal modeling ( | 0.186 (0.323) | 0.820 (0.289) | 0.665 (0.394) | 0.784 (0.293) | 0.613 (0.412) |
| Relative support (RS) | 0.999 (0.006) | 0.976 (0.094) | 1.000 (0.000) | 0.981 (0.084) | 0.989 (0.063) |
| Simple Mantel | 0.999 (0.006) | 0.976 (0.094) | 1.000 (0.000) | 0.981 (0.084) | 0.989 (0.063) |
| Mean across methods | 0.585 (0.470) | 0.889 (0.239) | 0.823 (0.331) | 0.871 (0.249) | 0.792 (0.356) |