| Literature DB >> 32819378 |
Igor Filipović1, Hapuarachchige Chanditha Hapuarachchi2, Wei-Ping Tien2, Muhammad Aliff Bin Abdul Razak2, Caleb Lee2, Cheong Huat Tan2, Gregor J Devine3, Gordana Rašić4.
Abstract
BACKGROUND: Hundreds of millions of people get a mosquito-borne disease every year and nearly one million die. Transmission of these infections is primarily tackled through the control of mosquito vectors. The accurate quantification of mosquito dispersal is critical for the design and optimization of vector control programs, yet the measurement of dispersal using traditional mark-release-recapture (MRR) methods is logistically challenging and often unrepresentative of an insect's true behavior. Using Aedes aegypti (a major arboviral vector) as a model and two study sites in Singapore, we show how mosquito dispersal can be characterized by the spatial analyses of genetic relatedness among individuals sampled over a short time span without interruption of their natural behaviors.Entities:
Keywords: Close kin; Dispersal kernel; Genome-wide SNPs; IBD; Mosquito dispersal; Spatial autocorrelation
Mesh:
Year: 2020 PMID: 32819378 PMCID: PMC7439557 DOI: 10.1186/s12915-020-00841-0
Source DB: PubMed Journal: BMC Biol ISSN: 1741-7007 Impact factor: 7.431
Fig. 1Sampling locations and density distributions of observed separation distances. Red dots indicate the vertical trapping locations in apartment buildings in Tampines (a) and Yishun (b). Horizontal violin plots (c) show the density distribution of separation distance for full siblings, 2nd-degree relatives, 3rd-degree relatives, all close kin combined (“all CK”), non-close kin (“all non CK”), null distribution (“non CK random”), and traps. The box within each violin plot shows the interquartile range and the location of the median
Goodness-of-fit statistic and criteria and parameter estimates from the distribution fitting analysis for close-kin data
| KS | 0.084 | 0.057 | 0.125 |
| AIC | 2387.913 | 2386.055 | 2429.829 |
| BIC | 2391.427 | 2393.082 | 2436.856 |
| Shape | Meanlog | ||
| Median (95% CI) | 0.022 (0.020–0.025) | 1.108 (1.011–1.222) | 3.322 (3.170–3.462) |
| Scale | sdlog | ||
| – | 46.939 (41.770–52.445) | 1.162 (1.055–1.252) |
A lower value of the statistic (the Kolmogorov-Smirnov statistic, KS) or the criterion (AIC, BIC) indicates a better fit. The parameter median and 95% CI were generated with 1000 bootstraps
Fig. 2Effective dispersal distance kernel estimated from the close-kin data. The inferred pdfs are highly congruent among separate datasets (full sibling, 2nd- and 3rd-degree relatives) and the combined dataset (“all CK”), and are significantly different from the randomly subsampled non-close kin dataset (“non CK random”) that represents the null distribution of distances for randomly spaced individuals across the matrix of traps
Fig. 3Isolation-by-distance analysis on non-close kin data from Tampines and Yishun. Mantel test and linear regression were applied to the matrices of PCA genetic distance and linear geographic distance between pairs of individuals in Tampines (upper) and Yishun (lower), with close kin removed from both datasets. The red line shows regression with 95% CI (dashed lines)
IBD-based estimates of the dispersal kernel spread (σ)
| 0.0037 (0.0024–0.0050) | Method 1 (PWoP) | 863 (863–1112) | 0.0074 (0.0074–0.0095) | 54.1 m (40.8–67.7 m) |
| Method 2 (LDNe) | 167 (93–619) | 0.0014 (0.0007–0.0053) | 122.9 m (54.7–206.2 m) | |
| Method 3 (Gravitrap) | – | 0.0048 (0.0030–0.0066) | 66.8 m (48.8–105.6 m) | |
| 0.0065 (0.0052–0.0079) | Method 1 (PWoP) | 1185 (1176–1346) | 0.0063 (0.0063–0.0072) | 44 m (37.6–49.7 m) |
| Method 2 (LDNe) | 258 (200–357) | 0.0014 (0.0011–0.0019) | 94.4 m (73–120.6 m) | |
| Method 3 (Gravitrap) | – | 0.0022 (0.0015–0.0030) | 74.4 m (57.9–104.9 m) | |
The mean (95% CI) for IBD slope (b), effective population size (N), effective density (D) estimated using the methods 1–3, and the dispersal kernel spread (σ) for Aedes aegypti data from Tampines and Yishun
Fig. 4The dispersal kernel spread (σ) estimated from the close-kin data and IBD analysis. Sigma (σ) and its 95% CI are plotted for the combined close-kin data (CK method) and PCA-based IBD analysis for Tampines and Yishun (with effective density estimates from methods 1–3)
Fig. 5Spatial genetic autocorrelation in Tampines and Yishun. The ending point of a distance class is on the x-axis, and spatial autocorrelation coefficient (r) of genotypes in Tampines (107 individuals) and Yishun (108 individuals) is on the y-axis. Two dashed lines along the x-axis are the permutated 95% CI of autocorrelations under the null hypothesis of a random distribution of genotypes in space. Vertical lines are the bootstrapped 95% CIs with the mean genetic autocorrelation