| Literature DB >> 22396733 |
Brigitte Braschler1, Steven L Chown, Kevin J Gaston.
Abstract
BACKGROUND: The Fynbos (FB) and Succulent Karoo biomes (SKB) have high regional plant diversity despite relatively low productivity. Local diversity in the region varies but is moderate. For insects, previous work suggests that strict phytophages, but not other taxa, may have high regional richness. However, what has yet to be investigated is whether the local insect species richness of FB and SKB is unusual for a region of this productivity level at this latitude, and whether regional richness is also high. Here we determine whether this is the case for ants. METHODOLOGY/PRINCIPALEntities:
Mesh:
Year: 2012 PMID: 22396733 PMCID: PMC3292543 DOI: 10.1371/journal.pone.0031463
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Relationships between ant species richness and energy and climate variables within the FB and SKB.
(A) productive energy, (B) mean annual precipitation, (C) mean temperature. Triangles and circles refer to data from FB (n = 29) and SKB (n = 5) sites respectively. NDVI is taken as a surrogate of productive energy. All measures are averaged over several years to account for natural variability (see for methods). Ant species richness was ln(x+1)-transformed for all analyses and regression line and confidence intervals were backtransformed. The regression line and 95% confidence intervals for NDVI are shown. The relationships between ant species richness and precipitation or temperature were not significant. Regression for NDVI: ln(species richness+1) = 2.4325983+0.00035032780 * NDVI−0.000000035595287 * NDVI2, r 2 = 0.22, F 2,31 = 4.50, P = 0.0192.
General linear model (type 3) showing the effects of hemisphere and latitudea on ant species richnessb (Akaike weight: 6.77 * 10−13 c).
| Effect | Num df | SSQ | MSQ | Den df |
|
|
| Intercept | 1 | 239.754 | 239.754 | 326 | 508.65 | <0.0001 |
| Hemisphere | 1 | 4.893 | 4.893 | 326 | 10.38 | 0.0014 |
| Latitude | 1 | 1.242 | 1.242 | 326 | 2.63 | 0.1055 |
| Latitude2 | 1 | 8.325 | 8.325 | 326 | 17.66 | <0.0001 |
| Residual | 326 | 153.662 | 0.471 |
Latitude is the absolute value rounded to the nearest degree.
Species richness was ln(x+1)-transformed for analysis.
A global dataset on ant species richness derived from the literature that excludes sites from the FB and SKB is used. Akaike weights are based on a set of all possible models testing effects of hemisphere, latitude (linear and squared terms), habitat type (see for a list of habitat types), temperature (linear and squared terms), and NDVI (linear and squared terms) on ant species richness. This simple model is a much worse fit than the model including habitat type and temperature shown in .
General linear model (type 3) showing the effects of hemisphere, habitat typea, and temperature on ant species richnessb (Akaike weight: 0.656241c).
| Effect | Num df | SSQ | MSQ | Den df |
|
|
| Intercept | 1 | 1.041 | 1.041 | 319 | 2.06 | 0.0403 |
| Hemisphere | 1 | 13.715 | 13.715 | 319 | 34.52 | <0.0001 |
| Habitat type | 7 | 30.890 | 4.413 | 319 | 11.11 | <0.0001 |
| Temperature | 1 | 16.409 | 16.409 | 319 | 41.30 | <0.0001 |
| Temperature2 | 1 | 8.316 | 8.316 | 319 | 20.93 | <0.0001 |
| Residual | 319 | 126.758 | 0.397 |
Habitat types: arid shrubland, other shrubland (including a variety of shrublands, scrublands and thickets and other bush dominated habitat types), desert, forest, grassland, savanna, wetland, woodland), and temperature on ant species richness.
Species richness was ln(x+1)-transformed for analysis.
A global dataset on ant species richness derived from the literature that excludes sites from the FB and SKB is used. The model shown is the best model based on Akaike weights from a set of all possible models testing the above factors and also the effects of linear and squared terms of latitude (absolute value rounded to the nearest degree) and NDVI (productive energy).
Figure 2Comparison of ant species richness in the FB and SKB with that of sites worldwide.
The relationships between global ant species richness and (A) productive energy, (B) mean annual precipitation, and (C) mean temperature are shown with the data from the FB and SKB superimposed. NDVI is used as a surrogate of productive energy. Clear circles represent global data extracted from the literature (n = 331) while triangles and filled circles refer to our own data from FB (n = 29) and SKB (n = 5) sites respectively. Ant species richness was ln(x+1)-transformed for all analyses. The backtransformed regression lines and 95% confidence intervals for precipitation and temperature are shown. The confidence interval for high values of precipitation is very large and thus not fully shown. The regression for NDVI was not significant for the global dataset. Regressions are: mean annual precipitation: ln(species richness+1) = 2.9100926−0.00056787062 * precipitation+0.00000038199406 * precipitation2, r 2 = 0.86, F 2,328 = 15.51, P<0.0001; temperature: ln(species richness+1) = 0.48074860+0.22574050 * temperature−0.0046141963 * temperature2, r 2 = 0.30, F 2,328 = 68.55, P<0.0001.
Figure 3Comparison of ant species richness in the FB and SKB with that of similar habitats.
Data for other shrublands and arid shrublands were extracted from the literature and comprise a variety of different vegetation types from desert shrublands to thickets. The other southern hemisphere shrublands and arid shrublands are other South African vegetation types, such as Nama-karoo, and Australian and South American shrublands and arid shrublands. Error bars show 95% confidence intervals. The confidence interval for other southern hemisphere arid shrublands is wide and thus not shown fully, as only the fact that the SKB falls within it is of interest. FB Fynbos biome (n = 29), SKB Succulent karoo biome (5), SS other Southern hemisphere shrublands (6), SAS other Southern hemisphere arid shrublands (3), NS Northern hemisphere shrublands (33), NAS Northern hemisphere arid shrublands (16).