Title: Lecture Outline: Estimation of dispersal
1Lecture Outline Estimation of dispersal
- Mark-recapture estimates of dispersal distances
- Biases including the missing tail
- Partial corrections
- Multistate M-R models
- Radio telemetry and harmonic radar
- Dispersal distances inferred from patch
colonization
- Cross-species predictions
2Three stages of dispersal
Immigration Colonization
Transfer
Emigration
Social pressure Habitat quality Density
dependence Inbreeding avoidance Mate
competition Landscape context
Habitat selection/imprinting Conspecific
attraction Social fence
Matrix/Mosaic effects Search behavior Mortality
risk Perceptual range
(modified from Ims and Yoccoz 1997)
3Mark-Recapture and Dispersal Distances
- Systematic bias occurs in the dispersal
distributions obtained from studies using
plot-based recapture or resighting data.
- the vast majority of intensive field studies
conducted thus far on birds and mammals provide
data on dispersal that are highly biased and
virtually useless in determining either the true
distribution of dispersal distances in the
population or the extent of gene flow. (Koenig
et al. 1996. TREE 11514-517)
- Degree of bias depends on dispersal distance
relative to size of study area.
4Mark-Recapture and Dispersal Distances
5(Koenig et al. 1996)
6Mark-Recapture Partial correction for bias
- Partial solution for underestimated dispersal
distances is to correct observed distribution of
movements for distance-specific detection
probabilities.
- Detection probabilities reflect likelihood that
individuals end up within plot boundaries and
thus are available for detection.
- Allows for correction of dispersal distances
within the maximum detection distance of plot.
Longer movements are still not detected.
- Detection probabilities estimated via simulation
in which many individuals (10,000) move a given
distance in random direction from random starting
points from within plot.
750 m
- Maximum detectable movement distance was 127 m.
- Probability of detecting a movement of 12 m was
0.97, whereas probability of detecting a movement
of 40 m was 0.27.
- Divide number of observed moves of a given
distance by detection probability.
8Dispersal distances corrected for detection
probabilities
9Mark-Recapture Multistate/Mulstistrata Design
- Allows animals to move between geographic areas
that differ in survival and recapture
probabilities.
- Estimate transition probabilities between pairs
of sites.
- One approach involves extension of
Cormack-Jolly-Seber model.
- Data hungry design with many potential
parameters to estimate.
10Multistate Design
11Radio Telemetry
- Greatly reduces biases typical of mark-recapture
estimates of dispersal distance distributions
such as truncation of the tail.
- However, often have some fixed detection radius
around study area. - Movements beyond search zone still go undetected
unless you can use aircraft to extend search for
lost animals.
- Restricted search issue is avoided by use of
satellite or GPS based transmitters, but these
methods had reduced accuracy until recently.
- Key negative for radio telemetry is cost
- Small mammal ear tag few cents
- PIT tag 4-10
- Radio collar 175-350
- GPS collar 2,500
12Dispersal estimates Mark-recapture vs. telemetry
Females
Males
13Estimating emigration with telemetry
14Movement routes of green sea turtles determined
by satellite telemetry
15Harmonic radar
- New opportunities to study movements of small
animals, especially invertebrates.
- Exampleforaging paths of bumble bees.
- Range of 700 m in ideal conditions.
(Osborne JL et al. 1999. J. Appl. Ecol. 36519-533
16Genetic approaches
- Sometimes called indirect estimates of
dispersal and gene flow.
- Often easier to obtain spatially referenced
genetic samples than to track actual dispersal
movements.
- Methods based on allele frequencies of multiple
populations often provide different picture of
dispersal when compared to direct measures based
on tracking individuals. - Traditional genetic approaches include
equilibrium assumptions and estimate historical
dispersal over long time scales (dozens or
hundreds of generations) compared to direct
estimates.
- Newer genetic approaches such as assignment tests
do not assume genetic - equilibrium and provide more direct estimates of
current gene flow (see Mills).
17Medium to high levels of gene flow for
lynx (equilibrium approach)
- Low Fst values indicate high gene flow.
18Dispersal and genetic structure of bannertail
kangaroo rats
- High degree of natal philopatry based on
extensive mark-recapture studies.
- Effects on spatial genetic structure?
Waser and Elliott. 1991. Evolution 45935-943.
19No evidence for spatial clustering of alleles
- Suggested that discrepancy between natal
dispersal patterns and genetic structure might be
due to gamete dispersal due to movements by
males away from their residences during the
breeding season.
20Inferring dispersal distances from patch
recolonizations
- Approach applicable to spatially structured
populations and metapopulations.
- Examine distances between newly colonized patches
and closest potential source patches.
- Provides a minimum estimate in that individuals
could have come from patch that was farther away
than nearest source.
- Not ideal, but can provide a general idea of
probable spatial scale of dispersal for rare
species lacking dispersal data.
21(No Transcript)
22Wetland colonization by round-tailed muskrats
- Recolonized wetlands typically were within 2 km
of closest potential source of immigrants. - Median distances were 450-470 m.
- Only 1 of 50 wetlands gt2 km from known source was
colonized between years.
23Cross-species predictions of dispersal distances
- If dispersal distance was correlated with a
variable that was easier to measure than
dispersal, managers could use surrogate variable
to obtain ballpark estimate of dispersal.
- Could be useful for identifying species that are
likely to be vulnerable to landscape-level
habitat changes such as fragmentation.
- What might be a potentially useful surrogate?
BODY MASS
24Dispersal distance in relation to body mass
Sutherland GD et al. 2000. Conservation Ecology
4(2) Online.
25Dispersal distance in relation to body mass
26- Bowman et al. hypothesized for mammals that some
species have an inherent capacity for movement
that is independent of body size.
- They suggested that this mobility was reflected
by typical home range sizes.
- Predicted that species with relatively large home
ranges (for their body mass) would have
relatively long dispersal distances (for their
body mass).
Bowman J. et al. 2002. Ecology 832049-2055.
27Bowman J. et al. 2002. Ecology 832049-2055.
28What important factor is ignored by these
cross-species predictive equations?
WITHIN-SPECIES VARIATION IN DISPERSAL RELATED TO
LANDSCAPE STRUCTURE
29Landscape structure dispersal distances