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Models of disease spread and
     establishment in small-size
          directed networks

                   Mathieu Moslonka-Lefebvre,
                   Marco Pautasso & Mike Jeger
                    Imperial College London,
                        Silwood Park, UK

                  Rutgers University, March 2009

Photo: Marin County Fire Department, CA, USA
Disease spread in
                                                                 a globalized world




                            number of passengers per day
From: Hufnagel, Brockmann & Geisel (2004) Forecast and control
of epidemics in a globalized world. PNAS 101: 15124-15129
Epidemiology is just one of the
                      many applications of network theory

Network pictures from:          NATURAL
Newman (2003)
SIAM Review                                  food webs

                                           cell
                                        metabolism
                                               neural                         Food web of Little Rock
                                              networks                          Lake, Wisconsin, US
                                              ant nests           sexual
                                                               partnerships
                                             DISEASE
                                             SPREAD
                                                                family
                                     innovation                networks
Internet                                flows co-authorship                                    HIV
structure                     railway urban road nets                                        spread
                 electrical  networks networks                                              network
               power grids                                telephone calls
                                                WWW
          computing          airport Internet              E-mail
                                                                     committees
            grids           networks     software maps    patterns
TECHNOLOGICAL                                                                       SOCIAL
modified from: Jeger, Pautasso, Holdenrieder & Shaw (2007) New Phytologist
P. ramorum
Map from www.suddenoakdeath.org    confirmations on
        Kelly, UC-Berkeley
                                  the US West Coast
                                    vs. national risk




                                    Hazard map: Frank
                                    Koch & Bill Smith,
                                     3rd SOD Science
                                    Symposium (2007)
from: McKelvey, Koch & Smith (2007) SOD Science Symposium III
Phytophthora ramorum in England & Wales (2003-2006)
                    511 nurseries/            168 historic gardens/
                    garden centres                 woodlands 122
                                    85
                                   2003-                      46
                                                              2003-
                                 Jun 2008                     Jun
                                    426                       2008




Climatic match courtesy of                   Outbreak maps courtesy of
Richard Baker, CSL, UK               David Slawson, PHSI, DEFRA, UK
Simple model of infection spread (e.g. P. ramorum) in a network
                   pt probability of infection transmission
                   pp probability of infection persistence

          node 1       2       3      4       5     6        7   8   … 100

 step 1




 step 2




 step 3
  …

 step n
The four basic types of network structure used
 SIS Model, 100 Nodes, directed networks,
 P [i (x, t)] = Σ {p [s] * P [i (y, t-1)] + p [p] * P [i (x, t-1)]}




 local                                     small-
                                           world




random                                    scale-free
Epidemic threshold
and network structure
Examples of epidemic development in four kinds of
                                directed networks of small size (at threshold conditions)
sum probability of infection across all nodes


                                                1.2                                              40   1.2                          25


                                                                                     local       35                  small-world




                                                                                                                                        % nodes with probability of infection > 0.01
                                                1.0                                                   1.0
                                                                                                                                   20
                                                                                                 30

                                                0.8                                                   0.8
                                                                                                 25
                                                                                                                                   15

                                                0.6                                              20   0.6

                                                                                                                                   10
                                                                                                 15
                                                0.4                                                   0.4

                                                                                                 10
                                                                                                                                   5
                                                0.2                                                   0.2
                                                                                                 5


                                                0.0                                              0    0.0                          0
                                                      1   51        101        151         201              1   26   51     76
                                                                                                      1.2                          80
                                                1.6                                              60


                                                                                                                     scale-free    70

                                                                               random
                                                1.4
                                                                                                      1.0
                                                                                                 50

                                                1.2                                                                                60

                                                                                                 40   0.8
                                                1.0                                                                                50


                                                0.8                                              30   0.6                          40


                                                0.6                                                                                30
                                                                                                 20   0.4

                                                0.4                                                                                20

                                                                                                 10   0.2
                                                0.2                                                                                10


                                                0.0                                              0    0.0                          0
                                                      1        26         51          76                    1   26   51     76

                             from: Pautasso & Jeger (2008) Ecological Complexity
Lower epidemic threshold for scale-free networks
                             1.00

                                                                                 local
probability of persistence



                                                      Epidemic develops

                             0.75                                                small-world

                                                                                 random

                             0.50                                                scale-free


                                       Epidemic
                             0.25      does not
                                       develop



                             0.00
                                0.00      0.05      0.10       0.15       0.20       0.25      0.30

                                                  probability of transmission
        from: Pautasso & Jeger (2008) Ecological Complexity
Connectance,
in-out correlations
  and clustering
Correlation of number of links in and number
    of links out for wholesalers/retailers




Courtesy
of Tom
Harwood
Lower epidemic threshold for two-way scale-free networks
        (unless networks are sparsely connected)
                                                 N replicates = 100;
                                               error bars are St. Dev.;
                                               different letters show
                                                sign. different means
                                                      at p < 0.05




from: Moslonka-Lefebvre, Pautasso & Jeger (submitted)
(a)        (b)




                                 (c)         (d)




from: Moslonka-Lefebvre et al. (submitted)
1.0                                                              1.0

                                                                                        (100)                                               (200 links)
threshold probability of transmission
                                        0.8                                                              0.8


                                        0.6                                                              0.6


                                        0.4                 local                random                  0.4

                                                            small-world          scale-free 2            0.2
                                        0.2
                                                            scale-free 0         scale-free 1
                                        0.0
                                                                                                         0.0
                                              -0.6   -0.4     -0.2   0.0   0.2   0.4   0.6   0.8   1.0         -0.4    -0.2    0.0   0.2     0.4   0.6   0.8   1.0
                                        1.0                                                              1.0


                                        0.8                                             (400)            0.8
                                                                                                                                           (1000 links)
                                        0.6                                                              0.6


                                        0.4                                                              0.4


                                        0.2                                                              0.2


                                        0.0                                                              0.0
                                              -0.6   -0.4     -0.2   0.0   0.2   0.4   0.6   0.8   1.0          -0.4    -0.2   0.0   0.2     0.4   0.6   0.8   1.0

                                                        correlation coefficient between in- and out-degree
                   from: Moslonka-Lefebvre et al. (submitted)
1.0                                                 1.0
threshold probability of transmission
                                                                   (100 links)                                             (200)
                                        0.8                                                 0.8


                                        0.6                                                 0.6


                                        0.4         local             random                0.4

                                                    small-world       scale-free 2
                                        0.2                                                 0.2
                                                    scale-free 0      scale-free 1
                                        0.0                                                 0.0
                                              0.0   0.1      0.2     0.3     0.4     0.5          0.0   0.1   0.2   0.3    0.4     0.5
                                        1.0                                                 1.0


                                        0.8
                                                                             (400)          0.8
                                                                                                                          (1000)
                                        0.6                                                 0.6


                                        0.4                                                 0.4


                                        0.2                                                 0.2


                                        0.0                                                 0.0
                                              0.0   0.1      0.2      0.3     0.4     0.5         0.0   0.1   0.2   0.3    0.4     0.5

                                                                       clustering coefficient
                   from: Moslonka-Lefebvre et al. (submitted)
Starting node and
epidemic final size
100                                      100



                                             75
                                                      (local)                         75
                                                                                               (sw)
(N of nodes with infection status > 0.01)    50                                       50



                                             25                                       25



                                              0                                        0
                                                  0           25   50    75    100         0          25   50   75   100
          epidemic final size




                                            100                                      100

                                                      (rand)
                                             75                                       75
                                                                                               (sf2)
                                             50                                       50


                                             25                                       25


                                              0                                        0
                                                  0       25       50    75    100         0          25   50   75   100

                                            100                                      100


                                             75
                                                      (sf0)                           75       (sf1)
                                             50                                       50


                                             25                                       25


                                              0                                        0
                                                  0       25       50    75    100         0          25   50   75   100

                                                                   starting node of the epidemic
  from: Pautasso, Moslonka-Lefebvre & Jeger (submitted)
2.0                                                          3.0
                                                      local                                             2.5           sw
                                           1.5
across all nodes (+0.01 for sf networks)                                                                2.0
sum at equilibrium of infection status

                                           1.0                                                          1.5
                                                                                                        1.0
                                           0.5
                                                                                                        0.5
                                           0.0                                                          0.0
                                                  0       1         2    3     4         5          6           0               2          4         6          8
                                           3.0                                                           1 .0

                                           2.5          rand                                                         sf2 (log-log)
                                           2.0
                                           1.5                                                           0 .0

                                           1.0
                                           0.5
                                           0.0                                                          -1 .0
                                                                                                                -1              0          1         2          3
                                                  0       2         4    6    8          10    12
                                                                                                            2.0
                                            2.0

                                            1.5       sf0 (log-log)                                         1.5           sf1 (log-log)
                                            1.0                                                             1.0

                                            0.5                                                             0.5

                                            0.0                                                             0.0

                                           -0.5                                                            -0.5

                                           -1.0                                                            -1.0
                                                  0.0         0.5       1.0        1.5        2.0                   0.0       0.2    0.4       0.6       0.8   1.0

                                                        n of links from starting node                                     n of links from starting node
Correlation of epidemic final size with out-degree of
      starting node increases with network connectivity




from: Pautasso                     N replicates = 100; error bars are St. Dev.;
et al. (submitted)
                     different letters show sign. different means at p < 0.05
epidemic final size (0.01) and out-   1.0                                                                       C AC B
                                                                                                                         D
 correlation coefficient between
                                                                                            A           B
                                                                              AA                            C
                                      0.8                                              DE
     degree of starting node
                                                                                                E
                                                                  C
                                                                      B
                                                                          E        D
                                                                                                    D               E
                                                                                                                             local
                                                A                                                                            random
                                      0.6               B B                                                                  sw
                                            D                 C
                                                    E
                                                                                                                             sf2
                                      0.4
                                                                                                                             sf0
                                      0.2                                                                                    sf1


                                      0.0
from: Pautasso                                      100                   200                   400               1000
et al. (submitted)                                                              links
1.00
                                                                             A
                                 0.75
final size (sum) and in-degree
correlation between epidemic




                                 0.50
      of the starting node


                                         A                               B
                                                                                                        links
                                                          A
                                 0.25             A
                                                   BBB         B     C
                                         DC
                                              B
                                                          D
                                                           C
                                                                    D                                    100
                                 0.00
                                                                                                         200
                                 -0.25                   sw

                                                                   sf2


                                                                             sf0

                                                                                        sf1
                                         l

                                                 om
                                       ca




                                                                                 D
                                                                                                         400
                                     lo




                                                                                           D
                                               nd



                                                                                     C   B
                                             ra




                                                                                       A    C
                                 -0.50                                                          B        1000
                                                                                                    A
                                 -0.75
                                 -1.00
from: Pautasso et al. (submitted)
1.00
                                   0.80
 correlation coefficient between

                                                                                                     A
  epidemic final size (0.01) and

                                                                                 A
   in-degree of starting node

                                   0.60                                                                   local
                                   0.40    A                                                              random
                                                               A
                                   0.20    B C
                                                       B                    BC                 B B        sw
                                                                                           C
                                                 EED       C       EE   D            E F             DE
                                   0.00
                                                       D
                                                                                                          sf2
                                   -0.20       100         200              400                1000       sf0
                                   -0.40                                                                  sf1

                                   -0.60
                                   -0.80
from: Pautasso et al. (submitted)
                                                                   links
Main results
               1. lower epidemic threshold
                  for scale-free networks

                  2. in-out correlation
             more important than clustering

                3. out-degree as a predictor
                   of epidemic final size

      4. implications for the horticultural trade
Photo: Marin County Fire Department
References
Chiari C, Dinetti M, Licciardello C, Licitra G & Pautasso M (2010) Urbanization and the more-individuals hypothesis. Journal of Animal Ecology 79:
366-371
Dehnen-Schmutz K, Holdenrieder O, Jeger MJ & Pautasso M (2010) Structural change in the international horticultural industry: some implications
for plant health. Scientia Horticulturae 125: 1-15
Harwood TD, Xu XM, Pautasso M, Jeger MJ & Shaw M (2009) Epidemiological risk assessment using linked network and grid based modelling:
Phytophthora ramorum and P. kernoviae in the UK. Ecological Modelling 220: 3353-3361
Jeger MJ & Pautasso M (2008) Comparative epidemiology of zoosporic plant pathogens. European Journal of Plant Pathology 122: 111-126
Jeger MJ, Pautasso M, Holdenrieder O & Shaw MW (2007) Modelling disease spread and control in networks: implications for plant sciences. New
Phytologist 174: 179-197
MacLeod A, Pautasso M, Jeger MJ & Haines-Young R (2010) Evolution of the international regulation of plant pests and challenges for future plant
health. Food Security 2: 49-70
Moslonka-Lefebvre M, Pautasso M & Jeger MJ (2009) Disease spread in small-size directed networks: epidemic threshold, correlation between
links to and from nodes, and clustering. J Theor Biol 260: 402-411
Moslonka-Lefebvre M, Finley A, Dorigatti I, Dehnen-Schmutz K, Harwood T, Jeger MJ, Xu XM, Holdenrieder O & Pautasso M (2011) Networks in
plant epidemiology: from genes to landscapes, countries and continents. Phytopathology 101: 392-403
Pautasso M (2009) Geographical genetics and the conservation of forest trees. Perspectives in Plant Ecology, Systematics & Evolution 11: 157-189
Pautasso M (2010) Worsening file-drawer problem in the abstracts of natural, medical and social science databases. Scientometrics 85: 193-202
Pautasso M et al (2010) Plant health and global change – some implications for landscape management. Biological Reviews 85: 729-755
Pautasso M, Moslonka-Lefebvre M & Jeger MJ (2010) The number of links to and from the starting node as a predictor of epidemic size in small-
size directed networks. Ecological Complexity 7: 424-432
Pautasso M, Xu XM, Jeger MJ, Harwood T, Moslonka-Lefebvre M & Pellis L (2010) Disease spread in small-size directed trade networks: the role of
hierarchical categories. Journal of Applied Ecology 47: 1300-1309
Pecher C, Fritz S, Marini L, Fontaneto D & Pautasso M (2010) Scale-dependence of the correlation between human population and the species
richness of stream macroinvertebrates. Basic Applied Ecology 11: 272-280
Xu XM, Harwood TD, Pautasso M & Jeger MJ (2009) Spatio-temporal analysis of an invasive plant pathogen (Phytophthora ramorum) in England
and Wales. Ecography 32: 504-516

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Models of disease spread and establishment in small-size directed networks

  • 1. Models of disease spread and establishment in small-size directed networks Mathieu Moslonka-Lefebvre, Marco Pautasso & Mike Jeger Imperial College London, Silwood Park, UK Rutgers University, March 2009 Photo: Marin County Fire Department, CA, USA
  • 2. Disease spread in a globalized world number of passengers per day From: Hufnagel, Brockmann & Geisel (2004) Forecast and control of epidemics in a globalized world. PNAS 101: 15124-15129
  • 3. Epidemiology is just one of the many applications of network theory Network pictures from: NATURAL Newman (2003) SIAM Review food webs cell metabolism neural Food web of Little Rock networks Lake, Wisconsin, US ant nests sexual partnerships DISEASE SPREAD family innovation networks Internet flows co-authorship HIV structure railway urban road nets spread electrical networks networks network power grids telephone calls WWW computing airport Internet E-mail committees grids networks software maps patterns TECHNOLOGICAL SOCIAL modified from: Jeger, Pautasso, Holdenrieder & Shaw (2007) New Phytologist
  • 4. P. ramorum Map from www.suddenoakdeath.org confirmations on Kelly, UC-Berkeley the US West Coast vs. national risk Hazard map: Frank Koch & Bill Smith, 3rd SOD Science Symposium (2007)
  • 5. from: McKelvey, Koch & Smith (2007) SOD Science Symposium III
  • 6. Phytophthora ramorum in England & Wales (2003-2006) 511 nurseries/ 168 historic gardens/ garden centres woodlands 122 85 2003- 46 2003- Jun 2008 Jun 426 2008 Climatic match courtesy of Outbreak maps courtesy of Richard Baker, CSL, UK David Slawson, PHSI, DEFRA, UK
  • 7. Simple model of infection spread (e.g. P. ramorum) in a network pt probability of infection transmission pp probability of infection persistence node 1 2 3 4 5 6 7 8 … 100 step 1 step 2 step 3 … step n
  • 8. The four basic types of network structure used SIS Model, 100 Nodes, directed networks, P [i (x, t)] = Σ {p [s] * P [i (y, t-1)] + p [p] * P [i (x, t-1)]} local small- world random scale-free
  • 10. Examples of epidemic development in four kinds of directed networks of small size (at threshold conditions) sum probability of infection across all nodes 1.2 40 1.2 25 local 35 small-world % nodes with probability of infection > 0.01 1.0 1.0 20 30 0.8 0.8 25 15 0.6 20 0.6 10 15 0.4 0.4 10 5 0.2 0.2 5 0.0 0 0.0 0 1 51 101 151 201 1 26 51 76 1.2 80 1.6 60 scale-free 70 random 1.4 1.0 50 1.2 60 40 0.8 1.0 50 0.8 30 0.6 40 0.6 30 20 0.4 0.4 20 10 0.2 0.2 10 0.0 0 0.0 0 1 26 51 76 1 26 51 76 from: Pautasso & Jeger (2008) Ecological Complexity
  • 11. Lower epidemic threshold for scale-free networks 1.00 local probability of persistence Epidemic develops 0.75 small-world random 0.50 scale-free Epidemic 0.25 does not develop 0.00 0.00 0.05 0.10 0.15 0.20 0.25 0.30 probability of transmission from: Pautasso & Jeger (2008) Ecological Complexity
  • 13. Correlation of number of links in and number of links out for wholesalers/retailers Courtesy of Tom Harwood
  • 14. Lower epidemic threshold for two-way scale-free networks (unless networks are sparsely connected) N replicates = 100; error bars are St. Dev.; different letters show sign. different means at p < 0.05 from: Moslonka-Lefebvre, Pautasso & Jeger (submitted)
  • 15. (a) (b) (c) (d) from: Moslonka-Lefebvre et al. (submitted)
  • 16. 1.0 1.0 (100) (200 links) threshold probability of transmission 0.8 0.8 0.6 0.6 0.4 local random 0.4 small-world scale-free 2 0.2 0.2 scale-free 0 scale-free 1 0.0 0.0 -0.6 -0.4 -0.2 0.0 0.2 0.4 0.6 0.8 1.0 -0.4 -0.2 0.0 0.2 0.4 0.6 0.8 1.0 1.0 1.0 0.8 (400) 0.8 (1000 links) 0.6 0.6 0.4 0.4 0.2 0.2 0.0 0.0 -0.6 -0.4 -0.2 0.0 0.2 0.4 0.6 0.8 1.0 -0.4 -0.2 0.0 0.2 0.4 0.6 0.8 1.0 correlation coefficient between in- and out-degree from: Moslonka-Lefebvre et al. (submitted)
  • 17. 1.0 1.0 threshold probability of transmission (100 links) (200) 0.8 0.8 0.6 0.6 0.4 local random 0.4 small-world scale-free 2 0.2 0.2 scale-free 0 scale-free 1 0.0 0.0 0.0 0.1 0.2 0.3 0.4 0.5 0.0 0.1 0.2 0.3 0.4 0.5 1.0 1.0 0.8 (400) 0.8 (1000) 0.6 0.6 0.4 0.4 0.2 0.2 0.0 0.0 0.0 0.1 0.2 0.3 0.4 0.5 0.0 0.1 0.2 0.3 0.4 0.5 clustering coefficient from: Moslonka-Lefebvre et al. (submitted)
  • 19. 100 100 75 (local) 75 (sw) (N of nodes with infection status > 0.01) 50 50 25 25 0 0 0 25 50 75 100 0 25 50 75 100 epidemic final size 100 100 (rand) 75 75 (sf2) 50 50 25 25 0 0 0 25 50 75 100 0 25 50 75 100 100 100 75 (sf0) 75 (sf1) 50 50 25 25 0 0 0 25 50 75 100 0 25 50 75 100 starting node of the epidemic from: Pautasso, Moslonka-Lefebvre & Jeger (submitted)
  • 20. 2.0 3.0 local 2.5 sw 1.5 across all nodes (+0.01 for sf networks) 2.0 sum at equilibrium of infection status 1.0 1.5 1.0 0.5 0.5 0.0 0.0 0 1 2 3 4 5 6 0 2 4 6 8 3.0 1 .0 2.5 rand sf2 (log-log) 2.0 1.5 0 .0 1.0 0.5 0.0 -1 .0 -1 0 1 2 3 0 2 4 6 8 10 12 2.0 2.0 1.5 sf0 (log-log) 1.5 sf1 (log-log) 1.0 1.0 0.5 0.5 0.0 0.0 -0.5 -0.5 -1.0 -1.0 0.0 0.5 1.0 1.5 2.0 0.0 0.2 0.4 0.6 0.8 1.0 n of links from starting node n of links from starting node
  • 21. Correlation of epidemic final size with out-degree of starting node increases with network connectivity from: Pautasso N replicates = 100; error bars are St. Dev.; et al. (submitted) different letters show sign. different means at p < 0.05
  • 22. epidemic final size (0.01) and out- 1.0 C AC B D correlation coefficient between A B AA C 0.8 DE degree of starting node E C B E D D E local A random 0.6 B B sw D C E sf2 0.4 sf0 0.2 sf1 0.0 from: Pautasso 100 200 400 1000 et al. (submitted) links
  • 23. 1.00 A 0.75 final size (sum) and in-degree correlation between epidemic 0.50 of the starting node A B links A 0.25 A BBB B C DC B D C D 100 0.00 200 -0.25 sw sf2 sf0 sf1 l om ca D 400 lo D nd C B ra A C -0.50 B 1000 A -0.75 -1.00 from: Pautasso et al. (submitted)
  • 24. 1.00 0.80 correlation coefficient between A epidemic final size (0.01) and A in-degree of starting node 0.60 local 0.40 A random A 0.20 B C B BC B B sw C EED C EE D E F DE 0.00 D sf2 -0.20 100 200 400 1000 sf0 -0.40 sf1 -0.60 -0.80 from: Pautasso et al. (submitted) links
  • 25. Main results 1. lower epidemic threshold for scale-free networks 2. in-out correlation more important than clustering 3. out-degree as a predictor of epidemic final size 4. implications for the horticultural trade Photo: Marin County Fire Department
  • 26. References Chiari C, Dinetti M, Licciardello C, Licitra G & Pautasso M (2010) Urbanization and the more-individuals hypothesis. Journal of Animal Ecology 79: 366-371 Dehnen-Schmutz K, Holdenrieder O, Jeger MJ & Pautasso M (2010) Structural change in the international horticultural industry: some implications for plant health. Scientia Horticulturae 125: 1-15 Harwood TD, Xu XM, Pautasso M, Jeger MJ & Shaw M (2009) Epidemiological risk assessment using linked network and grid based modelling: Phytophthora ramorum and P. kernoviae in the UK. Ecological Modelling 220: 3353-3361 Jeger MJ & Pautasso M (2008) Comparative epidemiology of zoosporic plant pathogens. European Journal of Plant Pathology 122: 111-126 Jeger MJ, Pautasso M, Holdenrieder O & Shaw MW (2007) Modelling disease spread and control in networks: implications for plant sciences. New Phytologist 174: 179-197 MacLeod A, Pautasso M, Jeger MJ & Haines-Young R (2010) Evolution of the international regulation of plant pests and challenges for future plant health. Food Security 2: 49-70 Moslonka-Lefebvre M, Pautasso M & Jeger MJ (2009) Disease spread in small-size directed networks: epidemic threshold, correlation between links to and from nodes, and clustering. J Theor Biol 260: 402-411 Moslonka-Lefebvre M, Finley A, Dorigatti I, Dehnen-Schmutz K, Harwood T, Jeger MJ, Xu XM, Holdenrieder O & Pautasso M (2011) Networks in plant epidemiology: from genes to landscapes, countries and continents. Phytopathology 101: 392-403 Pautasso M (2009) Geographical genetics and the conservation of forest trees. Perspectives in Plant Ecology, Systematics & Evolution 11: 157-189 Pautasso M (2010) Worsening file-drawer problem in the abstracts of natural, medical and social science databases. Scientometrics 85: 193-202 Pautasso M et al (2010) Plant health and global change – some implications for landscape management. Biological Reviews 85: 729-755 Pautasso M, Moslonka-Lefebvre M & Jeger MJ (2010) The number of links to and from the starting node as a predictor of epidemic size in small- size directed networks. Ecological Complexity 7: 424-432 Pautasso M, Xu XM, Jeger MJ, Harwood T, Moslonka-Lefebvre M & Pellis L (2010) Disease spread in small-size directed trade networks: the role of hierarchical categories. Journal of Applied Ecology 47: 1300-1309 Pecher C, Fritz S, Marini L, Fontaneto D & Pautasso M (2010) Scale-dependence of the correlation between human population and the species richness of stream macroinvertebrates. Basic Applied Ecology 11: 272-280 Xu XM, Harwood TD, Pautasso M & Jeger MJ (2009) Spatio-temporal analysis of an invasive plant pathogen (Phytophthora ramorum) in England and Wales. Ecography 32: 504-516