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Title: Presentazione di PowerPoint


1
Are global epidemics predictable ?
V. Colizza School of Informatics,
Indiana University, USA M. Barthélemy
School of Informatics, Indiana University, USA
A. Barrat Universite Paris-Sud,
France A. Vespignani School of
Informatics, Indiana University, USA
Networks and Complex Systems talk series
2
Epidemic spread 14th century
Black Death
3
Epidemic spread nowadays
SARS
4
Epidemic spread nowadays
SARS
5
Modeling of global epidemics
  • multi-level description
  • intra-city
  • epidemics
  • inter-city travel

Ravchev, Longini. Mathematical Biosciences (1985)
6
World-wide airport network
  • complete 2002 IATA database
  • V 3880 airports
  • E 18810 weighted edges
  • wij seats / year
  • Nj urban area population
  • (UN census, )

Barrat, Barthélemy, Pastor-Satorras, Vespignani.
PNAS (2004)
V 3100 airports E 17182 weighted edges
gt99 of total traffic
7
World-wide airport network
ltkgt 9.75 kmax 318 ltwgt 74584.4 wmin
4 wmax 6.167e06
Frankfurt
Sapporo - Tokyo
8
World-wide airport network summary
  • Broad distributions ? strong heterogeneities
  • 3 different levels
  • degree
  • weight
  • population

9
Epidemics Stochastic Model
compartmental model air transportation data
Susceptible
N5
N2
N3
SIR model
w45
N0
Infected
w54
N1
N4
Recovered
10
Stochastic Model Travel term
Travel probability from j to l
passengers in class X from j to l
multinomial distr.
11
Stochastic Model Travel term
Transport operator
ingoing
outgoing
  • other source of noise
  • two-legs travel

12
Stochastic Model Intra-city
S
  • Homogeneous assumption
  • b rate of transmission
  • m-1 average infectious period

b
I
m
R
Independent Gaussian noises
13
Epidemics Stochastic Model summary
compartmental model air transportation data
Intra-cities
Inter-cities
14
Case study SARS
Susceptible
Infected
b
Hospitalized
Latent
e
Infected
dg
(1-d)g
HospitalizedD
HospitalizedR
gD
gR
Recovered
Dead
15
Case study SARS
  • data WHO reported cases
  • final report
  • 28 infected countries
  • 8095 infected cases
  • 774 deaths
  • refined compartmentalization
  • parameter estimation
  • literature
  • best fit
  • initial condition
  • t0 ? Feb. 21st
  • seed Hong Kong
  • I01, L0 estimated, S0N

16
Case study SARS ? results
17
statistical properties epidemic pattern ?
  • strong heterogeneity in
  • no. infected cases 0-103
  • large fluctuations
  • Full scale computational
  • study of global epidemics
  • statistical properties epidemic pattern
  • effect of complexity of transportation network
  • forecast reliability

18
Results Geographic spread
Epidemics starting in Hong Kong
19
Results Geographic spread
Epidemics starting in Hong Kong
Gastner, Newman. PNAS (2004)
20
Results Geographic spread
Epidemics starting in Hong Kong
21
1st PART Heterogeneity
  • maps ? heterogeneity epidemic spread
  • appropriate measure
  • role of specific structural
  • properties
  • topology, traffic, population
  • comparison with null hypothesis

22
Epidemic heterogeneity and Network structure
WAN
23
Epidemic heterogeneity
prevalence in city j at time t
normalized prevalence
Entropy
H 0,1 H0 most het. H1 most hom.
24
Results Epidemic heterogeneity
  • global properties
  • average over initial
  • seed
  • central zone Hgt0.9
  • HETk WAN
  • ? importance of P(k)

25
Results Epidemic heterogeneity
  • epidemics starting from
  • a given city
  • average entropy profile
  • maximal dispersion
  • noise small effect

26
Results Epidemic heterogeneity
  • epidemics starting
  • from a given city
  • percentage of
  • infected cities

27
2nd PART Predictability
One outbreak realization
time
Another outbreak realization ?
  • epidemic forecast
  • containment strategies

28
Predictability
normalized probability
Similarity between 2 outbreak realizations
Hellinger affinity ? Overlap function
29
Predictability
2 identical outbreaks 2 distinct outbreaks
30
Results Predictability
  • left seed airport hubs
  • right seed poorly
  • connected airports
  • HOM HETw high overlap
  • HETk low overlap
  • WAN increased overlap !!

31
Results Predictability
HOM ? few channels ? high overlap
degree heterog.
HETk broad P(k) ? lots of channels! ? low overlap
wjl
l
j
  • WAN broad P(k),P(w) ? lots of channels!
  • ? emergence of preferred channels
  • ? increased overlap !!!

32
Conclusions
  • air transportation network properties
  • global pattern of emerging disease
  • ? spatio-temporal heterogeneity of epidemic
    pattern
  • quantitative measurement of the predictability
  • of epidemic pattern
  • epidemic forecast, risk analysis of containment
  • strategies

Ref. http//arxiv.org/ ? qbio/0507029
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