Qingchu Wu1, Yijun Lou2. 1. College of Mathematics and Information Science, Jiangxi Normal University, Nanchang, Jiangxi 330022, People's Republic of China. 2. Department of Applied Mathematics, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong.
Abstract
The immunization strategies through contact tracing on the susceptible-infected-recovered framework in social networks are modelled to evaluate the cost-effectiveness of information-based vaccination programs with particular focus on the scenario where individuals belonging to a specific set can get vaccinated due to the vaccine shortages and other economic or humanity constraints. By using the block heterogeneous mean-field approach, a series of discrete-time dynamical models is formulated and the condition for epidemic outbreaks can be established which is shown to be not only dependent on the network structure but also closely related to the immunization control parameters. Results show that increasing the immunization strength can effectively raise the epidemic threshold, which is different from the predictions obtained through the susceptible-infected-susceptible network framework, where epidemic threshold is independent of the vaccination strength. Furthermore, a significant decrease of vaccine use to control the infectious disease is observed for the local vaccination strategy, which shows the promising applications of the local immunization programs to disease control while calls for accurate local information during the process of disease outbreak.
The immunization strategies through contact tracing on the susceptible-infected-recovered framework in social networks are modelled to evaluate the cost-effectiveness of information-based vaccination programs with particular focus on the scenario where individuals belonging to a specific set can get vaccinated due to the vaccine shortages and other economic or humanity constraints. By using the block heterogeneous mean-field approach, a series of discrete-time dynamical models is formulated and the condition for epidemic outbreaks can be established which is shown to be not only dependent on the network structure but also closely related to the immunization control parameters. Results show that increasing the immunization strength can effectively raise the epidemic threshold, which is different from the predictions obtained through the susceptible-infected-susceptible network framework, where epidemic threshold is independent of the vaccination strength. Furthermore, a significant decrease of vaccine use to control the infectious disease is observed for the local vaccination strategy, which shows the promising applications of the local immunization programs to disease control while calls for accurate local information during the process of disease outbreak.
Researchers have performed many studies about the dynamic
immunization schemes on networks, which provide new insights into optimal strategies to
effectively control the diseases. However, previous work mainly focused on the immunization
over the whole population under the assumption that the vaccines supply is sufficient to cover
the most of individuals at risk. In some special scenarios, especially for emerging diseases,
the vaccine supply is small compared with the large amount of population size at risk.
Therefore, it is pivotal to investigate a local immunization program that is confined to a
specified subpopulation. In the current manuscript, the immunization strategies through
contact tracing on the susceptible-infected-recovered framework in social networks are
proposed. Using dynamic analysis and numerical simulations, the epidemic thresholds are found
which are shown to be closely associated with the adjustable parameters for the vaccination
programs. This result is different from the case for susceptible-infected-susceptible model
framework where epidemic threshold is independent of the vaccination strength. Furthermore, a
significant decrease of vaccine use to control the infectious disease, through comparison of
static and dynamic immunization schemes, is observed for the local vaccination strategy. These
results provide novel designs for disease control using immunization programs.
INTRODUCTION
The immunization can be regarded as a response to the seriousness of epidemic spreading
through voluntary vaccination or
interventions. Novel insights into
immunization programs can be gained from the study of complex networks from two main perspectives among others:The static immunization which is implemented before the epidemic spreading. Generally speaking, there are two basic
schemes following this idea, the random immunization and the targeted
immunization, and other multiple
variant strategies, such as the acquaintance immunization and inverse targeting immunization, with applications to time-varying
networks and multiplex
networks.The dynamic immunization where the program is implemented during the epidemic
outbreak. Since an individual's vaccination decision is made mainly based on the
epidemic seriousness while sometimes, the novel effective and safe vaccine can only be
developed and mass-produced after the emergence of infectious diseases triggered by
new pathogens, the dynamic immunization is always implemented in realistic situations
in most cases.Similar to individual's behavioral responses to infectious diseases, the dynamic immunization can be well-adjusted based
on transmission information during the epidemic spreading. As soon as an infectious disease
begins to spread in the population, an effective immunization program should be initiated
which may be adjusted according to the disease prevalence and the program terminates when
the disease dies out. Therefore, the epidemic information-based immunization allows us to
take the advantage of the interplay between the immunization response and the epidemic
spreading. Motivated by this idea, researchers have evaluated the efficacy of various
dynamic immunization schemes by using network models with direct immunization or other modelling approaches.
For example, Shaban et al. formulated real-time susceptible-infected-recovered (SIR)
vaccination models for contact tracing in a network with a specific degree distribution by a
branching process approximation. Nian and Wang proposed a strategy to immunize the neighbors of an infected node.
Ruan et al. studied an
information-driven vaccination program and found that strengthening the information
diffusion can reduce the final vaccination fraction. Wang et al. investigated the interplay between
information spreading and disease dynamics in an information-driven vaccination program. Jo
and Baek and Fu et
al. evaluated efficiencies of
immunization schemes in the susceptible-infected-recovered-susceptible (SIRS) and
susceptible-infected-susceptible (SIS) networks, respectively. Zhang et
al. investigated the impact
of subsidy policies on vaccination decisions under the voluntary vaccination. More recently,
Takaguchi et al.
proposed an immunization strategy based on observer placement, which is shown to be very
efficient for disease control in the clustering networks.Although providing novel insights into the cost-effectiveness of various immunization
approaches, previous studies mainly focused on the immunization over the whole population
(denoted by W in this manuscript). However, in reality, the vaccine supply
is limited compared with the large population size at risk, especially for those diseases
triggered by novel pathogens. Furthermore, vaccines may deliver to only a partial population
due to other economic or humanity constraints. Therefore, it becomes much more realistic to
consider a local immunization program that only covers a specified subpopulation (denoted by
Ω in what follows). It becomes of
interest to evaluate the cost-effectiveness of static as well as dynamic immunization
schemes for this realistic situation. A recent paper investigated the SIS epidemic model with local immunization
program and showed that the condition of epidemic outbreak is not related to the
immunization strength. The SIS modelling framework is well-accepted for describing
infections, such as rotavirus and gonorrhea, which do not confer long-lasting immunity.
However, a SIR framework is more suitable for infections such as measles, mumps, and
chickenpox where individuals recover and confer lifelong immunity, which is the fundamental
framework we will extend in the current paper with network structures. Furthermore, we are
also interested in the comparison of predictions obtained from the immunization programs for
these two network model frameworks.In the current manuscript, we are going to propose two kinds of hypothetical immunization
models, for local and global immunization programs, applicable to the SIR epidemic networks.
Rigorous and numerical analysis will illustrate the disease transmission conditions, and the
results will further be compared with previous studies on vaccination programs on the SIS
framework (see the Appendix and Ref. 23). The rest of this paper is organized as follows: In
Section II, we first formulate a
susceptible-vaccinated-infected-recovered (SVIR) model with a global immunization program;
then in Section III, we further investigate a local
immunization program by theoretical analysis and simulations; finally, discussions are
presented in Section IV.
THE GLOBAL IMMUNIZATION PROGRAM
In this section, we extend the SIR epidemic model to SVIR models with the consideration of
a global immunization scheme. Herein, the V state represents the immunized
population through vaccination. Intuitively, one possible efficient immunization strategy is
to directly immunize all the susceptible nodes connected to infected nodes, refereed to as
the high-risk nodes which are likely to
be infected by their infectious neighbors in the following infection wave. These high-risk
nodes can be found through contact tracing theoretically. However, in practice, it is not easy to
locate all these high-risk nodes and there exists a discount rate. Hence, we introduce an
adjustable parameter δ, denoted as the tracing rate or immunization rate,
to account the efficiency of tracing and immunizing these high-risk nodes. Suppose a
susceptible node will get infected by one infectious neighbor with rate β.
Then a susceptible node with s infected neighbors changes its state with
the following probabilities:Following Ref. 26, we assume the network is randomly
generated according to the degree distribution
with α ∈ (2, 3] as many real networks to incorporate the heterogeneity of
individuals. This assumption implies that the connectivity of nodes is uncorrelated. We
denote as the
relative densities of susceptible, vaccinated, infected, and recovered nodes in the
population with degree k at time step t, respectively,
with k = k0,
k, where k0 and
k are the minimal and maximal degrees. Assuming
I(0) ≃ 0 and R(0) = 0 for each
k, then the probability Θ(t) of a randomly selected node
connecting to an infected individual can be formulated as
Then the probability that a
node of degree k has exactly s infected neighbors is given
by the binomial distributionTaking the expectation of the stochastic variable
w1(s) with respect to the above defined
binomial distribution gives the probability with which a susceptible node of degree
k is vaccinated Similarly, a susceptible node
of degree k gets infected with probabilityIn the present paper, we employ the widely used discrete-time approach, capable of accounting the
periodicity feature in daily life or day-night changes, in the above process of state changes during disease transmission.
If we assume that an infected node recovers and simultaneously achieves the perpetual
immunization to the pathogen with rate γ, then the discrete-time epidemic
process can be described in a mean-field formClearly, variables are
nonnegative and satisfy for each k
and t, which can be shown from the system (2), or by their definitions.Under the initial conditions I(0) ≃ 0 and
R(0) = 0 for each k, the occurrence of an
epidemic outbreak depends on the stability of the disease free equilibrium of the network
model. Hence, we consider the system
near the zero solution (I(t) = 0 for each
k). Then, and the evolution of the
infected class can be given by the
linearized model of (2)By analyzing the Jacobian matrix of Eqs. (3),
one can find that the system has a unique eigenvalue of maximum modulus, i.e., , from which the epidemic
threshold can be derived with . Here, we use the rescaled
infection rate τ = β/γ. Then the epidemic
threshold τ determines the epidemic outbreak: if
τ < τ, the total infection density decreases to zero (no
epidemic), otherwise, I(t) first increases to a maximum
and then decreases to zero (an epidemic). When δ > 0, the epidemic threshold is inversely
proportional to 1 − δ value.It is interesting to observe that the threshold index τ
derived here equals to the epidemic threshold for the SIR model with local information-based
behavioral responses. It is also worthy
to remark that the same disease outbreak threshold (4) can also be obtained by the branching process theory. For example, the authors in Ref. 16 studied the vaccination through the contact tracing with a general
contact time and obtained the similar result, while
τ = β/(β + γ) when the
contact time follows an exponential distribution in that paper.
THE LOCAL IMMUNIZATION PROGRAM
The development of optimal vaccine allocation strategies to control the epidemic spreading
remains a central problem in public health and network security. Furthermore, vaccine shortages, resulting from
higher-than-expected demand, interruptions in production/supply or a lack of budgets, makes
it impossible to immunize almost all the nodes in the whole network and urges to design an
optimal strategy minimizing the total number of vaccines or the social cost. The design of an optimal strategy in the
consideration of this constraint is not only related to the high-risk nodes but also the
nodes with other particular characteristics during the epidemic spreading. For that purpose, we introduce a local
immunization program that is confined to a node set Ω, in which nodes are predefined
according to special characteristics for the epidemic control, with the special reference to
vaccine shortage scenario: only susceptible nodes in Ω can be vaccinated or removed while
other nodes cannot. An illustrative diagram is shown in Fig. 1, where the infected node at the center is surrounded by 8 susceptible nodes and
only one of two traced susceptible nodes in Ω gets vaccinated. Clearly, with two extreme cases: when , the immunization scheme
through vaccination is not implemented and the model reduces to a standard SIR model; while the global immunization program is
implemented to cover all risky nodes for Ω = W. In what follows, we only
consider the local immunization scenario, that is, the above inclusions are proper.
FIG. 1.
Illustrations of the contact tracing by an infected node. The central node is an infected
node with 8 susceptible neighbors, among which two are in the set Ω while the others are
outside Ω. Only one, out of two Ω-nodes, is traced (and also will get vaccinated) by the
central node along the contact between them (indicated by a blue and thick line).
In the local immunization program, one key question is to determine which group of
individuals should be traced and get immunized, in other words, to define the set Ω for the
network. This question can be solved when we have no knowledge about the spreading
resource by some classical static
immunization strategies, such as the random immunization and targeted immunization. In order
to present a comparative analysis, in this paper, we consider two kinds of Ω determined by
the random immunization and targeted immunization, respectively.When the set Ω is fixed, a subnetwork G1 formed by the nodes in
Ω can be defined, and the remaining nodes together with their edges form a subnetwork
G2. Since there exist links between nodes in
G1 and G2, the whole network
G can be regarded as an interdependent network where the mean-field approach is still feasible. Taking the
difference between interdependent networks and a single network, we call the subnetwork
G, i = 1, 2, as blocks of
G and the mean-field approach based on the blocks is correspondingly
referred to as the block heterogeneous mean-field (HMF)
approach (it differs from the block variable mean-field approach).
The random immunization case
The random immunization means that a fraction f of all nodes is randomly
selected to be immunized, from which,
the set Ω is determined. Based on the nodes in set Ω, blocks
G1 and G2 can be defined
accordingly. Denote , and as the
relative densities of susceptible, vaccinated, infected, and recovered nodes of
G (i = 1 or 2) in the population
G with degree k at time step t,
respectively. According to the discrete-time HMF approach, the dynamical model for the
random immunization program is given by Here,
the respective infection probabilities in G1 and
G2 are and Please note that the model
does not include the dynamics of other variables for with
i = 1, 2 and which do
not appear in the system describing the evolution of infectious nodes at the initial stage
of disease spread.A similar approximation analysis as in Sec. II near
the disease-free equilibrium E0 gives with .At the early stage of an epidemic, we have while Let , then the
local stability of E0 can be established through the following
linear system for infected nodes: with where
is an identity matrix and A is a M × M
positive matrix with entries and
M = k − k0 + 1.Using the property of block matrix, one can obtainUsing this equality, it is easy to obtain the maximal eigenvalue of
J1(E0) as Therefore, the epidemic
threshold for the random immunization case, , is given
by It is obvious to see that the epidemic threshold is
dependent of both f and δ. In addition, the epidemic
threshold becomes much more sensitive to the immunization rate δ for
larger f values.
The targeted immunization case
The targeted immunization has been shown very effective in controlling epidemic outbreak
on scale-free networks. To evaluate the
efficacy of this program in this study, we choose nodes with large degrees to be
vaccinated, that is, the node set , where
deg(v) denotes the degree of node v and
K is a control parameter. In this scenario, the whole network can be
divided into two blocks: The dynamical equations for
the targeted immunization case can be written as Here, and are
defined as before. We can obtain the linearized equations for for linear
stability analysis of the disease free equilibrium E0
The corresponding Jacobian
matrix J2(E0) at
E0 becomes where B is a
M × M positive matrix with entries for
k < K and for
k ≥ K.It is easy to verify from (6) that the
dominant eigenvalue with Therefore,
the epidemic threshold for the targeted immunization case isIt indicates that the epidemic threshold is dependent on δ and
K. The epidemic threshold increases with δ while
decreases with K, and the infectious disease may be controlled when
δ is large or K is small enough. To compare the
cost-effectiveness of the random and targeted immunization strategies, we first write Eq.
(7) into the form of Eq. (5) as with .
In the targeted immunization program, we have , which represents total
vaccine coverage in the whole network. Next, we are going to show that , which is equivalent toSince k(k − 1) is an increasing function of
k, there exists a threshold value m such that when
k ≤ m and when
k ≥ m, indicating that the function F
increases first and then decreases across the threshold value. On the other hand,
F(k0) = 0 and
F(k) > 0, and therefore, we get
F(K) > 0 for all
K > k0, which proves > f.
Therefore, for the
same f value with for the targeted
immunization case, which implies that the epidemic threshold becomes greater for the
target immunization program than that for the random immunization program with the same
vaccine coverage used. Therefore, one can conclude that the targeted immunization is more
efficient than the random immunization.
Simulations
To verify the above theoretical analysis, we perform Monte Carlo simulations over
scale-free networks generated from the standard configuration model with degree exponent α = 2.7. The
network structure is set with size N = 2000, the minimal degree
k0 = 3, and the maximal degree . The recovery rate
γ is set to be 1.0. All simulations are implemented by a parallel
updating strategy in which the actual disease states of each node and its neighbors at
each time step are considered. We start with a single initial infectious seed and all
simulation results are obtained by taking averages of 20 random network configurations and
50 independent initial conditions for each network realization.Fig. 2(a) illustrates the epidemic prevalence
R (i.e., the fraction of recovered nodes at the end of
the epidemic wave) as a function of infection rate β. This figure also
shows the existence of an epidemic threshold for different immunization rates. In order to
examine the validation of the theoretical results to the Monte Carlo simulation, we also
consider the maximal infection density Imax for different
parameters, which has been shown to be an effective index to measure the epidemic
threshold of the model with infinite absorbing states. An alternative approach is based on the variability measure
suggested by Shu et al. As illustrated in Fig. 2(b),
the simulation results agree with the theoretical threshold conditions obtained in Eq.
(5). Similar conclusion can be made for
the targeted immunization in Fig. 3. Furthermore,
increasing δ value can always raise the epidemic threshold
τ regardless of the random or targeted immunization case.
This result is significantly different from the SVIS network model based on an SIS
framework (see detailed analysis about SVIS model in the Appendix), where the parameter δ does not play a role for
τ.
FIG. 2.
Effect of the immunization rate on the epidemic threshold and prevalence for the random
immunization case when f = 0.5: (a) final recovered size
R versus the infection rate β for
different values of δ; (b) contour of Imax in
the (δ – β) parameter plane, where the white line
indicates the theoretically predicted curve determined in Eq. (5), and the light gray region corresponds to
the parameter region with zero prevalence.
FIG. 3.
Effect of the immunization rate on the epidemic threshold and prevalence for the targeted
immunization case when K = 10: (a) final recovered size
R versus the infection rate β for
different values of δ; (b) contour of Imax in
the (δ – β) parameter plane, where the white line
indicates the theoretically predicted curve determined in Eq. (7), and the light gray region to the parameter
region with zero prevalence.
We further investigate the impact of dynamic immunization on the final vaccine size
V by using the immunization efficiency
Q. When there is no infection in the network (i.e., at the steady state),
we can define Ω as where X is
the node state, which may be S, I, R,
or V. Notice that there exist infection-induced immunization nodes in Ω
and therefore, Ω ∪ Ω ∪
Ω = Ω. Hence, the immunization efficiency for the SIR
model, a function of variables δ, β, f,
and K, can be expressed as where the symbol
Ω denotes the number of the
elements in set Ω.Fig. 4 clearly shows that the immunization
efficiency index Q is strongly correlated with the infection rate
β and the immunization rate δ for different predefined
sets Ω, representing the random/targeted immunization strategies used. For each fixed
δ value, Q increases as β decreases.
However, the monotonicity of Q, as a function of δ is
much more complicated, as shown in Fig. 4(a) for the
random immunization case. Generally speaking, Q is an increasing function
of δ (Figs. 4(b)–4(d)). However, in
Fig. 4(a), when the infection rate β
is relatively small, say β = 0.2, the immunization efficiency is
negatively correlated to the immunization strength, as highlighted by three blue lines. It
is due to the dual effect of the increased immunization strength. Although increasing δ enlarges
vaccination coverage, it also halts the spreading of an epidemic with a small infection
rate across hub nodes and hence decreases propensity for vaccination. The relationship
between τ and δ is illustrated by dashed
lines in each panel of Fig. 4. Almost all of these
curves lie in the red region, showing that the immunization efficiency should be very high
to control the disease. It is noticed that at the case δ = 1, the
expression of τ is reduced to be the same as the
corresponding static immunization in Ref. 38.
However, the spreading patterns between dynamic and static immunization are not the same,
as many susceptible nodes are not vaccinated in Ω for the dynamic immunization.
FIG. 4.
The contour plot of the immunization efficiency, where the horizontal coordinate is the
infection rate β and the vertical coordinate is the immunization strength
δ. Panels (a) and (b) illustrate the random immunization case for
f = 0.2 and 0.8, respectively, while panels (c) and (d) show the
targeted immunization case for K = 6 and 12, respectively. The dashed
lines in each panel indicate the epidemic thresholds by theoretical predictions.
CONCLUSION AND DISCUSSION
The study of the network theory enables us to analyze the role of each node or node set in
the epidemic spreading and get novel insights into the transmission dynamics. As we know,
the SIR-like epidemic network model can be analyzed by various approaches, such as the
percolation theory, the branching
process approximation, and the effective
degree approaches. Recently, the
heterogeneous mean-field approach poses a good tool to analyze complex disease dynamics due
to its simple and deterministic formulation. In this manuscript, we formulated real-time immunization models
with the discrete-time HMF approach, where susceptible nodes can get immunized by contact
tracing from infected nodes. Considering the real situations of vaccine shortages such that
the number of vaccines cannot cover the whole population, we propose a local immunization
program that can only immunize a given node set Ω in the whole population, which can be
defined as a geological region of a city or a social group of a population or other groups
sharing some characteristics. The epidemic thresholds for different (local versus global)
vaccination scenarios against infectious diseases are obtained from stability analysis,
based on which the effectiveness of a vaccination program can be evaluated. The predicted
thresholds are validated through numerical simulations. Our result suggests that the local
immunization program can greatly improve the efficiency of static immunization, requiring a
smaller amount of vaccines to effectively control disease spread. However, the efficacy of
vaccination programs not only depends on immunization rate but also on the choice of
individual group to immunize. Therefore, it remains pivotal to extend the approach in this
manuscript to other local immunization strategies, with different targeted vaccination
groups to get an optimal strategy for disease control. This may contribute toward the
optimal strategy of vaccine allocation for emerging infectious diseases such as influenza A
(H1N1).In the local immunization program with a SIR framework, we find that the immunization rate
δ can greatly affect the epidemic threshold, which distinguishes from the
prediction based on the SIS spreading mechanism where δ does not play a
role in the threshold. This adds one more difference between the SIS and SIR network models,
as revealed by Castellano and Pastor-Satorras that the threshold of generic epidemic models is vanishing for an
SIS model, while it is finite for the SIR model on quenched scale-rich networks (i.e.,
α > 3).In the present work, we only consider the same immunization rate δ for
each node in the immunization set Ω. The same approach remains valid for a general case with
multiple immunization sets with different δ values. Another interesting
exploration may be the study of local immunization program in the interdependent
networks or the community
networks. These realistic issues
suggest good topics for further research.
Authors: Marc Baguelin; Albert Jan Van Hoek; Mark Jit; Stefan Flasche; Peter J White; W John Edmunds Journal: Vaccine Date: 2010-01-21 Impact factor: 3.641