Xiang Wei1, Shihua Chen1, Xiaoqun Wu1, Di Ning2, Jun-An Lu1. 1. School of Mathematics and Statistics, Wuhan University, Wuhan, Hubei 430072, China. 2. School of Mathematics and Statistics, South-Central University for Nationalities, Wuhan 430074, China.
Abstract
This study is concerned with the dynamic behaviors of epidemic spreading in multiplex networks. A model composed of two interacting complex networks is proposed to describe cooperative spreading processes, wherein the virus spreading in one layer can penetrate into the other to promote the spreading process. The global epidemic threshold of the model is smaller than the epidemic thresholds of the corresponding isolated networks. Thus, global epidemic onset arises in the interacting networks even though an epidemic onset does not arise in each isolated network. Simulations verify the analysis results and indicate that cooperative spreading processes in multiplex networks enhance the final infection fraction.
This study is concerned with the dynamic behaviors of epidemic spreading in multiplex networks. A model composed of two interacting complex networks is proposed to describe cooperative spreading processes, wherein the virus spreading in one layer can penetrate into the other to promote the spreading process. The global epidemic threshold of the model is smaller than the epidemic thresholds of the corresponding isolated networks. Thus, global epidemic onset arises in the interacting networks even though an epidemic onset does not arise in each isolated network. Simulations verify the analysis results and indicate that cooperative spreading processes in multiplex networks enhance the final infection fraction.
In recent years, epidemic spreading has received considerable
attention in multiplex networks. The main focus of studies on this process is on how epidemic
spreads in multiplex networks when two spreading processes interact. Epidemic threshold and
final infection fraction are the two important parameters underlying any spreading processes,
to contrast the two parameters between the interacting networks, and the corresponding
isolated networks has practical significance. In this study, a model for cooperative spreading
processes on interacting two-layer networks is proposed. This study aims to prove that the
epidemic thresholds of interacting two-layer networks can be decreased for cooperative
spreading processes, which implies that cooperative spreading processes promote the spread of
disease. This study determines that the global epidemic onset arises. Thus, a global epidemic
threshold can be used to uniform the two epidemic thresholds. This model can also be used for
unidirectional coupled networks. It is revealed that a network with a small epidemic threshold
confirms the global epidemic threshold of the multiplex networks.
INTRODUCTION
Epidemic spreading, which is an important dynamic process in complex networks, has
attracted great attention for a long time. Many studies initially focused on isolated
networks of fixed topology with mean-field approximation. The spread of sexually transmitted diseases and computer viruses
was studied based on scale-free networks. Several studies also revealed that epidemic processes in
scale-free networks do not pose an epidemic threshold because of large connectivity
fluctuations in infinite scale-free networks. Epidemic spreading was investigated in complex random networks
with degree correlations. Then,
reaction-diffusion model in which the nodes contain agents was used in the process of spreading. The
agents can move from a node to another, and spreading processes occurred within agents on
the same node. Further, the studies focus on the mobility of individuals. The movement of individuals among
dense crowd in a city has a great effect on the epidemic threshold. A random diffusion model
was also used to investigate epidemic spreading among objective traveling people. The railway leads to a fast increase
in the number of infected agents and a high final infection fraction. These models and
results are very useful for public health authorities to make effective decisions.However, many spreading processes have been studied independently in a single network. In
the real-world, many spreading processes can occur through multiple routes simultaneously.
For example, sexually transmitted diseases can spread both in homosexual and heterosexual
networks. Avian influenza, such as
2009 H1N1 and 2013 H7N9, has recently made dead-end jumps from poultry to human. Thus, these viruses make challenges to
human progress and survival. A natural extension is to use the interacting network model in
which epidemic can spread from one network to another. Funk and Jansen used the bond percolation analysis of two competitive
viruses in two-layer networks, and the effects of layer overlapping were investigated. A
study on U.S. bisexual men showed that the bisexual men were the medium to connect the
pathogens from the network of heterosexual men with the network of homosexual men. Dickison et
al. studied the
susceptible-infected-refractory (SIR) process and revealed that in strongly coupled
networks, epidemics spread from one layer to the other at a critical infection strength
β, below which the disease does not spread.
Saumell-Mendiola et al.
analyzed an epidemic spreading process of two interacting networks. They also developed a
heterogeneous mean-field approach and revealed that a global endemic state may arise in the
coupled system even though two networks are well below their respective epidemic thresholds.
Granell et al. used a
microscopic Markov chain approach to analyze the interrelation between two processes,
namely, the spreading of the epidemic and the spreading of information awareness to prevent
infection. They also determined that awareness spread leads to disease suppression. Zhao
et al. used bond
percolation theory and the generating function with SIR model to calculate the epidemic
thresholds of multiplex networks. Sahneh and Scoglio extended the single-virus spread model to the two exclusive
viruses in two-layer networks, and they found analytical expressions that determine
extinction, coexistence, and absolute dominance of the viruses. Zhao et
al. promoted the concept of
state-dependent infected rate, and all the different influences between the two epidemics
were displayed. Therefore, epidemic spreading processes on top of multiplex networks reveal
a rich phase diagram of intertwined effects.Any spreading process has two underlying fundamental parameters: epidemic threshold and
final infection fraction. The key issue is the difference in the two parameters between the
interacting networks and the corresponding isolated networks. Cozzo et
al. used perturbation theory
to analyze epidemic thresholds of networks, and they revealed that the spectral radius of
the whole matrix is always not less than that of each submatrix. Thus, the epidemic
threshold of the whole system is always not more than the corresponding isolated networks.
Wang et al.
investigated two types of spreading dynamics: one is the spread of disease, whereas the
other is the spread of information about the disease. They used simulation to determine that
information spreading can effectively raise the epidemic threshold. Guo et
al. proposed a local
awareness controlled contagion spreading model in multiplex networks, and they determined
the emergence of an abrupt transition of epidemic threshold with the local awareness ratio
through numerical simulations.The study on the interaction between two spread processes on two-layer networks has a great
significance. In this study, a model composed of two interacting complex networks is
proposed to describe the cooperative spreading processes. First, this model extends
spreading process in a single network to cooperative spreading in the two-layer networks. It
can also be used to analyze unidirectional or bidirectional interaction between two-layer
networks. Second, perturbation analysis theory is used to prove that epidemic thresholds of
interacting two-layer networks can be decreased in cooperative spreading processes. This
theory reveals that the cooperative interaction between two spread processes can promote
spread. Epidemic onset arises in one network and that also arises simultaneously in the
other network for the interacting networks. Thus, a global epidemic threshold for
interacting networks exists. Finally, this theory also displays that cooperative spreading
processes in multiplex network enhance the final infection fraction.The rest of this paper is organized as follows. A model composed of two interacting complex
networks and theoretical analysis is proposed in Sec. II. Then, the numerical simulations are used to show the effects of the
interactions between two spreading processes in Sec. III. Finally, some discussions and conclusions are given in Sec. IV.
NETWORK MODELING AND PRELIMINARIES
Interacting two-layer networks, including network
and ,
presumably have the same size N with different intra-layer connectivity.
Thus, the model is a multiplex networks, as shown in Fig. 1. We focus in the discrete standard susceptible-infected-susceptible (SIS)
model for both networks with regard to
the spreading dynamics. In each subnetwork, the nodes are denoted as susceptible (S) or
infected (I), and the links represent the connection along which the infection can
propagate. At each time step, susceptible (S) nodes may be infected from intra-layer
infected nodes and inter-layer infected nodes simultaneously. On the other hand, infected
nodes recover spontaneously. After some transient time, the previous dynamics make the
system into a stationary state. For interacting two-layer networks, let
β1(β2) be the probability of
infection between nodes in network A(B) and
γ1(γ2), the probability of
infection from a node in B(A) to a node in
A(B),
μ1(μ2) is the probability of
curing for network A(B). The prevalence of infection of
A and B, defined as the fraction of infected nodes at a
given time, is denoted by and for node
i, respectively. So, the time evolution processes can be written as
for , where and are the
probabilities of node i not being infected by any neighbor in
A and B, respectively In the first line in Eq. (1), the first term on the right-hand side is the probability that node
i is susceptible and is
infected by at least
a neighbor, the second term stands for the probability that node i is
infected at time t and does not recover, and the last term takes into
account the probability that node i is susceptible and is
infected by the counterpart node in other layer, the second line in Eq. (1) has the same definition with the first line.
Based on different epidemic parameters, this model can construct various network structures
to exhibit rich propagation dynamic behaviors.
FIG. 1.
Example of a two-layer network. The topologies are different per layer, and each node in
one layer is connected to its counterparts in the other layer. Dashed and solid lines
represent interlayer and intralayer connections, respectively.
In the following, a simplifying assumption should be made. The probability of infection of
inter-layer is much smaller than the probability of infection of intra-layer, since the probability of infection of
inter-layer describes spreading process from one species to another species. So, one obtains: The fixed point iteration method is used to calculate
nontrivial stationary solution of Eq. (1)
where
and
are the probability of infection of node i at the stationary state for
A and B, respectively. Thus, the final infection
fractions ρ1 and ρ2 for the two
interacting networks A and B are computed as When the values of μ and
γ are fixed, there are epidemic thresholds and for
A and B, respectively, thus if , and if . if , and if . When and , the
probabilities and , so from Eq. (2), one obtains Inserting Eq. (7) into Eq. (4) and neglecting
second-order terms, one obtains thus, we obtain the following equation: where . From the
second line of Eq. (9), we obtain
when
is not the eigenvalue of matrix B, then matrix () is reversible, note that
irreversible measure of () is zero, since the number
of eigenvalues for matrix B is limited. One obtains By the same methods, one obtains Inserting Eqs. (11) and (12) into Eq. (9), we obtain after symbol substitution in Eq. (13), one gets where When Eq. (14) has nonzero solution (), if and only if is
the eigenvalue of matrix and is
the eigenvalue of matrix . Looking for the onset of spread, the
lowest values of β1 and β2
satisfying Eq. (14) are written as
where Λ is the largest
eigenvalue of the matrix.Considering the two isolated networks A and B,
probabilities of infection are denoted by and for node
i, respectivelyInserting Eq. (2) into Eq. (17) and neglecting second-order terms, we can
calculate nontrivial stationary solution for isolated networks by fixed point iteration
method, one obtains and are the
probability of infection vectors for all nodes at the stationary state for
A and B, respectively. Looking for the onset of spread (), the lowest values of
infected rate β1 and β2 for isolated
networks satisfying Eq. (18) areGenerally, probability of infection between layers is smaller than the probability of
infection in the layer. Following the assumptions in Eq. (3), we obtain .
By comparing Eq. (13) with Eq. (18), we can set matrix as
a disturbance of the matrix A, and as
a disturbance of the matrix B. Therefore, in order to contrast the epidemic
thresholds and of
interacting networks with and of the
corresponding isolated networks, we can use perturbation analysis method to analyze the
thresholds of isolated networks. The perturbed solutions to both infected thresholds and and
infection rates and of isolated
networks are proposed as Inserting Eq. (20) into Eq. (9), using Eq. (19) and neglecting second-order terms, Eq. (9) after some algebra yields since and , A and
B are adjacency matrixes, the results show that and , one obtains and . Therefore,
we can conclude that the epidemic threshold of the interacting two-layer networks can be
decreased for two cooperative spreading processes, which means that cooperative spreading
promotes the spreading processes. To obtain more accurate results, we consider the second
order approximation of Eq. (5) as follows:
The second-order corresponds to reinfections and
multiple infections.The conclusion can be extended from duplex networks to multiplex networks. Take a multiplex
network composed of three layers, for example. First, we consider a network which contains
two layers of sub-networks. Based on the conclusion, we obtain that the epidemic threshold
of this duplex network is decreased compared with the two corresponding isolated networks.
Second, we take the duplex network as the first layer, and a third sub-network as the second
layer. Similarly, based on the conclusion, we can conclude that the epidemic threshold of
the multiplex network composed of three layers is decreased compared with the three
corresponding isolated networks. Analogously, the conclusion can be generalized to multiplex
networks composed of more layers of sub-networks.It is observed that a global endemic activity arises in the two interacting complex
networks, the reason being that the state and is not a fixed point of the
dynamics shown in Eq. (9). This conclusion is
proved as below. The state and is presumably a fixed point.
Thus, the probability is , and . When , one obtains after substitution into Eq.
(9), wherein contradiction occurs. The state and is also not a fixed point,
as can be revealed with the same method. Thus, the fixed point is at the state and . Thus, when , then
simultaneously. This finding indicates that if epidemic activity arises in one network, it
will also arise in the other coupled network. That is to say, if the epidemic spreads in one
of the coupled networks, it will spread to the whole system.Generalized outer synchronization in unidirectional interaction of two networks has
attracted great attention for a long time. However, the unidirectional interaction of two networks for an
epidemic has not been considered thus far. The proposed model can also be used to analyze
the unidirectional interaction of two networks by setting or . In the unidirectional
interaction of two-layer networks with , network A
affects network B, but the inverse is not true. When the epidemic threshold
of isolated network A is smaller than that of isolated network
B, we call network A as the dominant network and network
B as the nondominant network. The epidemic threshold of nondominant
network B is proved smaller than that of corresponding isolated network
with perturbation theory. Based on Eq. (9)
with , the following can be
obtained: The perturbed solution is proposed to the infected
threshold and the
infection rate of the
isolated network B
The following is obtained by inserting Eq. (24) into Eq. (23), the second line in Eq. (19), and by neglecting the second-order terms: Given that B is adjacency matrix, the
results show that . Then, the following is
obtained: This finding reveals that the epidemic threshold of
B is well below that of the corresponding isolated network. The dominant
network A with a small epidemic threshold confirms the global epidemic
threshold of the multiplex networks, given that it induces a shift of the epidemic threshold
of the network B to small values. In other words, the multiplex nature of
the system leads to an earlier endemic activity also in the nondominant network, given that
its epidemic threshold is smaller than that for the isolated networks.
NUMERICAL SIMULATIONS
In numerical simulations, two different networks formed by 1000 nodes each are generated,
which follow the power law degree distribution with exponent 2.5, given that the epidemic
thresholds are found at the limit for scale-free networks. Figs. 2–9 show results averaged over 20 runs of randomly
generated two-layer models.Monte Carlo simulations are employed to obtain the epidemic thresholds. The initial
fraction of the infected nodes is set as 0.05, and the probability of curing are and . The values for interlayer
probability of infection are and . For simplicity, we
always set
and .
Note that two additional types of topologies, two interacting random networks, and two
interacting small-world networks are also used for simulations. The numerical results which
are not shown here for brevity agree with those of the two interacting scale-free
networks.The comparison of the final infection fractions ρ1 and
ρ2 of infected nodes for cooperative interaction networks with
the corresponding isolated networks is shown in Figs. 2
and 3. Using first order approximation and second order
approximation for cooperative spreading processes in numerical simulations, Figs. 2 and 3 show that the
difference between first order approximation and second order approximation is trivial. It
is also obvious that the epidemic thresholds are decreased for cooperative spreading
processes compared with those of the corresponding isolated networks. This observation
indicates that cooperative interacting networks promote propagation process. Figs. 2 and 3 also show that
the final infection fraction for cooperative interaction networks is larger than that for
isolated networks whether we use the first or second order approximation.
FIG. 2.
Comparison of the final infection fraction ρ1 as a function
of β1 for cooperative network A with the
corresponding isolated network.
FIG. 3.
Comparison of the final infection fraction ρ2 as a function
of β2 for cooperative network B with the
corresponding isolated network.
Further, the endemic activity of the two interacting complex networks arises
simultaneously. Thus, the epidemic thresholds of the two interacting complex networks are
always the same. Fig. 4 shows the comparison of
epidemic thresholds for interacting networks A and B,
where the x-axis represents the number of runs. In particular, red stars represent epidemic
threshold for network
A, and black circles represent epidemic threshold for network
B. Fig. 4 shows that the epidemic
thresholds are
consistent with epidemic thresholds for 20
runs.
FIG. 4.
Comparison of the epidemic thresholds for two-layer interacting networks
A and B. The x-axis represents the number of runs, and
the y-axis represents the epidemic thresholds obtained by simulations for the two-layer
interacting networks.
We call the sub-network with the smallest epidemic threshold as the dominant network.
Numerical analysis is used to verify the conclusion indicating that spreading process in the
dominant network can promote the spreading process in a nondominant network with
unidirectional interaction. We assume that network A is dominant and
network B is nondominant, and A affects B
although the inverse is not the case. The simulation result which is not shown here for
brevity is similar to Fig. 3. Thus, it reveals that the
epidemic threshold of B in cooperative unidirectional interaction networks
is well below the isolated network B. Therefore, we obtain the result with
Eq. (26).We provide three colormaps to illustrate the overall behavior. Figs. 5–7 show that the expected infection ratios for multiplex networks as a
function of parameters β1 and β2.
The white lines in the lower left corner are used to separate the epidemic survival region
from epidemic die out region. ρ = 0 in this lower left smaller region means
that the epidemic is eventually dying out. in the upper right region
means that the epidemic is going to be eventually persistent in the population. Thus,
horizontal and vertical white lines represent the epidemic thresholds of complex network
A and complex network B, respectively. Comparing the
horizontal and vertical white lines in Figs. 5–7,
we show that epidemic thresholds are decreased for cooperative multiplex networks using both
first order approximation and second order approximation as compared to the epidemic
thresholds of corresponding isolated networks. At the same time, Figs. 5 and 6 show that the die out regions
differ trivially between first and second order approximation. Therefore, the simulation
results are consistent with that of the previous simulations.
FIG. 5.
Expected infection ratios for two-layer interacting
networks as a function of probability of infection β1 and
β2 using first order approximation.
FIG. 6.
Expected infection ratios for two-layer interacting
networks as a function of probability of infection β1 and
β2 by using second order approximation.
Finally, we use simulations for sensitivity analysis of parameters. The second order
approximation for cooperative spreading processes is used in numerical simulations.
Considering the interacting network A, the comparison of
ρ1 for different values of μ1 with is shown in Fig. 8, which reveals that larger μ1
leads to a smaller final infection fraction. Further, the comparison of
ρ1 for different values of γ1 with is shown in Fig. 9. Simultaneously, we can also obtain similar results which
were not displayed for interacting network B. The same observation for
different parameters is obtained, which reveals that the conclusion is not sensitive to
parameters.
FIG. 8.
Comparison of the final infection fraction ρ1 as a function
of β1 for cooperative network A with the
corresponding isolated network for different values of μ1.
FIG. 9.
Comparison of the final infection fraction ρ1 as a function
of β1 for cooperative network A with the
corresponding isolated network for different values of γ.
CONCLUSION
In conclusion, a model for cooperative spreading processes on interacting two-layer
networks is proposed. In particular, the epidemic thresholds of interacting two-layer
networks can be decreased for cooperative spreading processes, thereby implying that
cooperative spreading processes promote the spread of the disease. In theory, the global
epidemic onset arises in the interacting networks simultaneously. Thus, a global epidemic
threshold can be used to uniform the two epidemic thresholds. This model can also be used
for unidirectional coupled networks. The results can provide hints for public health
authorities to make effective measures for disease control and prevention.
Authors: Jun Tao; Yuhua Ruan; Lu Yin; Sten H Vermund; Bryan E Shepherd; Yiming Shao; Han-Zhu Qian Journal: AIDS Patient Care STDS Date: 2013-08-09 Impact factor: 5.078