International audiencePredicting disease dynamics during an epidemic is an important aspect of e-Health applications. In such prediction, Realistic Contact Networks (RCNs) have been widely used to characterize disease dynamics. The structure of such networks is dynamically changed during an epidemic. Capturing such kind of dynamic structure is the basis of prediction. With the popularity of mobile devices, it is possible to capture the dynamic change of the network structure. On this basis, in this study, we evaluate the impact of the network structure on disease dynamics, by analyzing massive spatiotemporal data collected by mobile devices. These devices are carried by the volunteers of Ebola outbreak areas. Based on the results of this ev...
International audienceThe integration of empirical data in computational frameworks to model the spr...
Abstract: Predicting the rise or fall of an epidemic or pandemic is an essential part of establishin...
The study was designed to introduce a technique for disease prediction by using a data mining algori...
Recent studies have increasingly turned to graph theory to model Realistic Contact Networks (RCNs) f...
Human interactions that are sensed ubiquitously by mobile phones can improve a significant number of...
Understanding the propagation dynamics of information/an epidemic on complex networks is very import...
International audienceHuman interactions that are sensed ubiquitously by mobile phones can improve a...
AbstractThe emergence of Ebola in West Africa is of worldwide public health concern. Successful miti...
International audienceThe recent availability of large-scale call detail record data has substantial...
Understanding the propagation dynamics of information and epidemic on complex networks is very impor...
International audienceBackground COVID-19 was first detected in Wuhan, China, in 2019 and spread wor...
AbstractRecent technological developments on mobile technologies allied with the growing computation...
Many studies have indicated the potential of using Social Networks for the early detection of public...
The possibility to analyze, quantify and forecast epidemic outbreaks is fundamental when devising ef...
International audienceEffective response to infectious disease epidemics requires focused control me...
International audienceThe integration of empirical data in computational frameworks to model the spr...
Abstract: Predicting the rise or fall of an epidemic or pandemic is an essential part of establishin...
The study was designed to introduce a technique for disease prediction by using a data mining algori...
Recent studies have increasingly turned to graph theory to model Realistic Contact Networks (RCNs) f...
Human interactions that are sensed ubiquitously by mobile phones can improve a significant number of...
Understanding the propagation dynamics of information/an epidemic on complex networks is very import...
International audienceHuman interactions that are sensed ubiquitously by mobile phones can improve a...
AbstractThe emergence of Ebola in West Africa is of worldwide public health concern. Successful miti...
International audienceThe recent availability of large-scale call detail record data has substantial...
Understanding the propagation dynamics of information and epidemic on complex networks is very impor...
International audienceBackground COVID-19 was first detected in Wuhan, China, in 2019 and spread wor...
AbstractRecent technological developments on mobile technologies allied with the growing computation...
Many studies have indicated the potential of using Social Networks for the early detection of public...
The possibility to analyze, quantify and forecast epidemic outbreaks is fundamental when devising ef...
International audienceEffective response to infectious disease epidemics requires focused control me...
International audienceThe integration of empirical data in computational frameworks to model the spr...
Abstract: Predicting the rise or fall of an epidemic or pandemic is an essential part of establishin...
The study was designed to introduce a technique for disease prediction by using a data mining algori...