BACKGROUND: We present a statistical method of analysis of biological networks based on the exponential random graph model, namely p2-model, as opposed to previous descriptive approaches. The model is capable to capture generic and structural properties of a network as emergent from local interdependencies and uses a limited number of parameters. Here, we consider one global parameter capturing the density of edges in the network, and local parameters representing each node's contribution to the formation of edges in the network. The modelling suggests a novel definition of important nodes in the network, namely social, as revealed based on the local sociality parameters of the model. Moreover, the sociality parameters help to reveal organi...
BACKGROUND: Many aspects of biological functions can be modeled by biological networks, such as prot...
[[abstract]]We employed the random graph theory approach to analyze the protein-protein interacting ...
Shweta Bansal is with the Center for Infectious Disease Dynamics, Penn State University, University ...
Proteins, the main motors of the cell, are in charge of performing a diverse array of biological fun...
The overall goal is to establish a reliable human protein-protein interaction network and develop co...
Proteins, the main motors of the cell, are in charge of performing a diverse array of biological fun...
We present an analysis of protein interaction network data via the comparison of models of network e...
This work focuses on the use of network graph theory in biological networks. I explore how network g...
This work focuses on the use of network graph theory in biological networks. I explore how network g...
We present a statistical method for the prediction of protein—protein interactions within an organis...
Protein–protein interaction (PPI) networks are commonly explored for the identification of distincti...
Networks are used to model real-world phenomena in various domains, including systems biology. Since...
Complex biological systems are often modeled as networks of interacting units. Networks of biochemic...
Abstract Background Complex biological systems are often modeled as networks of interacting units. N...
[[abstract]]We employ the random graph theory approach to analyze the protein?protein interaction da...
BACKGROUND: Many aspects of biological functions can be modeled by biological networks, such as prot...
[[abstract]]We employed the random graph theory approach to analyze the protein-protein interacting ...
Shweta Bansal is with the Center for Infectious Disease Dynamics, Penn State University, University ...
Proteins, the main motors of the cell, are in charge of performing a diverse array of biological fun...
The overall goal is to establish a reliable human protein-protein interaction network and develop co...
Proteins, the main motors of the cell, are in charge of performing a diverse array of biological fun...
We present an analysis of protein interaction network data via the comparison of models of network e...
This work focuses on the use of network graph theory in biological networks. I explore how network g...
This work focuses on the use of network graph theory in biological networks. I explore how network g...
We present a statistical method for the prediction of protein—protein interactions within an organis...
Protein–protein interaction (PPI) networks are commonly explored for the identification of distincti...
Networks are used to model real-world phenomena in various domains, including systems biology. Since...
Complex biological systems are often modeled as networks of interacting units. Networks of biochemic...
Abstract Background Complex biological systems are often modeled as networks of interacting units. N...
[[abstract]]We employ the random graph theory approach to analyze the protein?protein interaction da...
BACKGROUND: Many aspects of biological functions can be modeled by biological networks, such as prot...
[[abstract]]We employed the random graph theory approach to analyze the protein-protein interacting ...
Shweta Bansal is with the Center for Infectious Disease Dynamics, Penn State University, University ...