Large amounts of biological network data exist for many species. Analogous to sequence comparison, network comparison aims to provide biological insight. Graphlet-based methods are proving to be useful in this respect. Recently some doubt has arisen concerning the applicability of graphlet-based measures to low edge density networks-in particular that the methods are 'unstable'-and further that no existing network model matches the structure found in real biological networks.We demonstrate that it is the model networks themselves that are 'unstable' at low edge density and that graphlet-based measures correctly reflect this instability. Furthermore, while model network topology is unstable at low edge density, biological network topology is...
Background: Analysis of integrated genome-scale networks is a challenging problem due to heterogenei...
Abstract Capability to compare biological models is a crucial step needed in an analysis of complex ...
Graph theory is a valuable framework to study the organization of functional and anatomical connecti...
Large amounts of biological network data exist for many species. Analogous to sequence comparison, n...
MOTIVATION: A wealth of protein-protein interaction (PPI) data has recently become available. These ...
Motivation: A wealth of protein-protein interaction (PPI) data has recently become available. These ...
Over the past decade, the study of graphlets has emerged as a useful tool in the study of networks. ...
We report a comprehensive evaluation of the topological structure of protein-protein interaction (PP...
While the number of network comparison methods is increasing, benchmarking of these methods is still...
Current understanding of how diseases are associated with each other is mainly based on the similari...
Abstract—The recent explosion in biological and other real-world network data has created the need f...
[[abstract]]We employ the random graph theory approach to analyze the protein?protein interaction da...
Finding a good network null model for protein-protein interaction (PPI) networks is a fundamental is...
Proteins, the main motors of the cell, are in charge of performing a diverse array of biological fun...
While current protein interaction data provides a rich resource for molecular biology, it mostly lac...
Background: Analysis of integrated genome-scale networks is a challenging problem due to heterogenei...
Abstract Capability to compare biological models is a crucial step needed in an analysis of complex ...
Graph theory is a valuable framework to study the organization of functional and anatomical connecti...
Large amounts of biological network data exist for many species. Analogous to sequence comparison, n...
MOTIVATION: A wealth of protein-protein interaction (PPI) data has recently become available. These ...
Motivation: A wealth of protein-protein interaction (PPI) data has recently become available. These ...
Over the past decade, the study of graphlets has emerged as a useful tool in the study of networks. ...
We report a comprehensive evaluation of the topological structure of protein-protein interaction (PP...
While the number of network comparison methods is increasing, benchmarking of these methods is still...
Current understanding of how diseases are associated with each other is mainly based on the similari...
Abstract—The recent explosion in biological and other real-world network data has created the need f...
[[abstract]]We employ the random graph theory approach to analyze the protein?protein interaction da...
Finding a good network null model for protein-protein interaction (PPI) networks is a fundamental is...
Proteins, the main motors of the cell, are in charge of performing a diverse array of biological fun...
While current protein interaction data provides a rich resource for molecular biology, it mostly lac...
Background: Analysis of integrated genome-scale networks is a challenging problem due to heterogenei...
Abstract Capability to compare biological models is a crucial step needed in an analysis of complex ...
Graph theory is a valuable framework to study the organization of functional and anatomical connecti...