External cues are processed and integrated by signal transduction networks that drive appropriate cellular responses. Characterizing these programs, as well as how their deregulation leads to disease, is crucial for our understanding of cell biology. The past ten years have witnessed a gradual increase in the number of molecular parameters that can be simultaneously measured in a sample. Moreover our capacity to handle multiple samples in parallel has expanded, thus allowing a deeper profiling of cellular states under diverse experimental conditions. These technological advances have been complemented by the development of computational methods aimed at mining, analyzing and modeling these data. In this review we give a general overview of ...
Signaling transduction networks (STNs) are the key means by which a cell converts an external signal...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Inferring cell signaling networks from high-throughput data is a challenging problem in systems biol...
External cues are processed and integrated by signal transduction networks that drive appropriate ce...
This article is a critical review of computational techniques used to model, analyse and simulate si...
This paper introduces compelling problems of biological systems and signaling networks to show how e...
Biological signaling networks comprise the chemical processes by which cells detect and respond to c...
Recent advances in quantification methods of regulatory and signaling gene networks has lead to an i...
Complex biological systems can only be analysed by utilizing computational and mathematical methods....
Cellular signaling is essential in information processing and decision-making. Therefore, a variety ...
Computational models of cell signalling are perceived by many biologists to be prohibitively complic...
This work explores how much the traditional approach to modeling and simulation of biological system...
Cellular circuits sense the environment, process signals, and compute decisions using networks of in...
Emerging technologies have enabled the acquisition of large genomics and proteomics data sets. Howev...
The Iyengar laboratory is interested in understanding how signals are routed and processed through c...
Signaling transduction networks (STNs) are the key means by which a cell converts an external signal...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Inferring cell signaling networks from high-throughput data is a challenging problem in systems biol...
External cues are processed and integrated by signal transduction networks that drive appropriate ce...
This article is a critical review of computational techniques used to model, analyse and simulate si...
This paper introduces compelling problems of biological systems and signaling networks to show how e...
Biological signaling networks comprise the chemical processes by which cells detect and respond to c...
Recent advances in quantification methods of regulatory and signaling gene networks has lead to an i...
Complex biological systems can only be analysed by utilizing computational and mathematical methods....
Cellular signaling is essential in information processing and decision-making. Therefore, a variety ...
Computational models of cell signalling are perceived by many biologists to be prohibitively complic...
This work explores how much the traditional approach to modeling and simulation of biological system...
Cellular circuits sense the environment, process signals, and compute decisions using networks of in...
Emerging technologies have enabled the acquisition of large genomics and proteomics data sets. Howev...
The Iyengar laboratory is interested in understanding how signals are routed and processed through c...
Signaling transduction networks (STNs) are the key means by which a cell converts an external signal...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Inferring cell signaling networks from high-throughput data is a challenging problem in systems biol...