<div><p>Predicting the dynamic behavior of a large network from that of the composing modules is a central problem in systems and synthetic biology. Yet, this predictive ability is still largely missing because modules display context-dependent behavior. One cause of context-dependence is retroactivity, a phenomenon similar to loading that influences in non-trivial ways the dynamic performance of a module upon connection to other modules. Here, we establish an analysis framework for gene transcription networks that explicitly accounts for retroactivity. Specifically, a module's key properties are encoded by three retroactivity matrices: internal, scaling, and mixing retroactivity. All of them have a physical interpretation and can be comput...
<div><p>Biological protein interactions networks such as signal transduction or gene transcription n...
A significant problem when building complex biomolecular circuits is due to context-dependence: the ...
"Module networks" are a framework to learn gene regulatory networks from expression data using a pro...
One of the major challenges in systems and synthetic biology is the lack of modular composition. Mod...
Synthetic biology is a bottom-up engineering discipline: biological modules are systematically desig...
Just like in many engineering systems, impedance-like effects, called retroactivity, arise at the in...
This paper studies how retroactivity impacts the robustness of gene transcription networks against p...
Just like in many engineering systems, impedance-like effects, called retroactivity, arise at the in...
Abstract—The concept of a network motif—a small set of interacting genes which produce a predictable...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Network motifs, such as the feed-forward loop (FFL), introduce a range of complex behaviors to trans...
Abstract—The input/output dynamic behavior of a biomolec-ular system is affected by interconnection ...
AbstractSynthetic gene regulatory networks show significant stochastic fluctuations in expression le...
A well-known hypothesis, with far-reaching implications, is that biological evolution should prefere...
4Gene switching dynamics is a major source of randomness in genetic networks, also in the case of la...
<div><p>Biological protein interactions networks such as signal transduction or gene transcription n...
A significant problem when building complex biomolecular circuits is due to context-dependence: the ...
"Module networks" are a framework to learn gene regulatory networks from expression data using a pro...
One of the major challenges in systems and synthetic biology is the lack of modular composition. Mod...
Synthetic biology is a bottom-up engineering discipline: biological modules are systematically desig...
Just like in many engineering systems, impedance-like effects, called retroactivity, arise at the in...
This paper studies how retroactivity impacts the robustness of gene transcription networks against p...
Just like in many engineering systems, impedance-like effects, called retroactivity, arise at the in...
Abstract—The concept of a network motif—a small set of interacting genes which produce a predictable...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Network motifs, such as the feed-forward loop (FFL), introduce a range of complex behaviors to trans...
Abstract—The input/output dynamic behavior of a biomolec-ular system is affected by interconnection ...
AbstractSynthetic gene regulatory networks show significant stochastic fluctuations in expression le...
A well-known hypothesis, with far-reaching implications, is that biological evolution should prefere...
4Gene switching dynamics is a major source of randomness in genetic networks, also in the case of la...
<div><p>Biological protein interactions networks such as signal transduction or gene transcription n...
A significant problem when building complex biomolecular circuits is due to context-dependence: the ...
"Module networks" are a framework to learn gene regulatory networks from expression data using a pro...