MOTIVATION: Recent developments in experimental methods facilitate increasingly larger signal transduction datasets. Two main approaches can be taken to derive a mathematical model from these data: training a network (obtained, e.g., from literature) to the data, or inferring the network from the data alone. Purely data-driven methods scale up poorly and have limited interpretability, whereas literature-constrained methods cannot deal with incomplete networks.RESULTS: We present an efficient approach, implemented in the R package CNORfeeder, to integrate literature-constrained and data-driven methods to infer signalling networks from perturbation experiments. Our method extends a given network with links derived from the data via various in...
Motivation The postulate that biological molecules rather act together in intricate networks, pione...
In this thesis we present methods for applying techniques from complex network theory to analyze and...
Perturbation experiments for example using RNA interference (RNAi) offer an attractive way to elucid...
MOTIVATION: Recent developments in experimental methods facilitate increasingly larger signal transd...
MOTIVATION: Recent developments in experimental methods allow generating increasingly larger signal...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Perturbation experiments for example using RNA interference (RNAi) offer an attractive way to elucid...
Network models are widely used to describe complex signaling systems. Cellular wiring varies in diff...
Abstract Background The advent of RNA interference techniques enables the selective silencing of bio...
It remains unclear whether causal, rather than merely correlational, relationships in molecular netw...
Background: Intracellular signal transduction is achieved by networks of proteins and small molecule...
Motivation: Animal models are important tools in drug discovery and for understanding human biology ...
Motivation The postulate that biological molecules rather act together in intricate networks, pione...
In this thesis we present methods for applying techniques from complex network theory to analyze and...
Perturbation experiments for example using RNA interference (RNAi) offer an attractive way to elucid...
MOTIVATION: Recent developments in experimental methods facilitate increasingly larger signal transd...
MOTIVATION: Recent developments in experimental methods allow generating increasingly larger signal...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Large-scale protein signalling networks are useful for exploring complex biochemical pathways but do...
Perturbation experiments for example using RNA interference (RNAi) offer an attractive way to elucid...
Network models are widely used to describe complex signaling systems. Cellular wiring varies in diff...
Abstract Background The advent of RNA interference techniques enables the selective silencing of bio...
It remains unclear whether causal, rather than merely correlational, relationships in molecular netw...
Background: Intracellular signal transduction is achieved by networks of proteins and small molecule...
Motivation: Animal models are important tools in drug discovery and for understanding human biology ...
Motivation The postulate that biological molecules rather act together in intricate networks, pione...
In this thesis we present methods for applying techniques from complex network theory to analyze and...
Perturbation experiments for example using RNA interference (RNAi) offer an attractive way to elucid...