We propose a modeling approach based on Probabilistic Boolean Networks for the inference of genetic regulatory networks from gene expression time-course data in different biological conditions i.e. making use of the information contained in sets of genes and the interaction between genes rather than single-gene analyses. This model is a collection of traditional Probabilistic Boolean Networks. We also present an approach which is based on constrained prediction and Coefficient of Determination (COD) for the identification of the model from gene expression data. The modeling approach is applied in the context of pathway biology to the analysis of gene interaction network
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
We propose a modeling approach based on Probabilistic Boolean Networks for the inference of genetic ...
We propose a modeling approach based on Probabilistic Boolean Networks for the inference of genetic ...
This paper describes a new method for analysing gene ex-pression temporal data sequences using Proba...
In recent years biological microarrays have emerged as a high-throughput data acquisition technology...
Building genetic regulatory networks from time series data of gene expression patterns is an importa...
The inference of Gene Regulatory Networks (GRNs) from time series gene expression data is an effecti...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
We propose a modeling approach based on Probabilistic Boolean Networks for the inference of genetic ...
We propose a modeling approach based on Probabilistic Boolean Networks for the inference of genetic ...
This paper describes a new method for analysing gene ex-pression temporal data sequences using Proba...
In recent years biological microarrays have emerged as a high-throughput data acquisition technology...
Building genetic regulatory networks from time series data of gene expression patterns is an importa...
The inference of Gene Regulatory Networks (GRNs) from time series gene expression data is an effecti...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...
Due to the large number of variables required and the limited number of independent experiments, the...