Finding relations among gene expressions involves the definition of the similarity between experimental data. A simplest similarity measure is the Correlation Coefficient. It is able to identify linear dependences only; moreover, is sensitive to experimental errors. An alternative measure, the Shannon Mutual Information (MI), is free from the above mentioned weaknesses. However, the calculation of MI for continuous variables from the finite number of experimental points, N, involves an ambiguity arising when one divides the range of values of the continuous variable into boxes. Then the distribution of experimental points among the boxes (and, therefore, MI) depends on the box size. An algorithm for the calculation of MI for continuous vari...
We address possible limitations of publicly available data sets of yeast gene expression. We study t...
The problems of gene regulatory network (GRN) reconstruction and the creation of disease diagnostic ...
Reverse engineering of gene regulatory networks using information theory models has received much at...
Finding relations among gene expressions involves the definition of the similarity between experimen...
Abstract Background The information theoretic concept of mutual information provides a general frame...
Background: The information theoretic concept of mutual information provides a general framework to ...
Motivation: Clustering co-expressed genes usually requires the definition of `distance' or `similari...
Motivation: Clustering co-expressed genes usually requires the definition of `distance' or `similari...
This thesis develops a new exploratory approach suitable for application to large high-dimensional d...
Background: Although microarray gene expression analysis has become popular, it remains difficult to...
Background: Although gene expression analysis with microarray has become popular, it remains difficu...
Recent methods to infer genetic networks are based on identifying gene interactions by similarities ...
Recent methods to infer genetic networks are based on identifying gene interactions by similarities ...
We present a new software implementation to more efficiently com-pute the mutual information for all...
Background: The information theoretic concept of mutual information provides a general framework to ...
We address possible limitations of publicly available data sets of yeast gene expression. We study t...
The problems of gene regulatory network (GRN) reconstruction and the creation of disease diagnostic ...
Reverse engineering of gene regulatory networks using information theory models has received much at...
Finding relations among gene expressions involves the definition of the similarity between experimen...
Abstract Background The information theoretic concept of mutual information provides a general frame...
Background: The information theoretic concept of mutual information provides a general framework to ...
Motivation: Clustering co-expressed genes usually requires the definition of `distance' or `similari...
Motivation: Clustering co-expressed genes usually requires the definition of `distance' or `similari...
This thesis develops a new exploratory approach suitable for application to large high-dimensional d...
Background: Although microarray gene expression analysis has become popular, it remains difficult to...
Background: Although gene expression analysis with microarray has become popular, it remains difficu...
Recent methods to infer genetic networks are based on identifying gene interactions by similarities ...
Recent methods to infer genetic networks are based on identifying gene interactions by similarities ...
We present a new software implementation to more efficiently com-pute the mutual information for all...
Background: The information theoretic concept of mutual information provides a general framework to ...
We address possible limitations of publicly available data sets of yeast gene expression. We study t...
The problems of gene regulatory network (GRN) reconstruction and the creation of disease diagnostic ...
Reverse engineering of gene regulatory networks using information theory models has received much at...