Microarray data from time-series experiments, where gene expression profiles are measured over the course of the experiment, require specialised algorithms. In this paper we introduce new architectures of Bayesian classifiers that highlight how both relative and absolute temporal relationships can be captured in order to understand how biological mechanisms differ. We show that these classifiers improve the classification of microarray data and at the same time ensure that the models can easily be analysed by biologists by incorporating time transparently. In this paper we focus on data that has been generated to explore different types of muscular dystrophy
1 Introduction Principled methods for estimating unobserved time-points,clustering, and aligning mic...
How can molecular expression experiments be interpreted with greater than ten to the fourth measure...
Structure learning in Bayesian network is a big issue. Many efforts have tried to solve this problem...
The analysis of microarray data from time-series experiments requires specialised algorithms, which ...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Dynamic Bayesian networks (DBNs) are becoming widely used to learn gene regulatory networks from tim...
In this paper we present a functional Bayesian method for detecting genes which are temporally diffe...
In this paper we present a functional Bayesian method for detecting genes which are temporally diffe...
Abstract Background A central goal of molecular biology is to understand the regulatory mechanisms o...
Microarrays allow monitoring of thousands of genes over time periods. Recently, gene clustering app...
How can molecular expression experiments be interpreted with greater than ten to the fourth measurem...
1 Introduction Principled methods for estimating unobserved time-points,clustering, and aligning mic...
How can molecular expression experiments be interpreted with greater than ten to the fourth measure...
Structure learning in Bayesian network is a big issue. Many efforts have tried to solve this problem...
The analysis of microarray data from time-series experiments requires specialised algorithms, which ...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Time-course microarray experiments are an increasingly popular approach for understanding the dynami...
Dynamic Bayesian networks (DBNs) are becoming widely used to learn gene regulatory networks from tim...
In this paper we present a functional Bayesian method for detecting genes which are temporally diffe...
In this paper we present a functional Bayesian method for detecting genes which are temporally diffe...
Abstract Background A central goal of molecular biology is to understand the regulatory mechanisms o...
Microarrays allow monitoring of thousands of genes over time periods. Recently, gene clustering app...
How can molecular expression experiments be interpreted with greater than ten to the fourth measurem...
1 Introduction Principled methods for estimating unobserved time-points,clustering, and aligning mic...
How can molecular expression experiments be interpreted with greater than ten to the fourth measure...
Structure learning in Bayesian network is a big issue. Many efforts have tried to solve this problem...