Motivation: Genetic regulation of cellular processes is frequently investigated using large-scale gene expression experiments to observe changes in expression over time. This temporal data poses a challenge to classical distance-based clustering methods due to its horizontal dependencies along the time-axis. We propose to use hidden Markov models (HMMs) to explicitly model these time-dependencies. The HMMs are used in a mixture approach that we show to be superior over clustering. Furthermore, mixtures are a more realistic model of the biological reality, as an unambiguous partitioning of genes into clusters of unique functional assignment is impossible. Use of the mixture increases robustness with respect to noise and allows an inference o...
Microarrays allow monitoring of thousands of genes over time periods. Recently, gene clustering app...
Background: Time-course gene expression data such as yeast cell cycle data may be periodically expre...
With the advent and recent proliferation of genomic technologies such as gene expression arrays, res...
Motivation: Genetic regulation of cellular processes is frequently investigated using large-scale ge...
Measuring gene expression over time can provide important insights into basic cellular processes. Id...
Measuring gene expression over time can provide important insights into basic cellular processes. Id...
Measuring gene expression over time can provide important insights into basic cellular processes. Id...
Motivation: Cellular processes cause changes over time. Observing and measuring those changes over t...
Motivation: Cellular processes cause changes over time. Observing and measuring those changes over t...
Motivation: Cellular processes cause changes over time. Observing and measuring those changes over t...
Most existing approaches to clustering gene expression time course data treat the different time poi...
High-throughput time-course studies collect measurements from samples across time. Inparticular, lon...
High-throughput time-course studies collect measurements from samples across time. Inparticular, lon...
BACKGROUND: Tight clustering arose recently from a desire to obtain tighter and potentially more inf...
Background Time-course gene expression data such as yeast cell cycle data may be periodically expre...
Microarrays allow monitoring of thousands of genes over time periods. Recently, gene clustering app...
Background: Time-course gene expression data such as yeast cell cycle data may be periodically expre...
With the advent and recent proliferation of genomic technologies such as gene expression arrays, res...
Motivation: Genetic regulation of cellular processes is frequently investigated using large-scale ge...
Measuring gene expression over time can provide important insights into basic cellular processes. Id...
Measuring gene expression over time can provide important insights into basic cellular processes. Id...
Measuring gene expression over time can provide important insights into basic cellular processes. Id...
Motivation: Cellular processes cause changes over time. Observing and measuring those changes over t...
Motivation: Cellular processes cause changes over time. Observing and measuring those changes over t...
Motivation: Cellular processes cause changes over time. Observing and measuring those changes over t...
Most existing approaches to clustering gene expression time course data treat the different time poi...
High-throughput time-course studies collect measurements from samples across time. Inparticular, lon...
High-throughput time-course studies collect measurements from samples across time. Inparticular, lon...
BACKGROUND: Tight clustering arose recently from a desire to obtain tighter and potentially more inf...
Background Time-course gene expression data such as yeast cell cycle data may be periodically expre...
Microarrays allow monitoring of thousands of genes over time periods. Recently, gene clustering app...
Background: Time-course gene expression data such as yeast cell cycle data may be periodically expre...
With the advent and recent proliferation of genomic technologies such as gene expression arrays, res...