Many pragmatic clustering methods have been developed to group data vectors or objects into clusters so that the objects in one cluster are very similar and objects in different clusters are distinct based on some similarity measure. The availability of time course data has motivated researchers to develop methods, such as mixture and mixed-effects modelling approaches, that incorporate the temporal information contained in the shape of the trajectory of the data. However, there is still a need for the development of time-course clustering methods that can adequately deal with inhomogeneous clusters (some clusters are quite large and others are quite small). Here we propose two such methods, hierarchical clustering (IHC) and iterative pairw...
Motivation: Genetic regulation of cellular processes is frequently investigated using large-scale ge...
BACKGROUND: Time-course microarray experiments can produce useful data which can help in understandi...
Classifying genes into clusters depending on their expression profiles is one of the most important ...
AbstractMany pragmatic clustering methods have been developed to group data vectors or objects into ...
AbstractMany pragmatic clustering methods have been developed to group data vectors or objects into ...
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...
Time course microarray data provide insight about dynamic biological processes. While several cluste...
Time course microarray data provide insight about dynamic biological processes. While several cluste...
Clustering infections by genetic similarity is a popular technique for identifying potential outbrea...
Microarray experiments are information rich; however, extensive data mining is required to identify ...
Clustering of gene expression time series gives insight into which genes may be co-regulated, allowi...
Motivation: Genetic regulation of cellular processes is frequently investigated using large-scale ge...
BACKGROUND. Many microarray experiments produce temporal profiles in different biological conditions...
An efficient Markov chain correlation based clustering method (MCC) has been proposed for clustering...
Motivation: Genetic regulation of cellular processes is frequently investigated using large-scale ge...
BACKGROUND: Time-course microarray experiments can produce useful data which can help in understandi...
Classifying genes into clusters depending on their expression profiles is one of the most important ...
AbstractMany pragmatic clustering methods have been developed to group data vectors or objects into ...
AbstractMany pragmatic clustering methods have been developed to group data vectors or objects into ...
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...
Time course microarray data provide insight about dynamic biological processes. While several cluste...
Time course microarray data provide insight about dynamic biological processes. While several cluste...
Clustering infections by genetic similarity is a popular technique for identifying potential outbrea...
Microarray experiments are information rich; however, extensive data mining is required to identify ...
Clustering of gene expression time series gives insight into which genes may be co-regulated, allowi...
Motivation: Genetic regulation of cellular processes is frequently investigated using large-scale ge...
BACKGROUND. Many microarray experiments produce temporal profiles in different biological conditions...
An efficient Markov chain correlation based clustering method (MCC) has been proposed for clustering...
Motivation: Genetic regulation of cellular processes is frequently investigated using large-scale ge...
BACKGROUND: Time-course microarray experiments can produce useful data which can help in understandi...
Classifying genes into clusters depending on their expression profiles is one of the most important ...