Time course microarray data provide insight about dynamic biological processes. While several clustering methods have been proposed for the analysis of these data structures, comparison and selection of appropriate clustering methods are seldom discussed. We compared $3$ probabilistic based clustering methods and $3$ distance based clustering methods for time course microarray data. Among probabilistic methods, we considered: smoothing spline clustering also known as model based functional data analysis (MFDA), functional clustering models for sparsely sampled data (FCM) and model-based clustering (MCLUST). Among distance based methods, we considered: weighted gene co-expression network analysis (WGCNA), clustering with dynamic time warping...
Clustering the genes with respect to their profile similarity leads to important results in bioinfor...
Clustering the genes is a step in microarray studies which demands several considerations. First, th...
Our intention is to find similarity among the time series expressions of the genes in microarray exp...
Time course microarray data provide insight about dynamic biological processes. While several cluste...
Clustering techniques are important for gene expression data analysis. However, efficient computatio...
This thesis examines methods used to cluster time-course gene expression array data. In the past dec...
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: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
Classifying genes into clusters depending on their expression profiles is one of the most important ...
Gene expression in cells can fluctuate over time in response to internal or external stimuli. Time s...
BACKGROUND: There are some limitations associated with conventional clustering methods for short tim...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised explorator...
BACKGROUND: Time-course microarray experiments can produce useful data which can help in understandi...
A challenging task in time series microarray data analysis is to identify co-expressed groups of gen...
Clustering the genes with respect to their profile similarity leads to important results in bioinfor...
Clustering the genes is a step in microarray studies which demands several considerations. First, th...
Our intention is to find similarity among the time series expressions of the genes in microarray exp...
Time course microarray data provide insight about dynamic biological processes. While several cluste...
Clustering techniques are important for gene expression data analysis. However, efficient computatio...
This thesis examines methods used to cluster time-course gene expression array data. In the past dec...
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: Clustering is crucial for gene expression data analysis. As an unsupervised exploratory ...
Classifying genes into clusters depending on their expression profiles is one of the most important ...
Gene expression in cells can fluctuate over time in response to internal or external stimuli. Time s...
BACKGROUND: There are some limitations associated with conventional clustering methods for short tim...
Background: Clustering is crucial for gene expression data analysis. As an unsupervised explorator...
BACKGROUND: Time-course microarray experiments can produce useful data which can help in understandi...
A challenging task in time series microarray data analysis is to identify co-expressed groups of gen...
Clustering the genes with respect to their profile similarity leads to important results in bioinfor...
Clustering the genes is a step in microarray studies which demands several considerations. First, th...
Our intention is to find similarity among the time series expressions of the genes in microarray exp...