Hierarchical clustering groups similar objects into clusters. To start, each row and/or column is considered a cluster. The two most similar clusters are then combined and this process is iterated until all objects are in the same cluster. Hierarchical clustering displays the resulting hierarchy of the clusters in a tree called a dendrogram. Hierarchical clustering is useful for exploratory analysis because it shows how samples group together based on similarity of features.
Hierarchical clustering is an unsupervised clustering method. Unsupervised clustering methods do not take the identity or attributes of samples into account when clustering. This means that experimental variables such as treatment, phenotype, tissue, number of expected groups, etc. do not guide or bias cluster building. Supervised clustering methods do consider experimental variables when building clusters.
To illustrate the capabilities and customization options of hierarchical clustering in Partek Genomics Suite, we will explore an example of hierarchical clustering drawn from the tutorial Gene Expression Analysis. The data set in this tutorial includes gene expression data from patients with or without Down syndrome. Using this data set, 23 highly differentially expressed genes between Down syndrome and normal patient tissues were identified. These 23 differentially regulated genes were then used to perform hierarchical clustering of the samples. Follow the steps outlined in Performing hierarchical clustering to perform hierarchical clustering and launch the Hierarchical Clustering tab (Figure 1).
Figure 1. Heatmap showing results of hierarchical clustering
The right-hand section of the Hierarchical Clustering tab is a heat map showing relative expression of the genes in the list used to perform clustering. The heat map can be configured using the properties panel on the left-hand side of the tab. In this example, the low expression value is colored in green, the high expression value is in red, and the mid-point value between min and max is colored in black.The dendrograms on the left-hand side and top of the heat map show clustering of samples as rows and features (probes/genes in this example) as columns. Columns are labeled with the gene symbol if there is enough space for every gene to be annotated. Rows are colored based on the groups of the first sample categorical attribute in the source spreadsheet. The sample legend below the heat map indicates which colors correspond to which attribute group. In this example, Down syndrome patient samples are red and normal patient samples are orange.
The heat map can be configured using the properties panel on the left-hand side of the Hierarchical clustering tab.
Select the Rows tab
Verify that Type appears in the annotation box
Set Width (in pixels) to 25
This will increase the width of the color box indicating sample Type.
Select Show Label
Set Text size to 12
Set Text angle to 90
This angle is relative to the x-axis. When set to 90, the text will run along the y-axis.
Select Apply
The sample attributes are now labeled with group titles (Figure 2).
Figure 2. Labeling heat map with sample attribute groups
Select the Rows tab
Select Tissue from the New Annotation drop-down menu
Select Apply
Color blocks indicating the tissue of each sample have been added to the row labels and sample legend (Figure 3).
Figure 3. Sample attributes can be added to the heat map as sample labels
By default, Partek Genomics Suite displays samples on rows and features on columns. We can transpose the heat map using the Heat Map tab in the plot properties panel.
Select the Heat Map tab
Select Transpose rows and columns in the Orientation section
Select Apply
The plot has been transposed with samples on columns and features on rows. The label for the sample groups is now in the vertical orientation because the settings we applied to Rows has been applied to Columns.
Select the Columns tab
Select the Type track
Set Text angle to 0
Select Apply
The sample group label for Type is now visible (Figure 4).
Figure 4. Heat map columns and rows can be transposed
Each cluster node has two sub-cluster branches (legs) except for the bottom level in the dendrogram, the order of the two branches (or legs) is arbitrary, so the two sub-clusters position can be flipped within the cluster. This does not change the clustering, only the position of the clusters on the plot.
Clicking on a line (or drawing a bounding box on a line using left mouse button) that represents a sub-cluster branch (or dendrogram leg) will flip the selected leg with the other one leg within the same parent cluster. In this example, clicking on the bottom line will move it to the top of the heat map (Figure 5).
Figure 5. Rows and columns can be flipped by using Flip Mode to select dendrogram legs
The minimum, maximum, and midpoint colors of the heart map intensity plot can be customized.
Select the Heat Map tab
Select Apply
The heat map and plot intensity legend now show maximum values in yellow and minimum values in light blue with a black midpoint (Figure 6). The data range can also be customized by changing the values of Min and Max.
Figure 6. Heat map colors for minimum, maximum, and midpoint intensity can be customized
We can use the hierarchical clustering heat map to examine groups of genes that exhibit similar expression patterns. For example, genes that are up-regulated in Down syndrome samples and down-regulated in normal samples.
Select on the middle cluster of the rows dendrogram as shown (Figure 7) by clicking on the line or drawing a bounding box around the line
The lines within the selected cluster will be bold and the corresponding columns (or rows) on the spreadsheet in the analysis tab will be highlighted.
Figure 7. Selecting a dendrogram cluster using Selection Mode
Right-click anywhere in the viewer
Select Zoom to Fit Selected Rows
The same steps can be used to zoom into columns or rows. Here, we have zoomed in on rows, but not columns to show the expression levels of the selected genes for all samples (Figure 8).
Figure 8. Viewing only selected genes for all samples
Left click anywhere in the hierarchical clustering plot to deselect the dendrogram
Partek Genomics Suite can export a list of genes from any cluster selected, allowing large gene sets to be filtered based on the results of hierarchical clustering.
Select the bottom cluster of the rows dendrogram
Right-click to open the pop-up menu
Select Create Row List... (Figure 9)
Figure 9. Creating gene list from selected cluster
Name the gene set down in normal
Select OK
Save the list as down in normal
In the Analysis tab, there is now a spreadsheet row_list (down in normal.txt) containing the 6 genes that were in the selected cluster. The same steps can be used to create a list of samples from the hierarchical clustering by selecting clusters on the sample dendrogram.
Once you have created a customized plot, you can save the plot properties as a template for future hierarchical clustering analyses.
Select the Save/Load tab
Select Save current...
Name the current plot properties template; we selected Transposed Blue and Yellow
The new template now appears in the Save/Load panel as an option. To load a template, select it in the Load/Save panel and select Load selected. Note that all properties, including Min and Max values and sample groups (based on the column number of the attribute in the source spreadsheet) that may not be appropriate for a different data set, will be applied.
The hierarchical clustering plot can be exported as a publication quality image.
Select the Hierarchical Clustering tab
Select File from the main toolbar
Select Save Image As... from the drop-down menu
Select a destination and name for the file
Select PNG or your preferred image type from the pull-down menu
Select Save
If you need additional assistance, please visit our support page to submit a help ticket or find phone numbers for regional support.
Select () from the Mouse Mode icon set to activate Flip Mode
Set Min color to () using the color picker tool
Set Max color to () using the color picker tool
Select () from the Mouse Mode icon set to activate Selection Mode
To reset zoom select () on the y-axis to show all rows and the x-axis to show all columns.
Select () on the y-axis to show all rows
Select () from the Mouse Mode icon set to activate Selection Mode