Partek Flow Documentation

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t-SNE (t-distributed stochastic neighbor embedding) is a visualization method commonly used to analyze single-cell RNA-Seq data. Each cell is shown as a point on the plot and each cell is positioned so that it is close to cells with similar overall gene expression. When working with multiple samples, a t-SNE plot can be drawn for each sample or all samples can be combined into a single plot. Viewing samples individually is the default in Partek Flow Partek® Flow® because sample to sample variation and outlier samples can obscure cell type differences if all samples are plotted together. However, as you will see in this tutorial, in some data sets, cell type differences can be visualized even when samples are combined.

Using the t-SNE plot, cells can be classified based on clustering results or and differences in gene and pathway expressionexpression of key marker genes

Multiple single-sample t-SNE plots

By default, each sample in a multi-sample data set is plotted on its own t-SNE. 

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Prior to performing t-SNE, it is a good idea to reduce the dimensionality of the data using principal components analysis (PCA).

  • Click the Filtered counts data node after the Filter features task
  • Select PCA from the Exploratory analysis section of the task menu (Figure 1)


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SubtitleTextSelect the PCA task from the Exploratory analysis menu
AnchorNameSelect PCA task

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  • Click Finish to run PCA with default settings (Figure 2)

Note, the default settings include the Split by sample checkbox being selected. This means that the dimensionality reduction will be performed on each sample separately.


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SubtitleTextPCA task set up page with default settings
AnchorNamePCA task set up

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PCA task and data nodes will be generated.

  • Click the PCA data node
  • Select t-SNE from the Exploratory analysis section of the task menu (Figure 1Figure 3)


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SubtitleTextInvoking t-SNE from the task menu
AnchorNameInvoking t-SNE

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  • Click Finish from the t-SNE dialog to run t-SNE with the default settings

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  • (Figure 4)


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SubtitleTextt-SNE task

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set up with default settings
AnchorNamet-SNE task set up

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Because the upstream PCA task was performed separately for each sample, the t-SNE task will also be performed separately for each sample. t-SNE task and data nodes will be generated (Figure 5).


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SubtitleTextt-SNE task node
AnchorNamet-SNE task node

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Once the t-SNE task has completed, we can view the t-SNE plot.plots

  • Click the t-SNE node
  • Click Task report from the task menu or double click the t-SNE node

The t-SNE plot will open to in a new data viewer session. The t-SNE plot for the first sample in the data set, MGH36 (Figure 3)Figure 6), will open on the canvas. Please note that the appearance of the t-SNE plot will may differ each time it is drawn so your t-SNE plots will may look different than those shown in this tutorial; however. However, the cell-to-cell relationships indicated will be the same. 

 


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SubtitleTextViewing t-SNE plot of a single sample
AnchorNameViewing single-sample t-SNE

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The t-SNE plot is in 3D by default. To change the default, click your avatar in the top right > Settings > My Preferences and edit your graphics preferences and change the default scatter plot format from 3D to 2D. 

You can rotate the 3D plot by left-clicking and dragging your mouse. You can zoom in and out using your mouse wheel. The 2D t-SNE is also calculated and you can switch between the 2D and 3D plots using the Plot style radio buttons. on the canvas. We will do this later on in the tutorial.

Each sample has its own plot. We can switch between samples using the Back and Next buttons

  • Open the Axes icon on the

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  • Select Next
  • left under Configure (Figure 7)
  • Navigate to Misc 
  • Select the Image Addedicon below the Sample name to go to the next sample

The t-SNE plot has switched to show the next sample, MGH42 (Figure 47). 

 


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SubtitleTextViewing t-SNE plot of MGH42
AnchorNameViewing single-sample t-SNE (2)

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The goal of this analysis is to compare malignant cells from two different glioma subtypes, astrocytoma and oligodendroglioma. To do this, we need to identify which cells are the malignant cells we want to include and which cells are the normal cells we want to exclude. 

The t-SNE plot in Partek Flow offers several options for identifying, selecting, and classifying cells. In this tutorial, we will use the expression of known marker genes to identify cell types. 

To visualize the expression of a marker gene, we can color cells on the t-SNE plot by their expression level. 

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SubtitleTextSelecting color by gene expression
AnchorNameSelecting color by gene expression

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The cells will turn black and a text box Gene ID will open below the drop-down box. 

  • Type BCAN in the Gene ID text box
  • Select BCAN from the list of genes in the data set (Figure 6)Select any of the count data nodes from Get data on the left (Single cell counts, or any of the Filtered counts, Figure 8)
  • Search for the BCAN gene
  • Click and drag the BCAN gene onto the plot and drop it over the Green (feature) option


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SubtitleTextColoring cells by BCAN expression
AnchorNameSelecting gene

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The cells will be colored from black to green based on their expression level of BCAN, with cells expressing higher levels more green (Figure 7Figure 9). BCAN is highly expressed in glioma cells. 

 


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SubtitleTextCells colored by CD14 BCAN expression
AnchorNameColored by CD14

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In Partek Flow, we can color cells by more than one gene. We will now add a second glioma marker gene, GPM6A. 

  • Select the Image Removed icon next to BCAN
  • Type GPM6A in the new Gene ID box
  • Select GPM6A from the list of genes in the data setany of the count data nodes from the Data card on the left (Single cell counts, or any of the Filtered counts)
  • Search for the GPM6A gene
  • Click and drag the GPM6A gene onto the plot and drop it over the Red (feature) option

Cells expressing GPM6A are now colored red and cells expressing BCAN are colored green. Cells expressing both genes are colored yellow, while cells expressing neither are colored black (Figure 8Figure 10).

 


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SubtitleTextColoring cells by BCAN and GPM6A
AnchorNameColoring by two genes

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Relative expression of the two genes for selected cells can be visualized on the legend. 

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SubtitleTextSelecting a group of cells using the 3D lasso tool
AnchorNameSelecting a group of cells

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Selected cells are shown in bold and unselected cells are dimmed.

The relative expression of the two genes for the selected cells will be shown on the legend as dots (Figure 10). 

 

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SubtitleTextViewing expression levels for a group of cells
AnchorNameViewing expression levels for a group of cells

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Numerical expression levels for each gene can be viewed for individual cells. 

  • Switch modes to pointer mode by clicking  in the top right corner of the plot
  • Select a cell by pointing and clicking

The expression level for that cell is displayed on the legend for each gene (Figure 11. Expression values can also be viewed by mousing over a cell (Figure 11). 

  • Deselect the cell by clicking on any black blank space on the plot

Expression values can also be viewing by selecting Gene Expression from the Label by drop-down menu and mousing over a cell. 

 


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SubtitleTextViewing expression levels for an individual cell. The dots on the legend indicate the expression level of the selected cell. The expression levels also appear in the label when you mouse over a cell
AnchorNameViewing expression levels for a cell

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Now that cells are colored by the expression of two glioma cell markers, we can classify any cell that expresses these genes as glioma cells. Because t-SNE groups cells that are similar across the high-dimensional gene expression data, we will consider cells that form a group with BCAN where the majority of cells express BCAN and/or GPM6A -expressing cells as the same cell type, even if they do not express the either marker gene.

  • Click anywhere on the t-SNE plot without a cell to clear the selection
  • Activate the 3D lasso tool Switch to lasso mode by clicking  in the top right of the plot
  • Draw the lasso around the cluster of green, red, and yellow cells and click the circle to close the lasso . You may need to switch to selection mode and rotate the 3D plot to select only cells from the yellow cluster(Figure 12)


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SubtitleTextSelecting a group of cells using the 3D lasso tool
AnchorNameSelecting a group of cells

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Selected cells are shown in bold and unselected cells are dimmed. The number of selected cells is indicated in the Selection section of the menu.

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figure legend. The cells are plotted on the color scale depending on their relative expression levels of the two marker genes (Figure 13)


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SubtitleText

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Viewing expression levels for a group of cells
AnchorName

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Viewing expression levels for a group of cells

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  • Click Classify selection in the Classify icon under Tools

A dialog to give the classification a name will appear. 

  • Name the classification Glioma
  • Click Save (Figure 13Figure 14)


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SubtitleTextClassifying selection
AnchorNameClassifying cells

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Once cells have been classified, the classification is added to the Classifications section of the panel Classify. The number of cells belonging to the classification is listed; in . In MGH42, there are 462 460 glioma cells (Figure 14Figure 15).  


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SubtitleTextThe number of cells in each classification is displayed

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AnchorNameViewing classifications

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Classifications made on the t-SNE plot are retained as a draft after you exit the t-SNE task report. The Save classifications button runs a task, Classify cells, which generates a new Classified cells data nodeas part of the data viewer session. In this tutorial, we will classify malignant cells for each sample before we save and apply the classifications, but if necessary, you can exit the t-SNE task report and continue classifying the next sample later. 

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save the data viewer session by clicking the Image Added Save icon on the left to retain all of the formatting and draft classifications. The data viewer session will be stored under the Data viewer tab and can be re-opened to continue making classifications at a later time. 

  • Switch to pointer mode by clicking Image Added in the top right corner of the plot
  • Deselect the cells by clicking on any blank space on the plot
  • Open Axes and navigate to Sample under Misc
  • Select the Image Addedicon below the sample name to go to the next sample, MGH45
  • Rotate the 3D t-SNE plot to allow you to select only get a better view of cells from the green, red, and yellow cluster
  • Activate the 3D lasso tool Switch to lasso mode by selecting  in the top right corner of the plot
  • Draw the lasso around the cluster of black colored cells and click the circle to close the lasso (Figure 14Figure 16)


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SubtitleTextClassifying malignant cells in sample MGH45
AnchorNameClassifying cells

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  • Select Classify selection selection in the Classify icon
  • Type Glioma or select Glioma from the prompt (Figure 15drop-down list (Figure 17)
  • Click Save


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SubtitleTextAdding cells in a second sample to an existing classification
AnchorNameClassifying cells as an existing classification

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  • Repeat these steps for each of the 6 remaining samples

Once all samples have been classified, it is useful to check the number of cells in each sample assigned to each classification. 

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SubtitleTextNavigating to the classification summary
AnchorNameNavigating to classification summary

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The classifications summary lists every sample, the number of cells in the sample, the number of cells in each classification, and the percentage of cells in each sample that belong to each classification (Figure 17).

  • . Remember to go back to the first sample (MGH36) to classify the glioma cells in that samples too.

There should be 5,322 glioma cells in total across all 8 samples.  

  • The classification name can be edited or deleted (Figure 18). 


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SubtitleTextViewing Edit or delete the classification summary
AnchorNameClassification summary
Edit or delete the classification

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With the malignant cells in every sample classified, it is time to save the classifications.

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  • Click Apply classifications 
  • Click Apply when asked to confirm

The pipeline view will open and the Classify cells tasks will run, generating a Classified groups data node (Figure 18).

  • classifications in the Classify icon
  • Name the classification attribute Cell type (sample level)
  • Click Run (Figure 19)


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SubtitleTextThe Classify cells tasks generates a Classified groups data node
AnchorNameClassify cells task

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Name the cell-level attribute
AnchorNameClassifiy attribute name
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The new attribute is stored in the Data tab and is available to any node in the project.

  • Click on the Glioma (multi-sample) project name at the top to go back to the Analyses tab
  • Your browser may warn you that any unsaved changes to the data viewer session will be lost. Ignore this message and proceed to the Analyses tab


One multi-sample t-SNE plot

For some data sets, cell types can be distinguished when all samples can be visualized together on one t-SNE plot. We will use a t-SNE plot of all samples to classify glioma, microglia, and oligodendrocyte cell types. 

  • Click on the Glioma (multi-sample) project name at the top to go back to the Analyses tab
  • Click the Filtered counts data node after the Filter features task
  • Click t-SNE PCA in the Exploratory analysis section of the task menu
  • Click Configure on the t-SNE dialog Uncheck the Split by sample checkbox (Figure 1922)
  • Click Finish


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Numbered figure captions
SubtitleTextSetting t-SNE to plot all samples together
AnchorNameSetting t-SNE to plot all samples together

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SubtitleTextAccessing the t-SNE advanced options
AnchorNameAccessing advanced options

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Combine all cells into one plot by unchecking the Split by sample box
AnchorNameMulti-sample PCA setting

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The PCA task will run as a new green layer.

  • Click the new PCA data node
  • Select t-SNE from the Exploratory analysis section of the task menu
  • Click Finish to run the t-SNE task with default settings

The t-SNE task will be added as a to the green layer in the analysis tab (Figure 21(Figure 23). Layers are created in Partek Flow when the same task is run on the same data node. 

 


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SubtitleTextAll samples Multi-sample PCA and t-SNE task is tasks are added as a new layer
AnchorNamePCA and t-SNE task new layer

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Once the task has completed, we can view the plot.

  • Double-click the green t-SNE plot data node to open the t-SNE scatter plot

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  • Click and drag the 2D scatter plot icon onto the canvas and replace the 3D scatter plot (Figure 24)


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SubtitleTextViewing the multi-sample t-SNE plot

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AnchorNamemulti-sample t-SNE plot

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  • Search for and select green t-SNE data node (Figure 25)


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SubtitleTextViewing Select the green multi-sample t-SNE data node to draw the 2D t-SNE plot
AnchorNameSelect multi-sample t-SNE plotdata

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  • In the Style icon, choose Sample name from the Color by drop-down list under Color

Viewing the 2D t-SNE plot, while most cells cluster by sample, there are a few clusters with cells from multiple samples (Figure 23Figure 26).

 


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SubtitleTextViewing the multi-sample t-SNE plot in 2D
AnchorNameViewing 2D t-SNE

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Using maker marker genes, BCAN (glioma), CD14 (microglia), and MAG (oligodendrocytes), we can assess whether these multi-sample clusters belong to our known cell types. 

  • Choose Gene expression from the Color by drop-down menu
  • Type BCAN in the new Gene ID box
  • Choose BCAN from the list of genes in the data set
  • Click the Image Removed icon next to BCAN
  • Type CD14 in the new Gene ID box
  • Choose CD14 from the list of genes in the data set
  • Click the Image Removed icon next to CD14
  • Type MAG in the new Gene ID box
  • Choose MAG from the list of genes in the data setSelect any of the count data nodes from the Data card on the left (Single cell counts, or any of the Filtered counts)
  • Search for the BCAN gene
  • Click and drag the BCAN gene onto the plot and drop it over the Green (feature) option
  • Search for the CD14 gene
  • Click and drag the CD14 gene onto the plot and drop it over the Red (feature) option
  • Search for the MAG gene
  • Click and drag the MAG gene onto the plot and drop it over the Blue (feature) option

After coloring by these marker genes, three cell populations are clearly visible (Figure 24Figure 27). 

 


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SubtitleTextOverlaying marker gene expression on the multi-sample t-SNE plot
AnchorNameOverlaying gene expression

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The red cells are CD14 positive, indicating that they are the microglia from every sample. 

  • Switch to lasso mode by clicking the Image Added icon in the top right of the plot
  • Draw the lasso around the cluster of red cells and click the circle to close the lasso (Figure 25Figure 28)
  • Open the Classify tool and click Classify selection
  • Name the classification Microglia
  • Click Save


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SubtitleTextClassifying microglia (red)
AnchorNameClassifying MOBP + cells

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  • Click Classify selection

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The blue cells are CD14 MAG positive, indicating that they are the microglia oligodendrocytes from every sample. 

  • Name the classification Microglia
  • Click Save

To clearly see the MAG expressing population, clear the current selection.

  • Deselect by double clicking on any black Switch to pointer mode by clicking Image Added in the top right corner of the plot
  • Deselect the cells by clicking on any blank space on the plot

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  • Switch to lasso mode again by clicking the Image Added icon in the top right of the plot
  • Draw the lasso around the cluster of blue cells and click the circle to close the lasso (Figure 26)
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SubtitleTextClassifying oligodendrocytes (blue)
AnchorNameClassifying microglia

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  • Click Classify
  • Open the Classify tool and click Classify selection
  • Name the classification Oligodendrocytes
  • Click Save
  • Deselect by double clicking on any black space on the plot

Finally, we will classify the BCAN expressing cells on the plot as glioma cells from every sample.

  • Switch to pointer mode by clicking Image Added in the top right corner of the plot
  • Deselect the cells by clicking on any blank space on the plot
  • Switch to lasso mode again by clicking the Image Added icon in the top right of the plot
  • Draw the lasso around the cluster of green cells and click the circle to close the lasso (Figure 27)

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SubtitleTextClassifying glioma cells (green)
AnchorNameClassifying malignant cells

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  • Click Classify selection 
  • Name the classification 
  • Open the Classify tool and click Classify selection
  • Name the classification Glioma
  • Click Save

With every cell from every sample classified, we can view the number of cells classified into each cell type for each sample on the classification summary page. 

  • Click Summary 

The fraction of cells of each cell type in each sample is highly heterogeneous (Figure 28). 

 

  • Switch to pointer mode by clicking Image Added in the top right corner of the plot
  • Deselect the cells by clicking on any blank space on the plot

The number of cells classified as microglia, oligodendrocytes, and glioma are shown in Classify (Figure 29)


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SubtitleTextViewing classifications for all samplesThe number of cells for each cell type
AnchorNameClassification summary page
Number of cells per type

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  • Click Apply classifications 
  • Click Apply to confirm classification

The pipeline view will open and the Classify cells task will run, generating a new green-layer Classified groups  data node (Figure 29). 

  • classifications in the Classify icon (Figure 30)


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SubtitleTextApply classifications to the data project
AnchorNameApply classifications to the data project

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  • Name the classification attribute Cell type (multi-sample) (Figure 31)
  • Click Run


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SubtitleTextClassify cells tasks from Name the cell-level attribute
AnchorNameClassification attribute name multi-sample t-SNE plot
AnchorNameClassify cells task

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The new attribute is now available for downstream analysis.

  • Click on the Glioma (multi-sample) project name at the top to go back to the Analyses tab
  • Your browser may warn you that any unsaved changes to the data viewer session will be lost. Ignore this message and proceed to the Analyses tab



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