Pipelines in FCS Express are a set of data processing steps that stand alone or are connected in series.  The output of a step can be applied to a data file or utilized as the input of the next step, or series of steps, that may be applied to your data.

 

The vast majority of commonly used algorithms for data analysis are actually pipelines, with tSNE (and its variants) and SPADE being two examples. However, when those algorithms are implemented as a one calculation, user customizations are limited to the what the specific implementation allows. Pipelines in FCS Express increase the computational flexibility and granularity of running algorithms and data transformations while giving users the unique ability to create their own transformations.

 

As mentioned above, a pipeline is made of individual data processing steps with each step performing a specific calculation/transformation.

 

Pipeline steps are grouped by functionality in FCS Express (see list below). New steps and functionality are being developed all the time. Please contact support@denovosoftware.com if there is a step or algorithm you would like to see included.

 

To begin working with Pipelines in FCS Express please see the following topics:

 

1.Setting Up Pipelines

 

2.Available pipelines steps and algorithms

 

oPre-Defined Algorithms

FlowAI

FlowCut

FlowSOM

Phenograph

SPADE

 

oSampling

Gate Downsampling

Interval Downsampling

Mask Downsampling

Random Downsampling

Target Density Downsampling

Upsampling

Weighted Density Downsampling

 

oDimensionality Reduction

PCA

tSNE

UMAP

 

oClustering

Batch Self-Organizing Map

Consensus Clustering

Hierarchical Clustering

Kmeans

Louvain Communities

Self-Organizing Map

 

oVisualization

Graph layout

Minimum Spanning Tree

tSNE Layout

UMAP Layout

 

oMathematical

0 to 1 Scaling

Normalization

Scaling

Simple Parameter Math

Thresholding

 

oQuality Controls

Dynamic Range Downsampling

Flow Rate Check Downsampling

Low Time Density Downsampling

Signal Acquisition Downsampling

 

oRandom Parameters

 

oFeature Extraction

Binned Variance Feature Extraction

Variance Feature Extraction

 

oMiscellaneous

Classifications Folder

Folder

Jaccard Similarity Parameter

K-Nearest Neighbors Parameter

Merge to Spectra

Parameter Removal

Python Transformation

Ramp Parameter

Unmixing

Virtual bandpass