Pca.pdf

From Array Suite Wiki

(Difference between revisions)
Jump to: navigation, search
m
(Impute Missing N/A data)
(2 intermediate revisions by one user not shown)
Line 32: Line 32:
 
{{Warning|if none of the output boxes (scores, loadings, etc.) is checked, there will be no output table}}
 
{{Warning|if none of the output boxes (scores, loadings, etc.) is checked, there will be no output table}}
 
{{BackToTop}}
 
{{BackToTop}}
 +
 +
===Impute Missing N/A data ===
 +
 +
For microarray data, we implemented Robust singular value decomposition (RSVD) a least squares method; For missing data, a built-in Factorization Normalization on Column is applied --- replaces each missing data point with a value found by calculating the specified percentile for all cells in that particular column.
 +
 +
{{ BackToTop }}
  
 
==Output Results==
 
==Output Results==

Revision as of 15:59, 6 September 2019

Contents

Principal Component Analysis

Overview

The Principal Component Analysis module generates a Principal Component Analysis (PCA) on the selected dataset. It summarizes each observation by original variables into principal components. Each component is a linear combination of original variables in a way that maximizes its variance. Thus, with the first several principal components, users can check the overall variance of each observation. The user can visualize each observation in 2D or 3D plot to find outliers.

To run this module, type MicroArray | QC | Principal Component Analysis.

PCA menu.png

[back to top]

Input Data Requirements

This module works on -Omic data objects.

[back to top]

General Options

PCA0.png

[back to top]

Input/Outputs

  • Project & Data: The window includes a dropdown box to select the Project and Data object to be filtered.
  • Variables: Selections can be made on which variables should be included in the filtering (options include All variables, Selected variables, Visible variables, and Customized variables (select any pre-generated Lists)).
  • Observations: Selections can be made on which observations should be included in the filtering (options include All observations, Selected observations, Visible observations, and Customized observations (select any pre-generated Lists).
  • Output name: The user can choose to name the output data object.


[back to top]


Options

  • Component number: Sets the number of Principal components to be generated (by default=2). Setting the Component number to 3 will generate a 3D plot (shown in Output Result). Setting the Component number to 4 or more will generate a pairwise scatterview plot of the PCA for the top components, up to the number specified (also shown in Output Result).
  • Group: A Group can be selected from the -Omic data's design table to assign different colors to different levels in this group.
  • Scale variables: If the Scale Variables option is checked (which is the default), Array Studio uses an adjusted "unit variance" scaling (similar to the methods used by programs like SIMCA). The variables are first centered and then scaled using unit variance, with the scaling factor determined by Standard Deviation * Sqr((n-1)/n).
  • Output scores: Checking this box will output the PCA score for each calculated component for each sample. For example, if the Component number is 2, the first 2 component scores for each sample would be generated in PCA score tables.
  • Output loadings: Checking this box will generate a loading plot and .PcaLoadings Table. In PCA, the loadings are the final weight for each variable. The larger the absolute value a variable has, the more the variable can contribute to the components, thus the more important the variable is.
    • Generate list for top % variables: Selecting this option creates a list (one for each component) of the top "x" % of rows contributing to that component. It does this by ranking the absolute value of the loadings for each component. This list can then be used with the "Reorder Rows by List" table function on the loadings table to display the loadings in a ranked order.
  • Output eigen values: Each principle component has a eigen value. The first components will have larger eigen values than later components. The larger eigen value a component has, the more variance it presents for the whole variance structure. Checking this box will generate a Table object with the eigen values.
  • Output ordered heatmap : Checking this box will generate a heatmap view for each component in the original Data object (the generated ordered heatmap uses eigen values from SVD to order the rows and columns)
  • Calculate Hotelling T2: Generates a T2 Hotelling ellipse using the Alpha level--0.05 by default. The data out of the ellipse has a small probability that it has a same variance structure as data points in the ellipse. A detailed description can be found here. Please note that, if users specify grouping information, then there will be more than one ellipse in the 2D plot (if there are m levels in the grouping factor, m + 1 ellipses would be shown in the plot)
    • Alpha level: The value used to control the size of ellipse. The larger alpha value is, the smaller the ellipse is. Default value is 0.05.

Warning.png WARNING: if none of the output boxes (scores, loadings, etc.) is checked, there will be no output table

[back to top]


Impute Missing N/A data

For microarray data, we implemented Robust singular value decomposition (RSVD) a least squares method; For missing data, a built-in Factorization Normalization on Column is applied --- replaces each missing data point with a value found by calculating the specified percentile for all cells in that particular column.

[back to top]


Output Results

An example 2D PCA plot with grouping information is shown below. In this case, the grouping factor is “treatment”. There are two levels in this factor: control and DBP. There are 3 ellipses representing 3 confidence regions: one for all samples (the black ellipse), one for control samples (small blue ellipse) and one for DBP (the green ellipse). Each data point is calculated with all samples, i.e., the loading and scores are computed using all samples. But each ellipse is determined by corresponding group.

The main purpose of PCA is to find potential outliers. For 2D PCA plots, the user can easy find the outliers by the ellipse. The data points outside of the ellipse should have a (significantly) different data pattern than the ones inside the ellipse.

PCA4.5.png

An example loadings plot is shown below.

PCA2.png

An example of an ordered heatmap is shown below.

PCA3.png

An example of generated Eigen values report is shown below:

PCA4.png

Setting the PCA component number to 3 will generate an interactive 3D scores plot. For 3D plot, the user can rotate the plot to find the potential outliers. Currently, Array Studio does not provide the hotelling T2 for 3D plot.

PCA5.png

Setting the PCA component number to >=4 will generate a scores plot similar to below.

PCA6.png

[back to top]


OmicScript

PCA

[back to top]


Related Articles

[back to top]

EnvelopeLarge2.png