gl.pcoa | R Documentation |
This function takes the genotypes for individuals and undertakes a Pearson Principal Component analysis (PCA) on SNP or Tag P/A (SilicoDArT) data; it undertakes a Gower Principal Coordinate analysis (PCoA) if supplied with a distance matrix. Technically, any distance matrix can be represented in an ordinated space using PCoA.
gl.pcoa(
x,
nfactors = 5,
correction = NULL,
mono.rm = TRUE,
parallel = FALSE,
n.cores = 16,
plot.out = TRUE,
plot_theme = theme_dartR(),
plot_colors = two_colors,
save2tmp = FALSE,
verbose = NULL
)
x |
Name of the genlight object or fd object containing the SNP data, or a distance matrix of type dist [required]. |
nfactors |
Number of axes to retain in the output of factor scores [default 5]. |
correction |
Method applied to correct for negative eigenvalues, either 'lingoes' or 'cailliez' [Default NULL]. |
mono.rm |
If TRUE, remove monomorphic loci [default TRUE]. |
parallel |
TRUE if parallel processing is required (does fail under Windows) [default FALSE]. |
n.cores |
Number of cores to use if parallel processing is requested [default 16]. |
plot.out |
If TRUE, a diagnostic plot is displayed showing a scree plot for the "informative" axes and a histogram of eigenvalues of the remaining "noise" axes [Default TRUE]. |
plot_theme |
Theme for the plot. See Details for options [default theme_dartR()]. |
plot_colors |
List of two color names for the borders and fill of the plot [default two_colors]. |
save2tmp |
If TRUE, saves any ggplots and listings to the session temporary directory (tempdir) [default FALSE]. |
verbose |
verbose= 0, silent or fatal errors; 1, begin and end; 2, progress log; 3, progress and results summary; 5, full report [default 2 or as specified using gl.set.verbosity]. |
The function is essentially a wrapper for glPca adegenet or pcoa {ape} with default settings apart from those specified as parameters in this function. Sources of stress in the visual representation
While, technically, any distance matrix can be represented in an ordinated space, the representation will not typically be exact.There are three major sources of stress in a reduced-representation of distances or dissimilarities among entities using PCA or PCoA. By far the greatest source comes from the decision to select only the top two or three axes from the ordinated set of axes derived from the PCA or PCoA. The representation of the entities such a heavily reduced space will not faithfully represent the distances in the input distance matrix simply because of the loss of information in deeper informative dimensions. For this reason, it is not sensible to be too precious about managing the other two sources of stress in the visual representation.
The measure of distance between entities in a PCA is the Pearson Correlation Coefficient, essentially a standardized Euclidean distance. This is both a metric distance and a Euclidean distance. In PCoA, the second source of stress is the choice of distance measure or dissimilarity measure. While any distance or dissimilarity matrix can be represented in an ordinated space, the distances between entities can be faithfully represented in that space (that is, without stress) only if the distances are metric. Furthermore, for distances between entities to be faithfully represented in a rigid Cartesian space, the distance measure needs to be Euclidean. If this is not the case, the distances between the entities in the ordinated visualized space will not exactly represent the distances in the input matrix (stress will be non-zero). This source of stress will be evident as negative eigenvalues in the deeper dimensions.
A third source of stress arises from having a sparse dataset, one with missing values. This affects both PCA and PCoA. If the original data matrix is not fully populated, that is, if there are missing values, then even a Euclidean distance matrix will not necessarily be 'positive definite'. It follows that some of the eigenvalues may be negative, even though the distance metric is Euclidean. This issue is exacerbated when the number of loci greatly exceeds the number of individuals, as is typically the case when working with SNP data. The impact of missing values can be minimized by stringently filtering on Call Rate, albeit with loss of data. An alternative is given in a paper 'Honey, I shrunk the sample covariance matrix' and more recently by Ledoit and Wolf (2018), but their approach has not been implemented here.
The good news is that, unless the sum of the negative eigenvalues, arising from a non-Euclidean distance measure or from missing values, approaches those of the final PCA or PCoA axes to be displayed, the distortion is probably of no practical consequence and certainly not comparable to the stress arising from selecting only two or three final dimensions out of several informative dimensions for the visual representation.
Function's output
Two diagnostic plots are produced. The first is a Scree Plot, showing the percentage variation explained by each of the PCA or PCoA axes, for those axes that explain more than the original variables (loci) on average. That is, only informative axes are displayed. The scree plot informs the number of dimensions to be retained in the visual summaries. As a rule of thumb, axes with more than 10
The second graph shows the distribution of eigenvalues for the remaining uninformative (noise) axes, including those with negative eigenvalues.
Action is recommended (verbose >= 2) if the negative eigenvalues are dominant, their sum approaching in magnitude the eigenvalues for axes selected for the final visual solution.
Output is a glPca object conforming to adegenet::glPca but with only the following retained.
$call - The call that generated the PCA/PCoA
$eig - Eigenvalues – All eigenvalues (positive, null, negative).
$scores - Scores (coefficients) for each individual
$loadings - Loadings of each SNP for each principal component
Plots and table were saved to the temporal directory (tempdir) and can be
accessed with the function gl.print.reports
and listed with
the function gl.list.reports
. Note that they can be accessed
only in the current R session because tempdir is cleared each time that the R
session is closed.
Examples of other themes that can be used can be consulted in
PCA was developed by Pearson (1901) and Hotelling (1933), whilst the best modern reference is Jolliffe (2002). PCoA was developed by Gower (1966) while the best modern reference is Legendre & Legendre (1998).
An object of class pcoa containing the eigenvalues and factor scores
Author(s): Arthur Georges. Custodian: Arthur Georges (Post to https://groups.google.com/d/forum/dartr)
Cailliez, F. (1983) The analytical solution of the additive constant problem. Psychometrika, 48, 305-308.
Gower, J. C. (1966) Some distance properties of latent root and vector methods used in multivariate analysis. Biometrika, 53, 325-338.
Hotelling, H., 1933. Analysis of a complex of statistical variables into Principal Components. Journal of Educational Psychology 24:417-441, 498-520.
Jolliffe, I. (2002) Principal Component Analysis. 2nd Edition, Springer, New York.
Ledoit, O. and Wolf, M. (2018). Analytical nonlinear shrinkage of large-dimensional covariance matrices. University of Zurich, Department of Economics, Working Paper No. 264, Revised version. Available at SSRN: https://ssrn.com/abstract=3047302 or http://dx.doi.org/10.2139/ssrn.3047302
Legendre, P. and Legendre, L. (1998). Numerical Ecology, Volume 24, 2nd Edition. Elsevier Science, NY.
Lingoes, J. C. (1971) Some boundary conditions for a monotone analysis of symmetric matrices. Psychometrika, 36, 195-203.
Pearson, K. (1901). On lines and planes of closest fit to systems of points in space. Philosophical Magazine. Series 6, vol. 2, no. 11, pp. 559-572.
gl.pcoa.plot
## Not run:
gl <- possums.gl
# PCA (using SNP genlight object)
pca <- gl.pcoa(possums.gl[1:50,],verbose=2)
gl.pcoa.plot(pca,gl)
gs <- testset.gs
levels(pop(gs))<-c(rep('Coast',5),rep('Cooper',3),rep('Coast',5),
rep('MDB',8),rep('Coast',6),'Em.subglobosa','Em.victoriae')
# PCA (using SilicoDArT genlight object)
pca <- gl.pcoa(gs)
gl.pcoa.plot(pca,gs)
# Collapsing pops to OTUs using Fixed Difference Analysis (using fd object)
fd <- gl.fixed.diff(testset.gl)
fd <- gl.collapse(fd)
pca <- gl.pcoa(fd)
gl.pcoa.plot(pca,fd$gl)
# Using a distance matrix
D <- gl.dist.ind(testset.gs, method='jaccard')
pcoa <- gl.pcoa(D,correction="cailliez")
gl.pcoa.plot(pcoa,gs)
## End(Not run)
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