ropls 1.32.0
The
ropls
R package implements the PCA, PLS(-DA) and OPLS(-DA)
approaches with the original, NIPALS-based, versions of the
algorithms (Wold, Sjostrom, and Eriksson 2001; Trygg and Wold 2002). It includes the R2 and Q2
quality metrics (Eriksson et al. 2001; Tenenhaus 1998), the permutation
diagnostics (Szymanska et al. 2012), the computation of the VIP values
(Wold, Sjostrom, and Eriksson 2001), the score and orthogonal distances to detect outliers
(Hubert, Rousseeuw, and Vanden Branden 2005), as well as many graphics (scores, loadings,
predictions, diagnostics, outliers, etc).
Partial Least-Squares (PLS), which is a latent variable regression method based on covariance between the predictors and the response, has been shown to efficiently handle datasets with multi-collinear predictors, as in the case of spectrometry measurements (Wold, Sjostrom, and Eriksson 2001). More recently, Trygg and Wold (2002) introduced the Orthogonal Partial Least-Squares (OPLS) algorithm to model separately the variations of the predictors correlated and orthogonal to the response.
OPLS has a similar predictive capacity compared to PLS and improves the interpretation of the predictive components and of the systematic variation (Pinto, Trygg, and Gottfries 2012). In particular, OPLS modeling of single responses only requires one predictive component.
Diagnostics such as the Q2Y metrics and permutation testing are of high importance to avoid overfitting and assess the statistical significance of the model. The Variable Importance in Projection (VIP), which reflects both the loading weights for each component and the variability of the response explained by this component (Pinto, Trygg, and Gottfries 2012; Mehmood et al. 2012), can be used for feature selection (Trygg and Wold 2002; Pinto, Trygg, and Gottfries 2012).
OPLS is available in the SIMCA-P commercial software (Umetrics, Umea, Sweden; Eriksson et al. (2001)). In addition, the kernel-based version of OPLS (Bylesjo et al. 2008) is available in the open-source R statistical environment (R Development Core Team 2008), and a single implementation of the linear algorithm in R has been described (Gaude et al. 2013).
The sacurine metabolomics dataset will be used as a case study to describe the features from the ropls pacakge.
The objective was to study the influence of age, body mass index (bmi), and gender on metabolite concentrations in urine, by analysing 183 samples from a cohort of adults with liquid chromatography coupled to high-resolution mass spectrometry (LC-HRMS; Thevenot et al. (2015)).
Urine samples were analyzed by using an LTQ Orbitrap in the negative ionization mode. A total of 109 metabolites were identified or annotated at the MSI level 1 or 2. After retention time alignment with XCMS, peaks were integrated with Quan Browser. Signal drift and batch effect were corrected, and each urine profile was normalized to the osmolality of the sample. Finally, the data were log10 transformed (Thevenot et al. 2015).
The volunteers’ age
, body mass index (bmi
), and gender
were recorded.
We first load the
ropls
package:
library(ropls)
We then load the sacurine
dataset which contains:
The dataMatrix
matrix of numeric type containing the intensity
profiles (log10 transformed),
The sampleMetadata
data frame containg sample metadata,
The variableMetadata
data frame containg variable metadata
data(sacurine)
names(sacurine)
## [1] "dataMatrix" "sampleMetadata" "variableMetadata" "se"
## [5] "eset"
We attach sacurine to the search path and display a summary of the
content of the dataMatrix, sampleMetadata and
variableMetadata with the view
method from the
ropls
package:
attach(sacurine)
view(dataMatrix)
## dim class mode typeof size NAs min mean median max
## 183 x 109 matrix numeric double 0.2 Mb 0 -0.3 4.2 4.3 6
## (2-methoxyethoxy)propanoic acid isomer (gamma)Glu-Leu/Ile ...
## HU_011 3.019766011 3.888479324 ...
## HU_014 3.81433889 4.277148905 ...
## ... ... ... ...
## HU_208 3.748127215 4.523763202 ...
## HU_209 4.208859398 4.675880567 ...
## Valerylglycine isomer 2 Xanthosine
## HU_011 3.889078716 4.075879575
## HU_014 4.181765852 4.195761901
## ... ... ...
## HU_208 4.634338821 4.487781609
## HU_209 4.47194762 4.222953354
view(sampleMetadata)
## age bmi gender
## numeric numeric factor
## nRow nCol size NAs
## 183 3 0 Mb 0
## age bmi gender
## HU_011 29 19.75 M
## HU_014 59 22.64 F
## ... ... ... ...
## HU_208 27 18.61 F
## HU_209 17.5 21.48 F
## 1 data.frame 'factor' column(s) converted to 'numeric' for plotting.
view(variableMetadata)
## msiLevel hmdb chemicalClass
## numeric character character
## nRow nCol size NAs
## 109 3 0 Mb 0
## msiLevel hmdb chemicalClass
## (2-methoxyethoxy)propanoic acid isomer 2 Organi
## (gamma)Glu-Leu/Ile 2 AA-pep
## ... ... ... ...
## Valerylglycine isomer 2 2 AA-pep:AcyGly
## Xanthosine 1 HMDB00299 Nucleo
## 2 data.frame 'character' column(s) converted to 'numeric' for plotting.
Note:
the view
method applied to a numeric matrix also generates a
graphical display
the view
method can also be applied to an ExpressionSet object
(see below)
We perform a PCA on the dataMatrix matrix (samples as rows,
variables as columns), with the opls
method:
sacurine.pca <- opls(dataMatrix)
A summary of the model (8 components were selected) is printed:
## PCA
## 183 samples x 109 variables
## standard scaling of predictors
## R2X(cum) pre ort
## Total 0.501 8 0
In addition the default summary figure is displayed:
Figure 1: PCA summary plot. Top left overview
: the scree
plot (i.e., inertia barplot) suggests that 3 components may be
sufficient to capture most of the inertia; Top right outlier
: this
graphics shows the distances within and orthogonal to the projection
plane (Hubert, Rousseeuw, and Vanden Branden 2005): the name of the samples with a high value for at
least one of the distances are indicated; Bottom left x-score
: the
variance along each axis equals the variance captured by each component:
it therefore depends on the total variance of the dataMatrix X and of
the percentage of this variance captured by the component (indicated in
the labels); it decreases when going from one component to a component
with higher indice; Bottom right x-loading
: the 3 variables with
most extreme values (positive and negative) for each loading are black
colored and labeled.
Note:
Since dataMatrix does not contain missing value, the singular
value decomposition was used by default; NIPALS can be selected with
the algoC
argument specifying the algorithm (Character),
The predI = NA
default number of predictive components
(Integer) for PCA means that components (up to 10) will be
computed until the cumulative variance exceeds 50%. If the 50% have
not been reached at the 10th component, a warning message will be
issued (you can still compute the following components by specifying
the predI
value).
Let us see if we notice any partition according to gender, by
labeling/coloring the samples according to gender (parAsColFcVn
) and
drawing the Mahalanobis ellipses for the male and female subgroups
(parEllipseL
).
genderFc <- sampleMetadata[, "gender"]
plot(sacurine.pca,
typeVc = "x-score",
parAsColFcVn = genderFc)
Figure 2: PCA score plot colored according to gender.
Note:
The plotting parameter to be used As Colors (Factor of
character type or Vector of numeric type) has a length equal
to the number of rows of the dataMatrix (ie of samples) and that
this qualitative or quantitative variable is converted into colors
(by using an internal palette or color scale, respectively). We
could have visualized the age of the individuals by specifying
parAsColFcVn = sampleMetadata[, "age"]
.
The displayed components can be specified with parCompVi
(plotting
parameter specifying the Components: Vector of 2 integers)
The labels and the color palette can be personalized with the
parLabVc
and parPaletteVc
parameters, respectively:
plot(sacurine.pca,
typeVc = "x-score",
parAsColFcVn = genderFc,
parLabVc = as.character(sampleMetadata[, "age"]),
parPaletteVc = c("green4", "magenta"))
For PLS (and OPLS), the Y response(s) must be provided to the
opls
method. Y can be either a numeric vector (respectively
matrix) for single (respectively multiple) (O)PLS regression, or a
character factor for (O)PLS-DA classification as in the following
example with the gender qualitative response:
sacurine.plsda <- opls(dataMatrix, genderFc)
## PLS-DA
## 183 samples x 109 variables and 1 response
## standard scaling of predictors and response(s)
## R2X(cum) R2Y(cum) Q2(cum) RMSEE pre ort pR2Y pQ2
## Total 0.275 0.73 0.584 0.262 3 0 0.05 0.05
Figure 3: PLS-DA model of the gender response. Top left:
inertia
barplot: the graphic here suggests that 3 orthogonal
components may be sufficient to capture most of the inertia; Top
right: significance
diagnostic: the R2Y and Q2Y of the model
are compared with the corresponding values obtained after random
permutation of the y response; Bottom left: outlier
diagnostics;
Bottom right: x-score
plot: the number of components and the
cumulative R2X, R2Y and Q2Y are indicated below the plot.
Note:
predI
is determined automatically as follows (Eriksson et al. 2001): A
new component h is added to the model if:\(R2Y_h \geq 0.01\), i.e., the percentage of Y dispersion (i.e., sum of squares) explained by component h is more than 1 percent, and
\(Q2Y_h=1-PRESS_h/RSS_{h-1} \geq 0\) for PLS (or 5% when the number of samples is less than 100) or 1% for OPLS: \(Q2Y_h \geq 0\) means that the predicted residual sum of squares (\(PRESS_h\)) of the model including the new component h estimated by 7-fold cross-validation is less than the residual sum of squares (\(RSS_{h-1}\)) of the model with the previous components only (with \(RSS_0\) being the sum of squared Y values).
The predictive performance of the full model is assessed by the
cumulative Q2Y metric: \(Q2Y=1-\prod\limits_{h=1}^r (1-Q2Y_h)\).
We have \(Q2Y \in [0,1]\), and the higher the Q2Y, the better the
performance. Models trained on datasets with a larger number of
features compared with the number of samples can be prone to
overfitting: in that case, high Q2Y values are obtained by
chance only. To estimate the significance of Q2Y (and R2Y)
for single response models, permutation testing (Szymanska et al. 2012) can
be used: models are built after random permutation of the Y
values, and \(Q2Y_{perm}\) are computed. The p-value is equal to the
proportion of \(Q2Y_{perm}\) above \(Q2Y\) (the default number of
permutations is 20 as a compromise between quality control and
computation speed; it can be increased with the permI
parameter,
e.g. to 1,000, to assess if the model is significant at the 0.05
level),
The NIPALS algorithm is used for PLS (and OPLS); dataMatrix matrices with (a moderate amount of) missing values can thus be analysed.
We see that our model with 3 predictive (pre) components has significant and quite high R2Y and Q2Y values.
To perform OPLS(-DA), we set orthoI
(number of components which
are orthogonal; Integer) to either a specific number of orthogonal
components, or to NA. Let us build an OPLS-DA model of the gender
response.
sacurine.oplsda <- opls(dataMatrix, genderFc,
predI = 1, orthoI = NA)
## OPLS-DA
## 183 samples x 109 variables and 1 response
## standard scaling of predictors and response(s)
## R2X(cum) R2Y(cum) Q2(cum) RMSEE pre ort pR2Y pQ2
## Total 0.275 0.73 0.602 0.262 1 2 0.05 0.05
Figure 4: OPLS-DA model of the gender response.
Note:
For OPLS modeling of a single response, the number of predictive component is 1,
In the (x-score
plot), the predictive component is displayed as
abscissa and the (selected; default = 1) orthogonal component as
ordinate.
Let us assess the predictive performance of our model. We first
train the model on a subset of the samples (here we use the odd
subset
value which splits the data set into two halves with similar proportions
of samples for each class; alternatively, we could have used a specific
subset of indices for training):
sacurine.oplsda <- opls(dataMatrix, genderFc,
predI = 1, orthoI = NA,
subset = "odd")
## OPLS-DA
## 92 samples x 109 variables and 1 response
## standard scaling of predictors and response(s)
## R2X(cum) R2Y(cum) Q2(cum) RMSEE RMSEP pre ort
## Total 0.26 0.825 0.608 0.213 0.341 1 2
We first check the predictions on the training subset:
trainVi <- getSubsetVi(sacurine.oplsda)
confusion_train.tb <- table(genderFc[trainVi], fitted(sacurine.oplsda))
confusion_train.tb
##
## M F
## M 50 0
## F 0 42
We then compute the performances on the test subset:
confusion_test.tb <- table(genderFc[-trainVi],
predict(sacurine.oplsda, dataMatrix[-trainVi, ]))
confusion_test.tb
##
## M F
## M 43 7
## F 7 34
As expected, the predictions on the test subset are (slightly) lower. The classifier however still achieves 85% of correct predictions.
SummarizedExperiment
objectsThe SummarizedExperiment
class from the
SummarizedExperiment
bioconductor package has been developed to conveniently handle
preprocessed omics objects, including the variable x sample matrix of
intensities, and two DataFrames containing the sample and variable
metadata, which can be accessed by the assay
, colData
and rowData
methods respectively (remember that the data matrix is stored with
samples in columns).
The opls
method can be applied to a SummarizedExperiment
object,
by using the object as the x
argument, and, for (O)PLS(-DA), by
indicating as the y
argument the name of the sample metadata to be
used as the response (i.e. the name of the column in the colData
). It
returns the updated SummarizedExperiment
object with the loading,
score, VIP, etc. data as new columns in the colData
and rowData
, and
with the PCA/(O)PLS(-DA) models in the metadata
slot.
Getting the sacurine dataset as a SummarizedExperiment
(see the
Appendix to see how such an SummarizedExperiment
was built):
data(sacurine)
sac.se <- sacurine[["se"]]
We then build the PLS-DA model of the gender response
sac.se <- opls(sac.se, "gender")
Note that the opls
method returns an updated SummarizedExperiment
with the metadata about scores, loadings, VIPs, etc. stored in the
colData
and rowData
DataFrames:
library(SummarizedExperiment)
SummarizedExperiment::colData(sac.se)
## DataFrame with 183 rows and 6 columns
## age bmi gender gender_PLSDA_xscor-p1 gender_PLSDA_xscor-p2
## <numeric> <numeric> <factor> <numeric> <numeric>
## HU_011 29 19.75 M -2.69395 3.396080
## HU_014 59 22.64 F 0.75108 2.186106
## HU_015 42 22.72 M -4.39096 0.854612
## HU_017 41 23.03 M -3.19297 -0.898535
## HU_018 34 20.96 M -2.39676 -1.725307
## ... ... ... ... ... ...
## HU_205 33.0 28.37 M -3.630871 -1.950319
## HU_206 45.0 22.15 F -0.195070 -1.137140
## HU_207 33.0 19.47 F 6.295316 0.449583
## HU_208 27.0 18.61 F 3.880127 -3.448405
## HU_209 17.5 21.48 F 0.348284 -2.028042
## gender_PLSDA_fitted
## <character>
## HU_011 M
## HU_014 F
## HU_015 M
## HU_017 M
## HU_018 M
## ... ...
## HU_205 M
## HU_206 M
## HU_207 F
## HU_208 F
## HU_209 F
SummarizedExperiment::rowData(sac.se)
## DataFrame with 109 rows and 7 columns
## msiLevel hmdb chemicalClass
## <integer> <character> <character>
## (2-methoxyethoxy)propanoic acid isomer 2 Organi
## (gamma)Glu-Leu/Ile 2 AA-pep
## 1-Methyluric acid 1 HMDB03099 AroHeP:Xenobi
## 1-Methylxanthine 1 HMDB10738 AroHeP
## 1,3-Dimethyluric acid 1 HMDB01857 AroHeP
## ... ... ... ...
## Threonic acid/Erythronic acid 2 Carboh
## Tryptophan 1 HMDB00929 AA-pep
## Valerylglycine isomer 1 2 AA-pep:AcyGly
## Valerylglycine isomer 2 2 AA-pep:AcyGly
## Xanthosine 1 HMDB00299 Nucleo
## gender_PLSDA_xload-p1
## <numeric>
## (2-methoxyethoxy)propanoic acid isomer 0.0398502
## (gamma)Glu-Leu/Ile -0.0455062
## 1-Methyluric acid 0.0892685
## 1-Methylxanthine 0.0925960
## 1,3-Dimethyluric acid 0.0533869
## ... ...
## Threonic acid/Erythronic acid 0.2027800
## Tryptophan 0.0310755
## Valerylglycine isomer 1 0.1292152
## Valerylglycine isomer 2 0.1988077
## Xanthosine -0.0163006
## gender_PLSDA_xload-p2 gender_PLSDA_VIP
## <numeric> <numeric>
## (2-methoxyethoxy)propanoic acid isomer 0.0118907 0.413403
## (gamma)Glu-Leu/Ile -0.1898538 1.486543
## 1-Methyluric acid -0.2004731 0.994359
## 1-Methylxanthine -0.1662373 0.909199
## 1,3-Dimethyluric acid -0.1667939 0.703483
## ... ... ...
## Threonic acid/Erythronic acid -0.1230309 1.271197
## Tryptophan -0.0745869 0.685333
## Valerylglycine isomer 1 -0.0585523 0.874374
## Valerylglycine isomer 2 -0.0968777 1.282966
## Xanthosine -0.1810501 1.033331
## gender_PLSDA_coef
## <numeric>
## (2-methoxyethoxy)propanoic acid isomer 0.0213141
## (gamma)Glu-Leu/Ile -0.0844622
## 1-Methyluric acid -0.0446014
## 1-Methylxanthine -0.0407458
## 1,3-Dimethyluric acid -0.0261733
## ... ...
## Threonic acid/Erythronic acid -0.00295612
## Tryptophan -0.04277201
## Valerylglycine isomer 1 0.02554144
## Valerylglycine isomer 2 0.02567323
## Xanthosine -0.05027981
The opls model(s) are stored in the metadata of the sac.se
SummarizedExperiment
object, and can be accessed with the getOpls
method:
sac_opls.ls <- getOpls(sac.se)
names(sac_opls.ls)
## [1] "gender_PLSDA"
plot(sac_opls.ls[["gender_PLSDA"]], typeVc = "x-score")
ExpressionSet
formatThe ExpressionSet
format is currently supported as a legacy
representation from the previous versions of the ropls
package (<
1.28.0) but will now be supplanted by SummarizedExperiment
in future
versions. Note that the as(x, "SummarizedExperiment")
method from the
SummarizedExperiment
package enables to convert an ExpressionSet
into the SummarizedExperiment
format.
exprs
, pData
, and fData
for ExpressionSet
are similar to
assay
, colData
and rowData
for SummarizedExperiment
except that
assay
is a list which can potentially include several matrices, and
that colData
and rowData
are of the DataFrame
format.
SummarizedExperiment
format further enables to store additional
metadata (such as models or ggplots) in a dedicated metadata
slot.
In the example below, we will first build a minimal ExpressionSet
object from the sacurine data set and view the data, and we
subsequently perform an OPLS-DA.
Getting the sacurine dataset as an ExpressionSet
(see the Appendix to
see how such an ExpressionSet
was built)
data("sacurine")
sac.set <- sacurine[["eset"]]
# viewing the ExpressionSet
# ropls::view(sac.set)
We then build the PLS-DA model of the gender response
# performing the PLS-DA
sac.plsda <- opls(sac.set, "gender")
Note that this time opls
returns the model as an object of the opls
class. The updated ExpressionSet
object can be accessed with the
getEset
method:
sac.set <- getEset(sac.plsda)
library(Biobase)
head(Biobase::pData(sac.set))
## age bmi gender gender_PLSDA_xscor-p1 gender_PLSDA_xscor-p2
## HU_011 29 19.75 M -2.6939546 3.3960801
## HU_014 59 22.64 F 0.7510799 2.1861065
## HU_015 42 22.72 M -4.3909624 0.8546116
## HU_017 41 23.03 M -3.1929659 -0.8985349
## HU_018 34 20.96 M -2.3967633 -1.7253069
## HU_019 35 23.41 M -1.5622495 -1.5750081
## gender_PLSDA_fitted
## HU_011 M
## HU_014 F
## HU_015 M
## HU_017 M
## HU_018 M
## HU_019 M
MultiAssayExperiment
objectsThe MultiAssayExperiment
format is useful to handle multi-omics
datasets (Ramos et al. 2017). (O)PLS(-DA) models
can be built in parallel for each dataset by applying opls
to such
formats. We provide an example based on the NCI60_4arrays
cancer
dataset from the omicade4
package (which has been made available in
this ropls
package in the MultiAssayExperiment
format).
Getting the NCI60
dataset as a MultiAssayExperiment
(see the
Appendix to see how such a MultiAssayExperiment
can be built):
data("NCI60")
nci.mae <- NCI60[["mae"]]
Building the PLS-DA model of the cancer
response for each dataset:
nci.mae <- opls(nci.mae, "cancer",
predI = 2, fig.pdfC = "none")
##
##
## Building the model for the 'agilent' dataset:
## PLS-DA
## 60 samples x 300 variables and 1 response
## standard scaling of predictors and response(s)
## R2X(cum) R2Y(cum) Q2(cum) RMSEE pre ort pR2Y pQ2
## Total 0.262 0.231 0.182 0.275 2 0 0.05 0.05
##
##
## Building the model for the 'hgu133' dataset:
## PLS-DA
## 60 samples x 298 variables and 1 response
## standard scaling of predictors and response(s)
## R2X(cum) R2Y(cum) Q2(cum) RMSEE pre ort pR2Y pQ2
## Total 0.318 0.234 0.218 0.273 2 0 0.05 0.05
##
##
## Building the model for the 'hgu133p2' dataset:
## PLS-DA
## 60 samples x 268 variables and 1 response
## standard scaling of predictors and response(s)
## R2X(cum) R2Y(cum) Q2(cum) RMSEE pre ort pR2Y pQ2
## Total 0.312 0.234 0.214 0.273 2 0 0.05 0.05
##
##
## Building the model for the 'hgu95' dataset:
## PLS-DA
## 60 samples x 288 variables and 1 response
## standard scaling of predictors and response(s)
## R2X(cum) R2Y(cum) Q2(cum) RMSEE pre ort pR2Y pQ2
## Total 0.329 0.232 0.214 0.273 2 0 0.05 0.05
The opls
method returns an updated MultiAssayExperiment
with the
metadata about scores, loadings, VIPs, etc. stored in the colData
and
rowData
of the individual SummarizedExperiment
:
SummarizedExperiment::colData(nci.mae[["agilent"]])
## DataFrame with 60 rows and 4 columns
## .id cancer_PLSDA_xscor-p1 cancer_PLSDA_xscor-p2
## <character> <numeric> <numeric>
## BR.MCF7 BR.MCF7 -4.05869 3.60974
## BR.MDA_MB_231 BR.MDA_MB_231 2.85600 3.25368
## BR.HS578T BR.HS578T 7.16701 1.23469
## BR.BT_549 BR.BT_549 5.27739 3.56892
## BR.T47D BR.T47D 1.21882 3.88150
## ... ... ... ...
## RE.CAKI_1 RE.CAKI_1 4.01588 5.10785
## RE.RXF_393 RE.RXF_393 7.30202 5.28137
## RE.SN12C RE.SN12C 3.43798 4.65690
## RE.TK_10 RE.TK_10 1.65842 5.41697
## RE.UO_31 RE.UO_31 5.65133 4.90524
## cancer_PLSDA_fitted
## <character>
## BR.MCF7 CO
## BR.MDA_MB_231 RE
## BR.HS578T RE
## BR.BT_549 RE
## BR.T47D RE
## ... ...
## RE.CAKI_1 RE
## RE.RXF_393 RE
## RE.SN12C RE
## RE.TK_10 RE
## RE.UO_31 RE
The opls model(s) are stored in the metadata of the individual
SummarizedExperiment
objects included in the MultiAssayExperiment
,
and can be accessed with the getOpls
method:
mae_opls.ls <- getOpls(nci.mae)
names(mae_opls.ls)
## [1] "agilent" "hgu133" "hgu133p2" "hgu95"
plot(mae_opls.ls[["agilent"]][["cancer_PLSDA"]], typeVc = "x-score")
MultiDataSet
objectsThe MultiDataSet
format (Ramos et al. 2017) is
currently supported as a legacy representation from the previous
versions of the ropls
package (<1.28.0) but will now be supplanted by
MultiAssayExperiment
in future versions. Note that the mds2mae
method from the MultiDataSet
package enables to convert a
MultiDataSet
into the MultiAssayExperiment
format.
Getting the NCI60
dataset as a MultiDataSet
(see the Appendix to see
how such a MultiDataSet
can be built):
data("NCI60")
nci.mds <- NCI60[["mds"]]
Building PLS-DA models for the cancer type:
# Restricting to the "agilent" and "hgu95" datasets
nci.mds <- nci.mds[, c("agilent", "hgu95")]
# Restricting to the 'ME' and 'LE' cancer types
library(Biobase)
sample_names.vc <- Biobase::sampleNames(nci.mds[["agilent"]])
cancer_type.vc <- Biobase::pData(nci.mds[["agilent"]])[, "cancer"]
nci.mds <- nci.mds[sample_names.vc[cancer_type.vc %in% c("ME", "LE")], ]
# Building PLS-DA models for the cancer type
nci.plsda <- ropls::opls(nci.mds, "cancer", predI = 2)
Getting back the updated MultiDataSet
:
nci.mds <- ropls::getMset(nci.plsda)
The datasets from the SummarizedExperiment
and MultiAssayExperiment
(as well as ExpressionSet
and MultiDataSet
) can be imported/exported
to text files with the reading
and writing
functions from the
phenomis
package. The phenomis
package is currently available on
github and should be soon available on Bioconductor.
Each dataset is imported/exported to 3 text files (tsv tabular format):
dataMatrix.tsv: data matrix with features as rows and samples as columns
sampleMetadata.tsv: sample metadata
variableMetadata.tsv: feature metadata
install.packages("devtools")
devtools::install_github("https://github.com/odisce/phenomis")
data(sacurine)
sacurine.se <- sacurine[["se"]]
library(phenomis)
phenomis::writing(sacurine.se, dir.c = getwd())
detach(sacurine)
The features from the ropls
package can also be accessed via a
graphical user interface in the Multivariate module from the
Workflow4Metabolomics.org
online resource for computational metabolomics, based on the Galaxy
environment.
In addition to the sacurine dataset presented above, the package contains the following datasets to illustrate the functionalities of PCA, PLS and OPLS (see the examples in the documentation of the opls function):
aminoacids Amino-Acids Dataset. Quantitative structure property relationship (QSPR) (Wold, Sjostrom, and Eriksson 2001).
cellulose NIR-Viscosity example data set to illustrate multivariate calibration using PLS, spectral filtering and OPLS (Multivariate calibration using spectral data. Simca tutorial. Umetrics, Sweden).
cornell Octane of various blends of gasoline: Twelve mixture component proportions of the blend are analysed (Tenenhaus 1998).
foods Food consumption patterns accross European countries (FOODS). The relative consumption of 20 food items was compiled for 16 countries. The values range between 0 and 100 percent and a high value corresponds to a high consumption. The dataset contains 3 missing data (Eriksson et al. 2001).
linnerud Three physiological and three exercise variables are measured on twenty middle-aged men in a fitness club (Tenenhaus 1998).
lowarp A multi response optimization data set (LOWARP) (Eriksson et al. 2001).
mark Marks obtained by french students in mathematics, physics, french and english. Toy example to illustrate the potentialities of PCA (Baccini 2010).
SummarizedExperiment
The SummarizedExperiment
format has been designed by the Bioconductor
team to handle (single) omics datasets (Morgan et al. 2022).
An example of SummarizedExperiment
creation and a summary of useful
methods are provided below.
Please refer to package
vignettes
for a full description of SummarizedExperiment
objects .
# Preparing the data (matrix) and sample and variable metadata (data frames):
data(sacurine, package = "ropls")
data.mn <- sacurine[["dataMatrix"]] # matrix: samples x variables
samp.df <- sacurine[["sampleMetadata"]] # data frame: samples x sample metadata
feat.df <- sacurine[["variableMetadata"]] # data frame: features x feature metadata
# Creating the SummarizedExperiment (package SummarizedExperiment)
library(SummarizedExperiment)
sac.se <- SummarizedExperiment(assays = list(sacurine = t(data.mn)),
colData = samp.df,
rowData = feat.df)
# note that colData and rowData main format is DataFrame, but data frames are accepted when building the object
stopifnot(validObject(sac.se))
# Viewing the SummarizedExperiment
# ropls::view(sac.se)
Methods | Description | Returned class |
---|---|---|
Constructors | ||
SummarizedExperiment |
Create a SummarizedExperiment object | SummarizedExperiment |
makeSummarizedExperimentFromExpressionSet |
SummarizedExperiment |
|
Accessors | ||
assayNames |
Get or set the names of assay() elements | character |
assay |
Get or set the ith (default first) assay element | matrix |
assays |
Get the list of experimental data numeric matrices | SimpleList |
rowData |
Get or set the row data (features) | DataFrame |
colData |
Get or set the column data (samples) | DataFrame |
metadata |
Get or set the experiment data | list |
dim |
Get the dimensions (features of interest x samples) | integer |
dimnames |
Get or set the dimension names | list of length 2 character/NULL |
rownames |
Get the feature names | character |
colnames |
Get the sample names | character |
Conversion | ||
as(, "SummarizedExperiment") |
Convert an ExpressionSet to a SummarizedExperiment | SummarizedExperiment |
MultiAssayExperiment
The MultiAssayExperiment
format has been designed by the Bioconductor
team to handle multiomics datasets
(Ramos et al. 2017).
An example of MultiAssayExperiment
creation and a summary of useful
methods are provided below. Please refer to package
vignettes or
to the original publication for a full description of
MultiAssayExperiment
objects
(Ramos et al. 2017).
Loading the NCI60_4arrays
from the omicade4
package:
data("NCI60_4arrays", package = "omicade4")
Creating the MultiAssayExperiment
:
library(MultiAssayExperiment)
# Building the individual SummarizedExperiment instances
experiment.ls <- list()
sampleMap.ls <- list()
for (set.c in names(NCI60_4arrays)) {
# Getting the data and metadata
assay.mn <- as.matrix(NCI60_4arrays[[set.c]])
coldata.df <- data.frame(row.names = colnames(assay.mn),
.id = colnames(assay.mn),
stringsAsFactors = FALSE) # the 'cancer' information will be stored in the main colData of the mae, not the individual SummarizedExperiments
rowdata.df <- data.frame(row.names = rownames(assay.mn),
name = rownames(assay.mn),
stringsAsFactors = FALSE)
# Building the SummarizedExperiment
assay.ls <- list(se = assay.mn)
names(assay.ls) <- set.c
se <- SummarizedExperiment(assays = assay.ls,
colData = coldata.df,
rowData = rowdata.df)
experiment.ls[[set.c]] <- se
sampleMap.ls[[set.c]] <- data.frame(primary = colnames(se),
colname = colnames(se)) # both datasets use identical sample names
}
sampleMap <- listToMap(sampleMap.ls)
# The sample metadata are stored in the colData data frame (both datasets have the same samples)
stopifnot(identical(colnames(NCI60_4arrays[[1]]),
colnames(NCI60_4arrays[[2]])))
sample_names.vc <- colnames(NCI60_4arrays[[1]])
colData.df <- data.frame(row.names = sample_names.vc,
cancer = substr(sample_names.vc, 1, 2))
nci.mae <- MultiAssayExperiment(experiments = experiment.ls,
colData = colData.df,
sampleMap = sampleMap)
stopifnot(validObject(nci.mae))
Methods | Description | Returned class |
---|---|---|
Constructors | ||
MultiAssayExperiment |
Create a MultiAssayExperiment object | MultiAssayExperiment |
ExperimentList |
Create an ExperimentList from a List or list | ExperimentList |
Accessors | ||
colData |
Get or set data that describe the patients/biological units | DataFrame |
experiments |
Get or set the list of experimental data objects as original classes | experimentList |
assays |
Get the list of experimental data numeric matrices | SimpleList |
assay |
Get the first experimental data numeric matrix | matrix , matrix-like |
sampleMap |
Get or set the map relating observations to subjects | DataFrame |
metadata |
Get or set additional data descriptions | list |
rownames |
Get row names for all experiments | CharacterList |
colnames |
Get column names for all experiments | CharacterList |
Subsetting | ||
mae[i, j, k] |
Get rows, columns, and/or experiments | MultiAssayExperiment |
mae[i, ,] |
i: GRanges, character, integer, logical, List, list | MultiAssayExperiment |
mae[,j,] |
j: character, integer, logical, List, list | MultiAssayExperiment |
mae[,,k] |
k: character, integer, logical | MultiAssayExperiment |
mae[[i]] |
Get or set object of arbitrary class from experiments | (Varies) |
mae[[i]] |
Character, integer, logical | |
mae$column |
Get or set colData column | vector (varies) |
Management | ||
complete.cases |
Identify subjects with complete data in all experiments | vector (logical) |
duplicated |
Identify subjects with replicate observations per experiment | list of LogicalLists |
mergeReplicates |
Merge replicate observations within each experiment | MultiAssayExperiment |
intersectRows |
Return features that are present for all experiments | MultiAssayExperiment |
intersectColumns |
Return subjects with data available for all experiments | MultiAssayExperiment |
prepMultiAssay |
Troubleshoot common problems when constructing main class | list |
Reshaping | ||
longFormat |
Return a long and tidy DataFrame with optional colData columns | DataFrame |
wideFormat |
Create a wide DataFrame, one row per subject | DataFrame |
Combining | ||
c |
Concatenate an experiment | MultiAssayExperiment |
Viewing | ||
upsetSamples |
Generalized Venn Diagram analog for sample membership | upset |
Exporting | ||
exportClass |
Exporting to flat files | csv or tsv files |
ExpressionSet
The ExpressionSet
format (Biobase
package) was designed by the
Bioconductor team as the first format to handle (single) omics data. It
has now been supplanted by the SummarizedExperiment
format.
An example of ExpressionSet
creation and a summary of useful methods
are provided below. Please refer to ‘An introduction to Biobase and
ExpressionSets’
from the documentation from the
Biobase
package for a
full description of ExpressionSet
objects.
# Preparing the data (matrix) and sample and variable metadata (data frames):
data(sacurine)
data.mn <- sacurine[["dataMatrix"]] # matrix: samples x variables
samp.df <- sacurine[["sampleMetadata"]] # data frame: samples x sample metadata
feat.df <- sacurine[["variableMetadata"]] # data frame: features x feature metadata
# Creating the ExpressionSet (package Biobase)
sac.set <- Biobase::ExpressionSet(assayData = t(data.mn))
Biobase::pData(sac.set) <- samp.df
Biobase::fData(sac.set) <- feat.df
stopifnot(validObject(sac.set))
# Viewing the ExpressionSet
# ropls::view(sac.set)
Methods | Description | Returned class |
---|---|---|
exprs |
‘variable times samples’ numeric matrix | matrix |
pData |
sample metadata | data.frame |
fData |
variable metadata | data.frame |
sampleNames |
sample names | character |
featureNames |
variable names | character |
dims |
2x1 matrix of ‘Features’ and ‘Samples’ dimensions | matrix |
varLabels |
Column names of the sample metadata data frame | character |
fvarLabels |
Column names of the variable metadata data frame | character |
MultiDataSet
Loading the NCI60_4arrays
from the omicade4
package:
data("NCI60_4arrays", package = "omicade4")
Creating the MultiDataSet
:
library(MultiDataSet)
# Creating the MultiDataSet instance
nci.mds <- MultiDataSet::createMultiDataSet()
# Adding the two datasets as ExpressionSet instances
for (set.c in names(NCI60_4arrays)) {
# Getting the data
expr.mn <- as.matrix(NCI60_4arrays[[set.c]])
pdata.df <- data.frame(row.names = colnames(expr.mn),
cancer = substr(colnames(expr.mn), 1, 2),
stringsAsFactors = FALSE)
fdata.df <- data.frame(row.names = rownames(expr.mn),
name = rownames(expr.mn),
stringsAsFactors = FALSE)
# Building the ExpressionSet
eset <- Biobase::ExpressionSet(assayData = expr.mn,
phenoData = new("AnnotatedDataFrame",
data = pdata.df),
featureData = new("AnnotatedDataFrame",
data = fdata.df),
experimentData = new("MIAME",
title = set.c))
# Adding to the MultiDataSet
nci.mds <- MultiDataSet::add_eset(nci.mds, eset, dataset.type = set.c,
GRanges = NA, warnings = FALSE)
}
stopifnot(validObject(nci.mds))
Methods | Description | Returned class |
---|---|---|
Constructors | ||
createMultiDataSet |
Create a MultiDataSet object | MultiDataSet |
add_eset |
Create a MultiAssayExperiment object | MultiDataSet |
Subsetting | ||
mset[i, ] |
i: character,logical (samples to select) | MultiDataSet |
mset[, k] |
k: character (names of datasets to select) | MultiDataSet |
mset[[k]] |
k: character (name of the datast to select) | ExpressionSet |
Accessors | ||
as.list |
Get the list of data matrices | list |
pData |
Get the list of sample metadata | list |
fData |
Get the list of variable metadata | list |
sampleNames |
Get the list of sample names | list |
Management | ||
commonSamples |
Select samples that are present in all datasets | MultiDataSet |
Conversion | ||
mds2mae |
Convert a MultiDataSet to a MultiAssayExperiment | MultiAssayExperiment |
Here is the output of sessionInfo()
on the system on which this
document was compiled:
## R version 4.3.0 RC (2023-04-13 r84269)
## Platform: x86_64-pc-linux-gnu (64-bit)
## Running under: Ubuntu 22.04.2 LTS
##
## Matrix products: default
## BLAS: /home/biocbuild/bbs-3.17-bioc/R/lib/libRblas.so
## LAPACK: /usr/lib/x86_64-linux-gnu/lapack/liblapack.so.3.10.0
##
## locale:
## [1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
## [3] LC_TIME=en_GB LC_COLLATE=C
## [5] LC_MONETARY=en_US.UTF-8 LC_MESSAGES=en_US.UTF-8
## [7] LC_PAPER=en_US.UTF-8 LC_NAME=C
## [9] LC_ADDRESS=C LC_TELEPHONE=C
## [11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C
##
## time zone: America/New_York
## tzcode source: system (glibc)
##
## attached base packages:
## [1] stats4 stats graphics grDevices utils datasets methods
## [8] base
##
## other attached packages:
## [1] MultiDataSet_1.28.0 MultiAssayExperiment_1.26.0
## [3] SummarizedExperiment_1.30.0 Biobase_2.60.0
## [5] GenomicRanges_1.52.0 GenomeInfoDb_1.36.0
## [7] IRanges_2.34.0 S4Vectors_0.38.0
## [9] BiocGenerics_0.46.0 MatrixGenerics_1.12.0
## [11] matrixStats_0.63.0 ropls_1.32.0
## [13] BiocStyle_2.28.0
##
## loaded via a namespace (and not attached):
## [1] Matrix_1.5-4 limma_3.56.0 jsonlite_1.8.4
## [4] highr_0.10 compiler_4.3.0 BiocManager_1.30.20
## [7] BiocBaseUtils_1.2.0 Rcpp_1.0.10 magick_2.7.4
## [10] bitops_1.0-7 jquerylib_0.1.4 yaml_2.3.7
## [13] fastmap_1.1.1 lattice_0.21-8 R6_2.5.1
## [16] XVector_0.40.0 qqman_0.1.8 knitr_1.42
## [19] MASS_7.3-59 DelayedArray_0.26.0 bookdown_0.33
## [22] GenomeInfoDbData_1.2.10 bslib_0.4.2 rlang_1.1.0
## [25] calibrate_1.7.7 cachem_1.0.7 xfun_0.39
## [28] sass_0.4.5 cli_3.6.1 magrittr_2.0.3
## [31] zlibbioc_1.46.0 digest_0.6.31 grid_4.3.0
## [34] evaluate_0.20 RCurl_1.98-1.12 rmarkdown_2.21
## [37] tools_4.3.0 htmltools_0.5.5
Baccini, A. 2010. “Statistique Descriptive Multidimensionnelle (Pour Les Nuls).”
Brereton, Richard G., and Gavin R. Lloyd. 2014. “Partial Least Squares Discriminant Analysis: Taking the Magic Away.” Journal of Chemometrics 28 (4): 213–25. http://dx.doi.org/10.1002/cem.2609.
Bylesjo, M, M Rantalainen, O Cloarec, J Nicholson, E Holmes, and J Trygg. 2006. “OPLS Discriminant Analysis: Combining the Strengths of PLS-DA and SIMCA Classification.” Journal of Chemometrics 20: 341–51. http://dx.doi.org/10.1002/cem.1006.
Bylesjo, M., M. Rantalainen, J. Nicholson, E. Holmes, and J. Trygg. 2008. “K-OPLS Package: Kernel-Based Orthogonal Projections to Latent Structures for Prediction and Interpretation in Feature Space.” BMC Bioinformatics 9 (1): 106. http://dx.doi.org/10.1186/1471-2105-9-106.
Eriksson, L., E. Johansson, N. Kettaneh-Wold, and S. Wold. 2001. Multi- and Megavariate Data Analysis. Principles and Applications. Umetrics Academy.
Galindo-Prieto, B., L. Eriksson, and J. Trygg. 2014. “Variable Influence on Projection (VIP) for Orthogonal Projections to Latent Structures (OPLS).” Journal of Chemometrics 28 (8): 623–32. http://dx.doi.org/10.1002/cem.2627.
Gaude, R., F. Chignola, D. Spiliotopoulos, A. Spitaleri, M. Ghitti, JM. Garcia-Manteiga, S. Mari, and G. Musco. 2013. “Muma, an R Package for Metabolomics Univariate and Multivariate Statistical Analysis.” Current Metabolomics 1: 180–89. http://dx.doi.org/10.2174/2213235X11301020005.
Hubert, M., PJ. Rousseeuw, and K. Vanden Branden. 2005. “ROBPCA: A New Approach to Robust Principal Component Analysis.” Technometrics 47: 64–79. http://dx.doi.org/10.1198/004017004000000563.
Mehmood, T., KH. Liland, L. Snipen, and S. Saebo. 2012. “A Review of Variable Selection Methods in Partial Least Squares Regression.” Chemometrics and Intelligent Laboratory Systems 118 (0): 62–69. http://dx.doi.org/10.1016/j.chemolab.2012.07.010.
Morgan, Martin, Valerie Obenchain, Jim Hester, and Hervé Pagès. 2022. SummarizedExperiment: SummarizedExperiment Container. https://bioconductor.org/packages/SummarizedExperiment.
Pinto, RC., J. Trygg, and J. Gottfries. 2012. “Advantages of Orthogonal Inspection in Chemometrics.” Journal of Chemometrics 26 (6): 231–35. http://dx.doi.org/10.1002/cem.2441.
Ramos, Marcel, Lucas Schiffer, Angela Re, Rimsha Azhar, Azfar Basunia, Carmen Rodriguez, Tiffany Chan, et al. 2017. “Software for the Integration of Multiomics Experiments in Bioconductor.” Cancer Research 77 (21): e39–e42. https://doi.org/10.1158/0008-5472.CAN-17-0344.
R Development Core Team. 2008. R: A Language and Environment for Statistical Computing. Vienna, Austria: R Foundation for Statistical Computing. http://www.R-project.org.
Szymanska, E., E. Saccenti, AK. Smilde, and JA. Westerhuis. 2012. “Double-Check: Validation of Diagnostic Statistics for PLS-DA Models in Metabolomics Studies.” Metabolomics 8 (1, 1): 3–16. http://dx.doi.org/10.1007/s11306-011-0330-3.
Tenenhaus, M. 1998. La Regression PLS : Theorie et Pratique. Editions Technip.
Thevenot, EA., A. Roux, X. Ying, E. Ezan, and C. Junot. 2015. “Analysis of the Human Adult Urinary Metabolome Variations with Age, Body Mass Index and Gender by Implementing a Comprehensive Workflow for Univariate and OPLS Statistical Analyses.” Journal of Proteome Research 14 (8): 3322–35. http://dx.doi.org/10.1021/acs.jproteome.5b00354.
Trygg, J., and S. Wold. 2002. “Orthogonal Projection to Latent Structures (O-PLS).” Journal of Chemometrics 16: 119–28. http://dx.doi.org/10.1002/cem.695.
Wehrens, R. 2011. Chemometrics with R: Multivariate Data Analysis in the Natural Sciences and Life Sciences. Springer.
Wold, S., M. Sjostrom, and L. Eriksson. 2001. “PLS-Regression: A Basic Tool of Chemometrics.” Chemometrics and Intelligent Laboratory Systems 58: 109–30. http://dx.doi.org/10.1016/S0169-7439(01)00155-1.
4.5 Comments
4.5.1 Overfitting
Overfitting (i.e., building a model with good performances on the training set but poor performances on a new test set) is a major caveat of machine learning techniques applied to data sets with more variables than samples. A simple simulation of a random X data set and a y response shows that perfect PLS-DA classification can be achieved as soon as the number of variables exceeds the number of samples, as detailed in the example below, adapted from Wehrens (2011):
Figure 5: Risk of PLS overfitting. In the simulation above, a random matrix X of 20 observations x 200 features was generated by sampling from the uniform distribution \(U(0, 1)\). A random y response was obtained by sampling (without replacement) from a vector of 10 zeros and 10 ones. Top left, top right, and bottom left: the X-score plots of the PLS modeling of y by the (sub)matrix of X restricted to the first 2, 20, or 200 features, are displayed (i.e., the observation/feature ratios are 0.1, 1, and 10, respectively). Despite the good separation obtained on the bottom left score plot, we see that the Q2Y estimation of predictive performance is low (negative); Bottom right: a significant proportion of the models trained after random permutations of the labels have a higher Q2Y value than the model trained with the true labels, confirming that PLS cannot specifically model the y response with the X predictors, as expected.
This simple simulation illustrates that PLS overfit can occur, in particular when the number of features exceeds the number of observations. It is therefore essential to check that the \(Q2Y\) value of the model is significant by random permutation of the labels.
4.5.2 VIP from OPLS models
The classical VIP metric is not useful for OPLS modeling of a single response since (Galindo-Prieto, Eriksson, and Trygg 2014; Thevenot et al. 2015): 1. VIP values remain identical whatever the number of orthogonal components selected, 2. VIP values are univariate (i.e., they do not provide information about interactions between variables). In fact, when features are standardized, we can demonstrate a mathematical relationship between VIP and p-values from a Pearson correlation test (Thevenot et al. 2015), as illustrated by the figure below:
Figure 6: Relationship between VIP from one-predictive PLS or OPLS models with standardized variables, and p-values from Pearson correlation test. The \((p_j, VIP_j)\) pairs corresponding respectively to the VIP values from OPLS modelling of the age response with the sacurine dataset, and the p-values from the Pearson correlation test are shown as red dots. The \(y = \Phi^{-1}(1 - x/2) / z_{rms}\) curve is shown in red (where \(\Phi^{-1}\) is the inverse of the probability density function of the standard normal distribution, and \(z_{rms}\) is the quadratic mean of the \(z_j\) quantiles from the standard normal distribution; \(z_{rms} = 2.6\) for the sacurine dataset and the age response). The vertical (resp. horizontal) blue line corresponds to univariate (resp. multivariate) thresholds of \(p=0.05\) and \(VIP=1\), respectively (Thevenot et al. 2015).
The VIP properties above result from:
OPLS models of a single response have a single predictive component,
in the case of one-predictive component (O)PLS models, the general formula for VIPs can be simplified to \(VIP_j = \sqrt{m} \times |w_j|\) for each feature \(j\), were \(m\) is the total number of features and w is the vector of loading weights,
in OPLS, w remains identical whatever the number of extracted orthogonal components,
for a single-response model, w is proportional to X’y (where ’ denotes the matrix transposition),
if X and y are standardized, X’y is the vector of the correlations between the features and the response.
Galindo-Prieto, Eriksson, and Trygg (2014) have recently suggested new VIP metrics for OPLS, VIP_pred and VIP_ortho, to separately measure the influence of the features in the modeling of the dispersion correlated to, and orthogonal to the response, respectively (Galindo-Prieto, Eriksson, and Trygg 2014).
For OPLS(-DA) models, you can therefore get from the model generated with
opls
:the predictive VIP vector (which corresponds to the \(VIP_{4,pred}\) metric measuring the variable importance in prediction) with
getVipVn(model)
,the orthogonal VIP vector which is the \(VIP_{4,ortho}\) metric measuring the variable importance in orthogonal modeling with
getVipVn(model, orthoL = TRUE)
. As for the classical VIP, we still have the mean of \(VIP_{pred}^2\) (and of \(VIP_{ortho}^2\)) which, each, equals 1.4.5.3 (Orthogonal) Partial Least Squares Discriminant Analysis: (O)PLS-DA
4.5.3.1 Two classes
When the y response is a factor of 2 levels (character vectors are also allowed), it is internally transformed into a vector of values \(\in \{0,1\}\) encoding the classes. The vector is centered and unit-variance scaled, and the (O)PLS analysis is performed.
Brereton and Lloyd (2014) have demonstrated that when the sizes of the 2 classes are unbalanced, a bias is introduced in the computation of the decision rule, which penalizes the class with the highest size (Brereton and Lloyd 2014). In this case, an external procedure using resampling (to balance the classes) and taking into account the class sizes should be used for optimal results.
4.5.3.2 Multiclass
In the case of more than 2 levels, the y response is internally transformed into a matrix (each class is encoded by one column of values \(\in \{0,1\}\)). The matrix is centered and unit-variance scaled, and the PLS analysis is performed.
In this so-called PLS2 implementation, the proportions of 0 and 1 in the columns is usually unbalanced (even in the case of balanced size of the classes) and the bias described previously occurs (Brereton and Lloyd 2014). The multiclass PLS-DA results from ropls are therefore indicative only, and we recommend to set an external procedure where each column of the matrix is modeled separately (as described above) and the resulting probabilities are aggregated (see for instance Bylesjo et al. (2006)).