library(knitr) knitr::opts_chunk$set(echo = TRUE)
This package provides a foundation for the PharmacoGx, RadioGx and ToxicoGx packages. It is not intended for standalone use, only as a dependency for the aforementioned software. Its existence allows abstracting generic definitions, method definitions and class structures common to all three of the Gx suite packages.
Load the pacakge:
library(CoreGx) library(Biobase) library(SummarizedExperiment)
The CoreSet
class is intended as a general purpose data structure for storing
multiomic treatment response data. Extensions of this class have been
customized for their respective fields of study. For example, the PharmacoSet
class inherits from the CoreSet
and is specialized for storing and analyzing
drug sensitivity and perturbation experiments on cancer cell lines together with
associated multiomic data for each treated sample. The RadioSet class serves
a role similar to the PharmacoSet with radiation instead of drug treatments.
Finally, the ToxicoSet class is used to store toxicity data for healthy
human and rat hepatocytes along with the associated multiomic profile for each
treatment.
getClass("CoreSet")
The annotation
slot holds the CoreSet name, the original constructor call, and
a range of metadata about the R session in which the constructor was called.
This allows easy comparison of CoreSet
versions across time and ensures the
code used to generate a CoreSet
is well-documented and reproducible.
The molecularProfiles
slot contains a list of SummarizedExperiment
objects
for each multi-omic molecular datatype available for a given experiment. Within
the SummarizedExperiments
are feature and sample annotations for each data
type. We are currently in the process of adopting the MultiAssayExperiment
class instead of a list
for storing molecular profile SummarizedExperiment
s.
However, the list
version of the molecularProfiles
slot is still supported
for backwards compatability.
The sample
slot contains a data.frame
with annotations for samples used in
the molecularProfiles or sensitivity slot. It should at minimum have the
standardized column 'sampleid', with a unique identifier for each sample in the
CoreSet
.
The treatment
slot contains a data.frame
of metadata for treatments applied
to samples in the molecularProfiles
or treatmentResponse
slot. It should at
minimum have the standarized column 'treatmentid', containing a unique
identifier for each treatment in the CoreSet
.
The datasetType
slot contains a character vector indicating the experiment
type the CoreSet
contains. This slot is soft deprecated and may be removed
in future updates.
The treatmentResponse
slot contains a list of raw, curated and meta data for
treatment-response experiments. We are currently in the process of adopting
our new S4-class, the TreamtentResponseExperiment
to store treatment-response
data within a CoreSet
and inheriting classes. However, the old list
format
for sensitivity experiments will continue to be support for backwards
compatability.
The perturbation
slot contains a list of raw, curated and meta data for
perturbation experiments. This slot is soft-deprecated and may be removed
in the future. The reason is that treatment perturbation experiments can be
efficiently stored in the colData
slot of their respective
SummarizedExperiment
objects and thus no longer require their own space within
a CoreSet
.
The curation
slot contains a list of manually curated identifiers
such as standardized cell-line, tissue and treatment names. Inclusion of such
identifiers ensures a consistent nomenclature is used across all datasets
curated into the classes inheriting from the CoreSet
, enabling results from
such datasets to be easily compared to validate results from published studies or
combine them for use in larger meta-analyses. The slot contains a list of
data.frame
s, one for each entity, and should at minimum include a mapping from
curated identifiers used throughout the object to those used in the original
dataset publication.
The CoreSet
class provides a set of standardized accessor methods which
simplify curation, annotation, and retrieval of data associated with a specfic
treatment response experiment. All accessors are implemented as generics to
allow new methods to be defined on classes inheriting from the CoreSet
.
methods(class="CoreSet")
We have provided a sample CoreSet
(cSet) in this package. In the below code
we load the example cSet and demonstrate a few of the accessor methods.
data(clevelandSmall_cSet)
clevelandSmall_cSet
Access a specific molecular profiles:
mProf <- molecularProfiles(clevelandSmall_cSet, "rna") mProf[seq_len(5), seq_len(5)]
Access cell-line metadata:
cInfo <- sampleInfo(clevelandSmall_cSet) cInfo[seq_len(5), seq_len(5)]
Access treatment-response data:
sensProf <- sensitivityProfiles(clevelandSmall_cSet) sensProf[seq_len(5), seq_len(5)]
For more information about the accessor methods available for the CoreSet
class please see the class?CoreSet
help page.
Given that the CoreSet class is intended for extension, we will show some examples of how to define a new class based on it and implement new methods for the generics provided for the CoreSet class.
Here we will define a new class, the DemoSet
, with an additional slot, the
demoSlot
. We will then view the available methods for this class as well as
define new S4 methods on it.
DemoSet <- setClass("DemoSet", representation(demoSlot="character"), contains="CoreSet") getClass("DemoSet")
Here we can see the class extending CoreSet
has all of the same slots as the
original CoreSet
, plus the new slot we defined: demoSlot
.
We can see which methods are available for this new class.
methods(class="DemoSet")
We see that all the accessors defined for the CoreSet
are also defined for the
inheriting DemoSet
. These methods all assume the inherit slots have the same
structure as the CoreSet
. If this is not true, for example, if molecularProfiles
holds ExpressionSet
s instead of SummarizedExperiment
s, we can redefine
existing methods as follows:
clevelandSmall_dSet <- DemoSet(clevelandSmall_cSet) class(clevelandSmall_dSet@molecularProfiles[['rna']]) expressionSets <- lapply(molecularProfilesSlot(clevelandSmall_dSet), FUN=as, 'ExpressionSet') molecularProfilesSlot(clevelandSmall_dSet) <- expressionSets # Now this will error tryCatch({molecularProfiles(clevelandSmall_dSet, 'rna')}, error=function(e) print(paste("Error: ", e$message)))
Since we changed the data in the molecularProfiles
slot of the DemoSet
,
the original method from CoreGx
no longer works. Thus we get an error when
trying to access that slot. To fix this we will need to set a new S4 method
for the molecularProfiles generic function defined in CoreGx
.
setMethod(molecularProfiles, signature("DemoSet"), function(object, mDataType) { pData(object@molecularProfiles[[mDataType]]) })
This new method is now called whenever we use the molecularProfiles
method
on a DemoSet
. Since the new method uses ExpressionSet
accessor methods
instead of SummarizedExperiment
accessor methods, we now expect to be able
to access the data in our modified slot.
# Now we test our new method mProf <- molecularProfiles(clevelandSmall_dSet, 'rna') head(mProf)[seq_len(5), seq_len(5)]
We can see our new method works! In order to finish updating the methods for our new class, we would have to redefine all the methods which access the modified slot.
However, additional work needs to be done to define accessors for the new
demoSlot
. Since no generics are available in CoreGx to access this slot,
we need to first define a generic, then implement methods which dispatch on
the 'DemoSet' class to retrieve data in the slot.
# Define generic for setter method setGeneric('demoSlot<-', function(object, value) standardGeneric('demoSlot<-')) # Define a setter method setReplaceMethod('demoSlot', signature(object='DemoSet', value="character"), function(object, value) { object@demoSlot <- value return(object) }) # Lets add something to our demoSlot demoSlot(clevelandSmall_dSet) <- c("This", "is", "the", "demoSlot")
# Define generic for getter method setGeneric('demoSlot', function(object, ...) standardGeneric("demoSlot")) # Define a getter method setMethod("demoSlot", signature("DemoSet"), function(object) { paste(object@demoSlot, collapse=" ") }) # Test our getter method demoSlot(clevelandSmall_dSet)
Now you should have all the knowledge you need to extend the CoreSet class for use in other treatment-response experiments!
For more information about this package and the possibility of collaborating on its extension please contact benjamin.haibe.kains@utoronto.ca.
sessionInfo()
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