This vignette comprehensively describes the data model used in the gDRsuite.
gDRcore 1.2.0
This vignette is dedicated to providing an in-depth exploration of the underlying data model employed in the gDR suite, with a focus on the versatile MultiAssayExperiment object – the cornerstone of the gDR ecosystem. The vignette delves into the intricacies of the data model, shedding light on how different components are organized within the MultiAssayExperiment object. As the basic and essential object in the gDR, the MultiAssayExperiment encapsulates the diverse dimensions of drug response data, providing a unified and coherent framework for analysis. Our primary goal is to equip users with a detailed understanding of the gDRsuite data model and its utilization within the MultiAssayExperiment object. Through practical examples and thorough explanations, we aim to demonstrate how gDRcore’s core functions and pipeline facilitate efficient analysis, providing valuable insights into drug response dynamics. More information about the data processing can be found in the gDRcore.
In the gDR suite, the culmination of drug response data is encapsulated in the form of a MultiAssayExperiment object, representing a versatile and cohesive framework for the analysis of diverse experimental scenarios.
The gDR suite accommodates three primary types of experiments within the MultiAssayExperiment object:
single-agent
experiment: This involves the assessment of drug responses to a single agent, providing insights into individual treatment effects.
combination
experiments: This explores the interactions between multiple agents, unraveling the complexities of combined drug treatments and their effects.
co-dilution
experiments: Focused on studying the effects of diluting concentrations of compounds, codilution experiments provide valuable data on the concentration-dependent aspects of drug responses.
Each experiment within the MultiAssayExperiment is represented as a SummarizedExperiment object. This encapsulates the essential components necessary for comprehensive analysis:
assays
: Containing the actual data, assays provide a numerical representation of drug responses and associated experimental measurements. In gDR, assays are represented by BumpyMatrix object.
rowData
: Encompassing information related to features, rowData provides context on the entities being analyzed, such as drugs, compounds, or concentrations. In gDR, rowData are represented by DataFrame
object from S4Vectors
colData
: Describing the experimental conditions, colData captures metadata associated with the cell lines, including tissues, reference division time, and any relevant covariates. In gDR, colData are represented by DataFrame
object from S4Vectors
metadata
: Offering additional information about the experiment, metadata provides a contextual layer to enhance the understanding of the experimental setup.
At its core, the MultiAssayExperiment object is designed to hold a collection of SummarizedExperiment objects, each representing a distinct experiment type within the gDR suite. This simplicity ensures a clean and efficient organization of data, facilitating a user-friendly experience.
To extract specific experiments from the MultiAssayExperiment object, the [[
operator can be used For example, to access the data related to combination experiments, one can use MAE[["combination"]]
, where MAE
represents the MultiAssayExperiment object.
To gain insights into the available experiments within the MultiAssayExperiment object, the MultiAssayExperiment::experiments
function can be used.
The SummarizedExperiment object emerges as a pivotal structure, integrating drug response data with essential metadata. This versatile container plays a central role in the storage of information related to drugs, cell lines, and experimental conditions, providing a comprehensive foundation for nuanced analysis within the gDR.
The SummarizedExperiment object in gDR contains four essential components:
This section encapsulates the drug response data itself, offering a numerical representation of experimental measurements. Whether it involves single-agent studies, combination treatments, or co-dilution experiments, the assays contain crucial data points for analysis. The list of available assays for a given gDR experiment can be obtained using SummarizedExperiment::assayNames
on the SummarizedExperiment object. The extraction of a specific assay
can be done using SummarizedExperiment::assay
function, i.e. SummarizedExperiment::assay(se, "Normalized")
, where se
is the SummarizedExperiment object, and Normalized
is the name of the assay within the experiment.
The gDR experiments contain two sets of assays. One set is for single-agent and co-dilution experiments (five basic assays), and another set is for combinations experiments (five basic assays plus four – combination-specific).
List of assays (combination-specific assays were marked with the asterisk):
All assays are stored as BumpyMatrix objects.
Assays represented by numbers 3-9 additionally contain information about normalization_type
to distinguish different metrics calculated for each normalization type (RelativeViability and GRValues by default).
In gDR BumpyMatrix objects can be easily transformed into the data.table object using gDRutils::convert_se_assay_to_dt
function. This function also includes information from the rowData and colData.
rowData
provides context on the features being analyzed, rowData
is dedicated to information about drugs, compounds, or concentrations with their annotations from the database. Additional perturbations and replicates might be also stored in the rowData
.
rowData
can be extracted from the SummarizedExperiment object using SummarizedExperiment::rowData
function.
colData
represents the experimental cell lines. This includes details about the cell lines and their annotations.
colData
can be extracted from the SummarizedExperiment object using SummarizedExperiment::colData
function.
metadata
offers an extra layer of information about the experiment itself, metadata provides context to enhance comprehension. This may include details about the experimental design, sources of data, or any other relevant information that aids in the interpretation of results.
metadata
information can be extracted using S4Vectors::metadata
function. In gDR object the metadata information is stored as a list.
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