SpatialDDLS-class {SpatialDDLS} | R Documentation |
The SpatialDDLS Class
Description
The SpatialDDLS
object is the core of the
SpatialDDLS package. This object stores different intermediate data
needed for the construction of new deconvolution models, the spatial
transcriptomics profiles to be deconvoluted, and the predicted cell type
proportions.
Details
This object uses other classes to store different types of data generated during the workflow:
-
SingleCellExperiment
class for single-cell RNA-Seq data storage, using sparse matrix from the Matrix package (dgCMatrix
class) orHDF5Array
class in case of using HDF5 files as back-end (see below for more information). -
SpatialExperiment
class for spatial transcriptomics data storage. -
ZinbModel
class with estimated parameters for the simulation of new single-cell profiles. -
SummarizedExperiment
class for simulated mixed transcriptional profiles storage. -
PropCellTypes
class for composition cell type matrices. See?PropCellTypes
for details. -
DeconvDLModel
class to store information related to deep neural network models. See?DeconvDLModel
for details.
In order to provide a way to work with large amounts of data in RAM-constrained machines, we provide the possibility of using HDF5 files as back-end to store count matrices of both real and simulated single-cell profiles by using the HDF5Array and DelayedArray classes from the homonymous packages.
Slots
single.cell.real
Real single-cell data stored in a
SingleCellExperiment
object. The count matrix is stored either asdgCMatrix
orHDF5Array
objects.spatial.experiments
List of
SpatialExperiment
objects to be deconvoluted.zinb.params
ZinbModel
object with estimated parameters for the simulation of new single-cell expression profiles.single.cell.simul
Simulated single-cell expression profiles using the ZINB-WaVE model.
prob.cell.types
PropCellTypes
class with cell composition matrices built for the simulation of mixed transcriptional profiles with known cell composition.mixed.profiles
List of simulated train and test mixed transcriptional profiles. Each entry is a
SummarizedExperiment
object. Count matrices can be stored asHDF5Array
objects using HDF5 files as back-end in case of RAM limitations.trained.model
DeconvDLModel
object with information related to the deconvolution model. See?DeconvDLModel
for more details.deconv.spots
Deconvolution results. It consists of a list where each element corresponds to the results for each
SpatialExperiment
object contained in thespatial.experiments
slot.project
Name of the project.
version
Version of SpatialDDLS this object was built under.