FindIntegrationAnchors {Seurat} | R Documentation |
Find integration anchors
Description
Find a set of anchors between a list of Seurat
objects.
These anchors can later be used to integrate the objects using the
IntegrateData
function.
Usage
FindIntegrationAnchors(
object.list = NULL,
assay = NULL,
reference = NULL,
anchor.features = 2000,
scale = TRUE,
normalization.method = c("LogNormalize", "SCT"),
sct.clip.range = NULL,
reduction = c("cca", "rpca", "jpca", "rlsi"),
l2.norm = TRUE,
dims = 1:30,
k.anchor = 5,
k.filter = 200,
k.score = 30,
max.features = 200,
nn.method = "annoy",
n.trees = 50,
eps = 0,
verbose = TRUE
)
Arguments
object.list |
A list of |
assay |
A vector of assay names specifying which assay to use when constructing anchors. If NULL, the current default assay for each object is used. |
reference |
A vector specifying the object/s to be used as a reference
during integration. If NULL (default), all pairwise anchors are found (no
reference/s). If not NULL, the corresponding objects in |
anchor.features |
Can be either:
|
scale |
Whether or not to scale the features provided. Only set to FALSE if you have previously scaled the features you want to use for each object in the object.list |
normalization.method |
Name of normalization method used: LogNormalize or SCT |
sct.clip.range |
Numeric of length two specifying the min and max values the Pearson residual will be clipped to |
reduction |
Dimensional reduction to perform when finding anchors. Can be one of:
|
l2.norm |
Perform L2 normalization on the CCA cell embeddings after dimensional reduction |
dims |
Which dimensions to use from the CCA to specify the neighbor search space |
k.anchor |
How many neighbors (k) to use when picking anchors |
k.filter |
How many neighbors (k) to use when filtering anchors |
k.score |
How many neighbors (k) to use when scoring anchors |
max.features |
The maximum number of features to use when specifying the neighborhood search space in the anchor filtering |
nn.method |
Method for nearest neighbor finding. Options include: rann, annoy |
n.trees |
More trees gives higher precision when using annoy approximate nearest neighbor search |
eps |
Error bound on the neighbor finding algorithm (from RANN/Annoy) |
verbose |
Print progress bars and output |
Details
The main steps of this procedure are outlined below. For a more detailed description of the methodology, please see Stuart, Butler, et al Cell 2019: doi:10.1016/j.cell.2019.05.031; doi:10.1101/460147
First, determine anchor.features if not explicitly specified using
SelectIntegrationFeatures
. Then for all pairwise combinations
of reference and query datasets:
Perform dimensional reduction on the dataset pair as specified via the
reduction
parameter. Ifl2.norm
is set toTRUE
, perform L2 normalization of the embedding vectors.Identify anchors - pairs of cells from each dataset that are contained within each other's neighborhoods (also known as mutual nearest neighbors).
Filter low confidence anchors to ensure anchors in the low dimension space are in broad agreement with the high dimensional measurements. This is done by looking at the neighbors of each query cell in the reference dataset using
max.features
to define this space. If the reference cell isn't found within the firstk.filter
neighbors, remove the anchor.Assign each remaining anchor a score. For each anchor cell, determine the nearest
k.score
anchors within its own dataset and within its pair's dataset. Based on these neighborhoods, construct an overall neighbor graph and then compute the shared neighbor overlap between anchor and query cells (analogous to an SNN graph). We use the 0.01 and 0.90 quantiles on these scores to dampen outlier effects and rescale to range between 0-1.
Value
Returns an AnchorSet
object that can be used as input to
IntegrateData
.
References
Stuart T, Butler A, et al. Comprehensive Integration of Single-Cell Data. Cell. 2019;177:1888-1902 doi:10.1016/j.cell.2019.05.031
Examples
## Not run:
# to install the SeuratData package see https://github.com/satijalab/seurat-data
library(SeuratData)
data("panc8")
# panc8 is a merged Seurat object containing 8 separate pancreas datasets
# split the object by dataset
pancreas.list <- SplitObject(panc8, split.by = "tech")
# perform standard preprocessing on each object
for (i in 1:length(pancreas.list)) {
pancreas.list[[i]] <- NormalizeData(pancreas.list[[i]], verbose = FALSE)
pancreas.list[[i]] <- FindVariableFeatures(
pancreas.list[[i]], selection.method = "vst",
nfeatures = 2000, verbose = FALSE
)
}
# find anchors
anchors <- FindIntegrationAnchors(object.list = pancreas.list)
# integrate data
integrated <- IntegrateData(anchorset = anchors)
## End(Not run)