This vignette is a condensed version of the documentation pages on the Cicero website. Please check out the website for more details.

Introduction:

The main purpose of Cicero is to use single-cell chromatin accessibility data to predict regions of the genome that are more likely to be in physical proximity in the nucleus. This can be used to identify putative enhancer-promoter pairs, and to get a sense of the overall stucture of the cis-architecture of a genomic region.

Because of the sparsity of single-cell data, cells must be aggregated by similarity to allow robust correction for various technical factors in the data.

Ultimately, Cicero provides a “Cicero co-accessibility” score between -1 and 1 between each pair of accessible peaks within a user defined distance where a higher score indicates higher co-accessibility.

In addition, the Cicero package provides an extension toolkit for analyzing single-cell ATAC-seq experiments using the framework provided by the single-cell RNA-seq analysis software, Monocle. This vignette provides an overview of a single-cell ATAC-Seq analysis workflow with Cicero. For further information and more options, please see the manual pages for the Cicero R package, the Cicero website and our publications.

Cicero can help you perform two main types of analysis:

Installing Cicero

  1. Download the package from Bioconductor.
if (!requireNamespace("BiocManager", quietly = TRUE))
    install.packages("BiocManager")
 BiocManager::install("cicero")

Or install the development version of the package from Github.

BiocManager::install(cole-trapnell-lab/cicero)
  1. Load the package into R session.
 library(cicero)

Constructing cis-regulatory networks

Running Cicero

The CellDataSet class

Cicero holds data in objects of the CellDataSet (CDS) class. The class is derived from the Bioconductor ExpressionSet class, which provides a common interface familiar to those who have analyzed microarray experiments with Bioconductor. Monocle provides detailed documentation about how to generate an input CDS here.

To modify the CDS object to hold chromatin accessibility rather than expression data, Cicero uses peaks as its feature data fData rather than genes or transcripts. Specifically, many Cicero functions require peak information in the form chr1_10390134_10391134. For example, an input fData table might look like this:

  site_name chromosome bp1 bp2
chr10_100002625_100002940 chr10_100002625_100002940 10 100002625 100002940
chr10_100006458_100007593 chr10_100006458_100007593 10 100006458 100007593
chr10_100011280_100011780 chr10_100011280_100011780 10 100011280 100011780
chr10_100013372_100013596 chr10_100013372_100013596 10 100013372 100013596
chr10_100015079_100015428 chr10_100015079_100015428 10 100015079 100015428

The Cicero package includes a small dataset called cicero_data as an example.

data(cicero_data)

For convenience, Cicero includes a function called make_atac_cds. This function takes as input a data.frame or a path to a file in a sparse matrix format. Specifically, this file should be a tab-delimited text file with three columns. The first column is the peak coordinates in the form “chr10_100013372_100013596”, the second column is the cell name, and the third column is an integer that represents the number of reads from that cell overlapping that peak. The file should not have a header line.

For example:

     
chr10_100002625_100002940 cell1 1
chr10_100006458_100007593 cell2 2
chr10_100006458_100007593 cell3 1
chr10_100013372_100013596 cell2 1
chr10_100015079_100015428 cell4 3

The output of make_atac_cds is a valid CDS object ready to be input into downstream Cicero functions.

input_cds <- make_atac_cds(cicero_data, binarize = TRUE)

Create a Cicero CDS

Because single-cell chromatin accessibility data is extremely sparse, accurate estimation of co-accessibility scores requires us to aggregate similar cells to create more dense count data. Cicero does this using a k-nearest-neighbors approach which creates overlapping sets of cells. Cicero constructs these sets based on a reduced dimension coordinate map of cell similarity, for example, from a tSNE or DDRTree map.

You can use any dimensionality reduction method to base your aggregated CDS on. We will show you how to create two versions, tSNE and DDRTree (below). Both of these dimensionality reduction methods are available from Monocle (and loaded by Cicero).

Once you have your reduced dimension coordinate map, you can use the function make_cicero_cds to create your aggregated CDS object. The input to make_cicero_cds is your input CDS object, and your reduced dimension coordinate map. The reduced dimension map reduced_coordinates should be in the form of a data.frame or a matrix where the row names match the cell IDs from the pData table of your CDS. The columns of reduced_coordinates should be the coordinates of the reduced dimension object, for example:

  ddrtree_coord1 ddrtree_coord2
cell1 -0.7084047 -0.7232994
cell2 -4.4767964 0.8237284
cell3 1.4870098 -0.4723493

Here is an example of both dimensionality reduction and creation of a Cicero CDS. Using Monocle as a guide, we first find tSNE coordinates for our input_cds:

set.seed(2017)
input_cds <- detectGenes(input_cds)
input_cds <- estimateSizeFactors(input_cds)
input_cds <- reduceDimension(input_cds, max_components = 2, num_dim=6,
                        reduction_method = 'tSNE', norm_method = "none")

For more information on the above code, see the Monocle website section on clustering cells.

Next, we access the tSNE coordinates from the input CDS object where they are stored by Monocle and run make_cicero_cds:

tsne_coords <- t(reducedDimA(input_cds))
row.names(tsne_coords) <- row.names(pData(input_cds))
cicero_cds <- make_cicero_cds(input_cds, reduced_coordinates = tsne_coords)
#> Overlap QC metrics:
#> Cells per bin: 50
#> Maximum shared cells bin-bin: 44
#> Mean shared cells bin-bin: 12.8105263157895
#> Median shared cells bin-bin: 3
#> Warning in make_cicero_cds(input_cds, reduced_coordinates = tsne_coords):
#> On average, more than 10% of cells are shared between paired bins.

Run Cicero

The main function of the Cicero package is to estimate the co-accessiblity of sites in the genome in order to predict cis-regulatory interactions. There are two ways to get this information:

  • run_cicero, get Cicero outputs with all defaults The function run_cicero will call each of the relevant pieces of Cicero code using default values, and calculating best-estimate parameters as it goes. For most users, this will be the best place to start.
  • Call functions separately, for more flexibility For users wanting more flexibility in the parameters that are called, and those that want access to intermediate information, Cicero allows you to call each of the component parts separately. More information about running function separately is available on the package manual pages and on the Cicero website.

The easiest way to get Cicero co-accessibility scores is to run run_cicero. To run run_cicero, you need a cicero CDS object (created above) and a genome coordinates file, which contains the lengths of each of the chromosomes in your organism. The human hg19 coordinates are included with the package and can be accessed with data(“human.hg19.genome”). Here is an example call, continuing with our example data:

data("human.hg19.genome")
sample_genome <- subset(human.hg19.genome, V1 == "chr18")
sample_genome$V2[1] <- 10000000
conns <- run_cicero(cicero_cds, sample_genome, sample_num = 2) # Takes a few minutes to run
#> [1] "Starting Cicero"
#> [1] "Calculating distance_parameter value"
#> [1] "Running models"
#> [1] "Assembling connections"
#> [1] "Done"
head(conns)
#>               Peak1               Peak2   coaccess
#> 2 chr18_10025_10225   chr18_10603_11103  0.8206045
#> 3 chr18_10025_10225   chr18_11604_13986 -0.4051520
#> 4 chr18_10025_10225   chr18_49557_50057 -0.3683652
#> 5 chr18_10025_10225   chr18_50240_50740 -0.3700978
#> 6 chr18_10025_10225 chr18_104385_104585  0.0000000
#> 7 chr18_10025_10225 chr18_111867_112367  0.0000000

Visualizing Cicero Connections

The Cicero package includes a general plotting function for visualizing co-accessibility called plot_connections. This function uses the Gviz framework for plotting genome browser-style plots. We have adapted a function from the Sushi R package for mapping connections. plot_connections has many options, some detailed in the Advanced Visualization section on the Cicero website, but to get a basic plot from your co-accessibility table is quite simple:

data(gene_annotation_sample)
plot_connections(conns, "chr18", 8575097, 8839855, 
                 gene_model = gene_annotation_sample, 
                 coaccess_cutoff = .25, 
                 connection_width = .5, 
                 collapseTranscripts = "longest" )

Comparing Cicero connections to other datasets

Often, it is useful to compare Cicero connections to other datasets with similar kinds of links. For example, you might want to compare the output of Cicero to ChIA-PET ligations. To do this, Cicero includes a function called compare_connections. This function takes as input two data frames of connection pairs, conns1 and conns2, and returns a logical vector of which connections from conns1 are found in conns2. The comparison in this function is conducted using the GenomicRanges package, and uses the max_gap argument from that package to allow slop in the comparisons.

For example, if we wanted to compare our Cicero predictions to a set of (made-up) ChIA-PET connections, we could run:

chia_conns <-  data.frame(Peak1 = c("chr18_10000_10200", "chr18_10000_10200", 
                                    "chr18_49500_49600"), 
                          Peak2 = c("chr18_10600_10700", "chr18_111700_111800", 
                                    "chr18_10600_10700"))

conns$in_chia <- compare_connections(conns, chia_conns)

You may find that this overlap is too strict when comparing completely distinct datasets. Looking carefully, the 2nd line of the ChIA-PET data matches fairly closely to the last line shown of conns. The difference is only ~67 base pairs, which could be a matter of peak-calling. This is where the max_gap parameter can be useful:

conns$in_chia_100 <- compare_connections(conns, chia_conns, maxgap=100)

head(conns)
#>               Peak1               Peak2   coaccess in_chia in_chia_100
#> 2 chr18_10025_10225   chr18_10603_11103  0.8206045    TRUE        TRUE
#> 3 chr18_10025_10225   chr18_11604_13986 -0.4051520   FALSE       FALSE
#> 4 chr18_10025_10225   chr18_49557_50057 -0.3683652   FALSE       FALSE
#> 5 chr18_10025_10225   chr18_50240_50740 -0.3700978   FALSE       FALSE
#> 6 chr18_10025_10225 chr18_104385_104585  0.0000000   FALSE       FALSE
#> 7 chr18_10025_10225 chr18_111867_112367  0.0000000   FALSE        TRUE

In addition, Cicero’s plotting function has a way to compare datasets visually. To do this, use the comparison_track argument. The comparison data frame must include a third columns beyond the first two peak columns called “coaccess”. This is how the plotting function determines the height of the plotted connections. This could be a quantitative measure, like the number of ligations in ChIA-PET, or simply a column of 1s. More info on plotting options in manual pages ?plot_connections and in the Advanced Visualization section of the Cicero website.

# Add a column of 1s called "coaccess"
chia_conns <-  data.frame(Peak1 = c("chr18_10000_10200", "chr18_10000_10200", 
                                    "chr18_49500_49600"), 
                          Peak2 = c("chr18_10600_10700", "chr18_111700_111800", 
                                    "chr18_10600_10700"),
                          coaccess = c(1, 1, 1))

plot_connections(conns, "chr18", 10000, 112367, 
                 gene_model = gene_annotation_sample, 
                 coaccess_cutoff = 0,
                 connection_width = .5,
                 comparison_track = chia_conns,
                 include_axis_track = FALSE,
                 collapseTranscripts = "longest") 

Finding Cis-Coaccessibility Networks (CCANS)

In addition to pairwise co-accessibility scores, Cicero also has a function to find Cis-Co-accessibility Networks (CCANs), which are modules of sites that are highly co-accessible with one another. We use the Louvain community detection algorithm (Blondel et al., 2008) to find clusters of sites that tend to be co-accessible. The function generate_ccans takes as input a connection data frame and outputs a data frame with CCAN assignments for each input peak. Sites not included in the output data frame were not assigned a CCAN.

The function generate_ccans has one optional input called coaccess_cutoff_override. When coaccess_cutoff_override is NULL, the function will determine and report an appropriate co-accessibility score cutoff value for CCAN generation based on the number of overall CCANs at varying cutoffs. You can also set coaccess_cutoff_override to be a numeric between 0 and 1, to override the cutoff-finding part of the function. This option is useful if you feel that the cutoff found automatically was too strict or loose, or for speed if you are rerunning the code and know what the cutoff will be, since the cutoff finding procedure can be slow.

CCAN_assigns <- generate_ccans(conns)
#> [1] "Coaccessibility cutoff used: 0.4"

head(CCAN_assigns)
#>                                    Peak CCAN
#> chr18_10025_10225     chr18_10025_10225    1
#> chr18_10603_11103     chr18_10603_11103    1
#> chr18_11604_13986     chr18_11604_13986    2
#> chr18_49557_50057     chr18_49557_50057    2
#> chr18_50240_50740     chr18_50240_50740    2
#> chr18_157883_158536 chr18_157883_158536    2

Cicero gene activity scores

We have found that often, accessibility at promoters is a poor predictor of gene expression. However, using Cicero links, we are able to get a better sense of the overall accessibility of a promoter and it’s associated distal sites. This combined score of regional accessibility has a better concordance with gene expression. We call this score the Cicero gene activity score, and it is calculated using two functions.

The initial function is called build_gene_activity_matrix. This function takes an input CDS and a Cicero connection list, and outputs an unnormalized table of gene activity scores. IMPORTANT: the input CDS must have a column in the fData table called “gene” which indicates the gene if that peak is a promoter, and NA if the peak is distal. One way to add this column is demonstrated below.

The output of build_gene_activity_matrix is unnormalized. It must be normalized using a second function called normalize_gene_activities. If you intend to compare gene activities across different datasets of subsets of data, then all gene activity subsets should be normalized together, by passing in a list of unnormalized matrices. If you only wish to normalized one matrix, simply pass it to the function on its own. normalize_gene_activities also requires a named vector of of total accessible sites per cell. This is easily found in the pData table of your CDS, called “num_genes_expressed”. See below for an example.

# Make a subset of the gene annotation column containing just the coordinates 
# and the gene name
gene_annotation_sub <- gene_annotation_sample[,c(1:3, 8)]

# Rename the gene symbol column to "gene"
names(gene_annotation_sub)[4] <- "gene"

input_cds <- annotate_cds_by_site(input_cds, gene_annotation_sub)

head(fData(input_cds))
#>                               site_name chr    bp1    bp2
#> chr18_10025_10225     chr18_10025_10225  18  10025  10225
#> chr18_10603_11103     chr18_10603_11103  18  10603  11103
#> chr18_11604_13986     chr18_11604_13986  18  11604  13986
#> chr18_49557_50057     chr18_49557_50057  18  49557  50057
#> chr18_50240_50740     chr18_50240_50740  18  50240  50740
#> chr18_104385_104585 chr18_104385_104585  18 104385 104585
#>                     num_cells_expressed overlap          gene
#> chr18_10025_10225                     5      NA          <NA>
#> chr18_10603_11103                     1       1    AP005530.1
#> chr18_11604_13986                     9     203    AP005530.1
#> chr18_49557_50057                     2     331 RP11-683L23.1
#> chr18_50240_50740                     2     129 RP11-683L23.1
#> chr18_104385_104585                   1      NA          <NA>

# generate unnormalized gene activity matrix
unnorm_ga <- build_gene_activity_matrix(input_cds, conns)

# make a list of num_genes_expressed
num_genes <- pData(input_cds)$num_genes_expressed
names(num_genes) <- row.names(pData(input_cds))

# normalize
cicero_gene_activities <- normalize_gene_activities(unnorm_ga, num_genes)

# if you had two datasets to normalize, you would pass both:
# num_genes should then include all cells from both sets
unnorm_ga2 <- unnorm_ga
cicero_gene_activities <- normalize_gene_activities(list(unnorm_ga, unnorm_ga2), num_genes)

Single-cell accessibility trajectories

The second major function of the Cicero package is to extend Monocle 2 for use with single-cell accessibility data. The main obstacle to overcome with chromatin accessibility data is the sparsity, so most of the extensions and methods are designed to address that.

Constructing trajectories with accessibility data

We strongly recommend that you consult the Monocle website, especially this section prior to reading about Cicero’s extension of the Monocle analysis described. Briefly, Monocle infers pseudotime trajectories in three steps:

  1. Choosing sites that define progress
  2. Reducing the dimensionality of the data
  3. Ordering cells in pseudotime

We will describe how each piece is modified for use with sparse single-cell chromatin accessibility data.

Aggregation: the primary method for addressing sparsity

The primary way that the Cicero package deals with the sparsity of single-cell chromatin accessibility data is through aggregation. Aggregating the counts of either single cells or single peaks allows us to produce a “consensus” count matrix, reducing noise and allowing us to move out of the binary regime. Under this grouping, the number of cells in which a particular site is accessible can be modeled with a binomial distribution or, for sufficiently large groups, the corresponding Gaussian approximation. Modeling grouped accessibility counts as normally distributed allows Cicero to easily adjust them for arbitrary technical covariates by simply fitting a linear model and taking the residuals with respect to it as the adjusted accessibility score for each group of cells. We demonstrate how to apply this grouping practically below.

aggregate_nearby_peaks

The primary aggregation used for trajectory reconstruction is between nearby peaks. This keeps single cells separate while aggregating regions of the genome and looking for chromatin accessibility within them. The function aggregate_nearby_peaks finds sites within a certain distance of each other and aggregates them together by summing their counts. Depending on the density of your data, you may want to try different distance parameters. In published work we have used 1,000 and 10,000.

data("cicero_data")
input_cds <- make_atac_cds(cicero_data)

# Add some cell meta-data
data("cell_data")
pData(input_cds) <- cbind(pData(input_cds), cell_data[row.names(pData(input_cds)),])
pData(input_cds)$cell <- NULL

agg_cds <- aggregate_nearby_peaks(input_cds, distance = 10000)
agg_cds <- detectGenes(agg_cds)
agg_cds <- estimateSizeFactors(agg_cds)
agg_cds <- estimateDispersions(agg_cds)
#> Removing 37 outliers

Choose sites for dimensionality reduction

Choosing sites that define progress

There are several options for choosing the sites to use during dimensionality reduction. Monocle has a discussion about the options here. Any of these options could be used with your new aggregated CDS, depending on the information you have a available in your dataset. Here, we will show two examples:

Choose sites by differential analysis

If your data has defined beginning and end points, you can determine which sites define progress by a differential accessibility test. We use Monocle’s differentialGeneTest function looking for sites that are different in the timepoint groups.

# This takes a few minutes to run
diff_timepoint <- differentialGeneTest(agg_cds,
                      fullModelFormulaStr="~timepoint + num_genes_expressed")

# We chose a very high q-value cutoff because there are
# so few sites in the sample dataset, in general a q-value
# cutoff in the range of 0.01 to 0.1 would be appropriate
ordering_sites <- row.names(subset(diff_timepoint, qval < .5))
length(ordering_sites)
#> [1] 255

Choose sites by dpFeature

Alternatively, you can choose sites for dimensionality reduction by using Monocle’s dpFeature method. dpFeature chooses sites based on how they differ among clusters of cells. Here, we give some example code reproduced from Monocle, for more information, see the Monocle description.

plot_pc_variance_explained(agg_cds, return_all = FALSE) #Choose 2 PCs
agg_cds <- reduceDimension(agg_cds,
                              max_components = 2,
                              norm_method = 'log',
                              num_dim = 2,
                              reduction_method = 'tSNE',
                              verbose = TRUE)

agg_cds <- clusterCells(agg_cds, verbose = FALSE)

plot_cell_clusters(agg_cds, color_by = 'as.factor(Cluster)') + theme(text = element_text(size=8))
clustering_DA_sites <- differentialGeneTest(agg_cds[1:10,], #Subset for example only
                                             fullModelFormulaStr = '~Cluster')

# Not run because using Option 1 to continue
# ordering_sites <-
#  row.names(clustering_DA_sites)[order(clustering_DA_sites$qval)][1:1000]

Reduce the dimensionality of the data and order cells

However you choose your ordering sites, the first step of dimensionality reduction is to use setOrderingFilter to mark the sites you want to use for dimesionality reduction. In the following figures, we are using the ordering_sites from “Choose sites by differential analysis” above.

agg_cds <- setOrderingFilter(agg_cds, ordering_sites)

Next, we use DDRTree to reduce dimensionality and then order the cells along the trajectory. Importantly, we use num_genes_expressed in our residual model formula to account for overall assay efficiency.

agg_cds <- reduceDimension(agg_cds, max_components = 2,
          residualModelFormulaStr="~num_genes_expressed",
          reduction_method = 'DDRTree')
agg_cds <- orderCells(agg_cds)

plot_cell_trajectory(agg_cds, color_by = "timepoint")

Once you have a cell trajectory, you need to make sure that pseudotime proceeds how you expect. In our example, we want pseudotime to start where most of the time 0 cells are located and proceed towards the later timepoints. Further information on this can be found here on the Monocle website. We first color our trajectory plot by State, which is how Monocle assigns segments of the tree.

plot_cell_trajectory(agg_cds, color_by = "State")

From this plot, we can see that the beginning of pseudotime should be from state 4. We now reorder cells setting the root state to 4. We can then check that the ordering makes sense by coloring the plot by Pseudotime.

agg_cds <- orderCells(agg_cds, root_state = 4)
plot_cell_trajectory(agg_cds, color_by = "Pseudotime")

Now that we have Pseudotime values for each cell (pData(agg_cds)$Pseudotime), we need to assign these values back to our original CDS object. In addition, we will assign the State information back to the original CDS.

pData(input_cds)$Pseudotime <- pData(agg_cds)[colnames(input_cds),]$Pseudotime
pData(input_cds)$State <- pData(agg_cds)[colnames(input_cds),]$State

Differential Accessibility Analysis

Once you have your cells ordered in pseudotime, you can ask where in the genome chromatin accessibility is changing across time. If you know of specific sites that are important to your system, you may want to visualize the accessibility at those sites across pseudotime.

Visualizing accessibility across pseudotime

For simplicity, we will exclude the branch in our trajectory to make our trajectory linear.

input_cds_lin <- input_cds[,row.names(subset(pData(input_cds), State  != 5))]

plot_accessibility_in_pseudotime(input_cds_lin[c("chr18_38156577_38158261", 
                                                 "chr18_48373358_48374180", 
                                                 "chr18_60457956_60459080")])

Running differentialGeneTest with single-cell chromatin accessibility data

In the previous section, we used aggregation of sites to discover cell-level information (cell pseudotime). In this section, we are interested in a site-level statistic (whether a site is changing in pseudotime), so we will aggregate similar cells. To do this, Cicero has a useful function called aggregate_by_cell_bin.

aggregate_by_cell_bin

We use the function aggregate_by_cell_bin to aggregate our input CDS object by a column in the pData table. In this example, we will assign cells to bins by cutting the pseudotime trajectory into 10 parts.

pData(input_cds_lin)$cell_subtype <- cut(pData(input_cds_lin)$Pseudotime, 10)
binned_input_lin <- aggregate_by_cell_bin(input_cds_lin, "cell_subtype")
#> Removing 175 outliers

We are now ready to run Monocle’s differentialGeneTest function to find sites that are differentially accessible across pseudotime. In this example, we include num_genes_expressed as a covariate to subtract its effect.

diff_test_res <- differentialGeneTest(binned_input_lin[1:10,], #Subset for example only
    fullModelFormulaStr="~sm.ns(Pseudotime, df=3) + sm.ns(num_genes_expressed, df=3)",
    reducedModelFormulaStr="~sm.ns(num_genes_expressed, df=3)", cores=1)

head(diff_test_res)
#>                         status           family       pval      qval
#> chr18_10006196_10006822     OK negbinomial.size 0.51445087 0.9054161
#> chr18_10010479_10011360     OK negbinomial.size 0.93065072 1.0000000
#> chr18_10015203_10015819     OK negbinomial.size 0.01244983 0.1244983
#> chr18_10015940_10017274     OK negbinomial.size 0.44001906 0.9054161
#> chr18_10025_10225           OK negbinomial.size 0.54324964 0.9054161
#> chr18_10032281_10032988     OK negbinomial.size 0.02641502 0.1320751
#>                                       site_name num_cells_expressed
#> chr18_10006196_10006822 chr18_10006196_10006822                   4
#> chr18_10010479_10011360 chr18_10010479_10011360                   7
#> chr18_10015203_10015819 chr18_10015203_10015819                   4
#> chr18_10015940_10017274 chr18_10015940_10017274                   6
#> chr18_10025_10225             chr18_10025_10225                   3
#> chr18_10032281_10032988 chr18_10032281_10032988                   3
#>                         use_for_ordering
#> chr18_10006196_10006822            FALSE
#> chr18_10010479_10011360            FALSE
#> chr18_10015203_10015819            FALSE
#> chr18_10015940_10017274            FALSE
#> chr18_10025_10225                  FALSE
#> chr18_10032281_10032988            FALSE

References

Blondel, V.D., Guillaume, J.-L., Lambiotte, R., and Lefebvre, E. (2008). Fast unfolding of communities in large networks.

Dekker, J., Marti-Renom, M.A., and Mirny, L.A. (2013). Exploring the three-dimensional organization of genomes: interpreting chromatin interaction data. Nat. Rev. Genet. 14, 390–403.

Sanborn, A.L., Rao, S.S.P., Huang, S.-C., Durand, N.C., Huntley, M.H., Jewett, A.I., Bochkov, I.D., Chinnappan, D., Cutkosky, A., Li, J., et al. (2015). Chromatin extrusion explains key features of loop and domain formation in wild-type and engineered genomes. . Proc. Natl. Acad. Sci. U. S. A. 112, E6456–E6465.

Sexton, T., Yaffe, E., Kenigsberg, E., Bantignies, F., Leblanc, B., Hoichman, M., Parrinello, H., Tanay, A., and Cavalli, G. (2012). Three-Dimensional Folding and Functional Organization Principles of the Drosophila Genome. . Cell 148:3, 458-472.

Citation

citation("cicero")
#> 
#>   Hannah A. Pliner, Jay Shendure & Cole Trapnell et. al. (2018).
#>   Cicero Predicts cis-Regulatory DNA Interactions from Single-Cell
#>   Chromatin Accessibility Data. Molecular Cell, 71, 858-871.e8.
#> 
#> A BibTeX entry for LaTeX users is
#> 
#>   @Article{,
#>     title = {Cicero Predicts cis-Regulatory DNA Interactions from Single-Cell Chromatin Accessibility Data},
#>     journal = {Molecular Cell},
#>     volume = {71},
#>     number = {5},
#>     pages = {858 - 871.e8},
#>     year = {2018},
#>     issn = {1097-2765},
#>     doi = {https://doi.org/10.1016/j.molcel.2018.06.044},
#>     author = {Hannah A. Pliner and Jonathan S. Packer and José L. McFaline-Figueroa and Darren A. Cusanovich and Riza M. Daza and Delasa Aghamirzaie and Sanjay Srivatsan and Xiaojie Qiu and Dana Jackson and Anna Minkina and Andrew C. Adey and Frank J. Steemers and Jay Shendure and Cole Trapnell},
#>   }

Session Info

sessionInfo()
#> R version 3.5.2 (2018-12-20)
#> Platform: x86_64-pc-linux-gnu (64-bit)
#> Running under: Ubuntu 16.04.5 LTS
#> 
#> Matrix products: default
#> BLAS: /home/biocbuild/bbs-3.8-bioc/R/lib/libRblas.so
#> LAPACK: /home/biocbuild/bbs-3.8-bioc/R/lib/libRlapack.so
#> 
#> locale:
#>  [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C              
#>  [3] LC_TIME=en_US.UTF-8        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       
#> 
#> attached base packages:
#>  [1] grid      splines   stats4    parallel  stats     graphics  grDevices
#>  [8] utils     datasets  methods   base     
#> 
#> other attached packages:
#>  [1] cicero_1.0.15        Gviz_1.26.4          GenomicRanges_1.34.0
#>  [4] GenomeInfoDb_1.18.2  IRanges_2.16.0       S4Vectors_0.20.1    
#>  [7] monocle_2.10.1       DDRTree_0.1.5        irlba_2.3.3         
#> [10] VGAM_1.1-1           ggplot2_3.1.0        Biobase_2.42.0      
#> [13] BiocGenerics_0.28.0  Matrix_1.2-15       
#> 
#> loaded via a namespace (and not attached):
#>   [1] Rtsne_0.15                  colorspace_1.4-0           
#>   [3] biovizBase_1.30.1           htmlTable_1.13.1           
#>   [5] XVector_0.22.0              base64enc_0.1-3            
#>   [7] dichromat_2.0-0             proxy_0.4-22               
#>   [9] rstudioapi_0.9.0            ggrepel_0.8.0              
#>  [11] bit64_0.9-7                 AnnotationDbi_1.44.0       
#>  [13] docopt_0.6.1                knitr_1.21                 
#>  [15] glasso_1.10                 Formula_1.2-3              
#>  [17] Rsamtools_1.34.1            cluster_2.0.7-1            
#>  [19] pheatmap_1.0.12             compiler_3.5.2             
#>  [21] httr_1.4.0                  backports_1.1.3            
#>  [23] assertthat_0.2.0            lazyeval_0.2.1             
#>  [25] limma_3.38.3                acepack_1.4.1              
#>  [27] htmltools_0.3.6             prettyunits_1.0.2          
#>  [29] tools_3.5.2                 igraph_1.2.4               
#>  [31] gtable_0.2.0                glue_1.3.0                 
#>  [33] GenomeInfoDbData_1.2.0      RANN_2.6.1                 
#>  [35] reshape2_1.4.3              dplyr_0.8.0.1              
#>  [37] Rcpp_1.0.0                  slam_0.1-44                
#>  [39] Biostrings_2.50.2           rtracklayer_1.42.1         
#>  [41] xfun_0.4                    stringr_1.4.0              
#>  [43] ensembldb_2.6.6             XML_3.98-1.17              
#>  [45] zlibbioc_1.28.0             scales_1.0.0               
#>  [47] BSgenome_1.50.0             VariantAnnotation_1.28.11  
#>  [49] hms_0.4.2                   ProtGenerics_1.14.0        
#>  [51] SummarizedExperiment_1.12.0 AnnotationFilter_1.6.0     
#>  [53] RColorBrewer_1.1-2          yaml_2.2.0                 
#>  [55] curl_3.3                    memoise_1.1.0              
#>  [57] gridExtra_2.3               biomaRt_2.38.0             
#>  [59] rpart_4.1-13                fastICA_1.2-1              
#>  [61] latticeExtra_0.6-28         stringi_1.3.1              
#>  [63] RSQLite_2.1.1               checkmate_1.9.1            
#>  [65] GenomicFeatures_1.34.3      densityClust_0.3           
#>  [67] BiocParallel_1.16.6         rlang_0.3.1                
#>  [69] pkgconfig_2.0.2             matrixStats_0.54.0         
#>  [71] bitops_1.0-6                qlcMatrix_0.9.7            
#>  [73] evaluate_0.13               lattice_0.20-38            
#>  [75] purrr_0.3.0                 labeling_0.3               
#>  [77] GenomicAlignments_1.18.1    htmlwidgets_1.3            
#>  [79] bit_1.1-14                  tidyselect_0.2.5           
#>  [81] plyr_1.8.4                  magrittr_1.5               
#>  [83] R6_2.4.0                    Hmisc_4.2-0                
#>  [85] combinat_0.0-8              DelayedArray_0.8.0         
#>  [87] DBI_1.0.0                   pillar_1.3.1               
#>  [89] foreign_0.8-71              withr_2.1.2                
#>  [91] survival_2.43-3             RCurl_1.95-4.11            
#>  [93] nnet_7.3-12                 tibble_2.0.1               
#>  [95] crayon_1.3.4                rmarkdown_1.11             
#>  [97] viridis_0.5.1               progress_1.2.0             
#>  [99] data.table_1.12.0           blob_1.1.1                 
#> [101] FNN_1.1.3                   HSMMSingleCell_1.2.0       
#> [103] sparsesvd_0.1-4             digest_0.6.18              
#> [105] munsell_0.5.0               viridisLite_0.3.0