knitr::opts_chunk$set(tidy = FALSE,
                      cache = FALSE,
                      dev = "png",
                      message = FALSE, error = FALSE, warning = FALSE)
library(HiCDCPlus)

Note: if you use HiCDCPlus in published research, please cite:

Sahin, M., Wong, W., Zhan, Y., Van Deyze, K., Koche, R., and Leslie, C. S. (2021) HiC-DC+: systematic 3D interaction calls and differential analysis for Hi-C and HiChIP Nature Communications, 12(3366). 10.1038/s41467-021-23749-x

Installation

To install this package, start R and enter:

if (!requireNamespace("BiocManager", quietly = TRUE))
    install.packages("BiocManager")

BiocManager::install("HiCDCPlus")

If you are reinstalling the package, we recommend erasing the associated file cache for the package. The cache folder location can be obtained by running.

cache <- rappdirs::user_cache_dir(appname="HiCDCPlus")
print(cache)

Standard workflow

Overview {#overview}

HiCDCPlus can take the outputs of the popular Hi-C pre-processing tools such as .hic (from Juicebox), .matrix, and .allValidPairs (from HiC-Pro). It can also be used with HTClist objects (from Bioconductor package HiTC).

In the standard workflow, one first needs to generate genomic features present in the HiCDCPlus model (GC content, mappability, effective length) using the construct_features function (see Creating genomic feature files). This can be either done for uniformly or multiple restriction fragment binned data.

HiCDCPlus stores counts and features in a memory-efficient way using what we name as a gi_list instance(see The gi_list instance). One next feeds the genomic features in the form of a gi_list instance using generate_bintolen_gi_list function. Then, counts can be added to this gi_list instance using dedicated functions for each input Hi-C file format (add_hic_counts, add_hicpro_matrix_counts,add_hicpro_allvalidpairs.counts).

Before modeling, 1D features from the gi_list instance coming from the bintolen file must be expanded to 2D using expand_1D_features function. Different transformations can be applied to combine genomic features derived for each anchor.

At the core of HiCDCPlus is an efficient implementation of the HiC-DC negative binomial count model for normalization and removal of biases (see ?HiCDCPlus). A platform-agnostic parallelizable implementation is also available in the HiCDCPlus_parallel function for efficient interaction calling across chromosomes. The HiCDCPlus (or HiCDCPlus_parallel) function outputs the significance of each interaction (pvalue and FDR adjusted p-value qvalue) along with following estimated from the model: 1. mu: expected interaction frequency estimated from biases, 2. sdev: the standard deviation of expected interaction frequencies.

Once results are obtained, they can be output into text files using gi_list_write function or to a .hic file using the hicdc2hicfunction (where one can pass either raw counts, observed/expected normalized counts, -log10 P-value, -log10 P-adjusted value, or negative binomial Z-score normalized counts: (counts-mu)/sdev to the .hic file

To detect differential significant interactions across conditions, HiCDCPlus also provides a modified implementation of DESeq2 using replicate Hi-C/HiChIP datasets hicdcdiff. This function requires a (1) definition of the experimental setup (see ?hicdcdiff), (2) a filtered set of interactions to consider, as a text file containing columns chr, startI, and startJ (startI<=startJ) and (3) count data per each condition and replicate either as gi_list instances or as output text files generated using the gi_list_write function that can be read as valid gi_list instances using gi_list_read. The hicdcdiff function performs the differential analysis and outputs genomic coordinates of pairs of regions with corresponding logFC difference, P-value and BH adjusted P-value (see the example in Quickstart).

We next demonstrate the standard workflow to detect significant as well as differential interactions.

Quickstart {#quickstart}

In this section we show a complete workflow for identifying significant interactions and differential interactions from Hi-C data across replicate experiments. For HiChIP, the functions used are the same, but the distance thresholds used are slightly reduced (recommended Dmax = 1.5e6).

Finding Significant Interactions from Hi-C/HiChIP

Here, we identify significant interactions from HiC data at 50kb resolution across multiple chromosomes (in the example below, across chromosomes 21 and 22). The following example code chunk assumes that you have downloaded a .hic file from GSE63525 and also downloaded Juicebox command line tools. Example below runs with GSE63525_HMEC_combined.hic and stores the path to it into the variable hicfile_path with features generated for restriction enzyme fragments with the pattern "GATC" in hg19 genome.

hicfile_path<-system.file("extdata", "GSE63525_HMEC_combined_example.hic", package = "HiCDCPlus")
outdir<-tempdir(check=TRUE)
#generate features
construct_features(output_path=paste0(outdir,"/hg19_50kb_GATC"),
                   gen="Hsapiens",gen_ver="hg19",
                   sig="GATC",
                   bin_type="Bins-uniform",
                   binsize=50000,
                   chrs=c("chr21","chr22"))

If you have a multiple enzyme cocktail used to generate Hi-C data, you can specify multiple patterns including "N" as string to this function (e.g., sig=c("GATC","GANTC")). If you want to analyze data binned by multiple restriction enzyme fragments, you can change bin_type to "Bins-RE-sites", and binsize to the number of fragments that you would like to merge as bin (e.g., bin_type="Bins-RE-sites" and binsize=10 means 10 restriction fragment binning).

#generate gi_list instance
gi_list<-generate_bintolen_gi_list(
  bintolen_path=paste0(outdir,"/hg19_50kb_GATC_bintolen.txt.gz"))
#add .hic counts
gi_list<-add_hic_counts(gi_list,hic_path = hicfile_path)

If you have HiC-Pro outputs instead, you can use either add_hicpro_matrix_counts or add_hicpro_allvalidpairs_counts depending on the file format. add_hicpro_matrix_counts function requires .bed output from HiC-Pro matrix generation step, together with count data in .matrix format.

#expand features for modeling
gi_list<-expand_1D_features(gi_list)
#run HiC-DC+ 
set.seed(1010) #HiC-DC downsamples rows for modeling
gi_list<-HiCDCPlus(gi_list) #HiCDCPlus_parallel runs in parallel across ncores
head(gi_list)
#write normalized counts (observed/expected) to a .hic file
hicdc2hic(gi_list,hicfile=paste0(outdir,'/GSE63525_HMEC_combined_result.hic'),
          mode='normcounts',gen_ver='hg19')
#write results to a text file
gi_list_write(gi_list,fname=paste0(outdir,'/GSE63525_HMEC_combined_result.txt.gz'))

HiCDCPlus results can be converted into .hic using hicdc2hic function. Values that should be supplied as "mode" into the hicdc2hic function for the corresponding score stored in the .hic file are: 'pvalue' for -log10 significance p-value, 'qvalue' for -log10 FDR corrected p-value, 'normcounts' for raw counts/expected counts, 'zvalue' for standardized counts (raw counts-expected counts)/modeled standard deviation of expected counts and 'raw' to pass-through raw counts.

.hic files can be further converted into .cool format using hic2cool software and be visualized using HiCExplorer.

Finding Differential Interactions {#diff_int}

Suppose we're interested in finding differential interactions on chr21 and chr22 at 50kb between NSD2 and NTKO/TKO cells given the following .hic files available in GSE131651: GSE131651_NSD2_LOW_arima.hic, GSE131651_NSD2_HIGH_arima.hic, GSE131651_TKOCTCF_new.hic, GSE131651_NTKOCTCF_new.hic. We first find significant interactions in each, and save results to a file:

#generate features
construct_features(output_path=paste0(outdir,"/hg38_50kb_GATC"),
                   gen="Hsapiens",gen_ver="hg38",
                   sig="GATC",bin_type="Bins-uniform",
                   binsize=50000,
                   chrs=c("chr22"))
#add .hic counts
hicfile_paths<-c(
system.file("extdata", "GSE131651_NSD2_LOW_arima_example.hic", package = "HiCDCPlus"),
system.file("extdata", "GSE131651_NSD2_HIGH_arima_example.hic", package = "HiCDCPlus"),
system.file("extdata", "GSE131651_TKOCTCF_new_example.hic", package = "HiCDCPlus"),
system.file("extdata", "GSE131651_NTKOCTCF_new_example.hic", package = "HiCDCPlus"))
indexfile<-data.frame()
for(hicfile_path in hicfile_paths){
output_path<-paste0(outdir,'/',
                    gsub("^(.*[\\/])", "",gsub('.hic','.txt.gz',hicfile_path)))
#generate gi_list instance
gi_list<-generate_bintolen_gi_list(
  bintolen_path=paste0(outdir,"/hg38_50kb_GATC_bintolen.txt.gz"),
  gen="Hsapiens",gen_ver="hg38")
gi_list<-add_hic_counts(gi_list,hic_path = hicfile_path)
#expand features for modeling
gi_list<-expand_1D_features(gi_list)
#run HiC-DC+ on 2 cores
set.seed(1010) #HiC-DC downsamples rows for modeling
gi_list<-HiCDCPlus(gi_list,ssize=0.1)
for (i in seq(length(gi_list))){
indexfile<-unique(rbind(indexfile,
  as.data.frame(gi_list[[i]][gi_list[[i]]$qvalue<=0.05])[c('seqnames1',
                                                           'start1','start2')]))
}
#write results to a text file
gi_list_write(gi_list,fname=output_path)
}
#save index file---union of significants at 50kb
colnames(indexfile)<-c('chr','startI','startJ')
data.table::fwrite(indexfile,
            paste0(outdir,'/GSE131651_analysis_indices.txt.gz'),
            sep='\t',row.names=FALSE,quote=FALSE)

We next get the union set of significant interactions and save it as the index file, and then run hicdcdiff.

#Differential analysis using modified DESeq2 (see ?hicdcdiff)
hicdcdiff(input_paths=list(NSD2=c(paste0(outdir,'/GSE131651_NSD2_LOW_arima_example.txt.gz'),
                 paste0(outdir,'/GSE131651_NSD2_HIGH_arima_example.txt.gz')),
TKO=c(paste0(outdir,'/GSE131651_TKOCTCF_new_example.txt.gz'),
paste0(outdir,'/GSE131651_NTKOCTCF_new_example.txt.gz'))),
filter_file=paste0(outdir,'/GSE131651_analysis_indices.txt.gz'),
output_path=paste0(outdir,'/diff_analysis_example/'),
fitType = 'mean',
chrs = 'chr22',
binsize=50000,
diagnostics=TRUE)
#Check the generated plots as well as DESeq2 results

Suppose you provide multiple conditions in input_paths such as input_paths=list(A="..",B="..",C=".."), then the pairwise comparisons reported by hicdcdiff will be B over A, C over B, C over A.

ICE normalization using HiTC {#ice}

To find TADs, we use ICE normalized Hi-C data. If you use HiC-Pro to process counts, we suggest feeding ICE normalized .matrix files into a gi_list instance.

gi_list<-generate_binned_gi_list(50000,chrs=c("chr21","chr22"))
gi_list<-add_hicpro_matrix_counts(gi_list,absfile_path,matrixfile_path,chrs=c("chr21","chr22")) #add paths to iced absfile and matrix files here

If you have .hic file instead, then you can perform ICE normalization with our HiTC wrapper as follows:

hic_path<-system.file("extdata", "GSE63525_HMEC_combined_example.hic", package = "HiCDCPlus")
gi_list=hic2icenorm_gi_list(hic_path,binsize=50e3,chrs=c('chr22'),Dthreshold=400e3)

You can also output a ICE normalized .hic file to the path gsub(".hic","_icenorm.hic",hic_path) from hic2icenorm_gi_list if you set hic_out=TRUE to your call to this function.

Finding TADs using TopDom {#topdom}

HiCDCPlus converts the gi_list instance with ICE normalized counts into TAD annotations through an implementation of TopDom v0.0.2 (https://github.com/HenrikBengtsson/TopDom) adapted as TopDom. We recommend call TADs with to ICE normalized counts at 50kb resolution with window.size 10 in TopDom.

tads<-gi_list_topdom(gi_list,chrs=c("chr22"),window.size = 10)

Finding A/B compartment using Juicer {#comp}

HiCDCPlus can call Juicer eigenvector function to determine A/B compartments from .hic files. extract_hic_eigenvectors generates text files for each chromosome containing chromosome, start, end and compartment score values that may need to be flipped signs for each chromosome. File paths follow gsub('.hic','__eigenvalues.txt',hicfile).

extract_hic_eigenvectors(
  hicfile=system.file("extdata", "eigenvector_example.hic", package = "HiCDCPlus"),
  mode = "KR",
  binsize = 50e3,
  chrs = "chr22",
  gen = "Hsapiens",
  gen_ver = "hg19",
  mode = "NONE"
)

Creating genomic feature files {#bintolen}

Genomic features can be generated using the construct_features function. This function finds all restriction enzyme cutsites of a given genome and genome version and computes GC content, mappability (if a relevant .bigWig file is provided) and effective fragment length for uniform bin or across specified multiples of restriction enzyme cutsites of given pattern(s).

#generate features
construct_features(output_path=paste0(outdir,"/hg19_50kb_GATC"),
                   gen="Hsapiens",gen_ver="hg19",
                   sig=c("GATC","GANTC"),bin_type="Bins-uniform",
                   binsize=50000,
                   wg_file=NULL, #e.g., 'hg19_wgEncodeCrgMapabilityAlign50mer.bigWig',
                   chrs=c("chr22"))
#read and print
bintolen<-data.table::fread(paste0(outdir,"/hg19_50kb_GATC_bintolen.txt.gz"))
tail(bintolen,20)

The gi_list instance {#gi_list}

HiCDCPlus stores features and count data in a list of InteractionSet objects generated for each chromosome, what we name as a gi_list instance.

A gi_list instance can be initialized through multiple ways. One can generate a uniformly binsized gi_list instance using generate_binned_gi_list. One can also generate a restriction enzyme fragment binning of the genome as a data.frame and ingest it as a gi_list instance (see ?generate_df_gi_list) Third, one can generate some genomic features (GC content, mappability, effective length) and restriction enzyme fragment regions into as a bintolen file (see Creating bintolen files) and generate a gi_list instance from this bintolen file. Finally, one can read a gi_list instance from a file generated by gi_list_write (see ?gi_list_read).

Uniformly binned gi_list instance {#uniform}

One can generate a uniform binsized gi_list instance for a genome using generate_binned_gi_list:

gi_list<-generate_binned_gi_list(binsize=50000,chrs=c('chr22'),
                                 gen="Hsapiens",gen_ver="hg19")
head(gi_list)

Restriction enzyme binned gi_list instance {#re_sites}

One can also generate an restriction enzyme fragment binning (indeed, any arbitrary binning) of the genome containing columns named chr and start as a data.frame (e.g., a data.frame read from a .bed file) and use it to generate a gi_list instance using generate_df_gi_list.

df<-data.frame(chr='chr9',start=c(1,300,7867,103938))
gi_list<-generate_df_gi_list(df)
gi_list

Generating gi_list instance from a bintolen file

One can generate genomic features (gc, mappability, effective length) and restriction enzyme fragment regions as a bintolen file (see Creating bintolen files) first and then generate a gi_list instance from it. This instance will readily store genomic features of the bintolen file.

#generate features
construct_features(output_path=paste0(outdir,"/hg19_50kb_GATC"),
                   gen="Hsapiens",gen_ver="hg19",
                   sig="GATC",bin_type="Bins-uniform",
                   binsize=50000,
            wg_file=NULL, #e.g., 'hg19_wgEncodeCrgMapabilityAlign50mer.bigWig',
                   chrs=c("chr22"))
#generate gi_list instance
gi_list<-generate_bintolen_gi_list(
  bintolen_path=paste0(outdir,"/hg19_50kb_GATC_bintolen.txt.gz"))
head(gi_list)

Using custom features with HiCDCPlus

HiCDCPlus allows modeling with user-defined 1D (genomic features for each bin) and 2D (features belonging to an interaction) features.

Once a gi_list instance is at hand, one can ingest counts (and 2D features) using a sparse matrix format text file containing chr, startI, startJ and <featurename> columns (see ?add_2D_features) for features you would like to add. counts can be ingested this way as well provided you have a text file containing columns named chr, startI and startJ.

df<-data.frame(chr='chr9',start=seq(1e6,10e6,1e6))
gi_list<-generate_df_gi_list(df,Dthreshold=500e3,chrs="chr9")
feats<-data.frame(chr='chr9',
startI=seq(1e6,10e6,1e6),
startJ=seq(1e6,10e6,1e6),
counts=rpois(20,lambda=5))
gi_list[['chr9']]<-add_2D_features(gi_list[['chr9']],feats)
gi_list

One can also ingest 1D features using a sparse matrix format text file containing chr, start and <featurename> (see ?add_1D_features) and broadcast 1D features to 2D for modeling using a user-specified function (see ?expand_1D_features). Ingesting 1D features first and then expanding has a better memory footprint compared to using add_2D_features directly.

df<-data.frame(chr='chr9',start=seq(1e6,10e6,1e6),end=seq(2e6,11e6,1e6))
gi_list<-generate_df_gi_list(df)
feats<-data.frame(chr='chr9',start=seq(1e6,10e6,1e6),gc=runif(10))
gi_list<-add_1D_features(gi_list,feats)
gi_list
mcols(InteractionSet::regions(gi_list[['chr9']]))
gi_list<-expand_1D_features(gi_list)
gi_list

How to get help for HiCDCPlus

Any and all HiCDCPlus questions should be posted to the Bioconductor support site, which serves as a searchable knowledge base of questions and answers:

https://support.bioconductor.org

Posting a question and tagging with "HiCDCPlus" or "HiC-DC+" will automatically send an alert to the package authors to respond on the support site.
You should not email your question to the package authors directly, as we will just reply that the question should be posted to the Bioconductor support site instead.

Session info

sessionInfo()


mervesa/HiCDCPlus documentation built on June 8, 2022, 3:43 a.m.