1 Installation

crisprBase can be installed from Bioconductor using the following commands in a fresh R session:

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

BiocManager::install("crisprBase")

2 Introduction

crisprBase provides S4 classes to represent nucleases, and more specifically CRISPR-specific nucleases. It also provides arithmetic functions to extract genomic ranges to help with the design and manipulation of CRISPR guide-RNAs (gRNAs). The classes and functions are designed to work with a broad spectrum of nucleases and applications, including PAM-free CRISPR nucleases and the more general class of restriction enzymes.

3 Nuclease class

The Nuclease class is designed to store minimal information about the recognition sites of general nucleases, such as restriction enzymes. The Nuclease class has 5 fields: nucleaseName, targetType, metadata, motifs and weights. The nucleaseName field is a string specifying a name for the nuclease. The targetType specifies if the nuclease targets “DNA” (deoxyribonucleases) or “RNA” (ribonucleases). The metadata field is a list of arbitrary length to store additional information about the nuclease.

The motifs field is a character vector that specify one of several DNA sequence motifs that are recognized by the nuclease for cleavage (always in the 5’ to 3’ direction). The optional weights field is a numeric vector specifying relative cleavage probabilities corresponding to the motifs specified by motifs. Note that we use DNA to represent motifs irrespectively of the target type for simplicity.

We use the Rebase convention to represent motif sequences (Roberts et al. 2010). For enzymes that cleave within the recognition site, we add the symbol ^ within the recognition sequence to specify the cleavage site, always in the 5’ to 3’ direction. For enzymes that cleave away from the recognition site, we specify the distance of the cleavage site using a (x/y) notation where x represents the number of nucleotides away from the recognition sequence on the original strand, and y represents the number of nucleotides away from the recognition sequence on the reverse strand.

3.1 Examples

The EcoRI enzyme recognizes the palindromic motif GAATTC, and cuts after the first nucleotide, which is specified using the ^ below:

library(crisprBase)

EcoRI <- Nuclease("EcoRI",
                  targetType="DNA",
                  motifs=c("G^AATTC"),
                  metadata=list(description="EcoRI restriction enzyme"))

The HgaI enzyme recognizes the motif GACGC, and cleaves DNA at 5 nucleotides downstream of the recognition sequence on the original strand, and at 10 nucleotides downstream of the recognition sequence on the reverse strand:

HgaI <- Nuclease("HgaI",
                 targetType="DNA",
                 motifs=c("GACGC(5/10)"),
                 metadata=list(description="HgaI restriction enzyme"))

In case the cleavage site was upstream of the recognition sequence, we would instead specify (5/10)GACGC.

Note that any nucleotide letter that is part of the extended IUPAC nucleic acid code can be used to represent recognition motifs. For instance, we use Y and R (pyrimidine and purine, respectively) to specify the possible recognition sequences for PfaAI:

PfaAI <- Nuclease("PfaAI",
                  targetType="DNA",
                  motifs=c("G^GYRCC"),
                  metadata=list(description="PfaAI restriction enzyme"))

3.2 Accessor functions

The accessor function motifs retrieve the motif sequences:

motifs(PfaAI)
## DNAStringSet object of length 1:
##     width seq
## [1]     6 GGYRCC

To expand the motif sequence into all combinations of valid sequences with only A/C/T/G nucleotides, users can use expand=TRUE.

motifs(PfaAI, expand=TRUE)
## DNAStringSet object of length 4:
##     width seq                                               names               
## [1]     6 GGCACC                                            GGYRCC
## [2]     6 GGTACC                                            GGYRCC
## [3]     6 GGCGCC                                            GGYRCC
## [4]     6 GGTGCC                                            GGYRCC
Examples of restriction enzymes

Figure 1: Examples of restriction enzymes

4 CrisprNuclease class

CRISPR nucleases are examples of RNA-guided nucleases. For cleavage, it requires two binding components. For CRISPR nucleases targeting DNA, the nuclease needs to first recognize a constant nucleotide motif in the target DNA called the protospacer adjacent motif (PAM) sequence. Second, the guide-RNA (gRNA), which guides the nuclease to the target sequence, needs to bind to a complementary sequence adjacent to the PAM sequence (protospacer sequence). The latter can be thought of a variable binding motif that can be specified by designing corresponding gRNA sequences. For CRISPR nucleases targeting RNA, the equivalent of the PAM sequence is called the Protospacer Flanking Sequence (PFS). We use the terms PAM and PFS interchangeably as it should be clear from context.

The CrisprNuclease class allows to characterize both binding components by extending the Nuclease class to contain information about the gRNA sequences.The PAM sequence characteristics, and the cleavage distance with respect to the PAM sequence, are specified using the motif nomenclature described in the Nuclease section above.

3 additional fields are required: pam_side, spacer_length and spacer_gap. The pam_side field can only take 2 values, 5prime and 3prime, and specifies on which side the PAM sequence is located with respect to the protospacer sequence. While it would be more appropriate to use the terminology pfs_side for RNA-targeting nucleases, we still use the term pam_side for simplicity.

The spacer_length specifies a default spacer length, and the spacer_gap specifies a distance (in nucleotides) between the PAM (or PFS) sequence and spacer sequence. For most nucleases,spacer_gap=0 as the spacer sequence is located directly next to the PAM/PFS sequence.

We show how we construct a CrisprNuclease object for the commonly-used Cas9 nuclease (Streptococcus pyogenes Cas9):

SpCas9 <- CrisprNuclease("SpCas9",
                         targetType="DNA",
                         pams=c("(3/3)NGG", "(3/3)NAG", "(3/3)NGA"),
                         weights=c(1, 0.2593, 0.0694),
                         metadata=list(description="Wildtype Streptococcus pyogenes Cas9 (SpCas9) nuclease"),
                         pam_side="3prime",
                         spacer_length=20)
SpCas9
## Class: CrisprNuclease
##   Name: SpCas9
##   Target type: DNA
##   Metadata: list of length 1
##   PAMs: NGG, NAG, NGA
##   Weights: 1, 0.2593, 0.0694
##   Spacer length: 20
##   PAM side: 3prime
##     Distance from PAM: 0
##   Prototype protospacers: 5'--SSSSSSSSSSSSSSSSSSSS[NGG]--3', 5'--SSSSSSSSSSSSSSSSSSSS[NAG]--3', 5'--SSSSSSSSSSSSSSSSSSSS[NGA]--3'

Similar to the Nuclease class, we can specify PAM sequences using the extended nucleotide code. SaCas9 serves as a good example:

SaCas9 <- CrisprNuclease("SaCas9",
                         targetType="DNA",
                         pams=c("(3/3)NNGRRT"),
                         metadata=list(description="Wildtype Staphylococcus 
                         aureus Cas9 (SaCas9) nuclease"),
                         pam_side="3prime",
                         spacer_length=21)
SaCas9
## Class: CrisprNuclease
##   Name: SaCas9
##   Target type: DNA
##   Metadata: list of length 1
##   PAMs: NNGRRT
##   Weights: 1
##   Spacer length: 21
##   PAM side: 3prime
##     Distance from PAM: 0
##   Prototype protospacers: 5'--SSSSSSSSSSSSSSSSSSSSS[NNGRRT]--3'

Here is another example where we construct a CrisprNuclease object for the commonly-used Cas12a nuclease (AsCas12a):

AsCas12a <- CrisprNuclease("AsCas12a",
                           targetType="DNA",
                           pams="TTTV(18/23)",
                           metadata=list(description="Wildtype Acidaminococcus
                           Cas12a (AsCas12a) nuclease."),
                           pam_side="5prime",
                           spacer_length=23)
AsCas12a
## Class: CrisprNuclease
##   Name: AsCas12a
##   Target type: DNA
##   Metadata: list of length 1
##   PAMs: TTTV
##   Weights: 1
##   Spacer length: 23
##   PAM side: 5prime
##     Distance from PAM: 0
##   Prototype protospacers: 5'--[TTTV]SSSSSSSSSSSSSSSSSSSSSSS--3'

4.1 CrisprNuclease objects provided in CrisprBase

Several already-constructed crisprNuclease objects are available in crisprBase, see data(package="crisprBase").

5 CRISPR genome arithmetics

5.1 CRISPR terminology

The terms spacer and protospacer are not interchangeable. spacer refers to the sequence used in the gRNA construct to guide the Cas nuclease to the target protospacer sequence in the host genome / transcriptome. The protospacer sequence is adjacent to the PAM sequence / PFS sequence. We use the terminology target sequence to refer to the protospacer and PAM sequence taken together. For DNA-targeting nucleases such as Cas9 and Cas12a, the spacer and protospacer sequences are identical from a nucleotide point of view. For RNA-targeting nucleases such as Cas13d, the spacer and protospacer sequences are the reverse complement of each other.

An gRNA spacer sequence does not always uniquely target the host genome (a given sgRNA spacer can map to multiple protospacers in the genome). However, for a given reference genome, protospacer sequences can be uniquely identified using a combination of 3 attributes:

  • chr: chromosome name
  • strand: forward (+) or reverse (-)
  • pam_site: genomic coordinate of the first nucleotide of the nuclease-specific PAM sequence. For SpCas9, this corresponds to the genomic coordinate of N in the NGG PAM sequence. For AsCas12a, this corresponds to the genomic coordinate of the first T nucleotide in the TTTV PAM sequence. For RNA-targeting nucleases, this corresponds to the first nucleotide of the PFS (we do not use pfs_site for simplicity).
Examples of CRISPR nucleases

Figure 2: Examples of CRISPR nucleases

5.2 Cut site

For convention, we used the nucleotide directly downstream of the DNA cut to represent the cut site nucleotide position. For instance, for SpCas9 (blunt-ended dsDNA break), the cut site occurs at position -3 with respect to the PAM site. For AsCas12a, the 5nt overhang dsDNA break occurs at 18 nucleotides after the PAM sequence on the targeted strand. Therefore the cute site on the forward strand occurs at position 22 with respect to the PAM site, and at position 27 on the reverse strand.

The convenience function cutSites extracts the cut site coordinates relative to the PAM site:

data(SpCas9, package="crisprBase")
data(AsCas12a, package="crisprBase")
cutSites(SpCas9)
## [1] -3
cutSites(SpCas9, strand="-")
## [1] -3
cutSites(AsCas12a)
## [1] 22
cutSites(AsCas12a, strand="-")
## [1] 27

Below is an illustration of how different motif sequences and cut patterns translate into cut site coordinates with respect to a PAM sequence NGG:

Examples of cut site coordinates

Figure 3: Examples of cut site coordinates

5.3 Obtaining spacer and PAM sequences from target sequences

Given a list of target sequences (protospacer + PAM) and a CrisprNuclease object, one can extract protospacer and PAM sequences using the functions extractProtospacerFromTarget and extractPamFromTarget, respectively.

targets <- c("AGGTGCTGATTGTAGTGCTGCGG",
             "AGGTGCTGATTGTAGTGCTGAGG")
extractPamFromTarget(targets, SpCas9)
## [1] "CGG" "AGG"
extractProtospacerFromTarget(targets, SpCas9)
## [1] "AGGTGCTGATTGTAGTGCTG" "AGGTGCTGATTGTAGTGCTG"

5.4 Obtaining genomic coordinates of protospacer sequences using PAM site coordinates

Given a PAM coordinate, there are several functions in crisprBase that allows to get get coordinates of the full PAM sequence, protospacer sequence, and target sequence: getPamRanges, getTargetRanges, and getProtospacerRanges, respectively. The output objects are GRanges:

chr      <- rep("chr7",2)
pam_site <- rep(200,2)
strand   <- c("+", "-")
gr_pam <- getPamRanges(seqnames=chr,
                       pam_site=pam_site,
                       strand=strand,
                       nuclease=SpCas9)
gr_protospacer <- getProtospacerRanges(seqnames=chr,
                                       pam_site=pam_site,
                                       strand=strand,
                                       nuclease=SpCas9)
gr_target <- getTargetRanges(seqnames=chr,
                             pam_site=pam_site,
                             strand=strand,
                             nuclease=SpCas9)
gr_pam
## GRanges object with 2 ranges and 0 metadata columns:
##       seqnames    ranges strand
##          <Rle> <IRanges>  <Rle>
##   [1]     chr7   200-202      +
##   [2]     chr7   198-200      -
##   -------
##   seqinfo: 1 sequence from an unspecified genome; no seqlengths
gr_protospacer
## GRanges object with 2 ranges and 0 metadata columns:
##       seqnames    ranges strand
##          <Rle> <IRanges>  <Rle>
##   [1]     chr7   180-199      +
##   [2]     chr7   201-220      -
##   -------
##   seqinfo: 1 sequence from an unspecified genome; no seqlengths
gr_target
## GRanges object with 2 ranges and 0 metadata columns:
##       seqnames    ranges strand
##          <Rle> <IRanges>  <Rle>
##   [1]     chr7   180-202      +
##   [2]     chr7   198-220      -
##   -------
##   seqinfo: 1 sequence from an unspecified genome; no seqlengths

and for AsCas12a:

gr_pam <- getPamRanges(seqnames=chr,
                       pam_site=pam_site,
                       strand=strand,
                       nuclease=AsCas12a)
gr_protospacer <- getProtospacerRanges(seqnames=chr,
                                       pam_site=pam_site,
                                       strand=strand,
                                       nuclease=AsCas12a)
gr_target <- getTargetRanges(seqnames=chr,
                             pam_site=pam_site,
                             strand=strand,
                             nuclease=AsCas12a)
gr_pam
## GRanges object with 2 ranges and 0 metadata columns:
##       seqnames    ranges strand
##          <Rle> <IRanges>  <Rle>
##   [1]     chr7   200-203      +
##   [2]     chr7   197-200      -
##   -------
##   seqinfo: 1 sequence from an unspecified genome; no seqlengths
gr_protospacer
## GRanges object with 2 ranges and 0 metadata columns:
##       seqnames    ranges strand
##          <Rle> <IRanges>  <Rle>
##   [1]     chr7   204-226      +
##   [2]     chr7   174-196      -
##   -------
##   seqinfo: 1 sequence from an unspecified genome; no seqlengths
gr_target
## GRanges object with 2 ranges and 0 metadata columns:
##       seqnames    ranges strand
##          <Rle> <IRanges>  <Rle>
##   [1]     chr7   200-226      +
##   [2]     chr7   174-200      -
##   -------
##   seqinfo: 1 sequence from an unspecified genome; no seqlengths

6 BaseEditor class

Base editors are inactive Cas nucleases coupled with a specific deaminase. For instance, the first cytosine base editor (CBE) was obtained by coupling a cytidine deaminase with dCas9 to convert Cs to Ts (Komor et al. 2016).

Examples of base editors.

Figure 4: Examples of base editors

We provide in crisprBase a S4 class, BaseEditor, to represent base editors. It extends the CrisprNuclase class with 3 additional fields:

  • baseEditorName: string specifying the name of the base editor.
  • editingStrand: strand where the editing happens with respect to the target protospacer sequence (“original” or “opposite”).
  • editingWeights: a matrix of experimentally-derived editing weights.

We now show how to build a BaseEditor object with the CBE base editor BE4max with weights obtained from Arbab et al. (2020).

We first obtain a matrix of weights for the BE4max editor stored in the package crisprBase:

# Creating weight matrix
weightsFile <- system.file("be/b4max.csv",
                           package="crisprBase",
                           mustWork=TRUE)
ws <- t(read.csv(weightsFile))
ws <- as.data.frame(ws)

The row names of the matrix must correspond to the nucleotide substitutions Nucleotide substitutions that are not present in the matrix will have weight assigned to 0.

rownames(ws)
## [1] "Position" "C2A"      "C2G"      "C2T"      "G2A"      "G2C"

The column names must correspond to the relative position with respect to the PAM site.

colnames(ws) <- ws["Position",]
ws <- ws[-c(match("Position", rownames(ws))),,drop=FALSE]
ws <- as.matrix(ws)
head(ws)
##     -36 -35 -34 -33 -32 -31 -30 -29 -28 -27 -26 -25 -24 -23 -22 -21 -20  -19
## C2A 0.0 0.0 0.0 0.7 0.1 0.2 0.0 0.2 0.3 0.0 0.2 0.0 0.9 0.0 0.1 0.2 0.1  0.3
## C2G 0.9 0.1 0.1 0.0 0.3 0.7 0.1 0.1 0.7 0.0 0.4 0.1 0.1 0.1 0.1 0.1 0.0  0.5
## C2T 0.7 0.7 0.8 1.8 1.0 2.0 1.4 1.2 2.3 1.3 2.4 2.2 3.4 2.2 2.1 3.5 5.8 16.2
## G2A 0.0 0.0 0.5 0.0 0.0 0.3 0.4 1.1 0.9 0.6 0.3 1.7 0.7 0.8 0.1 0.3 0.1  0.0
## G2C 0.1 0.0 0.0 0.0 0.6 2.8 0.0 0.0 0.3 0.2 0.2 0.1 0.0 0.3 0.0 0.0 0.0  0.0
##      -18  -17  -16    -15  -14  -13  -12  -11  -10  -9  -8  -7  -6  -5  -4  -3
## C2A  1.0  2.0  2.7   3.00  2.7  1.9  0.8  0.6  0.3 0.0 0.1 0.1 0.1 0.0 0.0 0.0
## C2G  1.3  2.7  4.7   5.40  5.6  3.9  1.7  0.6  0.6 0.4 0.5 0.1 0.0 0.1 0.0 0.0
## C2T 31.8 63.2 90.3 100.00 87.0 62.0 31.4 16.3 10.0 5.6 3.3 1.9 1.8 2.4 1.7 0.5
## G2A  0.0  0.0  0.1   0.01  0.0  0.0  0.0  0.0  0.0 0.0 0.0 0.0 0.0 0.2 0.2 0.0
## G2C  0.0  0.0  0.2   0.00  0.0  0.1  0.1  0.2  0.2 0.0 0.0 0.0 0.1 0.0 0.0 0.0
##      -2  -1
## C2A 0.0 0.0
## C2G 0.0 0.0
## C2T 0.2 0.1
## G2A 0.0 0.1
## G2C 0.0 0.0

Since BE4max uses Cas9, we can use the SpCas9 CrisprNuclease object available in crisprBase to build the BaseEditor object:

data(SpCas9, package="crisprBase")
BE4max <- BaseEditor(SpCas9,
                     baseEditorName="BE4max",
                     editingStrand="original",
                     editingWeights=ws)
metadata(BE4max)$description_base_editor <- "BE4max cytosine base editor."
BE4max
## Class: BaseEditor
##   CRISPR Nuclease name: SpCas9
##       Target type: DNA
##       Metadata: list of length 2
##       PAMs: NGG, NAG, NGA
##       Weights: 1, 0.2593, 0.0694
##       Spacer length: 20
##       PAM side: 3prime
##         Distance from PAM: 0
##       Prototype protospacers: 5'--SSSSSSSSSSSSSSSSSSSS[NGG]--3', 5'--SSSSSSSSSSSSSSSSSSSS[NAG]--3', 5'--SSSSSSSSSSSSSSSSSSSS[NGA]--3'
##   Base editor name: BE4max
##       Editing strand: original
##       Maximum editing weight: C2T at position -15

One can quickly visualize the editing weights using the function plotEditingWeights:

plotEditingWeights(BE4max)

7 Additional notes

7.1 dCas9 and other “dead” nucleases

The CRISPR inhibition (CRISPRi) and CRISPR activation (CRISPRa) technologies uses modified versions of CRISPR nucleases that lack endonuclease activity, often referred to as “dead Cas” nucleases, such as the dCas9.

While fully-active Cas nucleases and dCas nucleases differ in terms of applications and type of genomic perturbations, the gRNA design remains unchanged in terms of spacer sequence search and genomic coordinates. Therefore it is convenient to use the fully-active version of the nuclease throughout crisprBase.

7.2 RNA-targeting CRISPR nucleases

RNA-targeting CRISPR nucleases, such as the Cas13 family of nucleases, target single-stranded RNA (ssRNA) instead of dsDNA as the name suggests. The equivalent of the PAM sequence is called Protospacer Flanking Sequence (PFS).

For RNA-targeting CRISPR nucleases, the spacer sequence is the reverse complement of the protospacer sequence. This differs from DNA-targeting CRISPR nucleases, for which the spacer and protospacer sequences are identical.

We can construct an RNA-targeting nuclease in way similar to a DNA-targeting nuclease by specifying target="RNA". As an example, we construct below a CrisprNuclease object for the CasRx nuclease (Cas13d from Ruminococcus flavefaciens strain XPD3002):

CasRx <- CrisprNuclease("CasRx",
                        targetType="RNA",
                        pams="N",
                        metadata=list(description="CasRx nuclease"),
                        pam_side="3prime",
                        spacer_length=23)
CasRx
## Class: CrisprNuclease
##   Name: CasRx
##   Target type: RNA
##   Metadata: list of length 1
##   PFS: N
##   Weights: 1
##   Spacer length: 23
##   PFS side: 3prime
##     Distance from PFS: 0
##   Prototype protospacers: 5'--SSSSSSSSSSSSSSSSSSSSSSS[N]--3'

8 Session info

sessionInfo()
## R version 4.2.0 RC (2022-04-19 r82224)
## Platform: x86_64-pc-linux-gnu (64-bit)
## Running under: Ubuntu 20.04.4 LTS
## 
## Matrix products: default
## BLAS:   /home/biocbuild/bbs-3.15-bioc/R/lib/libRblas.so
## LAPACK: /home/biocbuild/bbs-3.15-bioc/R/lib/libRlapack.so
## 
## locale:
##  [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C              
##  [3] LC_TIME=en_GB              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] stats     graphics  grDevices utils     datasets  methods   base     
## 
## other attached packages:
## [1] crisprBase_1.0.0 BiocStyle_2.24.0
## 
## loaded via a namespace (and not attached):
##  [1] Rcpp_1.0.8.3           XVector_0.36.0         knitr_1.38            
##  [4] magrittr_2.0.3         GenomicRanges_1.48.0   zlibbioc_1.42.0       
##  [7] IRanges_2.30.0         BiocGenerics_0.42.0    R6_2.5.1              
## [10] rlang_1.0.2            fastmap_1.1.0          highr_0.9             
## [13] stringr_1.4.0          GenomeInfoDb_1.32.0    tools_4.2.0           
## [16] xfun_0.30              cli_3.3.0              jquerylib_0.1.4       
## [19] htmltools_0.5.2        yaml_2.3.5             digest_0.6.29         
## [22] crayon_1.5.1           bookdown_0.26          GenomeInfoDbData_1.2.8
## [25] BiocManager_1.30.17    S4Vectors_0.34.0       bitops_1.0-7          
## [28] sass_0.4.1             RCurl_1.98-1.6         evaluate_0.15         
## [31] rmarkdown_2.14         stringi_1.7.6          compiler_4.2.0        
## [34] bslib_0.3.1            magick_2.7.3           Biostrings_2.64.0     
## [37] stats4_4.2.0           jsonlite_1.8.0

References

Arbab, Mandana, Max W Shen, Beverly Mok, Christopher Wilson, Żaneta Matuszek, Christopher A Cassa, and David R Liu. 2020. “Determinants of Base Editing Outcomes from Target Library Analysis and Machine Learning.” Cell 182 (2): 463–80.

Komor, Alexis C, Yongjoo B Kim, Michael S Packer, John A Zuris, and David R Liu. 2016. “Programmable Editing of a Target Base in Genomic Dna Without Double-Stranded Dna Cleavage.” Nature 533 (7603): 420–24.

Roberts, Richard J, Tamas Vincze, Janos Posfai, and Dana Macelis. 2010. “REBASE—a Database for Dna Restriction and Modification: Enzymes, Genes and Genomes.” Nucleic Acids Research 38 (suppl_1): D234–D236.