This package annotates genetic variants with their predicted effect on splicing, as described in Jaganathan et al, Cell 2019 in press.
The simplest way to install SpliceAI is through pip:
pip install spliceai
Alternately, SpliceAI can be installed from the github repository:
git clone https://github.com/Illumina/SpliceAI.git
cd SpliceAI
python setup.py install
SpliceAI requires tensorflow>=1.2.0,
which is best installed separately via pip: pip install tensorflow
. See
the TensorFlow website for other installation options.
SpliceAI can be run from the command line:
spliceai -I input.vcf -O output.vcf -R genome.fa [-A annotations.tsv]
# or you can pipe the input and output VCFs
cat input.vcf | spliceai -R genome.fa [-A annotations.tsv] > output.vcf
Options:
- -I: The input VCF with variants of interest. Only SNVs and simple indels (ref or alt must be a single base) are scored.
- -O: The output VCF with SpliceAI predictions included in the INFO column
(
SpliceAI=ALLELE|SYMBOL|DS_AG|DS_AL|DS_DG|DS_DL|DP_AG|DP_AL|DP_DG|DP_DL
, see table below for details). Variants in multiple genes have separate predictions for each gene. Variants outside gene regions are not scored. - -R: Reference genome fasta file (should be on hg19/GRCh37 if using default -A parameter).
- -A: Optional tab-separated file with columns for gene symbol, chromosome,
strand, transcription start, and transcription end. See
spliceai/annotations/GENCODE.v24lift37
in repository as template for creating custom annotations).
Details of SpliceAI INFO field:
ID | Description |
---|---|
ALLELE | Alternate allele |
SYMBOL | Gene symbol |
DS_AG | Delta score (acceptor gain) |
DS_AL | Delta score (acceptor loss) |
DS_DG | Delta score (donor gain) |
DS_DL | Delta score (donor loss) |
DP_AG | Delta position (acceptor gain) |
DP_AL | Delta position (acceptor loss) |
DP_DG | Delta position (donor gain) |
DP_DL | Delta position (donor loss) |
Delta score of a variant ranges from 0 to 1, and can be interpreted as the probability of the variant being splice-altering. In the paper, a detailed characterization is provided for 0.2 (high recall/likely pathogenic), 0.5 (recommended/pathogenic), and 0.8 (high precision/pathogenic) cutoffs. Delta position conveys information about the location where splicing changes relative to the variant position (positive values are upstream of the variant, negative values are downstream).
For the sake of convenience, we have precomputed scores for all possible single nucleotide variants within genes, which are available here.
A sample input file and the corresponding output file can be found at examples/input.vcf
and examples/output.vcf
respectively. The output SpliceAI=T|RYR1|0.22|0.00|0.91|0.70|-107|-46|-2|90
for the variant 19:38958362 C>T
can be interpreted as follows:
- The probability that the position
19:38958255
is used as a splice acceptor increases by0.22
. - The probability that the position
19:38958360
is used as a splice donor increases by0.91
. - The probability that the position
19:38958452
is used as a splice donor decreases by0.70
.
Kishore Jaganathan: [email protected]