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SelfTarget

Docker Repository on Quay.io

Scripts for processing and predicting CRISPR/Cas9-generated mutations

FORECasT Web server

To predict and view mutational profiles for individual gRNAs, please visit the FORECasT website at:

https://partslab.sanger.ac.uk/FORECasT

Precomputed FORECasT Results for Human and Mouse CCDS

Precomputed profiles for all gRNAs in human and mouse CCDS regions are available here:

https://fa9.cog.sanger.ac.uk/index.html

Entries are collected into all gRNAs corresponding to each CCDS id. Within each file ending in _predicted_mapped_indel_summary.txt, the entries for each gRNA are separated by a line with

@@@id guide_seq predicted_in_frame 

where the id contains the CCDS id, the chomosome coordinates and the strand. The next line is '- - 1000' and can be ignored (there for visualization only). The following lines are the particular indels predicted and their predicted counts (assuming total reads of 1000, and ignoring indels with less than 1 read). For the read sequences, see corrresponding entries in the _predicted_rep_reads.txt files.

FORECasT Command line tool

  1. Follow the installation instructions here.

  2. After installation, from a command line:

cd indel_prediction
cd predictor
  1. Run single or batch prediction as described next.

Single gRNA prediction

python FORECasT.py <target DNA sequence> <PAM index (0 based)> <output_file_prefix>

e.g.

python FORECasT.py ATGCTAGCTAGGGCATGAGGCATGCTAGTGACTGCATGGTAC 17 test_output

Output will be in

<output_file_prefix>_predictedindelsummary.txt

A list of predicted mutations, one per line, listed in order of decreasing predicted counts. Each line contains an identifier string for the indel followed by a - (ignore this), and then a predicted read count (tab-delimited).

e.g.

-	-	1000	(always 1000 reads - it is the original template sequence - here for viewer use).
D2_L-3R0	-	550
I1_L-2C1R0	-	200

<output_file_prefix>_predictedreads.txt A list of read sequences corresponding to each predicted mutation in the previous file. The format is read_id (ignore this), read sequence, mutation identifier (tab delimited), followed by a - (ignore this)

e.g.

ATGCTAGCTAGGGCATGAGGCATGCTAGTGACTGCATGGTAC	-	-
ATGCTAGCTAGGGCAAGGCATGCTAGTGACTGCATGGTAC	D2_L-3R0	-
ATGCTAGCTAGGGCATGGAGGCATGCTAGTGACTGCATGGTAC	I1_L-2C1R0	-

Batch mode prediction

python FORECasT.py <batch_filename> <output_file_prefix>

e.g.

python FORECasT.py example_batch.txt test_batch_output

where batch_filename is a tab-delimited file with columns: ID, Target, PAM Index e.g.

ID	Target	PAM Index
Guide_1	ATGCTAGCTAGGGCATGAGGCATGCTAGTGACTGCATGGTAC	17
Guide_2	ATCGATGACTGATCGTAGCTAGCTGGGATGCTAGCTAGTTGCATGCTAGGAGTCAGCTAG	23
Guide_3	GATAGTCGTAGGCTAGCTAGCTAGCTGGCAAGTGTGGAAAAGGGGATGCATGTA	26

Output will be in <output_file_prefix>_predictedindelsummary.txt and <output_file_prefix>_predictedreads.txt

which are formatted as for single mode, but separate guides are prefaced by a line with

@@@<ID> <predicted_in_frame>

where ID is the identifier provided for the guide in the batch file, and predicted_in_frame is the predicted percentage of in-frame mutations (i.e. all insertions or deletions that are of size 3,6,9...etc)

Installation

Locally

Create a Python 3 virtual environment and activate it

# install Python dependencies

pip install -r requirements.txt
cd selftarget_pyutils
pip install -e .
cd ../indel_prediction
pip install -e .

# compile predictor

cd indel_analysis/indelmap
cmake . -DINDELMAP_OUTPUT_DIR=/usr/local/bin
make && make install
export INDELGENTARGET_EXE=/usr/local/bin/indelgentarget

Docker

Alternatively, you can start a Docker container and exec into it:

docker pull quay.io/felicityallen/selftarget
docker exec -it quay.io/felicityallen/selftarget bash

Web service

Installation

The predictor can be run as a web service. It can be accessed through a separate front end application FORECasT (source on GitHub). SelfTarget repository contains a Flask server with two API endpoints that are used by FORECasT to access predictor.

To run predictor as a server, you can follow the local installation steps above, go to the root directory and launch

python server/server.py --port=5001

or simply run a Docker container

docker run -d --name selftarget -p 5001:8006 quay.io/felicityallen/selftarget
Development

All changes to the server must be reflected in swagger.yaml since it's being used to automatically generate clients for other services. Tests use it as well, so generally any unreflected changes must fail some of the tests. It is handy to validate swagger specification with swagger validate swagger.yml