This repository contains code for predicting expression effects of human genome variants ab initio from sequence with ExPecto models and training new sequence-based expression model with any expression profile.
The ExPecto framework is described in the following manuscript: Jian Zhou, Chandra L. Theesfeld, Kevin Yao, Kathleen M. Chen, Aaron K. Wong, and Olga G. Troyanskaya, Deep learning sequence-based ab initio prediction of variant effects on expression and disease risk, Nature Genetics (2018).
Important Note: that for training new models with train.py
, the default hyperparameters are only compatible with xgboost version 0.7.post4, because in newer xgboost versions the interpretation of eta parameter is substantially different. Please make sure to install the version 0.7.post4 pip install xgboost=0.7.post4
. The default hyperparameters are not compatible with newer xgboost versions.
Clone the repository then download and extract necessary resource files:
git clone https://github.com/FunctionLab/ExPecto.git
cd ExPecto
sh download_resources.sh; tar xf resources_20190807.tar.gz
Install PyTorch following instructions from https://pytorch.org/. Use pip install -r requirements.txt
to install the other dependencies.
python chromatin.py ./example/example.vcf
python predict.py --coorFile ./example/example.vcf --geneFile ./example/example.vcf.bed.sorted.bed.closestgene --snpEffectFilePattern ./example/example.vcf.shift_SHIFT.diff.h5 --modelList ./resources/modellist --output output.csv
The output will be saved to output.csv. The first few columns of the csv file will be the same as the vcf files. The additional columns include predicted expression effect (log fold change) for each of the input models in the order given by the modelList file.
If ./resources/hg19.fa.flat
cannot be loaded, try removing it and it will be generated next time you run the code.
chromatin.py
computes the chromatin effects of the variants, using trained convolutional neural network model. The input vcf files need to contain only variant with a single alternative allele. Variants such as A T,AT
is not recognized and you can split it into biallelic variants to run it.
predict.py
computes predicted tissue-specific expression effects which takes predicted chromatin effects as input.
--coorFile ./example/example.vcf
specifies the variants of interest in vcf format (coordinates should be in hg19, support for other genomes can be obtained via switching genome fasta file, but note that the current models are trained on hg19 genome).
--closestGeneFile ./example/example.vcf.bed.sorted.bed.closestgene
specifies the gene association file which decides for each variant the associated gene for which the expression effect is predicted. The content of the gene association file has to include the following information: the first column and third columns are chromosome names and positions, and the last three columns are the strand of the associated gene, the ENSEMBL gene id (matched with the gene annotation file ./resources/geneanno.csv
) and distance to the representative TSS of that gene. The row order gene association file does not need to be in the same as the vcf file. The distance should be signed and calculated as '' TSS position - variant position" regardless of on which strand the gene is transcribed. The representive TSSes can be found in the provided geneanno.csv file. The associated gene can be specified by finding the closest representative TSS. When is known of gene is of interest, such as for eQTL predictions, the know gene association can be used. This can be done for example using closest-features from BEDOPS and the representation TSS of protein coding genes that we included, for example:
closest-features --delim '\t' --closest --dist <(awk '{printf $1"\t"$2-1"\t"$2"\n"}' ./example/example.vcf|sed s/chr//g|sed s/^/chr/g|sort-bed - ) ./resources/geneanno.pc.sorted.bed > ./example/example.vcf.bed.sorted.bed.closestgene
--snpEffectFilePattern ./example/example.vcf_shiftSHIFT_outdir/infile.vcf.wt2100.fasta.ref.h5.diff.h5
specifies the name pattern of the input epigenomic effect prediction files. Note these files are the output from chromatin.py
. SHIFT
string is a placeholder that is substituted automatically to the shift positions (e.g. 0, -200, -400, ...).
Optional: For very large input files use the split functionality to distribute the prediction into multiple runs. For predict.py
you can use for example --splitFlag --splitIndex 0 --splitFold 10
to divide the input into 10 chunks and process only the first chunk.
python ./train.py --expFile ./resources/geneanno.exp.csv --targetIndex 1 --output model.adipose
This trains an ExPecto model using the Adipose gene expression profile in the first column of the geneanno.exp.csv
file and the default precomputed epigenomic features. For training new ExPecto model for your custom (differential) expression profile, replace geneanno.exp.csv with your expression profile. The gene order has to be the same as the geneanno.csv.
The new trained model(s) can be used by predict.py
by adding the path of the xgboost model file to a new modelList
file. The new models should be put in a separate modellist file not mixed with provided models, because the provided models were in an old legacy format incompatible with new trained models.
*** Note that for training new models with train.py, the default hyperparameters are only compatible with xgboost version 0.7.post4. Make sure to install the correct version e.g. pip install xgboost=0.7.post4. The default hyperparameters are not compatible with newer xgboost versions. ***
Jian Zhou jzhoup@gmail.com
If you are interested in obtaining the software for commercial use, please contact Office of Technology Licensing, Princeton University (Laurie Tzodikov 609-258-7256, tzodikov@princeton.edu, or Linda Jan, 609-258-3653, ljan@princeton.edu). For academic use, downloading or using the software means you agree with the following Academic Use SOFTWARE Agreement.
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