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Deep learning the cis-regulatory code for gene expression in selected model plants

DOI

Please follow the steps below to reproduce the results from our work.

  1. Download this repository.
  2. Change directory into the model subdirectory, run the fetch_genomes_and_annotation.sh script. Firstly, this will create 3 new subdirectories: genomes, gene_models, tpm_counts. Then, it will download genomes and gene models for 4 plant species, uncompress them and store them in genomes and gene models subdirectories respectively.
  3. Download expression counts for the project from supplementary data from publication and save these files within the tpm_counts subdirectory. NB: you should have 8 files, corresponding to 4 plant species and 2 tissues. For example, for Arabidopsis thaliana you would have arabidopsis_counts.csv and arabidopsis_root_counts.csv for leaf and root tissues respectively.

Training convolutional neural networks

  • To train SSR and SSC models, run the train_ssr_ssc_models_leaf.py and train_ssr_ssc_models_root.py for leaf and root tissues respectively.
  • Train the MSR models using train_msr_models_leaf.py and train_msr_models_root.py.

Only after training CNN models can you run the scripts below that compute importance scores and generate motifs. Also note that deepLIFT which is used to compute importance scores is currently only compatible with tensorflow 1.x. So if you build models with tensorflow 2.x, you won't be able to use these scripts.

Computing importance scores and obtaining motifs

  • Run the motif_discovery_... scripts for respective tissue and models.
  • Then run extract_motifs_ssr.py or extract_motifs_msr.py to get the motifs out of the output produced by modisco.

Random forest models

  • Firstly, create the features using the create_generic_feature.py script.
  • Then run either random_forest_msr.py or random_forest_ssr.py for MSR and SSR models respectively.

Investigate effect of different sequence lengths

To investigate the effects of different UTR or promoter sequence lengths, use the effect_of_different_... scripts. These scripts will build several models based on different length specified within the scripts.

Generating validation_genes.pickle file

This file contains information of genes that have homologs only within their chromosomes, such that when we use chromosome level cross validation for training, we mitigate the effects of homologs leaking information between our training and test set. While I provide the pickle file used for this project, one can generate this themselves by firstly going into the data directory that sits as a sibling directory to model directory, then running the commands below in the terminal:

wget https://ftp.ebi.ac.uk/ensemblgenomes/pub/release-52/plants/fasta/arabidopsis_thaliana/pep/Arabidopsis_thaliana.TAIR10.pep.all.fa.gz
gunzip Arabidopsis_thaliana.TAIR10.pep.all.fa.gz
makeblastdb -in Arabidopsis_thaliana.TAIR10.pep.all.fa -dbtype prot -title arabidopsis -parse_seqids -hash_index -out arabidopsis
blastp -db arabidopsis -query Arabidopsis_thaliana.TAIR10.pep.all.fa  -out Blast_ara_to_ara -outfmt 6

The above assume that you have blast installed on your computer. The above 4 lines are just for Arabidopsis thaliana but should be edited and repeated for the other 4 species. Once this is done, run the produce_non_homologous_val_sets.py script.

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