This is the course project for 02710. The project is about machine learning based sketching algorithms for rna sequence.
git clone https://github.com/baolef/ml-sketching.git
cd ml-sketching
conda env create -f environment.yml
conda activate sketching
The data we use from SILVA database. You can download the data from here and put it in the inputs/rna/
folder.
In Linux, you can run the following commands to prepare the data:
mkdir -p inputs
cd inputs/rna
wget https://www.arb-silva.de/fileadmin/silva_databases/release_138.1/Exports/SILVA_138.1_SSURef_NR99_tax_silva.fasta.gz
gzip -d SILVA_138.1_SSURef_NR99_tax_silva.fasta.gz
To train the machine learning based sketching model (rna2vec), you can run the following command to save the model with .w2v
extension in the save/
folder:
python scripts/train_dna2vec.py -c configs/rna.yml
To sketch the rna sequence using the rna2vec model, you can run the following command to save the sketching in the inputs/
folder:
python scripts/sketch_rna2vec.py -m MODEL_PATH.w2v -i inputs/SILVA_138.1_SSURef_NR99_tax_silva.fasta -o inputs
To sketch the rna sequence using the MinHash algorithm, you can run the following command to save the sketching in the inputs/
folder:
python scripts/sketch_minhash.py -i inputs/SILVA_138.1_SSURef_NR99_tax_silva.fasta -o inputs
To train the clustering model, you can run the following command:
python scripts/clustering.py -i inputs/SILVA_138_3_8_sliding_0_rna2vec.npz -c 1 -d euclidean
python scripts/clustering.py -i inputs/SILVA_138_3_8_sliding_0_minhash.npz -c 1 -d hamming
Notice that -c
is an integer to specify the level of classes in the inheritance tree and -d
is a string to specify the distance metric, where we recommend to use euclidean
for rna2vec and hamming
for MinHash.
To train the classification model, you can run the following command:
python scripts/classification.py -i inputs/SILVA_138_3_8_sliding_0_rna2vec.npz -c 1
rna2vec outperforms MinHash in clustering and classification tasks.
To reproduce the results, you can run the following command after sketching the data:
sh run.sh