Dna2vec Save

dna2vec: Consistent vector representations of variable-length k-mers

Project README

dna2vec

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Dna2vec is an open-source library to train distributed representations of variable-length k-mers.

For more information, please refer to the paper: dna2vec: Consistent vector representations of variable-length k-mers

Installation

Note that this implementation has only been tested on Python 3.5.3, but we welcome any contributions or bug reporting to make it more accessible.

  1. Clone the dna2vec repository: git clone https://github.com/pnpnpn/dna2vec
  2. Install Python dependencies: pip3 install -r requirements.txt
  3. Test the installation: python3 ./scripts/train_dna2vec.py -c configs/small_example.yml

Training dna2vec embeddings

  1. Download hg38 from http://hgdownload.cse.ucsc.edu/goldenPath/hg38/bigZips/hg38.chromFa.tar.gz. This will take a while as it's 938MB.
  2. Untar with tar -zxvf hg38.chromFa.tar.gz. You should see FASTA files for chromosome 1 to 22: chr1.fa, chr2.fa, ..., chr22.fa.
  3. Move the 22 FASTA files to folder inputs/hg38/
  4. Start the training with: python3 ./scripts/train_dna2vec.py -c configs/hg38-20161219-0153.yml
  5. Wait for a couple of days ...
  6. Once the training is done, there should be a dna2vec-<ID>.w2v and a corresponding dna2vec-<ID>.txt file in your results/ directory.

Reading pretrained dna2vec

You can read pretrained dna2vec vectors pretrained/dna2vec-*.w2v using the class MultiKModel in dna2vec/multi_k_model.py. For example:

from dna2vec.multi_k_model import MultiKModel

filepath = 'pretrained/dna2vec-20161219-0153-k3to8-100d-10c-29320Mbp-sliding-Xat.w2v'
mk_model = MultiKModel(filepath)

You can fetch the vector representation of AAA with:

>>> mk_model.vector('AAA')
array([ 0.023137  ,  0.156295 , ...

Compute the cosine distance between two k-mers via dna2vec:

>>> mk_model.cosine_distance('AAA', 'GCT')
0.14546435594464155
>>> mk_model.cosine_distance('AAA', 'AAAA')
0.89000147450211231

FAQ

Does the pre-trained dna2vec data (w2v file) cover all k-mers?

The pre-trained data should cover all k-mers for 3 ≤ k ≤ 8

>>> [len(mk_model.model(k).vocab) for k in range(3,9)]
[64, 256, 1024, 4096, 16384, 65536]
>>> [4**k for k in range(3,9)]
[64, 256, 1024, 4096, 16384, 65536]

Contribute

I would love for you to fork and send me pull request for this project. Please contribute.

License

This software is licensed under the MIT license

Open Source Agenda is not affiliated with "Dna2vec" Project. README Source: pnpnpn/dna2vec
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