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A Python biomedical relation extraction package that uses a supervised approach (i.e. needs training data).

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jakelever/kindred

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Kindred

Kindred is a Python3 package for relation extraction in biomedical texts. Given some training data, it can build a model to identify relations between entities (e.g. drugs, genes, etc) in a sentence.

Installation

You can install "kindred" via pip from PyPI

pip install kindred

Kindred relies on the Spacy toolkit for parsing. After installing kindred (which also installs spacy), you will need to install a Spacy language model. For instance, the command below installs the English language model::

python -m spacy download en_core_web_sm

Usage

Check out the tutorial that goes through a simple use case of extracting capital cities from text. More details and the full documentation can be found at readthedocs.

BioNLP Shared Task Example

import kindred

# Load the SeeDev corpus
trainCorpus = kindred.bionlpst.load('2016-SeeDev-binary-train')
devCorpus = kindred.bionlpst.load('2016-SeeDev-binary-dev')

# Create a copy of the dev corpus to make predictions on
predictionCorpus = devCorpus.clone()
predictionCorpus.removeRelations()

# Create a relation classifier, train it and make predictions
classifier = kindred.RelationClassifier()
classifier.train(trainCorpus)
classifier.predict(predictionCorpus)

# Get the F1 score of the predicted relations
f1score = kindred.evaluate(devCorpus, predictionCorpus, metric='f1score')

PubAnnotation Example

corpus = kindred.pubannotation.load('bionlp-st-gro-2013-development')

PubTator Example

corpus = kindred.pubtator.load([19894120,19894121])

Input Formats

Kindred can load several formats, including BioNLP Shared Task, JSON, BioC XML and a simple tag format. Check out the file format documentation for example data and code.

Citing

It would be wonderful if you could cite the associated paper for this package if used in any academic research.

@article{lever2017painless,
   title={Painless {R}elation {E}xtraction with {K}indred},
   author={Lever, Jake and Jones, Steven},
   journal={BioNLP 2017},
   pages={176--183},
   year={2017}
}

Contributing

Contributions are very welcome.

License

Distributed under the terms of the MIT license, "kindred" is free and open source software

Issues

If you encounter any problems, please file an issue along with a detailed description.

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A Python biomedical relation extraction package that uses a supervised approach (i.e. needs training data).

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