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CKG-BioCypher migration repository

This code serves as an adapter to the Clinical Knowledge Graph. Data is processed from the CKG Neo4j database dump (available here) into BioCypher-compatible format using the adapter class and the configuration files in config/. For more information on BioCypher, please visit https://biocypher.org.

Setup and Installation

Clone and setup the project

The project uses Poetry. You can install it like this:

git clone https://github.com/saezlab/CKG-BioCypher.git 
cd CKG-BioCypher
poetry install 

Poetry will create a virtual environment according to your configuration (either centrally or in the project folder). You can activate it by running poetry shell inside the project directory.

Run the CKG

For getting the data from the CKG, an instance of the CKG needs to be running in Neo4j. For setting this up, please refer to the CKG docs.

Alternatively, you can use the pre-made CKG Neo4j database dump instance setup configuration provided in the ckg_dump directory by following the README in it.

Configuration

Now the credentials for the CKG Neo4j instance need to be configured within the ckgb/adapter.py.

Projects

Three concepts are represented in this repository:

  • a full import of the CKG Neo4j dump file into BioCypher-compatible format
  • a subsetting procedure to demonstrate the simplicity of subsetting a KG
  • a subset used in the input of the Bioteque embedding pipeline to demonstrate a use case for the flexible subsetting of existing BioCypher adapters

Full import

The full import database schema is configured in config/full_schema_config.yaml. The adapter (ckgb/adapter.py) uses this schema to stream data from the CKG dump in a running Neo4j instance into the BioCypher driver. This is orchestrated by the import script at scripts/full_ckg_script.py. The script can be run like this:

poetry run python scripts/full_ckg_script.py

The script will create a new database in BioCypher format in the biocypher-out directory, including a shell script to generate a Neo4j instance from the files using the neo4j-admin tool.

Subsetting

The subsetting procedure is configured in config/subset_schema_config.yaml. It is a simplified version of the full import schema, with only a subset of the nodes and edges. The adapter (ckgb/adapter.py) uses this schema to stream data from the CKG dump in a running Neo4j instance into the BioCypher driver. This is orchestrated by the import script at scripts/subset_ckg_script.py.

To create a subset, configure the subset schema in config/subset_schema_config.yaml, and insert the used node and relationship names of the subset in the data/subset_nodes.csv and data/subset_relationships.csv. To check which nodes and relationships exist in the CKG you can have a look at data/all_nodes.csv and data/all_granular_relationships.csv.

If you would like to insert relationship properties, adapt the _write_edges method in the adapter and specify how the properties of each relationship type should be handeled.

Finally the subsetting procedure can be run with poetry run python scripts/subset_ckg_script.py. The script will create a new database in BioCypher format in the biocypher-out directory, including a shell script to generate a Neo4j instance from the files using the neo4j-admin tool.

Bioteque embeddings

The Bioteque subsetting procedure is configured in config/embedding_schema_config.yaml. It is, like the subsetting procedure, a simplified version of the full import schema, orchestrated by the import script at scripts/embedding_ckg_script.py. The script can be run like this:

poetry run python scripts/embedding_ckg_script.py

In addition, after the instance has been created from the generated files, the script at other/create_list_bqe.py can be used to create input files for the Bioteque pipeline (https://bioteque.irbbarcelona.org). In this way, flexible embeddings can be generated from BioCypher adapters with minimal effort. For another example, check out the adapter for the Open Targets dataset at https://github.com/biocypher/open-targets.

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