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Entity Normalizer

Python tool for normalizing entities based on a dictionary.

Usage

This tool can be used as:

  • a command line tool, by cloning this repository and running pip install . under the root of this source; then you can runmain.py with the required parameters to process your entity-listed file.
  • a Python package , by installing the package using pip install EntityNormalizer
    PyPI page: https://pypi.org/project/EntityNormalizer/

Input and output

The input file must contain one entity per line. The output file will contain the normalized entities, again, one per line.
The dictionary file must be a comma-separated table file, i.e., csv.

If the entity does not produce any match in the dictionary, it will be normalized to [NO_MATCH]. If the entity is found in the dictionary but the normalization is empty, it will be normalized to [NO_NORM_FOUND].


Command line usage

python main.py input output dictionary source target [--matching_threshold MATCHING_THRESHOLD] [--index]

Parameters

  • input: Input file path [Required]
  • output: Output file path [Required]
  • dictionary: Normalization dictionary file path [Required]
  • source: Surface form column from dictionary [Required]
  • target: Normalization column from dictionary [Required]
  • matching_threshold: Threshold of string similarity for the normalization to be accepted (default: 50) [Optional]
  • index: Use column indexes instead of names [Optional]

Example

  • With column names:

    python main.py data/input.txt data/output.txt data/dictionary.csv surface_form_col normalization_col --matching_threshold 50

  • With integer column indexes:

    python main.py data/input.txt data/output.txt data/dictionary.csv --index source 0 target 2 --matching_threshold 80


Python package usage

After installation, the normalize function can be invoked with the dicitonary and a list of entities to produce a list of normalized entities.

Example

from EntityNormalizer import EntityDictionary, normalize

entities = ['entity1', 'entity2', 'entity3']

normalization_dictionary = EntityDictionary('data/dictionary.csv', 'surface_forms', 'normalizations')
normalized = normalize(entities, normalization_dictionary, matching_threshold=70)

print(normalized)

Bundled dictionaries

This library comes with a set of bundled dictionaries, which can be found under the resources folder:

  • MedDic-CANCER-ADE-JA
  • MedDic-CANCER-DRUG-JA

These are a set of Japanese medical dictionaries developed with normalization of concepts normally found during the analysis of adverse events caused by anticancer drugs. Please refer to this page for mor information.

There are convenient classes for loading these dictionaries, which can be accessed with the Dictionaries module:

from EntityNormalizer import Dictionaries, normalize

entities = ['entity1', 'entity2', 'entity3']

# Load the dictionaries
cancer_ade = Dictionaries.MedDicCancerADE()
cancer_drug = Dictionaries.MedDicCancerDrug()

# Use the dictionaries
normalized_ade = normalize(entities, cancer_ade, matching_threshold=70)
normalized_drug = normalize(entities, cancer_drug, matching_threshold=70)

Both dictionaries use the columns 出現形 (Surface form) and [細分類] (Sub-classification) as source and target columns, respectively.

This can be altered by passing the referring parameter when creating the dictionary:

from EntityNormalizer import Dictionaries

cancer_ade = Dictionaries.MedDicCancerADE(source_column='customColumn', target_column='customColumn2')

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Command line tool for normalizing entities based on a dictionary.

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